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35 \newcommand{\nproc}{\mbox{$M$
}}
36 \newcommand{\natom}{\mbox{$N$
}}
37 \newcommand{\nx}{\mbox{$n_x$
}}
38 \newcommand{\ny}{\mbox{$n_y$
}}
39 \newcommand{\nz}{\mbox{$n_z$
}}
40 \newcommand{\nsgrid}{NS grid
}
41 \newcommand{\fftgrid}{FFT grid
}
42 \newcommand{\dgrid}{\mbox{$
\delta_{grid
}$
}}
43 \newcommand{\bfv}[1]{{\mbox{\boldmath{$
#1$
}}}}
44 % non-italicized boldface for math (e.g. matrices)
45 \newcommand{\bfm}[1]{{\bf #1}}
46 \newcommand{\dt}{\Delta t
}
47 \newcommand{\rv}{\bfv{r
}}
48 \newcommand{\vv}{\bfv{v
}}
49 \newcommand{\F}{\bfv{F
}}
50 \newcommand{\pb}{\bfv{p
}}
51 \newcommand{\veps}{v_
{\epsilon}}
52 \newcommand{\peps}{p_
{\epsilon}}
53 \newcommand{\sinhx}[1]{\frac{\sinh{\left(
#1\right)
}}{#1}}
56 \section{Introduction
}
57 In this chapter we first give describe some general concepts used in
58 {\gromacs}:
{\em periodic boundary conditions
} (
\secref{pbc
})
59 and the
{\em group concept
} (
\secref{groupconcept
}). The MD algorithm is
60 described in
\secref{MD
}: first a global form of the algorithm is
61 given, which is refined in subsequent subsections. The (simple) EM
62 (Energy Minimization) algorithm is described in
\secref{EM
}. Some
63 other algorithms for special purpose dynamics are described after
66 %\ifthenelse{\equal{\gmxlite}{1}}{}{
67 %In the final \secref{par} of this chapter a few principles are
68 %given on which parallelization of {\gromacs} is based. The
69 %parallelization is hardly visible for the user and is therefore not
71 %} % Brace matches ifthenelse test for gmxlite
73 A few issues are of general interest. In all cases the
{\em system
}
74 must be defined, consisting of molecules. Molecules again consist of
75 particles with defined interaction functions. The detailed
76 description of the
{\em topology
} of the molecules and of the
{\em force
77 field
} and the calculation of forces is given in
78 \chref{ff
}. In the present chapter we describe
79 other aspects of the algorithm, such as pair list generation, update of
80 velocities and positions, coupling to external temperature and
81 pressure, conservation of constraints.
82 \ifthenelse{\equal{\gmxlite}{1}}{}{
83 The
{\em analysis
} of the data generated by an MD simulation is treated in
\chref{analysis
}.
84 } % Brace matches ifthenelse test for gmxlite
86 \section{Periodic boundary conditions
\index{periodic boundary conditions
}}
89 \centerline{\includegraphics[width=
9cm
]{plots/pbctric
}}
90 \caption {Periodic boundary conditions in two dimensions.
}
93 The classical way to minimize edge effects in a finite system is to
94 apply
{\em periodic boundary conditions
}. The atoms of the system to
95 be simulated are put into a space-filling box, which is surrounded by
96 translated copies of itself (
\figref{pbc
}). Thus there are no
97 boundaries of the system; the artifact caused by unwanted boundaries
98 in an isolated cluster is now replaced by the artifact of periodic
99 conditions. If the system is crystalline, such boundary conditions are
100 desired (although motions are naturally restricted to periodic motions
101 with wavelengths fitting into the box). If one wishes to simulate
102 non-periodic systems, such as liquids or solutions, the periodicity by
103 itself causes errors. The errors can be evaluated by comparing various
104 system sizes; they are expected to be less severe than the errors
105 resulting from an unnatural boundary with vacuum.
107 There are several possible shapes for space-filling unit cells. Some,
108 like the
{\em \normindex{rhombic dodecahedron
}} and the
109 {\em \normindex{truncated octahedron
}}~
\cite{Adams79
} are closer to being a sphere
110 than a cube is, and are therefore better suited to the
111 study of an approximately spherical macromolecule in solution, since
112 fewer solvent molecules are required to fill the box given a minimum
113 distance between macromolecular images. At the same time, rhombic
114 dodecahedra and truncated octahedra are special cases of
{\em triclinic
}
115 unit cells
\index{triclinic unit cell
}; the most general space-filling unit cells
116 that comprise all possible space-filling shapes~
\cite{Bekker95
}.
117 For this reason,
{\gromacs} is based on the triclinic unit cell.
119 {\gromacs} uses periodic boundary conditions, combined with the
{\em
120 \normindex{minimum image convention
}}: only one -- the nearest -- image of each
121 particle is considered for short-range non-bonded interaction terms.
122 For long-range electrostatic interactions this is not always accurate
123 enough, and
{\gromacs} therefore also incorporates lattice sum methods
124 such as Ewald Sum, PME and PPPM.
126 {\gromacs} supports triclinic boxes of any shape.
127 The simulation box (unit cell) is defined by the
3 box vectors
128 $
{\bf a
}$,$
{\bf b
}$ and $
{\bf c
}$.
129 The box vectors must satisfy the following conditions:
135 \label{eqn:box_shift1
}
136 a_x>
0,~~~~b_y>
0,~~~~c_z>
0
139 \label{eqn:box_shift2
}
140 |b_x|
\leq \frac{1}{2} \, a_x,~~~~
141 |c_x|
\leq \frac{1}{2} \, a_x,~~~~
142 |c_y|
\leq \frac{1}{2} \, b_y
144 Equations
\ref{eqn:box_rot
} can always be satisfied by rotating the box.
145 Inequalities (
\ref{eqn:box_shift1
}) and (
\ref{eqn:box_shift2
}) can always be
146 satisfied by adding and subtracting box vectors.
148 Even when simulating using a triclinic box,
{\gromacs} always keeps the
149 particles in a brick-shaped volume for efficiency,
150 as illustrated in
\figref{pbc
} for a
2-dimensional system.
151 Therefore, from the output trajectory it might seem that the simulation was
152 done in a rectangular box. The program
{\tt trjconv
} can be used to convert
153 the trajectory to a different unit-cell representation.
155 It is also possible to simulate without periodic boundary conditions,
156 but it is usually more efficient to simulate an isolated cluster of molecules
157 in a large periodic box, since fast grid searching can only be used
158 in a periodic system.
162 \includegraphics[width=
5cm
]{plots/rhododec
}
163 ~~~~
\includegraphics[width=
5cm
]{plots/truncoct
}
165 \caption {A rhombic dodecahedron and truncated octahedron
166 (arbitrary orientations).
}
167 \label{fig:boxshapes
}
170 \subsection{Some useful box types
}
173 \begin{tabular
}{|c|c|c|ccc|ccc|
}
175 box type & image & box &
\multicolumn{3}{c|
}{box vectors
} &
\multicolumn{3}{c|
}{box vector angles
} \\
176 & distance & volume & ~
{\bf a
}~ &
{\bf b
} &
{\bf c
} &
177 $
\angle{\bf bc
}$ & $
\angle{\bf ac
}$ & $
\angle{\bf ab
}$ \\
179 & & & $d$ &
0 &
0 & & & \\
180 cubic & $d$ & $d^
3$ &
0 & $d$ &
0 & $
90^
\circ$ & $
90^
\circ$ & $
90^
\circ$ \\
181 & & &
0 &
0 & $d$ & & & \\
183 rhombic & & & $d$ &
0 & $
\frac{1}{2}\,d$ & & & \\
184 dodecahedron & $d$ & $
\frac{1}{2}\sqrt{2}\,d^
3$ &
0 & $d$ & $
\frac{1}{2}\,d$ & $
60^
\circ$ & $
60^
\circ$ & $
90^
\circ$ \\
185 (xy-square) & & $
0.707\,d^
3$ &
0 &
0 & $
\frac{1}{2}\sqrt{2}\,d$ & & & \\
187 rhombic & & & $d$ & $
\frac{1}{2}\,d$ & $
\frac{1}{2}\,d$ & & & \\
188 dodecahedron & $d$ & $
\frac{1}{2}\sqrt{2}\,d^
3$ &
0 & $
\frac{1}{2}\sqrt{3}\,d$ & $
\frac{1}{6}\sqrt{3}\,d$ & $
60^
\circ$ & $
60^
\circ$ & $
60^
\circ$ \\
189 (xy-hexagon) & & $
0.707\,d^
3$ &
0 &
0 & $
\frac{1}{3}\sqrt{6}\,d$ & & & \\
191 truncated & & & $d$ & $
\frac{1}{3}\,d$ & $-
\frac{1}{3}\,d$ & & &\\
192 octahedron & $d$ & $
\frac{4}{9}\sqrt{3}\,d^
3$ &
0 & $
\frac{2}{3}\sqrt{2}\,d$ & $
\frac{1}{3}\sqrt{2}\,d$ & $
71.53^
\circ$ & $
109.47^
\circ$ & $
71.53^
\circ$ \\
193 & & $
0.770\,d^
3$ &
0 &
0 & $
\frac{1}{3}\sqrt{6}\,d$ & & & \\
197 \caption{The cubic box, the rhombic
\normindex{dodecahedron
} and the truncated
198 \normindex{octahedron
}.
}
201 The three most useful box types for simulations of solvated systems
202 are described in
\tabref{boxtypes
}. The rhombic dodecahedron
203 (
\figref{boxshapes
}) is the smallest and most regular space-filling
204 unit cell. Each of the
12 image cells is at the same distance. The
205 volume is
71\% of the volume of a cube having the same image
206 distance. This saves about
29\% of CPU-time when simulating a
207 spherical or flexible molecule in solvent. There are two different
208 orientations of a rhombic dodecahedron that satisfy equations
209 \ref{eqn:box_rot
},
\ref{eqn:box_shift1
} and
\ref{eqn:box_shift2
}.
210 The program
{\tt editconf
} produces the orientation
211 which has a square intersection with the xy-plane. This orientation
212 was chosen because the first two box vectors coincide with the x and
213 y-axis, which is easier to comprehend. The other orientation can be
214 useful for simulations of membrane proteins. In this case the
215 cross-section with the xy-plane is a hexagon, which has an area which
216 is
14\% smaller than the area of a square with the same image
217 distance. The height of the box ($c_z$) should be changed to obtain
218 an optimal spacing. This box shape not only saves CPU time, it
219 also results in a more uniform arrangement of the proteins.
221 \subsection{Cut-off restrictions
}
222 The
\normindex{minimum image convention
} implies that the cut-off radius used to
223 truncate non-bonded interactions may not exceed half the shortest box
226 \label{eqn:physicalrc
}
227 R_c <
\half \min(\|
{\bf a
}\|,\|
{\bf b
}\|,\|
{\bf c
}\|),
229 because otherwise more than one image would be within the cut-off distance
230 of the force. When a macromolecule, such as a protein, is studied in
231 solution, this restriction alone is not sufficient: in principle, a single
232 solvent molecule should not be able
233 to `see' both sides of the macromolecule. This means that the length of
234 each box vector must exceed the length of the macromolecule in the
235 direction of that edge
{\em plus
} two times the cut-off radius $R_c$.
236 It is, however, common to compromise in this respect, and make the solvent
237 layer somewhat smaller in order to reduce the computational cost.
238 For efficiency reasons the cut-off with triclinic boxes is more restricted.
239 For grid search the extra restriction is weak:
242 R_c <
\min(a_x,b_y,c_z)
244 For simple search the extra restriction is stronger:
247 R_c <
\half \min(a_x,b_y,c_z)
250 Each unit cell (cubic, rectangular or triclinic)
251 is surrounded by
26 translated images. A
252 particular image can therefore always be identified by an index pointing to one
253 of
27 {\em translation vectors
} and constructed by applying a
254 translation with the indexed vector (see
\ssecref{forces
}).
255 Restriction (
\ref{eqn:gridrc
}) ensures that only
26 images need to be
258 %\ifthenelse{\equal{\gmxlite}{1}}{}{
259 \section{The group concept
}
260 \label{sec:groupconcept
}\index{group
}
261 The
{\gromacs} MD and analysis programs use user-defined
{\em groups
} of
262 atoms to perform certain actions on. The maximum number of groups is
263 256, but each atom can only belong to six different groups, one
264 each of the following:
266 \item[\swapindex{temperature-coupling
}{group
}]
267 The
\normindex{temperature coupling
} parameters (reference
268 temperature, time constant, number of degrees of freedom, see
269 \ssecref{update
}) can be defined for each T-coupling group
270 separately. For example, in a solvated macromolecule the solvent (that
271 tends to generate more heating by force and integration errors) can be
272 coupled with a shorter time constant to a bath than is a macromolecule,
273 or a surface can be kept cooler than an adsorbing molecule. Many
274 different T-coupling groups may be defined. See also center of mass
277 \item[\swapindex{freeze
}{group
}\index{frozen atoms
}]
278 Atoms that belong to a freeze group are kept stationary in the
279 dynamics. This is useful during equilibration,
{\eg} to avoid badly
280 placed solvent molecules giving unreasonable kicks to protein atoms,
281 although the same effect can also be obtained by putting a restraining
282 potential on the atoms that must be protected. The freeze option can
283 be used, if desired, on just one or two coordinates of an atom,
284 thereby freezing the atoms in a plane or on a line. When an atom is
285 partially frozen, constraints will still be able to move it, even in a
286 frozen direction. A fully frozen atom can not be moved by constraints.
287 Many freeze groups can be defined. Frozen coordinates are unaffected
288 by pressure scaling; in some cases this can produce unwanted results,
289 particularly when constraints are also used (in this case you will
290 get very large pressures). Accordingly, it is recommended to avoid
291 combining freeze groups with constraints and pressure coupling. For the
292 sake of equilibration it could suffice to start with freezing in a
293 constant volume simulation, and afterward use position restraints in
294 conjunction with constant pressure.
296 \item[\swapindex{accelerate
}{group
}]
297 On each atom in an ``accelerate group'' an acceleration
298 $
\ve{a
}^g$ is imposed. This is equivalent to an external
299 force. This feature makes it possible to drive the system into a
300 non-equilibrium state and enables the performance of
301 \swapindex{non-equilibrium
}{MD
} and hence to obtain transport properties.
303 \item[\swapindex{energy-monitor
}{group
}]
304 Mutual interactions between all energy-monitor groups are compiled
305 during the simulation. This is done separately for Lennard-Jones and
306 Coulomb terms. In principle up to
256 groups could be defined, but
307 that would lead to
256$
\times$
256 items! Better use this concept
310 All non-bonded interactions between pairs of energy-monitor groups can
311 be excluded
\index{exclusions
}
312 \ifthenelse{\equal{\gmxlite}{1}}
314 {(see details in the User Guide).
}
315 Pairs of particles from excluded pairs of energy-monitor groups
316 are not put into the pair list.
317 This can result in a significant speedup
318 for simulations where interactions within or between parts of the system
321 \item[\swapindex{center of mass
}{group
}\index{removing COM motion
}]
322 In
\gromacs\ the center of mass (COM) motion can be removed, for
323 either the complete system or for groups of atoms. The latter is
324 useful,
{\eg} for systems where there is limited friction (
{\eg} gas
325 systems) to prevent center of mass motion to occur. It makes sense to
326 use the same groups for temperature coupling and center of mass motion
329 \item[\swapindex{Compressed position output
}{group
}]
331 In order to further reduce the size of the compressed trajectory file
332 (
{\tt .xtc
{\index{XTC
}}} or
{\tt .tng
{\index{TNG
}}}), it is possible
333 to store only a subset of all particles. All x-compression groups that
334 are specified are saved, the rest are not. If no such groups are
335 specified, than all atoms are saved to the compressed trajectory file.
338 The use of groups in
{\gromacs} tools is described in
339 \secref{usinggroups
}.
340 %} % Brace matches ifthenelse test for gmxlite
342 \section{Molecular Dynamics
}
346 \addtolength{\fboxsep}{0.5cm
}
347 \begin{shadowenv
}[12cm
]
348 {\large \bf THE GLOBAL MD ALGORITHM
}
349 \rule{\textwidth}{2pt
} \\
350 {\bf 1. Input initial conditions
}\\
[2ex
]
351 Potential interaction $V$ as a function of atom positions\\
352 Positions $
\ve{r
}$ of all atoms in the system\\
353 Velocities $
\ve{v
}$ of all atoms in the system \\
355 \rule{\textwidth}{1pt
}\\
356 {\bf repeat
2,
3,
4} for the required number of steps:\\
357 \rule{\textwidth}{1pt
}\\
358 {\bf 2. Compute forces
} \\
[1ex
]
359 The force on any atom \\
[1ex
]
360 $
\ve{F
}_i = -
\displaystyle\frac{\partial V
}{\partial \ve{r
}_i
}$ \\
[1ex
]
361 is computed by calculating the force between non-bonded atom pairs: \\
362 $
\ve{F
}_i =
\sum_j \ve{F
}_
{ij
}$ \\
363 plus the forces due to bonded interactions (which may depend on
1,
2,
364 3, or
4 atoms), plus restraining and/or external forces. \\
365 The potential and kinetic energies and the pressure tensor may be computed. \\
367 {\bf 3. Update configuration
} \\
[1ex
]
368 The movement of the atoms is simulated by numerically solving Newton's
369 equations of motion \\
[1ex
]
371 \frac {\de^
2\ve{r
}_i
}{\de t^
2} =
\frac{\ve{F
}_i
}{m_i
} $ \\
374 \frac{\de\ve{r
}_i
}{\de t
} =
\ve{v
}_i ; \;\;
375 \frac{\de\ve{v
}_i
}{\de t
} =
\frac{\ve{F
}_i
}{m_i
} $ \\
[1ex
]
377 {\bf 4.
} if required:
{\bf Output step
} \\
378 write positions, velocities, energies, temperature, pressure, etc. \\
380 \caption{The global MD algorithm
}
384 A global flow scheme for MD is given in
\figref{global
}. Each
385 MD or EM run requires as input a set of initial coordinates and --
386 optionally -- initial velocities of all particles involved. This
387 chapter does not describe how these are obtained; for the setup of an
388 actual MD run check the online manual at
{\wwwpage}.
390 \subsection{Initial conditions
}
391 \subsubsection{Topology and force field
}
392 The system topology, including a description of the force field, must
394 \ifthenelse{\equal{\gmxlite}{1}}
396 {Force fields and topologies are described in
\chref{ff
}
397 and
\ref{ch:top
}, respectively.
}
398 All this information is static; it is never modified during the run.
400 \subsubsection{Coordinates and velocities
}
402 \centerline{\includegraphics[width=
8cm
]{plots/maxwell
}}
403 \caption{A Maxwell-Boltzmann velocity distribution, generated from
408 Then, before a run starts, the box size and the coordinates and
409 velocities of all particles are required. The box size and shape is
410 determined by three vectors (nine numbers) $
\ve{b
}_1,
\ve{b
}_2,
\ve{b
}_3$,
411 which represent the three basis vectors of the periodic box.
413 If the run starts at $t=t_0$, the coordinates at $t=t_0$ must be
414 known. The
{\em leap-frog algorithm
}, the default algorithm used to
415 update the time step with $
\Dt$ (see
\ssecref{update
}), also requires
416 that the velocities at $t=t_0 -
\hDt$ are known. If velocities are not
417 available, the program can generate initial atomic velocities
418 $v_i, i=
1\ldots 3N$ with a
\index{Maxwell-Boltzmann distribution
}
419 (
\figref{maxwell
}) at a given absolute temperature $T$:
421 p(v_i) =
\sqrt{\frac{m_i
}{2 \pi kT
}}\exp\left(-
\frac{m_i v_i^
2}{2kT
}\right)
423 where $k$ is Boltzmann's constant (see
\chref{defunits
}).
424 To accomplish this, normally distributed random numbers are generated
425 by adding twelve random numbers $R_k$ in the range $
0 \le R_k <
1$ and
426 subtracting
6.0 from their sum. The result is then multiplied by the
427 standard deviation of the velocity distribution $
\sqrt{kT/m_i
}$. Since
428 the resulting total energy will not correspond exactly to the required
429 temperature $T$, a correction is made: first the center-of-mass motion
430 is removed and then all velocities are scaled so that the total
431 energy corresponds exactly to $T$ (see
\eqnref{E-T
}).
432 % Why so complicated? What's wrong with Box-Mueller transforms?
434 \subsubsection{Center-of-mass motion
\index{removing COM motion
}}
435 The
\swapindex{center-of-mass
}{velocity
} is normally set to zero at
436 every step; there is (usually) no net external force acting on the
437 system and the center-of-mass velocity should remain constant. In
438 practice, however, the update algorithm introduces a very slow change in
439 the center-of-mass velocity, and therefore in the total kinetic energy of
440 the system -- especially when temperature coupling is used. If such
441 changes are not quenched, an appreciable center-of-mass motion
442 can develop in long runs, and the temperature will be
443 significantly misinterpreted. Something similar may happen due to overall
444 rotational motion, but only when an isolated cluster is simulated. In
445 periodic systems with filled boxes, the overall rotational motion is
446 coupled to other degrees of freedom and does not cause such problems.
449 \subsection{Neighbor searching
\swapindexquiet{neighbor
}{searching
}}
451 As mentioned in
\chref{ff
}, internal forces are
452 either generated from fixed (static) lists, or from dynamic lists.
453 The latter consist of non-bonded interactions between any pair of particles.
454 When calculating the non-bonded forces, it is convenient to have all
455 particles in a rectangular box.
456 As shown in
\figref{pbc
}, it is possible to transform a
457 triclinic box into a rectangular box.
458 The output coordinates are always in a rectangular box, even when a
459 dodecahedron or triclinic box was used for the simulation.
460 Equation
\ref{eqn:box_rot
} ensures that we can reset particles
461 in a rectangular box by first shifting them with
462 box vector $
{\bf c
}$, then with $
{\bf b
}$ and finally with $
{\bf a
}$.
463 Equations
\ref{eqn:box_shift2
},
\ref{eqn:physicalrc
} and
\ref{eqn:gridrc
}
464 ensure that we can find the
14 nearest triclinic images within
465 a linear combination that does not involve multiples of box vectors.
467 \subsubsection{Pair lists generation
}
468 The non-bonded pair forces need to be calculated only for those pairs
469 $i,j$ for which the distance $r_
{ij
}$ between $i$ and the
470 \swapindex{nearest
}{image
}
471 of $j$ is less than a given cut-off radius $R_c$. Some of the particle
472 pairs that fulfill this criterion are excluded, when their interaction
473 is already fully accounted for by bonded interactions.
{\gromacs}
474 employs a
{\em pair list
} that contains those particle pairs for which
475 non-bonded forces must be calculated. The pair list contains particles
476 $i$, a displacement vector for particle $i$, and all particles $j$ that
477 are within
\verb'rlist' of this particular image of particle $i$. The
478 list is updated every
\verb'nstlist' steps.
480 To make the
\normindex{neighbor list
}, all particles that are close
481 (
{\ie} within the neighbor list cut-off) to a given particle must be found.
482 This searching, usually called neighbor search (NS) or pair search,
483 involves periodic boundary conditions and determining the
{\em image
}
484 (see
\secref{pbc
}). The search algorithm is $O(N)$, although a simpler
485 $O(N^
2)$ algorithm is still available under some conditions.
487 \subsubsection{\normindex{Cut-off schemes
}: group versus Verlet
}
488 From version
4.6,
{\gromacs} supports two different cut-off scheme
489 setups: the original one based on particle groups and one using a Verlet
490 buffer. There are some important differences that affect results,
491 performance and feature support. The group scheme can be made to work
492 (almost) like the Verlet scheme, but this will lead to a decrease in
493 performance. The group scheme is especially fast for water molecules,
494 which are abundant in many simulations, but on the most recent x86
495 processors, this advantage is negated by the better instruction-level
496 parallelism available in the Verlet-scheme implementation. The group
497 scheme is deprecated in version
5.0, and will be removed in a future
498 version. For practical details of choosing and setting up
499 cut-off schemes, please see the User Guide.
501 In the group scheme, a neighbor list is generated consisting of pairs
502 of groups of at least one particle. These groups were originally
503 \swapindex{charge
}{group
}s
\ifthenelse{\equal{\gmxlite}{1}}{}{(see
504 \secref{chargegroup
})
}, but with a proper treatment of long-range
505 electrostatics, performance in unbuffered simulations is their only advantage. A pair of groups
506 is put into the neighbor list when their center of geometry is within
507 the cut-off distance. Interactions between all particle pairs (one from
508 each charge group) are calculated for a certain number of MD steps,
509 until the neighbor list is updated. This setup is efficient, as the
510 neighbor search only checks distance between charge-group pair, not
511 particle pairs (saves a factor of $
3 \times 3 =
9$ with a three-particle water
512 model) and the non-bonded force kernels can be optimized for, say, a
513 water molecule ``group''. Without explicit buffering, this setup leads
514 to energy drift as some particle pairs which are within the cut-off don't
515 interact and some outside the cut-off do interact. This can be caused
518 \item particles moving across the cut-off between neighbor search steps, and/or
519 \item for charge groups consisting of more than one particle, particle pairs
520 moving in/out of the cut-off when their charge group center of
521 geometry distance is outside/inside of the cut-off.
523 Explicitly adding a buffer to the neighbor list will remove such
524 artifacts, but this comes at a high computational cost. How severe the
525 artifacts are depends on the system, the properties in which you are
526 interested, and the cut-off setup.
528 The Verlet cut-off scheme uses a buffered pair list by default. It
529 also uses clusters of particles, but these are not static as in the group
530 scheme. Rather, the clusters are defined spatially and consist of
4 or
531 8 particles, which is convenient for stream computing, using e.g. SSE, AVX
532 or CUDA on GPUs. At neighbor search steps, a pair list is created
533 with a Verlet buffer, ie. the pair-list cut-off is larger than the
534 interaction cut-off. In the non-bonded kernels, interactions are only
535 computed when a particle pair is within the cut-off distance at that
536 particular time step. This ensures that as particles move between pair
537 search steps, forces between nearly all particles within the cut-off
538 distance are calculated. We say
{\em nearly
} all particles, because
539 {\gromacs} uses a fixed pair list update frequency for
540 efficiency. A particle-pair, whose distance was outside the cut-off,
541 could possibly move enough during this fixed number of
542 steps that its distance is now within the cut-off. This
543 small chance results in a small energy drift, and the size of the
544 chance depends on the temperature. When temperature
545 coupling is used, the buffer size can be determined automatically,
546 given a certain tolerance on the energy drift.
548 The Verlet cut-off scheme is implemented in a very efficient fashion
549 based on clusters of particles. The simplest example is a cluster size
550 of
4 particles. The pair list is then constructed based on cluster
551 pairs. The cluster-pair search is much faster searching based on
552 particle pairs, because $
4 \times 4 =
16$ particle pairs are put in
553 the list at once. The non-bonded force calculation kernel can then
554 calculate many particle-pair interactions at once, which maps nicely
555 to SIMD or SIMT units on modern hardware, which can perform multiple
556 floating operations at once. These non-bonded kernels
557 are much faster than the kernels used in the group scheme for most
558 types of systems, particularly on newer hardware.
560 \ifthenelse{\equal{\gmxlite}{1}}{}{
561 \subsubsection{Energy drift and pair-list buffering
}
562 For a canonical (NVT) ensemble, the average energy error caused by the
563 finite Verlet buffer size can be determined from the atomic
564 displacements and the shape of the potential at the cut-off.
565 %Since we are interested in the small drift regime, we will assume
566 %#that atoms will only move within the cut-off distance in the last step,
567 %$n_\mathrm{ps}-1$, of the pair list update interval $n_\mathrm{ps}$.
568 %Over this number of steps the displacment of an atom with mass $m$
569 The displacement distribution along one dimension for a freely moving
570 particle with mass $m$ over time $t$ at temperature $T$ is Gaussian
571 with zero mean and variance $
\sigma^
2 = t\,k_B T/m$. For the distance
572 between two particles, the variance changes to $
\sigma^
2 =
\sigma_{12}^
2 =
573 t\,k_B T(
1/m_1+
1/m_2)$. Note that in practice particles usually
574 interact with other particles over time $t$ and therefore the real
575 displacement distribution is much narrower. Given a non-bonded
576 interaction cut-off distance of $r_c$ and a pair-list cut-off
577 $r_
\ell=r_c+r_b$, we can then write the average energy error after
578 time $t$ for pair interactions between one particle of type
1
579 surrounded by particles of type
2 with number density $
\rho_2$, when
580 the inter particle distance changes from $r_0$ to $r_t$, as:
583 \langle \Delta V
\rangle \! &=&
584 \int_{0}^
{r_c
} \int_{r_
\ell}^
\infty 4 \pi r_0^
2 \rho_2 V(r_t) G\!
\left(
\frac{r_t-r_0
}{\sigma}\right) d r_0\, d r_t \\
586 \int_{-
\infty}^
{r_c
} \int_{r_
\ell}^
\infty 4 \pi r_0^
2 \rho_2 \Big[ V'(r_c) (r_t - r_c) +
589 \phantom{\int_{-
\infty}^
{r_c
} \int_{r_
\ell}^
\infty 4 \pi r_0^
2 \rho_2 \Big[}
590 V''(r_c)
\frac{1}{2}(r_t - r_c)^
2 \Big] G\!
\left(
\frac{r_t-r_0
}{\sigma}\right) d r_0 \, d r_t\\
592 4 \pi (r_
\ell+
\sigma)^
2 \rho_2
593 \int_{-
\infty}^
{r_c
} \int_{r_
\ell}^
\infty \Big[ V'(r_c) (r_t - r_c) +
596 \phantom{4 \pi (r_
\ell+
\sigma)^
2 \rho_2 \int_{-
\infty}^
{r_c
} \int_{r_
\ell}^
\infty \Big[}
597 V''(r_c)
\frac{1}{2}(r_t - r_c)^
2 +
600 \phantom{4 \pi (r_
\ell+
\sigma)^
2 \rho_2 \int_{-
\infty}^
{r_c
} \int_{r_
\ell}^
\infty \Big[}
601 V'''(r_c)
\frac{1}{6}(r_t - r_c)^
3 \Big] G\!
\left(
\frac{r_t-r_0
}{\sigma}\right)
604 4 \pi (r_
\ell+
\sigma)^
2 \rho_2 \bigg\
{
605 \frac{1}{2}V'(r_c)
\left[r_b
\sigma G\!
\left(
\frac{r_b
}{\sigma}\right) - (r_b^
2+
\sigma^
2)E\!
\left(
\frac{r_b
}{\sigma}\right)
\right] +
608 \phantom{4 \pi (r_
\ell+
\sigma)^
2 \rho_2 \bigg\
{ }
609 \frac{1}{6}V''(r_c)
\left[ \sigma(r_b^
2+
2\sigma^
2)G\!
\left(
\frac{r_b
}{\sigma}\right) - r_b(r_b^
2+
3\sigma^
2 ) E\!
\left(
\frac{r_b
}{\sigma}\right)
\right] +
612 \phantom{4 \pi (r_
\ell+
\sigma)^
2 \rho_2 \bigg\
{ }
613 \frac{1}{24}V'''(r_c)
\left[ r_b
\sigma(r_b^
2+
5\sigma^
2)G\!
\left(
\frac{r_b
}{\sigma}\right) - (r_b^
4+
6r_b^
2\sigma^
2+
3\sigma^
4 ) E\!
\left(
\frac{r_b
}{\sigma}\right)
\right]
617 where $G$ is a Gaussian distribution with
0 mean and unit variance and
618 $E(x)=
\frac{1}{2}\mathrm{erfc
}(x/
\sqrt{2})$. We always want to achieve
619 small energy error, so $
\sigma$ will be small compared to both $r_c$
620 and $r_
\ell$, thus the approximations in the equations above are good,
621 since the Gaussian distribution decays rapidly. The energy error needs
622 to be averaged over all particle pair types and weighted with the
623 particle counts. In
{\gromacs} we don't allow cancellation of error
624 between pair types, so we average the absolute values. To obtain the
625 average energy error per unit time, it needs to be divided by the
626 neighbor-list life time $t = (
{\tt nstlist
} -
1)
\times{\tt dt
}$. This
627 function can not be inverted analytically, so we use bisection to
628 obtain the buffer size $r_b$ for a target drift. Again we note that
629 in practice the error we usually be much smaller than this estimate,
630 as in the condensed phase particle displacements will be much smaller
631 than for freely moving particles, which is the assumption used here.
633 When (bond) constraints are present, some particles will have fewer
634 degrees of freedom. This will reduce the energy errors. The
635 displacement in an arbitrary direction of a particle with
2 degrees of
636 freedom is not Gaussian, but rather follows the complementary error
638 \frac{\sqrt{\pi}}{2\sqrt{2}\sigma}\,
\mathrm{erfc
}\left(
\frac{|r|
}{\sqrt{2}\,
\sigma}\right)
639 \eeq where $
\sigma^
2$ is again $k_B T/m$. This distribution can no
640 longer be integrated analytically to obtain the energy error. But we
641 can generate a tight upper bound using a scaled and shifted Gaussian
642 distribution (not shown). This Gaussian distribution can then be used
643 to calculate the energy error as described above. We consider
644 particles constrained, i.e. having
2 degrees of freedom or fewer, when
645 they are connected by constraints to particles with a total mass of at
646 least
1.5 times the mass of the particles itself. For a particle with
647 a single constraint this would give a total mass along the constraint
648 direction of at least
2.5, which leads to a reduction in the variance
649 of the displacement along that direction by at least a factor of
6.25.
650 As the Gaussian distribution decays very rapidly, this effectively
651 removes one degree of freedom from the displacement. Multiple
652 constraints would reduce the displacement even more, but as this gets
653 very complex, we consider those as particles with
2 degrees of
656 There is one important implementation detail that reduces the energy
657 errors caused by the finite Verlet buffer list size. The derivation
658 above assumes a particle pair-list. However, the
{\gromacs}
659 implementation uses a cluster pair-list for efficiency. The pair list
660 consists of pairs of clusters of
4 particles in most cases, also
661 called a $
4 \times 4$ list, but the list can also be $
4 \times 8$ (GPU
662 CUDA kernels and AVX
256-bit single precision kernels) or $
4 \times 2$
663 (SSE double-precision kernels). This means that the pair-list is
664 effectively much larger than the corresponding $
1 \times 1$ list. Thus
665 slightly beyond the pair-list cut-off there will still be a large
666 fraction of particle pairs present in the list. This fraction can be
667 determined in a simulation and accurately estimated under some
668 reasonable assumptions. The fraction decreases with increasing
669 pair-list range, meaning that a smaller buffer can be used. For
670 typical all-atom simulations with a cut-off of
0.9 nm this fraction is
671 around
0.9, which gives a reduction in the energy errors of a factor of
672 10. This reduction is taken into account during the automatic Verlet
673 buffer calculation and results in a smaller buffer size.
676 \centerline{\includegraphics[width=
9cm
]{plots/verlet-drift
}}
677 \caption {Energy drift per atom for an SPC/E water system at
300K with
678 a time step of
2 fs and a pair-list update period of
10 steps
679 (pair-list life time:
18 fs). PME was used with
{\tt ewald-rtol
} set
680 to
10$^
{-
5}$; this parameter affects the shape of the potential at
681 the cut-off. Error estimates due to finite Verlet buffer size are
682 shown for a $
1 \times 1$ atom pair list and $
4 \times 4$ atom pair
683 list without and with (dashed line) cancellation of positive and
684 negative errors. Real energy drift is shown for simulations using
685 double- and mixed-precision settings. Rounding errors in the SETTLE
686 constraint algorithm from the use of single precision causes
687 the drift to become negative
688 at large buffer size. Note that at zero buffer size, the real drift
689 is small because positive (H-H) and negative (O-H) energy errors
691 \label{fig:verletdrift
}
694 In
\figref{verletdrift
} one can see that for small buffer sizes the drift
695 of the total energy is much smaller than the pair energy error tolerance,
696 due to cancellation of errors. For larger buffer size, the error estimate
697 is a factor of
6 higher than drift of the total energy, or alternatively
698 the buffer estimate is
0.024 nm too large. This is because the protons
699 don't move freely over
18 fs, but rather vibrate.
700 %At a buffer size of zero there is cancellation of
701 %drift due to repulsive (H-H) and attractive (O-H) interactions.
703 \subsubsection{Cut-off artifacts and switched interactions
}
704 With the Verlet scheme, the pair potentials are shifted to be zero at
705 the cut-off, which makes the potential the integral of the force.
706 This is only possible in the group scheme if the shape of the potential
707 is such that its value is zero at the cut-off distance.
708 However, there can still be energy drift when the
709 forces are non-zero at the cut-off. This effect is extremely small and
710 often not noticeable, as other integration errors (e.g. from constraints)
712 completely avoid cut-off artifacts, the non-bonded forces can be
713 switched exactly to zero at some distance smaller than the neighbor
714 list cut-off (there are several ways to do this in
{\gromacs}, see
715 \secref{mod_nb_int
}). One then has a buffer with the size equal to the
716 neighbor list cut-off less the longest interaction cut-off.
718 } % Brace matches ifthenelse test for gmxlite
720 \subsubsection{Simple search
\swapindexquiet{simple
}{search
}}
721 Due to
\eqnsref{box_rot
}{simplerc
}, the vector $
\rvij$
722 connecting images within the cut-off $R_c$ can be found by constructing:
724 \ve{r
}''' & = &
\ve{r
}_j-
\ve{r
}_i \\
725 \ve{r
}'' & = &
\ve{r
}''' -
{\bf c
}*
\verb'round'(r'''_z/c_z) \\
726 \ve{r
}' & = &
\ve{r
}'' -
{\bf b
}*
\verb'round'(r''_y/b_y) \\
727 \ve{r
}_
{ij
} & = &
\ve{r
}' -
{\bf a
}*
\verb'round'(r'_x/a_x)
729 When distances between two particles in a triclinic box are needed
730 that do not obey
\eqnref{box_rot
},
731 many shifts of combinations of box vectors need to be considered to find
734 \ifthenelse{\equal{\gmxlite}{1}}{}{
737 \centerline{\includegraphics[width=
8cm
]{plots/nstric
}}
738 \caption {Grid search in two dimensions. The arrows are the box vectors.
}
742 \subsubsection{Grid search
\swapindexquiet{grid
}{search
}}
744 The grid search is schematically depicted in
\figref{grid
}. All
745 particles are put on the
{\nsgrid}, with the smallest spacing $
\ge$
746 $R_c/
2$ in each of the directions. In the direction of each box
747 vector, a particle $i$ has three images. For each direction the image
748 may be -
1,
0 or
1, corresponding to a translation over -
1,
0 or +
1 box
749 vector. We do not search the surrounding
{\nsgrid} cells for neighbors
750 of $i$ and then calculate the image, but rather construct the images
751 first and then search neighbors corresponding to that image of $i$.
752 As
\figref{grid
} shows, some grid cells may be searched more than once
753 for different images of $i$. This is not a problem, since, due to the
754 minimum image convention, at most one image will ``see'' the
755 $j$-particle. For every particle, fewer than
125 (
5$^
3$) neighboring
756 cells are searched. Therefore, the algorithm scales linearly with the
757 number of particles. Although the prefactor is large, the scaling
758 behavior makes the algorithm far superior over the standard $O(N^
2)$
759 algorithm when there are more than a few hundred particles. The
760 grid search is equally fast for rectangular and triclinic boxes. Thus
761 for most protein and peptide simulations the rhombic dodecahedron will
762 be the preferred box shape.
763 } % Brace matches ifthenelse test for gmxlite
765 \ifthenelse{\equal{\gmxlite}{1}}{}{
766 \subsubsection{Charge groups
}
767 \label{sec:chargegroup
}\swapindexquiet{charge
}{group
}%
768 Charge groups were originally introduced to reduce cut-off artifacts
769 of Coulomb interactions. When a plain cut-off is used, significant
770 jumps in the potential and forces arise when atoms with (partial) charges
771 move in and out of the cut-off radius. When all chemical moieties have
772 a net charge of zero, these jumps can be reduced by moving groups
773 of atoms with net charge zero, called charge groups, in and
774 out of the neighbor list. This reduces the cut-off effects from
775 the charge-charge level to the dipole-dipole level, which decay
776 much faster. With the advent of full range electrostatics methods,
777 such as particle-mesh Ewald (
\secref{pme
}), the use of charge groups is
778 no longer required for accuracy. It might even have a slight negative effect
779 on the accuracy or efficiency, depending on how the neighbor list is made
780 and the interactions are calculated.
782 But there is still an important reason for using ``charge groups'': efficiency with the group cut-off scheme.
783 Where applicable, neighbor searching is carried out on the basis of
784 charge groups which are defined in the molecular topology.
785 If the nearest image distance between the
{\em
786 geometrical centers
} of the atoms of two charge groups is less than
787 the cut-off radius, all atom pairs between the charge groups are
788 included in the pair list.
789 The neighbor searching for a water system, for instance,
790 is $
3^
2=
9$ times faster when each molecule is treated as a charge group.
791 Also the highly optimized water force loops (see
\secref{waterloops
})
792 only work when all atoms in a water molecule form a single charge group.
793 Currently the name
{\em neighbor-search group
} would be more appropriate,
794 but the name charge group is retained for historical reasons.
795 When developing a new force field, the advice is to use charge groups
796 of
3 to
4 atoms for optimal performance. For all-atom force fields
797 this is relatively easy, as one can simply put hydrogen atoms, and in some
798 case oxygen atoms, in the same charge group as the heavy atom they
799 are connected to; for example: CH$_3$, CH$_2$, CH, NH$_2$, NH, OH, CO$_2$, CO.
801 With the Verlet cut-off scheme, charge groups are ignored.
803 } % Brace matches ifthenelse test for gmxlite
805 \subsection{Compute forces
}
806 \label{subsec:forces
}
808 \subsubsection{Potential energy
}
809 When forces are computed, the
\swapindex{potential
}{energy
} of each
810 interaction term is computed as well. The total potential energy is
811 summed for various contributions, such as Lennard-Jones, Coulomb, and
812 bonded terms. It is also possible to compute these contributions for
813 {\em energy-monitor groups
} of atoms that are separately defined (see
814 \secref{groupconcept
}).
816 \subsubsection{Kinetic energy and temperature
}
817 The
\normindex{temperature
} is given by the total
818 \swapindex{kinetic
}{energy
} of the $N$-particle system:
820 E_
{kin
} =
\half \sum_{i=
1}^N m_i v_i^
2
822 From this the absolute temperature $T$ can be computed using:
824 \half N_
{\mathrm{df
}} kT = E_
{\mathrm{kin
}}
827 where $k$ is Boltzmann's constant and $N_
{df
}$ is the number of
828 degrees of freedom which can be computed from:
830 N_
{\mathrm{df
}} ~=~
3 N - N_c - N_
{\mathrm{com
}}
832 Here $N_c$ is the number of
{\em \normindex{constraints
}} imposed on the system.
833 When performing molecular dynamics $N_
{\mathrm{com
}}=
3$ additional degrees of
834 freedom must be removed, because the three
835 center-of-mass velocities are constants of the motion, which are usually
836 set to zero. When simulating in vacuo, the rotation around the center of mass
837 can also be removed, in this case $N_
{\mathrm{com
}}=
6$.
838 When more than one temperature-coupling group
\index{temperature-coupling group
} is used, the number of degrees
839 of freedom for group $i$ is:
841 N^i_
{\mathrm{df
}} ~=~ (
3 N^i - N^i_c)
\frac{3 N - N_c - N_
{\mathrm{com
}}}{3 N - N_c
}
844 The kinetic energy can also be written as a tensor, which is necessary
845 for pressure calculation in a triclinic system, or systems where shear
848 {\bf E
}_
{\mathrm{kin
}} =
\half \sum_i^N m_i
\vvi \otimes \vvi
851 \subsubsection{Pressure and virial
}
852 The
\normindex{pressure
}
853 tensor
{\bf P
} is calculated from the difference between
854 kinetic energy $E_
{\mathrm{kin
}}$ and the
\normindex{virial
} $
{\bf \Xi}$:
856 {\bf P
} =
\frac{2}{V
} (
{\bf E
}_
{\mathrm{kin
}}-
{\bf \Xi})
859 where $V$ is the volume of the computational box.
860 The scalar pressure $P$, which can be used for pressure coupling in the case
861 of isotropic systems, is computed as:
863 P =
{\rm trace
}(
{\bf P
})/
3
866 The virial $
{\bf \Xi}$ tensor is defined as:
868 {\bf \Xi} = -
\half \sum_{i<j
} \rvij \otimes \Fvij
872 \ifthenelse{\equal{\gmxlite}{1}}{}{
873 The
{\gromacs} implementation of the virial computation is described
875 } % Brace matches ifthenelse test for gmxlite
878 \subsection{The
\swapindex{leap-frog
}{integrator
}}
879 \label{subsec:update
}
881 \centerline{\includegraphics[width=
8cm
]{plots/leapfrog
}}
882 \caption[The Leap-Frog integration method.
]{The Leap-Frog integration method. The algorithm is called Leap-Frog because $
\ve{r
}$ and $
\ve{v
}$ are leaping
883 like frogs over each other's backs.
}
887 The default MD integrator in
{\gromacs} is the so-called
{\em leap-frog
}
888 algorithm~
\cite{Hockney74
} for the integration of the equations of
889 motion. When extremely accurate integration with temperature
890 and/or pressure coupling is required, the velocity Verlet integrators
891 are also present and may be preferable (see
\ssecref{vverlet
}). The leap-frog
892 algorithm uses positions $
\ve{r
}$ at time $t$ and
893 velocities $
\ve{v
}$ at time $t-
\hDt$; it updates positions and
894 velocities using the forces
895 $
\ve{F
}(t)$ determined by the positions at time $t$ using these relations:
897 \label{eqn:leapfrogv
}
898 \ve{v
}(t+
\hDt) &~=~&
\ve{v
}(t-
\hDt)+
\frac{\Dt}{m
}\ve{F
}(t) \\
899 \ve{r
}(t+
\Dt) &~=~&
\ve{r
}(t)+
\Dt\ve{v
}(t+
\hDt)
901 The algorithm is visualized in
\figref{leapfrog
}.
902 It produces trajectories that are identical to the Verlet~
\cite{Verlet67
} algorithm,
903 whose position-update relation is
905 \ve{r
}(t+
\Dt)~=~
2\ve{r
}(t) -
\ve{r
}(t-
\Dt) +
\frac{1}{m
}\ve{F
}(t)
\Dt^
2+O(
\Dt^
4)
907 The algorithm is of third order in $
\ve{r
}$ and is time-reversible.
908 See ref.~
\cite{Berendsen86b
} for the merits of this algorithm and comparison
909 with other time integration algorithms.
911 The
\swapindex{equations of
}{motion
} are modified for temperature
912 coupling and pressure coupling, and extended to include the
913 conservation of constraints, all of which are described below.
915 \subsection{The
\swapindex{velocity Verlet
}{integrator
}}
916 \label{subsec:vverlet
}
917 The velocity Verlet algorithm~
\cite{Swope82
} is also implemented in
918 {\gromacs}, though it is not yet fully integrated with all sets of
919 options. In velocity Verlet, positions $
\ve{r
}$ and velocities
920 $
\ve{v
}$ at time $t$ are used to integrate the equations of motion;
921 velocities at the previous half step are not required.
\bea
922 \label{eqn:velocityverlet1
}
923 \ve{v
}(t+
\hDt) &~=~&
\ve{v
}(t)+
\frac{\Dt}{2m
}\ve{F
}(t) \\
924 \ve{r
}(t+
\Dt) &~=~&
\ve{r
}(t)+
\Dt\,
\ve{v
}(t+
\hDt) \\
925 \ve{v
}(t+
\Dt) &~=~&
\ve{v
}(t+
\hDt)+
\frac{\Dt}{2m
}\ve{F
}(t+
\Dt)
929 \label{eqn:velocityverlet2
}
930 \ve{r
}(t+
\Dt) &~=~&
\ve{r
}(t)+
\Dt\,
\ve{v
} +
\frac{\Dt^
2}{2m
}\ve{F
}(t) \\
931 \ve{v
}(t+
\Dt) &~=~&
\ve{v
}(t)+
\frac{\Dt}{2m
}\left[\ve{F
}(t) +
\ve{F
}(t+
\Dt)
\right]
933 With no temperature or pressure coupling, and with
{\em corresponding
}
934 starting points, leap-frog and velocity Verlet will generate identical
935 trajectories, as can easily be verified by hand from the equations
936 above. Given a single starting file with the
{\em same
} starting
937 point $
\ve{x
}(
0)$ and $
\ve{v
}(
0)$, leap-frog and velocity Verlet will
938 {\em not
} give identical trajectories, as leap-frog will interpret the
939 velocities as corresponding to $t=-
\hDt$, while velocity Verlet will
940 interpret them as corresponding to the timepoint $t=
0$.
942 \subsection{Understanding reversible integrators: The Trotter decomposition
}
943 To further understand the relationship between velocity Verlet and
944 leap-frog integration, we introduce the reversible Trotter formulation
945 of dynamics, which is also useful to understanding implementations of
946 thermostats and barostats in
{\gromacs}.
948 A system of coupled, first-order differential equations can be evolved
949 from time $t =
0$ to time $t$ by applying the evolution operator
951 \Gamma(t) &=&
\exp(iLt)
\Gamma(
0)
\nonumber \\
952 iL &=&
\dot{\Gamma}\cdot \nabla_{\Gamma},
954 where $L$ is the Liouville operator, and $
\Gamma$ is the
955 multidimensional vector of independent variables (positions and
957 A short-time approximation to the true operator, accurate at time $
\Dt
958 = t/P$, is applied $P$ times in succession to evolve the system as
960 \Gamma(t) =
\prod_{i=
1}^P
\exp(iL
\Dt)
\Gamma(
0)
962 For NVE dynamics, the Liouville operator is
964 iL =
\sum_{i=
1}^
{N
} \vv_i \cdot \nabla_{\rv_i} +
\sum_{i=
1}^N
\frac{1}{m_i
}\F(r_i)
\cdot \nabla_{\vv_i}.
966 This can be split into two additive operators
968 iL_1 &=&
\sum_{i=
1}^N
\frac{1}{m_i
}\F(r_i)
\cdot \nabla_{\vv_i} \nonumber \\
969 iL_2 &=&
\sum_{i=
1}^
{N
} \vv_i \cdot \nabla_{\rv_i}
971 Then a short-time, symmetric, and thus reversible approximation of the true dynamics will be
973 \exp(iL
\Dt) =
\exp(iL_2
\hDt)
\exp(iL_1
\Dt)
\exp(iL_2
\hDt) +
\mathcal{O
}(
\Dt^
3).
974 \label{eq:NVE_Trotter
}
976 This corresponds to velocity Verlet integration. The first
977 exponential term over $
\hDt$ corresponds to a velocity half-step, the
978 second exponential term over $
\Dt$ corresponds to a full velocity
979 step, and the last exponential term over $
\hDt$ is the final velocity
980 half step. For future times $t = n
\Dt$, this becomes
982 \exp(iLn
\Dt) &
\approx&
\left(
\exp(iL_2
\hDt)
\exp(iL_1
\Dt)
\exp(iL_2
\hDt)
\right)^n
\nonumber \\
983 &
\approx&
\exp(iL_2
\hDt)
\bigg(
\exp(iL_1
\Dt)
\exp(iL_2
\Dt)
\bigg)^
{n-
1} \nonumber \\
984 & & \;\;\;\;
\exp(iL_1
\Dt)
\exp(iL_2
\hDt)
986 This formalism allows us to easily see the difference between the
987 different flavors of Verlet integrators. The leap-frog integrator can
988 be seen as starting with Eq.~
\ref{eq:NVE_Trotter
} with the
989 $
\exp\left(iL_1
\dt\right)$ term, instead of the half-step velocity
992 \exp(iLn
\dt) &=&
\exp\left(iL_1
\dt\right)
\exp\left(iL_2
\Dt \right) +
\mathcal{O
}(
\Dt^
3).
994 Here, the full step in velocity is between $t-
\hDt$ and $t+
\hDt$,
995 since it is a combination of the velocity half steps in velocity
996 Verlet. For future times $t = n
\Dt$, this becomes
998 \exp(iLn
\dt) &
\approx&
\bigg(
\exp\left(iL_1
\dt\right)
\exp\left(iL_2
\Dt \right)
\bigg)^
{n
}.
1000 Although at first this does not appear symmetric, as long as the full velocity
1001 step is between $t-
\hDt$ and $t+
\hDt$, then this is simply a way of
1002 starting velocity Verlet at a different place in the cycle.
1004 Even though the trajectory and thus potential energies are identical
1005 between leap-frog and velocity Verlet, the kinetic energy and
1006 temperature will not necessarily be the same. Standard velocity
1007 Verlet uses the velocities at the $t$ to calculate the kinetic energy
1008 and thus the temperature only at time $t$; the kinetic energy is then a sum over all particles
1010 KE_
{\mathrm{full
}}(t) &=&
\sum_i \left(
\frac{1}{2m_i
}\ve{v
}_i(t)
\right)^
2 \nonumber\\
1011 &=&
\sum_i \frac{1}{2m_i
}\left(
\frac{1}{2}\ve{v
}_i(t-
\hDt)+
\frac{1}{2}\ve{v
}_i(t+
\hDt)
\right)^
2,
1013 with the square on the
{\em outside
} of the average. Standard
1014 leap-frog calculates the kinetic energy at time $t$ based on the
1015 average kinetic energies at the timesteps $t+
\hDt$ and $t-
\hDt$, or
1016 the sum over all particles
1018 KE_
{\mathrm{average
}}(t) &=&
\sum_i \frac{1}{2m_i
}\left(
\frac{1}{2}\ve{v
}_i(t-
\hDt)^
2+
\frac{1}{2}\ve{v
}_i(t+
\hDt)^
2\right),
1020 where the square is
{\em inside
} the average.
1022 A non-standard variant of velocity Verlet which averages the kinetic
1023 energies $KE(t+
\hDt)$ and $KE(t-
\hDt)$, exactly like leap-frog, is also
1024 now implemented in
{\gromacs} (as
{\tt .mdp
} file option
{\tt md-vv-avek
}). Without
1025 temperature and pressure coupling, velocity Verlet with
1026 half-step-averaged kinetic energies and leap-frog will be identical up
1027 to numerical precision. For temperature- and pressure-control schemes,
1028 however, velocity Verlet with half-step-averaged kinetic energies and
1029 leap-frog will be different, as will be discussed in the section in
1030 thermostats and barostats.
1032 The half-step-averaged kinetic energy and temperature are slightly more
1033 accurate for a given step size; the difference in average kinetic
1034 energies using the half-step-averaged kinetic energies (
{\em md
} and
1035 {\em md-vv-avek
}) will be closer to the kinetic energy obtained in the
1036 limit of small step size than will the full-step kinetic energy (using
1037 {\em md-vv
}). For NVE simulations, this difference is usually not
1038 significant, since the positions and velocities of the particles are
1039 still identical; it makes a difference in the way the the temperature
1040 of the simulations are
{\em interpreted
}, but
{\em not
} in the
1041 trajectories that are produced. Although the kinetic energy is more
1042 accurate with the half-step-averaged method, meaning that it changes
1043 less as the timestep gets large, it is also more noisy. The RMS deviation
1044 of the total energy of the system (sum of kinetic plus
1045 potential) in the half-step-averaged kinetic energy case will be
1046 higher (about twice as high in most cases) than the full-step kinetic
1047 energy. The drift will still be the same, however, as again, the
1048 trajectories are identical.
1050 For NVT simulations, however, there
{\em will
} be a difference, as
1051 discussed in the section on temperature control, since the velocities
1052 of the particles are adjusted such that kinetic energies of the
1053 simulations, which can be calculated either way, reach the
1054 distribution corresponding to the set temperature. In this case, the
1055 three methods will not give identical results.
1057 Because the velocity and position are both defined at the same time
1058 $t$ the velocity Verlet integrator can be used for some methods,
1059 especially rigorously correct pressure control methods, that are not
1060 actually possible with leap-frog. The integration itself takes
1061 negligibly more time than leap-frog, but twice as many communication
1062 calls are currently required. In most cases, and especially for large
1063 systems where communication speed is important for parallelization and
1064 differences between thermodynamic ensembles vanish in the $
1/N$ limit,
1065 and when only NVT ensembles are required, leap-frog will likely be the
1066 preferred integrator. For pressure control simulations where the fine
1067 details of the thermodynamics are important, only velocity Verlet
1068 allows the true ensemble to be calculated. In either case, simulation
1069 with double precision may be required to get fine details of
1070 thermodynamics correct.
1072 \subsection{Multiple time stepping
}
1073 Several other simulation packages uses multiple time stepping for
1074 bonds and/or the PME mesh forces. In
{\gromacs} we have not implemented
1075 this (yet), since we use a different philosophy. Bonds can be constrained
1076 (which is also a more sound approximation of a physical quantum
1077 oscillator), which allows the smallest time step to be increased
1078 to the larger one. This not only halves the number of force calculations,
1079 but also the update calculations. For even larger time steps, angle vibrations
1080 involving hydrogen atoms can be removed using virtual interaction
1081 \ifthenelse{\equal{\gmxlite}{1}}
1083 {sites (see
\secref{rmfast
}),
}
1084 which brings the shortest time step up to
1085 PME mesh update frequency of a multiple time stepping scheme.
1087 \subsection{Temperature coupling
\index{temperature coupling
}}
1088 While direct use of molecular dynamics gives rise to the NVE (constant
1089 number, constant volume, constant energy ensemble), most quantities
1090 that we wish to calculate are actually from a constant temperature
1091 (NVT) ensemble, also called the canonical ensemble.
{\gromacs} can use
1092 the
{\em weak-coupling
} scheme of Berendsen~
\cite{Berendsen84
},
1093 stochastic randomization through the Andersen
1094 thermostat~
\cite{Andersen80
}, the extended ensemble Nos
{\'e
}-Hoover
1095 scheme~
\cite{Nose84,Hoover85
}, or a velocity-rescaling
1096 scheme~
\cite{Bussi2007a
} to simulate constant temperature, with
1097 advantages of each of the schemes laid out below.
1099 There are several other reasons why it might be necessary to control
1100 the temperature of the system (drift during equilibration, drift as a
1101 result of force truncation and integration errors, heating due to
1102 external or frictional forces), but this is not entirely correct to do
1103 from a thermodynamic standpoint, and in some cases only masks the
1104 symptoms (increase in temperature of the system) rather than the
1105 underlying problem (deviations from correct physics in the dynamics).
1106 For larger systems, errors in ensemble averages and structural
1107 properties incurred by using temperature control to remove slow drifts
1108 in temperature appear to be negligible, but no completely
1109 comprehensive comparisons have been carried out, and some caution must
1110 be taking in interpreting the results.
1112 \subsubsection{Berendsen temperature coupling
\pawsindexquiet{Berendsen
}{temperature coupling
}\index{weak coupling
}}
1113 The Berendsen algorithm mimics weak coupling with first-order
1114 kinetics to an external heat bath with given temperature $T_0$.
1115 See ref.~
\cite{Berendsen91
} for a comparison with the
1116 Nos
{\'e
}-Hoover scheme. The effect of this algorithm is
1117 that a deviation of the system temperature from $T_0$ is slowly
1118 corrected according to:
1120 \frac{\de T
}{\de t
} =
\frac{T_0-T
}{\tau}
1121 \label{eqn:Tcoupling
}
1123 which means that a temperature deviation decays exponentially with a
1124 time constant $
\tau$.
1125 This method of coupling has the advantage that the strength of the
1126 coupling can be varied and adapted to the user requirement: for
1127 equilibration purposes the coupling time can be taken quite short
1128 (
{\eg} 0.01 ps), but for reliable equilibrium runs it can be taken much
1129 longer (
{\eg} 0.5 ps) in which case it hardly influences the
1130 conservative dynamics.
1132 The Berendsen thermostat suppresses the fluctuations of the kinetic
1133 energy. This means that one does not generate a proper canonical
1134 ensemble, so rigorously, the sampling will be incorrect. This
1135 error scales with $
1/N$, so for very large systems most ensemble
1136 averages will not be affected significantly, except for the
1137 distribution of the kinetic energy itself. However, fluctuation
1138 properties, such as the heat capacity, will be affected. A similar
1139 thermostat which does produce a correct ensemble is the velocity
1140 rescaling thermostat~
\cite{Bussi2007a
} described below.
1142 The heat flow into or out of the system is affected by scaling the
1143 velocities of each particle every step, or every $n_
\mathrm{TC
}$ steps,
1144 with a time-dependent factor $
\lambda$, given by:
1146 \lambda =
\left[ 1 +
\frac{n_
\mathrm{TC
} \Delta t
}{\tau_T}
1147 \left\
{\frac{T_0
}{T(t -
\hDt)
} -
1 \right\
} \right]^
{1/
2}
1150 The parameter $
\tau_T$ is close, but not exactly equal, to the time constant
1151 $
\tau$ of the temperature coupling (
\eqnref{Tcoupling
}):
1153 \tau =
2 C_V
\tau_T / N_
{df
} k
1155 where $C_V$ is the total heat capacity of the system, $k$ is Boltzmann's
1156 constant, and $N_
{df
}$ is the total number of degrees of freedom. The
1157 reason that $
\tau \neq \tau_T$ is that the kinetic energy change
1158 caused by scaling the velocities is partly redistributed between
1159 kinetic and potential energy and hence the change in temperature is
1160 less than the scaling energy. In practice, the ratio $
\tau /
\tau_T$
1161 ranges from
1 (gas) to
2 (harmonic solid) to
3 (water). When we use
1162 the term ``temperature coupling time constant,'' we mean the parameter
1163 \normindex{$
\tau_T$
}.
1164 {\bf Note
} that in practice the scaling factor $
\lambda$ is limited to
1165 the range of
0.8 $<=
\lambda <=$
1.25, to avoid scaling by very large
1166 numbers which may crash the simulation. In normal use,
1167 $
\lambda$ will always be much closer to
1.0.
1169 \subsubsection{Velocity-rescaling temperature coupling
\pawsindexquiet{velocity-rescaling
}{temperature coupling
}}
1170 The velocity-rescaling thermostat~
\cite{Bussi2007a
} is essentially a Berendsen
1171 thermostat (see above) with an additional stochastic term that ensures
1172 a correct kinetic energy distribution by modifying it according to
1174 \de K = (K_0 - K)
\frac{\de t
}{\tau_T} +
2 \sqrt{\frac{K K_0
}{N_f
}} \frac{\de W
}{\sqrt{\tau_T}},
1175 \label{eqn:vrescale
}
1177 where $K$ is the kinetic energy, $N_f$ the number of degrees of freedom and $
\de W$ a Wiener process.
1178 There are no additional parameters, except for a random seed.
1179 This thermostat produces a correct canonical ensemble and still has
1180 the advantage of the Berendsen thermostat: first order decay of
1181 temperature deviations and no oscillations.
1182 When an $NVT$ ensemble is used, the conserved energy quantity
1183 is written to the energy and log file.
1185 \subsubsection{\normindex{Andersen thermostat
}}
1186 One simple way to maintain a thermostatted ensemble is to take an
1187 $NVE$ integrator and periodically re-select the velocities of the
1188 particles from a Maxwell-Boltzmann distribution.~
\cite{Andersen80
}
1189 This can either be done by randomizing all the velocities
1190 simultaneously (massive collision) every $
\tau_T/
\Dt$ steps (
{\tt andersen-massive
}), or by
1191 randomizing every particle with some small probability every timestep (
{\tt andersen
}),
1192 equal to $
\Dt/
\tau$, where in both cases $
\Dt$ is the timestep and
1193 $
\tau_T$ is a characteristic coupling time scale.
1194 Because of the way constraints operate, all particles in the same
1195 constraint group must be randomized simultaneously. Because of
1196 parallelization issues, the
{\tt andersen
} version cannot currently (
5.0) be
1197 used in systems with constraints.
{\tt andersen-massive
} can be used regardless of constraints.
1198 This thermostat is also currently only possible with velocity Verlet algorithms,
1199 because it operates directly on the velocities at each timestep.
1201 This algorithm completely avoids some of the ergodicity issues of other thermostatting
1202 algorithms, as energy cannot flow back and forth between energetically
1203 decoupled components of the system as in velocity scaling motions.
1204 However, it can slow down the kinetics of system by randomizing
1205 correlated motions of the system, including slowing sampling when
1206 $
\tau_T$ is at moderate levels (less than
10 ps). This algorithm
1207 should therefore generally not be used when examining kinetics or
1208 transport properties of the system.~
\cite{Basconi2013
}
1210 % \ifthenelse{\equal{\gmxlite}{1}}{}{
1211 \subsubsection{Nos
{\'e
}-Hoover temperature coupling
\index{Nose-Hoover temperature coupling@Nos
{\'e
}-Hoover temperature coupling|see
{temperature coupling, Nos
{\'e
}-Hoover
}}{\index{temperature coupling Nose-Hoover@temperature coupling Nos
{\'e
}-Hoover
}}\index{extended ensemble
}}
1213 The Berendsen weak-coupling algorithm is
1214 extremely efficient for relaxing a system to the target temperature,
1215 but once the system has reached equilibrium it might be more
1216 important to probe a correct canonical ensemble. This is unfortunately
1217 not the case for the weak-coupling scheme.
1219 To enable canonical ensemble simulations,
{\gromacs} also supports the
1220 extended-ensemble approach first proposed by Nos
{\'e
}~
\cite{Nose84
}
1221 and later modified by Hoover~
\cite{Hoover85
}. The system Hamiltonian is
1222 extended by introducing a thermal reservoir and a friction term in the
1223 equations of motion. The friction force is proportional to the
1224 product of each particle's velocity and a friction parameter, $
\xi$.
1225 This friction parameter (or ``heat bath'' variable) is a fully
1226 dynamic quantity with its own momentum ($p_
{\xi}$) and equation of
1227 motion; the time derivative is calculated from the difference between
1228 the current kinetic energy and the reference temperature.
1230 In this formulation, the particles' equations of motion in
1231 \figref{global
} are replaced by:
1233 \frac {\de^
2\ve{r
}_i
}{\de t^
2} =
\frac{\ve{F
}_i
}{m_i
} -
1234 \frac{p_
{\xi}}{Q
}\frac{\de \ve{r
}_i
}{\de t
} ,
1235 \label{eqn:NH-eqn-of-motion
}
1236 \eeq where the equation of motion for the heat bath parameter $
\xi$ is:
1237 \beq \frac {\de p_
{\xi}}{\de t
} =
\left( T - T_0
\right).
\eeq The
1238 reference temperature is denoted $T_0$, while $T$ is the current
1239 instantaneous temperature of the system. The strength of the coupling
1240 is determined by the constant $Q$ (usually called the ``mass parameter''
1241 of the reservoir) in combination with the reference
1242 temperature.~
\footnote{Note that some derivations, an alternative
1243 notation $
\xi_{\mathrm{alt
}} = v_
{\xi} = p_
{\xi}/Q$ is used.
}
1245 The conserved quantity for the Nos
{\'e
}-Hoover equations of motion is not
1246 the total energy, but rather
1248 H =
\sum_{i=
1}^
{N
} \frac{\pb_i}{2m_i
} + U
\left(
\rv_1,
\rv_2,
\ldots,
\rv_N\right) +
\frac{p_
{\xi}^
2}{2Q
} + N_fkT
\xi,
1250 where $N_f$ is the total number of degrees of freedom.
1252 In our opinion, the mass parameter is a somewhat awkward way of
1253 describing coupling strength, especially due to its dependence on
1254 reference temperature (and some implementations even include the
1255 number of degrees of freedom in your system when defining $Q$). To
1256 maintain the coupling strength, one would have to change $Q$ in
1257 proportion to the change in reference temperature. For this reason, we
1258 prefer to let the
{\gromacs} user work instead with the period
1259 $
\tau_T$ of the oscillations of kinetic energy between the system and
1260 the reservoir instead. It is directly related to $Q$ and $T_0$ via:
1262 Q =
\frac {\tau_T^
2 T_0
}{4 \pi^
2}.
1264 This provides a much more intuitive way of selecting the
1265 Nos
{\'e
}-Hoover coupling strength (similar to the weak-coupling
1266 relaxation), and in addition $
\tau_T$ is independent of system size
1267 and reference temperature.
1269 It is however important to keep the difference between the
1270 weak-coupling scheme and the Nos
{\'e
}-Hoover algorithm in mind:
1271 Using weak coupling you get a
1272 strongly damped
{\em exponential relaxation
},
1273 while the Nos
{\'e
}-Hoover approach
1274 produces an
{\em oscillatory relaxation
}.
1275 The actual time it takes to relax with Nos
{\'e
}-Hoover coupling is
1276 several times larger than the period of the
1277 oscillations that you select. These oscillations (in contrast
1278 to exponential relaxation) also means that
1279 the time constant normally should be
4--
5 times larger
1280 than the relaxation time used with weak coupling, but your
1283 Nos
{\'e
}-Hoover dynamics in simple systems such as collections of
1284 harmonic oscillators, can be
{\em nonergodic
}, meaning that only a
1285 subsection of phase space is ever sampled, even if the simulations
1286 were to run for infinitely long. For this reason, the Nos
{\'e
}-Hoover
1287 chain approach was developed, where each of the Nos
{\'e
}-Hoover
1288 thermostats has its own Nos
{\'e
}-Hoover thermostat controlling its
1289 temperature. In the limit of an infinite chain of thermostats, the
1290 dynamics are guaranteed to be ergodic. Using just a few chains can
1291 greatly improve the ergodicity, but recent research has shown that the
1292 system will still be nonergodic, and it is still not entirely clear
1293 what the practical effect of this~
\cite{Cooke2008
}. Currently, the
1294 default number of chains is
10, but this can be controlled by the
1295 user. In the case of chains, the equations are modified in the
1296 following way to include a chain of thermostatting
1297 particles~
\cite{Martyna1992
}:
1300 \frac {\de^
2\ve{r
}_i
}{\de t^
2} &~=~&
\frac{\ve{F
}_i
}{m_i
} -
\frac{p_
{{\xi}_1
}}{Q_1
} \frac{\de \ve{r
}_i
}{\de t
} \nonumber \\
1301 \frac {\de p_
{{\xi}_1
}}{\de t
} &~=~&
\left( T - T_0
\right) - p_
{{\xi}_1
} \frac{p_
{{\xi}_2
}}{Q_2
} \nonumber \\
1302 \frac {\de p_
{{\xi}_
{i=
2\ldots N
}}}{\de t
} &~=~&
\left(
\frac{p_
{\xi_{i-
1}}^
2}{Q_
{i-
1}} -kT
\right) - p_
{\xi_i} \frac{p_
{\xi_{i+
1}}}{Q_
{i+
1}} \nonumber \\
1303 \frac {\de p_
{\xi_N}}{\de t
} &~=~&
\left(
\frac{p_
{\xi_{N-
1}}^
2}{Q_
{N-
1}}-kT
\right)
1304 \label{eqn:NH-chain-eqn-of-motion
}
1306 The conserved quantity for Nos
{\'e
}-Hoover chains is
1308 H =
\sum_{i=
1}^
{N
} \frac{\pb_i}{2m_i
} + U
\left(
\rv_1,
\rv_2,
\ldots,
\rv_N\right) +
\sum_{k=
1}^M
\frac{p^
2_
{\xi_k}}{2Q^
{\prime}_k
} + N_fkT
\xi_1 + kT
\sum_{k=
2}^M
\xi_k
1310 The values and velocities of the Nos
{\'e
}-Hoover thermostat variables
1311 are generally not included in the output, as they take up a fair
1312 amount of space and are generally not important for analysis of
1313 simulations, but this can be overridden by defining the environment
1314 variable
{\tt GMX_NOSEHOOVER_CHAINS
}, which will print the values of all
1315 the positions and velocities of all Nos
{\'e
}-Hoover particles in the
1316 chain to the
{\tt .edr
} file. Leap-frog simulations currently can only have
1317 Nos
{\'e
}-Hoover chain lengths of
1, but this will likely be updated in
1320 As described in the integrator section, for temperature coupling, the
1321 temperature that the algorithm attempts to match to the reference
1322 temperature is calculated differently in velocity Verlet and leap-frog
1323 dynamics. Velocity Verlet (
{\em md-vv
}) uses the full-step kinetic
1324 energy, while leap-frog and
{\em md-vv-avek
} use the half-step-averaged
1327 We can examine the Trotter decomposition again to better understand
1328 the differences between these constant-temperature integrators. In
1329 the case of Nos
{\'e
}-Hoover dynamics (for simplicity, using a chain
1330 with $N=
1$, with more details in Ref.~
\cite{Martyna1996
}), we split
1331 the Liouville operator as
1333 iL = iL_1 + iL_2 + iL_
{\mathrm{NHC
}},
1337 iL_1 &=&
\sum_{i=
1}^N
\left[\frac{\pb_i}{m_i
}\right]\cdot \frac{\partial}{\partial \rv_i} \nonumber \\
1338 iL_2 &=&
\sum_{i=
1}^N
\F_i\cdot \frac{\partial}{\partial \pb_i} \nonumber \\
1339 iL_
{\mathrm{NHC
}} &=&
\sum_{i=
1}^N-
\frac{p_
{\xi}}{Q
}\vv_i\cdot \nabla_{\vv_i} +
\frac{p_
{\xi}}{Q
}\frac{\partial }{\partial \xi} +
\left( T - T_0
\right)
\frac{\partial }{\partial p_
{\xi}}
1341 For standard velocity Verlet with Nos
{\'e
}-Hoover temperature control, this becomes
1343 \exp(iL
\dt) &=&
\exp\left(iL_
{\mathrm{NHC
}}\dt/
2\right)
\exp\left(iL_2
\dt/
2\right)
\nonumber \\
1344 &&
\exp\left(iL_1
\dt\right)
\exp\left(iL_2
\dt/
2\right)
\exp\left(iL_
{\mathrm{NHC
}}\dt/
2\right) +
\mathcal{O
}(
\Dt^
3).
1346 For half-step-averaged temperature control using
{\em md-vv-avek
},
1347 this decomposition will not work, since we do not have the full step
1348 temperature until after the second velocity step. However, we can
1349 construct an alternate decomposition that is still reversible, by
1350 switching the place of the NHC and velocity portions of the
1353 \exp(iL
\dt) &=&
\exp\left(iL_2
\dt/
2\right)
\exp\left(iL_
{\mathrm{NHC
}}\dt/
2\right)
\exp\left(iL_1
\dt\right)
\nonumber \\
1354 &&
\exp\left(iL_
{\mathrm{NHC
}}\dt/
2\right)
\exp\left(iL_2
\dt/
2\right)+
\mathcal{O
}(
\Dt^
3)
1355 \label{eq:half_step_NHC_integrator
}
1357 This formalism allows us to easily see the difference between the
1358 different flavors of velocity Verlet integrator. The leap-frog
1359 integrator can be seen as starting with
1360 Eq.~
\ref{eq:half_step_NHC_integrator
} just before the $
\exp\left(iL_1
1361 \dt\right)$ term, yielding:
1363 \exp(iL
\dt) &=&
\exp\left(iL_1
\dt\right)
\exp\left(iL_
{\mathrm{NHC
}}\dt/
2\right)
\nonumber \\
1364 &&
\exp\left(iL_2
\dt\right)
\exp\left(iL_
{\mathrm{NHC
}}\dt/
2\right) +
\mathcal{O
}(
\Dt^
3)
1366 and then using some algebra tricks to solve for some quantities are
1367 required before they are actually calculated~
\cite{Holian95
}.
1371 \subsubsection{Group temperature coupling
}\index{temperature-coupling group
}%
1372 In
{\gromacs} temperature coupling can be performed on groups of
1373 atoms, typically a protein and solvent. The reason such algorithms
1374 were introduced is that energy exchange between different components
1375 is not perfect, due to different effects including cut-offs etc. If
1376 now the whole system is coupled to one heat bath, water (which
1377 experiences the largest cut-off noise) will tend to heat up and the
1378 protein will cool down. Typically
100 K differences can be obtained.
1379 With the use of proper electrostatic methods (PME) these difference
1380 are much smaller but still not negligible. The parameters for
1381 temperature coupling in groups are given in the
{\tt mdp
} file.
1382 Recent investigation has shown that small temperature differences
1383 between protein and water may actually be an artifact of the way
1384 temperature is calculated when there are finite timesteps, and very
1385 large differences in temperature are likely a sign of something else
1386 seriously going wrong with the system, and should be investigated
1387 carefully~
\cite{Eastwood2010
}.
1389 One special case should be mentioned: it is possible to temperature-couple only
1390 part of the system, leaving other parts without temperature
1391 coupling. This is done by specifying $
{-
1}$ for the time constant
1392 $
\tau_T$ for the group that should not be thermostatted. If only
1393 part of the system is thermostatted, the system will still eventually
1394 converge to an NVT system. In fact, one suggestion for minimizing
1395 errors in the temperature caused by discretized timesteps is that if
1396 constraints on the water are used, then only the water degrees of
1397 freedom should be thermostatted, not protein degrees of freedom, as
1398 the higher frequency modes in the protein can cause larger deviations
1399 from the ``true'' temperature, the temperature obtained with small
1400 timesteps~
\cite{Eastwood2010
}.
1402 \subsection{Pressure coupling
\index{pressure coupling
}}
1403 In the same spirit as the temperature coupling, the system can also be
1404 coupled to a ``pressure bath.''
{\gromacs} supports both the Berendsen
1405 algorithm~
\cite{Berendsen84
} that scales coordinates and box vectors
1406 every step, the extended-ensemble Parrinello-Rahman approach~
\cite{Parrinello81,Nose83
}, and for
1407 the velocity Verlet variants, the Martyna-Tuckerman-Tobias-Klein
1408 (MTTK) implementation of pressure
1409 control~
\cite{Martyna1996
}. Parrinello-Rahman and Berendsen can be
1410 combined with any of the temperature coupling methods above. MTTK can
1411 only be used with Nos
{\'e
}-Hoover temperature control. From
5.1 afterwards,
1412 it can only used when the system does not have constraints.
1414 \subsubsection{Berendsen pressure coupling
\pawsindexquiet{Berendsen
}{pressure coupling
}\index{weak coupling
}}
1415 \label{sec:berendsen_pressure_coupling
}
1416 The Berendsen algorithm rescales the
1417 coordinates and box vectors every step, or every $n_
\mathrm{PC
}$ steps,
1418 with a matrix
{\boldmath $
\mu$
},
1419 which has the effect of a first-order kinetic relaxation of the pressure
1420 towards a given reference pressure $
{\bf P
}_0$ according to
1422 \frac{\de {\bf P
}}{\de t
} =
\frac{{\bf P
}_0-
{\bf P
}}{\tau_p}.
1424 The scaling matrix
{\boldmath $
\mu$
} is given by
1427 =
\delta_{ij
} -
\frac{n_
\mathrm{PC
}\Delta t
}{3\,
\tau_p} \beta_{ij
} \
{P_
{0ij
} - P_
{ij
}(t) \
}.
1430 \index{isothermal compressibility
}
1431 \index{compressibility
}
1432 Here,
{\boldmath $
\beta$
} is the isothermal compressibility of the system.
1433 In most cases this will be a diagonal matrix, with equal elements on the
1434 diagonal, the value of which is generally not known.
1435 It suffices to take a rough estimate because the value of
{\boldmath $
\beta$
}
1436 only influences the non-critical time constant of the
1437 pressure relaxation without affecting the average pressure itself.
1438 For water at
1 atm and
300 K
1439 $
\beta =
4.6 \times 10^
{-
10}$ Pa$^
{-
1} =
4.6 \times 10^
{-
5}$ bar$^
{-
1}$,
1440 which is $
7.6 \times 10^
{-
4}$ MD units (see
\chref{defunits
}).
1441 Most other liquids have similar values.
1442 When scaling completely anisotropically, the system has to be rotated in
1443 order to obey
\eqnref{box_rot
}.
1444 This rotation is approximated in first order in the scaling, which is usually
1445 less than $
10^
{-
4}$. The actual scaling matrix
{\boldmath $
\mu'$
} is
1447 \mbox{\boldmath $
\mu'$
} =
1448 \left(
\begin{array
}{ccc
}
1449 \mu_{xx
} &
\mu_{xy
} +
\mu_{yx
} &
\mu_{xz
} +
\mu_{zx
} \\
1450 0 &
\mu_{yy
} &
\mu_{yz
} +
\mu_{zy
} \\
1454 The velocities are neither scaled nor rotated.
1456 In
{\gromacs}, the Berendsen scaling can also be done isotropically,
1457 which means that instead of $
\ve{P
}$ a diagonal matrix with elements of size
1458 trace$(
\ve{P
})/
3$ is used. For systems with interfaces, semi-isotropic
1459 scaling can be useful.
1460 In this case, the $x/y$-directions are scaled isotropically and the $z$
1461 direction is scaled independently. The compressibility in the $x/y$ or
1462 $z$-direction can be set to zero, to scale only in the other direction(s).
1464 If you allow full anisotropic deformations and use constraints you
1465 might have to scale more slowly or decrease your timestep to avoid
1466 errors from the constraint algorithms. It is important to note that
1467 although the Berendsen pressure control algorithm yields a simulation
1468 with the correct average pressure, it does not yield the exact NPT
1469 ensemble, and it is not yet clear exactly what errors this approximation
1472 % \ifthenelse{\equal{\gmxlite}{1}}{}{
1473 \subsubsection{Parrinello-Rahman pressure coupling
\pawsindexquiet{Parrinello-Rahman
}{pressure coupling
}}
1475 In cases where the fluctuations in pressure or volume are important
1476 {\em per se
} (
{\eg} to calculate thermodynamic properties), especially
1477 for small systems, it may be a problem that the exact ensemble is not
1478 well defined for the weak-coupling scheme, and that it does not
1479 simulate the true NPT ensemble.
1481 {\gromacs} also supports constant-pressure simulations using the
1482 Parrinello-Rahman approach~
\cite{Parrinello81,Nose83
}, which is similar
1483 to the Nos
{\'e
}-Hoover temperature coupling, and in theory gives the
1484 true NPT ensemble. With the Parrinello-Rahman barostat, the box
1485 vectors as represented by the matrix
\ve{b
} obey the matrix equation
1486 of motion
\footnote{The box matrix representation
\ve{b
} in
{\gromacs}
1487 corresponds to the transpose of the box matrix representation
\ve{h
}
1488 in the paper by Nos
{\'e
} and Klein. Because of this, some of our
1489 equations will look slightly different.
}
1491 \frac{\de \ve{b
}^
2}{\de t^
2}= V
\ve{W
}^
{-
1} \ve{b
}'^
{-
1} \left(
\ve{P
} -
\ve{P
}_
{ref
}\right).
1494 The volume of the box is denoted $V$, and $
\ve{W
}$ is a matrix parameter that determines
1495 the strength of the coupling. The matrices
\ve{P
} and
\ve{P
}$_
{ref
}$ are the
1496 current and reference pressures, respectively.
1498 The equations of motion for the particles are also changed, just as
1499 for the Nos
{\'e
}-Hoover coupling. In most cases you would combine the
1500 Parrinello-Rahman barostat with the Nos
{\'e
}-Hoover
1501 thermostat, but to keep it simple we only show the Parrinello-Rahman
1504 \bea \frac {\de^
2\ve{r
}_i
}{\de t^
2} & = &
\frac{\ve{F
}_i
}{m_i
} -
1505 \ve{M
} \frac{\de \ve{r
}_i
}{\de t
} , \\
\ve{M
} & = &
\ve{b
}^
{-
1} \left[
1506 \ve{b
} \frac{\de \ve{b
}'
}{\de t
} +
\frac{\de \ve{b
}}{\de t
} \ve{b
}'
1507 \right] \ve{b
}'^
{-
1}.
\eea The (inverse) mass parameter matrix
1508 $
\ve{W
}^
{-
1}$ determines the strength of the coupling, and how the box
1509 can be deformed. The box restriction (
\ref{eqn:box_rot
}) will be
1510 fulfilled automatically if the corresponding elements of $
\ve{W
}^
{-
1}$
1511 are zero. Since the coupling strength also depends on the size of your
1512 box, we prefer to calculate it automatically in
{\gromacs}. You only
1513 have to provide the approximate isothermal compressibilities
1514 {\boldmath $
\beta$
} and the pressure time constant $
\tau_p$ in the
1515 input file ($L$ is the largest box matrix element):
\beq \left(
1516 \ve{W
}^
{-
1} \right)_
{ij
} =
\frac{4 \pi^
2 \beta_{ij
}}{3 \tau_p^
2 L
}.
1517 \eeq Just as for the Nos
{\'e
}-Hoover thermostat, you should realize
1518 that the Parrinello-Rahman time constant is
{\em not
} equivalent to
1519 the relaxation time used in the Berendsen pressure coupling algorithm.
1520 In most cases you will need to use a
4--
5 times larger time constant
1521 with Parrinello-Rahman coupling. If your pressure is very far from
1522 equilibrium, the Parrinello-Rahman coupling may result in very large
1523 box oscillations that could even crash your run. In that case you
1524 would have to increase the time constant, or (better) use the weak-coupling
1525 scheme to reach the target pressure, and then switch to
1526 Parrinello-Rahman coupling once the system is in equilibrium.
1527 Additionally, using the leap-frog algorithm, the pressure at time $t$
1528 is not available until after the time step has completed, and so the
1529 pressure from the previous step must be used, which makes the algorithm
1530 not directly reversible, and may not be appropriate for high precision
1531 thermodynamic calculations.
1533 \subsubsection{Surface-tension coupling
\pawsindexquiet{surface-tension
}{pressure coupling
}}
1534 When a periodic system consists of more than one phase, separated by
1535 surfaces which are parallel to the $xy$-plane,
1536 the surface tension and the $z$-component of the pressure can be coupled
1537 to a pressure bath. Presently, this only works with the Berendsen
1538 pressure coupling algorithm in
{\gromacs}.
1539 The average surface tension $
\gamma(t)$ can be calculated from
1540 the difference between the normal and the lateral pressure
1543 \frac{1}{n
} \int_0^
{L_z
}
1544 \left\
{ P_
{zz
}(z,t) -
\frac{P_
{xx
}(z,t) + P_
{yy
}(z,t)
}{2} \right\
} \mbox{d
}z \\
1546 \frac{L_z
}{n
} \left\
{ P_
{zz
}(t) -
\frac{P_
{xx
}(t) + P_
{yy
}(t)
}{2} \right\
},
1548 where $L_z$ is the height of the box and $n$ is the number of surfaces.
1549 The pressure in the z-direction is corrected by scaling the height of
1550 the box with $
\mu_{zz
}$
1552 \Delta P_
{zz
} =
\frac{\Delta t
}{\tau_p} \
{ P_
{0zz
} - P_
{zz
}(t) \
}
1555 \mu_{zz
} =
1 +
\beta_{zz
} \Delta P_
{zz
}
1557 This is similar to normal pressure coupling, except that the factor
1558 of $
1/
3$ is missing.
1559 The pressure correction in the $z$-direction is then used to get the
1560 correct convergence for the surface tension to the reference value $
\gamma_0$.
1561 The correction factor for the box length in the $x$/$y$-direction is
1563 \mu_{x/y
} =
1 +
\frac{\Delta t
}{2\,
\tau_p} \beta_{x/y
}
1564 \left(
\frac{n
\gamma_0}{\mu_{zz
} L_z
}
1565 -
\left\
{ P_
{zz
}(t)+
\Delta P_
{zz
} -
\frac{P_
{xx
}(t) + P_
{yy
}(t)
}{2} \right\
}
1568 The value of $
\beta_{zz
}$ is more critical than with normal pressure
1569 coupling. Normally an incorrect compressibility will just scale $
\tau_p$,
1570 but with surface tension coupling it affects the convergence of the surface
1572 When $
\beta_{zz
}$ is set to zero (constant box height), $
\Delta P_
{zz
}$ is also set
1573 to zero, which is necessary for obtaining the correct surface tension.
1575 \subsubsection{MTTK pressure control algorithms
}
1577 As mentioned in the previous section, one weakness of leap-frog
1578 integration is in constant pressure simulations, since the pressure
1579 requires a calculation of both the virial and the kinetic energy at
1580 the full time step; for leap-frog, this information is not available
1581 until
{\em after
} the full timestep. Velocity Verlet does allow the
1582 calculation, at the cost of an extra round of global communication,
1583 and can compute, mod any integration errors, the true NPT ensemble.
1585 The full equations, combining both pressure coupling and temperature
1586 coupling, are taken from Martyna
{\em et al.
}~
\cite{Martyna1996
} and
1587 Tuckerman~
\cite{Tuckerman2006
} and are referred to here as MTTK
1588 equations (Martyna-Tuckerman-Tobias-Klein). We introduce for
1589 convenience $
\epsilon = (
1/
3)
\ln (V/V_0)$, where $V_0$ is a reference
1590 volume. The momentum of $
\epsilon$ is $
\veps = p_
{\epsilon}/W =
1591 \dot{\epsilon} =
\dot{V
}/
3V$, and define $
\alpha =
1 +
3/N_
{dof
}$ (see
1592 Ref~
\cite{Tuckerman2006
})
1594 The isobaric equations are
1596 \dot{\rv}_i &=&
\frac{\pb_i}{m_i
} +
\frac{\peps}{W
} \rv_i \nonumber \\
1597 \frac{\dot{\pb}_i
}{m_i
} &=&
\frac{1}{m_i
}\F_i -
\alpha\frac{\peps}{W
} \frac{\pb_i}{m_i
} \nonumber \\
1598 \dot{\epsilon} &=&
\frac{\peps}{W
} \nonumber \\
1599 \frac{\dot{\peps}}{W
} &=&
\frac{3V
}{W
}(P_
{\mathrm{int
}} - P) + (
\alpha-
1)
\left(
\sum_{n=
1}^N
\frac{\pb_i^
2}{m_i
}\right),\\
1603 P_
{\mathrm{int
}} &=& P_
{\mathrm{kin
}} -P_
{\mathrm{vir
}} =
\frac{1}{3V
}\left[\sum_{i=
1}^N
\left(
\frac{\pb_i^
2}{2m_i
} -
\rv_i \cdot \F_i\
1606 The terms including $
\alpha$ are required to make phase space
1607 incompressible~
\cite{Tuckerman2006
}. The $
\epsilon$ acceleration term
1610 \frac{\dot{\peps}}{W
} &=&
\frac{3V
}{W
}\left(
\alpha P_
{\mathrm{kin
}} - P_
{\mathrm{vir
}} - P
\right)
1612 In terms of velocities, these equations become
1614 \dot{\rv}_i &=&
\vv_i +
\veps \rv_i \nonumber \\
1615 \dot{\vv}_i &=&
\frac{1}{m_i
}\F_i -
\alpha\veps \vv_i \nonumber \\
1616 \dot{\epsilon} &=&
\veps \nonumber \\
1617 \dot{\veps} &=&
\frac{3V
}{W
}(P_
{\mathrm{int
}} - P) + (
\alpha-
1)
\left(
\sum_{n=
1}^N
\frac{1}{2} m_i
\vv_i^
2\right)
\nonumber \\
1618 P_
{\mathrm{int
}} &=& P_
{\mathrm{kin
}} - P_
{\mathrm{vir
}} =
\frac{1}{3V
}\left[\sum_{i=
1}^N
\left(
\frac{1}{2} m_i
\vv_i^
2 -
\rv_i \cdot \F_i\right)
\right]
1620 For these equations, the conserved quantity is
1622 H =
\sum_{i=
1}^
{N
} \frac{\pb_i^
2}{2m_i
} + U
\left(
\rv_1,
\rv_2,
\ldots,
\rv_N\right) +
\frac{p_
\epsilon}{2W
} + PV
1624 The next step is to add temperature control. Adding Nos
{\'e
}-Hoover
1625 chains, including to the barostat degree of freedom, where we use
1626 $
\eta$ for the barostat Nos
{\'e
}-Hoover variables, and $Q^
{\prime}$
1627 for the coupling constants of the thermostats of the barostats, we get
1629 \dot{\rv}_i &=&
\frac{\pb_i}{m_i
} +
\frac{\peps}{W
} \rv_i \nonumber \\
1630 \frac{\dot{\pb}_i
}{m_i
} &=&
\frac{1}{m_i
}\F_i -
\alpha\frac{\peps}{W
} \frac{\pb_i}{m_i
} -
\frac{p_
{\xi_1}}{Q_1
}\frac{\pb_i}{m_i
}\nonumber \\
1631 \dot{\epsilon} &=&
\frac{\peps}{W
} \nonumber \\
1632 \frac{\dot{\peps}}{W
} &=&
\frac{3V
}{W
}(
\alpha P_
{\mathrm{kin
}} - P_
{\mathrm{vir
}} - P) -
\frac{p_
{\eta_1}}{Q^
{\prime}_1
}\peps \nonumber \\
1633 \dot{\xi}_k &=&
\frac{p_
{\xi_k}}{Q_k
} \nonumber \\
1634 \dot{\eta}_k &=&
\frac{p_
{\eta_k}}{Q^
{\prime}_k
} \nonumber \\
1635 \dot{p
}_
{\xi_k} &=& G_k -
\frac{p_
{\xi_{k+
1}}}{Q_
{k+
1}} \;\;\;\; k=
1,
\ldots, M-
1 \nonumber \\
1636 \dot{p
}_
{\eta_k} &=& G^
\prime_k -
\frac{p_
{\eta_{k+
1}}}{Q^
\prime_{k+
1}} \;\;\;\; k=
1,
\ldots, M-
1 \nonumber \\
1637 \dot{p
}_
{\xi_M} &=& G_M
\nonumber \\
1638 \dot{p
}_
{\eta_M} &=& G^
\prime_M,
\nonumber \\
1642 P_
{\mathrm{int
}} &=& P_
{\mathrm{kin
}} - P_
{\mathrm{vir
}} =
\frac{1}{3V
}\left[\sum_{i=
1}^N
\left(
\frac{\pb_i^
2}{2m_i
} -
\rv_i \cdot \F_i\right)
\right] \nonumber \\
1643 G_1 &=&
\sum_{i=
1}^N
\frac{\pb^
2_i
}{m_i
} - N_f kT
\nonumber \\
1644 G_k &=&
\frac{p^
2_
{\xi_{k-
1}}}{2Q_
{k-
1}} - kT \;\; k =
2,
\ldots,M
\nonumber \\
1645 G^
\prime_1 &=&
\frac{\peps^
2}{2W
} - kT
\nonumber \\
1646 G^
\prime_k &=&
\frac{p^
2_
{\eta_{k-
1}}}{2Q^
\prime_{k-
1}} - kT \;\; k =
2,
\ldots,M
1648 The conserved quantity is now
1650 H =
\sum_{i=
1}^
{N
} \frac{\pb_i}{2m_i
} + U
\left(
\rv_1,
\rv_2,
\ldots,
\rv_N\right) +
\frac{p^
2_
\epsilon}{2W
} + PV +
\nonumber \\
1651 \sum_{k=
1}^M
\frac{p^
2_
{\xi_k}}{2Q_k
} +
\sum_{k=
1}^M
\frac{p^
2_
{\eta_k}}{2Q^
{\prime}_k
} + N_fkT
\xi_1 + kT
\sum_{i=
2}^M
\xi_k + kT
\sum_{k=
1}^M
\eta_k
1653 Returning to the Trotter decomposition formalism, for pressure control and temperature control~
\cite{Martyna1996
} we get:
1655 iL = iL_1 + iL_2 + iL_
{\epsilon,
1} + iL_
{\epsilon,
2} + iL_
{\mathrm{NHC-baro
}} + iL_
{\mathrm{NHC
}}
1657 where ``NHC-baro'' corresponds to the Nos
{\`e
}-Hoover chain of the barostat,
1658 and NHC corresponds to the NHC of the particles,
1660 iL_1 &=&
\sum_{i=
1}^N
\left[\frac{\pb_i}{m_i
} +
\frac{\peps}{W
}\rv_i\right]\cdot \frac{\partial}{\partial \rv_i} \\
1661 iL_2 &=&
\sum_{i=
1}^N
\F_i -
\alpha \frac{\peps}{W
}\pb_i \cdot \frac{\partial}{\partial \pb_i} \\
1662 iL_
{\epsilon,
1} &=&
\frac{p_
\epsilon}{W
} \frac{\partial}{\partial \epsilon}\\
1663 iL_
{\epsilon,
2} &=& G_
{\epsilon} \frac{\partial}{\partial p_
\epsilon}
1667 G_
{\epsilon} =
3V
\left(
\alpha P_
{\mathrm{kin
}} - P_
{\mathrm{vir
}} - P
\right)
1669 Using the Trotter decomposition, we get
1671 \exp(iL
\dt) &=&
\exp\left(iL_
{\mathrm{NHC-baro
}}\dt/
2\right)
\exp\left(iL_
{\mathrm{NHC
}}\dt/
2\right)
\nonumber \nonumber \\
1672 &&
\exp\left(iL_
{\epsilon,
2}\dt/
2\right)
\exp\left(iL_2
\dt/
2\right)
\nonumber \nonumber \\
1673 &&
\exp\left(iL_
{\epsilon,
1}\dt\right)
\exp\left(iL_1
\dt\right)
\nonumber \nonumber \\
1674 &&
\exp\left(iL_2
\dt/
2\right)
\exp\left(iL_
{\epsilon,
2}\dt/
2\right)
\nonumber \nonumber \\
1675 &&
\exp\left(iL_
{\mathrm{NHC
}}\dt/
2\right)
\exp\left(iL_
{\mathrm{NHC-baro
}}\dt/
2\right) +
\mathcal{O
}(
\dt^
3)
1677 The action of $
\exp\left(iL_1
\dt\right)$ comes from the solution of
1678 the the differential equation
1679 $
\dot{\rv}_i =
\vv_i +
\veps \rv_i$
1680 with $
\vv_i =
\pb_i/m_i$ and $
\veps$ constant with initial condition
1681 $
\rv_i(
0)$, evaluate at $t=
\Delta t$. This yields the evolution
1683 \rv_i(
\dt) =
\rv_i(
0)e^
{\veps \dt} +
\Delta t
\vv_i(
0) e^
{\veps \dt/
2} \sinhx{\veps \dt/
2}.
1685 The action of $
\exp\left(iL_2
\dt/
2\right)$ comes from the solution
1686 of the differential equation $
\dot{\vv}_i =
\frac{\F_i}{m_i
} -
1687 \alpha\veps\vv_i$, yielding
1689 \vv_i(
\dt/
2) =
\vv_i(
0)e^
{-
\alpha\veps \dt/
2} +
\frac{\Delta t
}{2m_i
}\F_i(
0) e^
{-
\alpha\veps \dt/
4}\sinhx{\alpha\veps \dt/
4}.
1691 {\em md-vv-avek
} uses the full step kinetic energies for determining the pressure with the pressure control,
1692 but the half-step-averaged kinetic energy for the temperatures, which can be written as a Trotter decomposition as
1694 \exp(iL
\dt) &=&
\exp\left(iL_
{\mathrm{NHC-baro
}}\dt/
2\right)
\nonumber \exp\left(iL_
{\epsilon,
2}\dt/
2\right)
\exp\left(iL_2
\dt/
2\right)
\nonumber \\
1695 &&
\exp\left(iL_
{\mathrm{NHC
}}\dt/
2\right)
\exp\left(iL_
{\epsilon,
1}\dt\right)
\exp\left(iL_1
\dt\right)
\exp\left(iL_
{\mathrm{NHC
}}\dt/
2\right)
\nonumber \\
1696 &&
\exp\left(iL_2
\dt/
2\right)
\exp\left(iL_
{\epsilon,
2}\dt/
2\right)
\exp\left(iL_
{\mathrm{NHC-baro
}}\dt/
2\right) +
\mathcal{O
}(
\dt^
3)
1699 With constraints, the equations become significantly more complicated,
1700 in that each of these equations need to be solved iteratively for the
1701 constraint forces. Before
{\gromacs} 5.1, these iterative
1702 constraints were solved as described in~
\cite{Yu2010
}. From
{\gromacs}
1703 5.1 onward, MTTK with constraints has been removed because of
1704 numerical stability issues with the iterations.
1706 \subsubsection{Infrequent evaluation of temperature and pressure coupling
}
1708 Temperature and pressure control require global communication to
1709 compute the kinetic energy and virial, which can become costly if
1710 performed every step for large systems. We can rearrange the Trotter
1711 decomposition to give alternate symplectic, reversible integrator with
1712 the coupling steps every $n$ steps instead of every steps. These new
1713 integrators will diverge if the coupling time step is too large, as
1714 the auxiliary variable integrations will not converge. However, in
1715 most cases, long coupling times are more appropriate, as they disturb
1716 the dynamics less~
\cite{Martyna1996
}.
1718 Standard velocity Verlet with Nos
{\'e
}-Hoover temperature control has a Trotter expansion
1720 \exp(iL
\dt) &
\approx&
\exp\left(iL_
{\mathrm{NHC
}}\dt/
2\right)
\exp\left(iL_2
\dt/
2\right)
\nonumber \\
1721 &&
\exp\left(iL_1
\dt\right)
\exp\left(iL_2
\dt/
2\right)
\exp\left(iL_
{\mathrm{NHC
}}\dt/
2\right).
1723 If the Nos
{\'e
}-Hoover chain is sufficiently slow with respect to the motions of the system, we can
1724 write an alternate integrator over $n$ steps for velocity Verlet as
1726 \exp(iL
\dt) &
\approx& (
\exp\left(iL_
{\mathrm{NHC
}}(n
\dt/
2)
\right)
\left[\exp\left(iL_2
\dt/
2\right)
\right.
\nonumber \\
1727 &&
\left.
\exp\left(iL_1
\dt\right)
\exp\left(iL_2
\dt/
2\right)
\right]^n
\exp\left(iL_
{\mathrm{NHC
}}(n
\dt/
2)
\right).
1729 For pressure control, this becomes
1731 \exp(iL
\dt) &
\approx&
\exp\left(iL_
{\mathrm{NHC-baro
}}(n
\dt/
2)
\right)
\exp\left(iL_
{\mathrm{NHC
}}(n
\dt/
2)
\right)
\nonumber \nonumber \\
1732 &&
\exp\left(iL_
{\epsilon,
2}(n
\dt/
2)
\right)
\left[\exp\left(iL_2
\dt/
2\right)
\right.
\nonumber \nonumber \\
1733 &&
\exp\left(iL_
{\epsilon,
1}\dt\right)
\exp\left(iL_1
\dt\right)
\nonumber \nonumber \\
1734 &&
\left.
\exp\left(iL_2
\dt/
2\right)
\right]^n
\exp\left(iL_
{\epsilon,
2}(n
\dt/
2)
\right)
\nonumber \nonumber \\
1735 &&
\exp\left(iL_
{\mathrm{NHC
}}(n
\dt/
2)
\right)
\exp\left(iL_
{\mathrm{NHC-baro
}}(n
\dt/
2)
\right),
1737 where the box volume integration occurs every step, but the auxiliary variable
1738 integrations happen every $n$ steps.
1740 % } % Brace matches ifthenelse test for gmxlite
1743 \subsection{The complete update algorithm
}
1746 \addtolength{\fboxsep}{0.5cm
}
1747 \begin{shadowenv
}[12cm
]
1748 {\large \bf THE UPDATE ALGORITHM
}
1749 \rule{\textwidth}{2pt
} \\
1751 Positions $
\ve{r
}$ of all atoms at time $t$ \\
1752 Velocities $
\ve{v
}$ of all atoms at time $t-
\hDt$ \\
1753 Accelerations $
\ve{F
}/m$ on all atoms at time $t$.\\
1754 (Forces are computed disregarding any constraints)\\
1755 Total kinetic energy and virial at $t-
\Dt$\\
1757 {\bf 1.
} Compute the scaling factors $
\lambda$ and $
\mu$\\
1758 according to
\eqnsref{lambda
}{mu
}\\
1760 {\bf 2.
} Update and scale velocities: $
\ve{v
}' =
\lambda (
\ve{v
} +
1761 \ve{a
} \Delta t)$ \\
1763 {\bf 3.
} Compute new unconstrained coordinates: $
\ve{r
}' =
\ve{r
} +
\ve{v
}'
1766 {\bf 4.
} Apply constraint algorithm to coordinates: constrain($
\ve{r
}^
{'
} \rightarrow \ve{r
}'';
1769 {\bf 5.
} Correct velocities for constraints: $
\ve{v
} = (
\ve{r
}'' -
1770 \ve{r
}) /
\Delta t$ \\
1772 {\bf 6.
} Scale coordinates and box: $
\ve{r
} =
\mu \ve{r
}'';
\ve{b
} =
1775 \caption{The MD update algorithm with the leap-frog integrator
}
1776 \label{fig:complete-update
}
1779 The complete algorithm for the update of velocities and coordinates is
1780 given using leap-frog in
\figref{complete-update
}. The SHAKE algorithm of step
1781 4 is explained below.
1783 {\gromacs} has a provision to ``freeze'' (prevent motion of) selected
1784 particles
\index{frozen atoms
}, which must be defined as a ``
\swapindex{freeze
}{group
}.'' This is implemented
1785 using a
{\em freeze factor $
\ve{f
}_g$
}, which is a vector, and differs for each
1786 freeze group (see
\secref{groupconcept
}). This vector contains only
1787 zero (freeze) or one (don't freeze).
1788 When we take this freeze factor and the external acceleration $
\ve{a
}_h$ into
1789 account the update algorithm for the velocities becomes
1791 \ve{v
}(t+
\hdt)~=~
\ve{f
}_g *
\lambda *
\left[ \ve{v
}(t-
\hdt) +
\frac{\ve{F
}(t)
}{m
}\Delta t +
\ve{a
}_h
\Delta t
\right],
1793 where $g$ and $h$ are group indices which differ per atom.
1795 \subsection{Output step
}
1796 The most important output of the MD run is the
{\em
1797 \swapindex{trajectory
}{file
}}, which contains particle coordinates
1798 and (optionally) velocities at regular intervals.
1799 The trajectory file contains frames that could include positions,
1800 velocities and/or forces, as well as information about the dimensions
1801 of the simulation volume, integration step, integration time, etc. The
1802 interpretation of the time varies with the integrator chosen, as
1803 described above. For Velocity Verlet integrators, velocities labeled
1804 at time $t$ are for that time. For other integrators (e.g. leap-frog,
1805 stochastic dynamics), the velocities labeled at time $t$ are for time
1808 Since the trajectory
1809 files are lengthy, one should not save every step! To retain all
1810 information it suffices to write a frame every
15 steps, since at
1811 least
30 steps are made per period of the highest frequency in the
1812 system, and Shannon's
\normindex{sampling
} theorem states that two samples per
1813 period of the highest frequency in a band-limited signal contain all
1814 available information. But that still gives very long files! So, if
1815 the highest frequencies are not of interest,
10 or
20 samples per ps
1816 may suffice. Be aware of the distortion of high-frequency motions by
1817 the
{\em stroboscopic effect
}, called
{\em aliasing
}: higher frequencies
1818 are mirrored with respect to the sampling frequency and appear as
1821 {\gromacs} can also write reduced-precision coordinates for a subset of
1822 the simulation system to a special compressed trajectory file
1823 format. All the other tools can read and write this format. See
1824 the User Guide for details on how to set up your
{\tt .mdp
} file
1825 to have
{\tt mdrun
} use this feature.
1827 % \ifthenelse{\equal{\gmxlite}{1}}{}{
1828 \section{Shell molecular dynamics
}
1829 {\gromacs} can simulate
\normindex{polarizability
} using the
1830 \normindex{shell model
} of Dick and Overhauser~
\cite{Dick58
}. In such models
1831 a shell particle representing the electronic degrees of freedom is
1832 attached to a nucleus by a spring. The potential energy is minimized with
1833 respect to the shell position at every step of the simulation (see below).
1834 Successful applications of shell models in
{\gromacs} have been published
1835 for $N_2$~
\cite{Jordan95
} and water~
\cite{Maaren2001a
}.
1837 \subsection{Optimization of the shell positions
}
1838 The force
\ve{F
}$_S$ on a shell particle $S$ can be decomposed into two
1841 \ve{F
}_S ~=~
\ve{F
}_
{bond
} +
\ve{F
}_
{nb
}
1843 where
\ve{F
}$_
{bond
}$ denotes the component representing the
1844 polarization energy, usually represented by a harmonic potential and
1845 \ve{F
}$_
{nb
}$ is the sum of Coulomb and van der Waals interactions. If we
1846 assume that
\ve{F
}$_
{nb
}$ is almost constant we can analytically derive the
1847 optimal position of the shell, i.e. where
\ve{F
}$_S$ =
0. If we have the
1848 shell S connected to atom A we have
1850 \ve{F
}_
{bond
} ~=~ k_b
\left(
\ve{x
}_S -
\ve{x
}_A
\right).
1852 In an iterative solver, we have positions
\ve{x
}$_S(n)$ where $n$ is
1853 the iteration count. We now have at iteration $n$
1855 \ve{F
}_
{nb
} ~=~
\ve{F
}_S - k_b
\left(
\ve{x
}_S(n) -
\ve{x
}_A
\right)
1857 and the optimal position for the shells $x_S(n+
1)$ thus follows from
1859 \ve{F
}_S - k_b
\left(
\ve{x
}_S(n) -
\ve{x
}_A
\right) + k_b
\left(
\ve{x
}_S(n+
1) -
\ve{x
}_A
\right) =
0
1863 \Delta \ve{x
}_S =
\ve{x
}_S(n+
1) -
\ve{x
}_S(n)
1867 \Delta \ve{x
}_S =
\ve{F
}_S/k_b
1869 which then yields the algorithm to compute the next trial in the optimization
1872 \ve{x
}_S(n+
1) ~=~
\ve{x
}_S(n) +
\ve{F
}_S/k_b.
1874 % } % Brace matches ifthenelse test for gmxlite
1876 \section{Constraint algorithms
\index{constraint algorithms
}}
1877 Constraints can be imposed in
{\gromacs} using LINCS (default) or
1878 the traditional SHAKE method.
1880 \subsection{\normindex{SHAKE
}}
1881 \label{subsec:SHAKE
}
1882 The SHAKE~
\cite{Ryckaert77
} algorithm changes a set of unconstrained
1883 coordinates $
\ve{r
}^
{'
}$ to a set of coordinates $
\ve{r
}''$ that
1884 fulfill a list of distance constraints, using a set $
\ve{r
}$
1887 {\rm SHAKE
}(
\ve{r
}^
{'
} \rightarrow \ve{r
}'';\,
\ve{r
})
1889 This action is consistent with solving a set of Lagrange multipliers
1890 in the constrained equations of motion. SHAKE needs a
{\em relative tolerance
};
1891 it will continue until all constraints are satisfied within
1892 that relative tolerance. An error message is
1893 given if SHAKE cannot reset the coordinates because the deviation is
1894 too large, or if a given number of iterations is surpassed.
1896 Assume the equations of motion must fulfill $K$ holonomic constraints,
1899 \sigma_k(
\ve{r
}_1
\ldots \ve{r
}_N) =
0; \;\; k=
1 \ldots K.
1901 For example, $(
\ve{r
}_1 -
\ve{r
}_2)^
2 - b^
2 =
0$.
1902 Then the forces are defined as
1904 -
\frac{\partial}{\partial \ve{r
}_i
} \left( V +
\sum_{k=
1}^K
\lambda_k
1907 where $
\lambda_k$ are Lagrange multipliers which must be solved to
1908 fulfill the constraint equations. The second part of this sum
1909 determines the
{\em constraint forces
} $
\ve{G
}_i$, defined by
1911 \ve{G
}_i = -
\sum_{k=
1}^K
\lambda_k \frac{\partial \sigma_k}{\partial
1914 The displacement due to the constraint forces in the leap-frog or
1915 Verlet algorithm is equal to $(
\ve{G
}_i/m_i)(
\Dt)^
2$. Solving the
1916 Lagrange multipliers (and hence the displacements) requires the
1917 solution of a set of coupled equations of the second degree. These are
1918 solved iteratively by SHAKE.
1919 % \ifthenelse{\equal{\gmxlite}{1}}{}{
1920 \label{subsec:SETTLE
}
1921 For the special case of rigid water molecules, that often make up more
1922 than
80\% of the simulation system we have implemented the
1924 algorithm~
\cite{Miyamoto92
} (
\secref{constraints
}).
1926 For velocity Verlet, an additional round of constraining must be
1927 done, to constrain the velocities of the second velocity half step,
1928 removing any component of the velocity parallel to the bond vector.
1929 This step is called RATTLE, and is covered in more detail in the
1930 original Andersen paper~
\cite{Andersen1983a
}.
1932 % } % Brace matches ifthenelse test for gmxlite
1937 \newcommand{\fs}[1]{\begin{equation
} \label{eqn:
#1}}
1938 \newcommand{\fe}{\end{equation
}}
1939 \newcommand{\p}{\partial}
1940 \newcommand{\Bm}{\ve{B
}}
1941 \newcommand{\M}{\ve{M
}}
1942 \newcommand{\iM}{\M^
{-
1}}
1943 \newcommand{\Tm}{\ve{T
}}
1944 \newcommand{\Sm}{\ve{S
}}
1945 \newcommand{\fo}{\ve{f
}}
1946 \newcommand{\con}{\ve{g
}}
1947 \newcommand{\lenc}{\ve{d
}}
1949 % \ifthenelse{\equal{\gmxlite}{1}}{}{
1950 \subsection{\normindex{LINCS
}}
1951 \label{subsec:lincs
}
1953 \subsubsection{The LINCS algorithm
}
1954 LINCS is an algorithm that resets bonds to their correct lengths
1955 after an unconstrained update~
\cite{Hess97
}.
1956 The method is non-iterative, as it always uses two steps.
1957 Although LINCS is based on matrices, no matrix-matrix multiplications are
1958 needed. The method is more stable and faster than SHAKE,
1959 but it can only be used with bond constraints and
1960 isolated angle constraints, such as the proton angle in OH.
1961 Because of its stability, LINCS is especially useful for Brownian dynamics.
1962 LINCS has two parameters, which are explained in the subsection parameters.
1963 The parallel version of LINCS, P-LINCS, is described
1964 in subsection
\ssecref{plincs
}.
1966 \subsubsection{The LINCS formulas
}
1967 We consider a system of $N$ particles, with positions given by a
1968 $
3N$ vector $
\ve{r
}(t)$.
1969 For molecular dynamics the equations of motion are given by Newton's Law
1971 {\de^
2 \ve{r
} \over \de t^
2} =
\iM \ve{F
},
1973 where $
\ve{F
}$ is the $
3N$ force vector
1974 and $
\M$ is a $
3N
\times 3N$ diagonal matrix,
1975 containing the masses of the particles.
1976 The system is constrained by $K$ time-independent constraint equations
1978 g_i(
\ve{r
}) = |
\ve{r
}_
{i_1
}-
\ve{r
}_
{i_2
} | - d_i =
0 ~~~~~~i=
1,
\ldots,K.
1981 In a numerical integration scheme, LINCS is applied after an
1982 unconstrained update, just like SHAKE. The algorithm works in two
1983 steps (see figure
\figref{lincs
}). In the first step, the projections
1984 of the new bonds on the old bonds are set to zero. In the second step,
1985 a correction is applied for the lengthening of the bonds due to
1986 rotation. The numerics for the first step and the second step are very
1987 similar. A complete derivation of the algorithm can be found in
1988 \cite{Hess97
}. Only a short description of the first step is given
1992 \centerline{\includegraphics[height=
50mm
]{plots/lincs
}}
1993 \caption[The three position updates needed for one time step.
]{The
1994 three position updates needed for one time step. The dashed line is
1995 the old bond of length $d$, the solid lines are the new bonds. $l=d
1996 \cos \theta$ and $p=(
2 d^
2 - l^
2)^
{1 \over 2}$.
}
2000 A new notation is introduced for the gradient matrix of the constraint
2001 equations which appears on the right hand side of this equation:
2003 B_
{hi
} =
{\p g_h
\over \p r_i
}
2005 Notice that $
\Bm$ is a $K
\times 3N$ matrix, it contains the directions
2007 The following equation shows how the new constrained coordinates
2008 $
\ve{r
}_
{n+
1}$ are related to the unconstrained coordinates
2009 $
\ve{r
}_
{n+
1}^
{unc
}$ by
2012 \ve{r
}_
{n+
1}=(
\ve{I
}-
\Tm_n \ve{B
}_n)
\ve{r
}_
{n+
1}^
{unc
} +
\Tm_n \lenc=
2014 \ve{r
}_
{n+
1}^
{unc
} -
2015 \iM \Bm_n (
\Bm_n \iM \Bm_n^T)^
{-
1} (
\Bm_n \ve{r
}_
{n+
1}^
{unc
} -
\lenc)
2018 where $
\Tm =
\iM \Bm^T (
\Bm \iM \Bm^T)^
{-
1}$.
2019 The derivation of this equation from
\eqnsref{c1
}{c2
} can be found
2022 This first step does not set the real bond lengths to the prescribed lengths,
2023 but the projection of the new bonds onto the old directions of the bonds.
2024 To correct for the rotation of bond $i$, the projection of the
2025 bond, $p_i$, on the old direction is set to
2027 p_i=
\sqrt{2 d_i^
2 - l_i^
2},
2029 where $l_i$ is the bond length after the first projection.
2030 The corrected positions are
2032 \ve{r
}_
{n+
1}^*=(
\ve{I
}-
\Tm_n \Bm_n)
\ve{r
}_
{n+
1} +
\Tm_n \ve{p
}.
2034 This correction for rotational effects is actually an iterative process,
2035 but during MD only one iteration is applied.
2036 The relative constraint deviation after this procedure will be less than
2037 0.0001 for every constraint.
2038 In energy minimization, this might not be accurate enough, so the number
2039 of iterations is equal to the order of the expansion (see below).
2041 Half of the CPU time goes to inverting the constraint coupling
2042 matrix $
\Bm_n \iM \Bm_n^T$, which has to be done every time step.
2043 This $K
\times K$ matrix
2044 has $
1/m_
{i_1
} +
1/m_
{i_2
}$ on the diagonal.
2045 The off-diagonal elements are only non-zero when two bonds are connected,
2047 $
\cos \phi /m_c$, where $m_c$ is
2048 the mass of the atom connecting the
2049 two bonds and $
\phi$ is the angle between the bonds.
2051 The matrix $
\Tm$ is inverted through a power expansion.
2052 A $K
\times K$ matrix $
\ve{S
}$ is
2053 introduced which is the inverse square root of
2054 the diagonal of $
\Bm_n \iM \Bm_n^T$.
2055 This matrix is used to convert the diagonal elements
2056 of the coupling matrix to one:
2059 (
\Bm_n \iM \Bm_n^T)^
{-
1}
2060 =
\Sm \Sm^
{-
1} (
\Bm_n \iM \Bm_n^T)^
{-
1} \Sm^
{-
1} \Sm \\
[2mm
]
2061 =
\Sm (
\Sm \Bm_n \iM \Bm_n^T
\Sm)^
{-
1} \Sm =
2062 \Sm (
\ve{I
} -
\ve{A
}_n)^
{-
1} \Sm
2065 The matrix $
\ve{A
}_n$ is symmetric and sparse and has zeros on the diagonal.
2066 Thus a simple trick can be used to calculate the inverse:
2068 (
\ve{I
}-
\ve{A
}_n)^
{-
1}=
2069 \ve{I
} +
\ve{A
}_n +
\ve{A
}_n^
2 +
\ve{A
}_n^
3 +
\ldots
2072 This inversion method is only valid if the absolute values of all the
2073 eigenvalues of $
\ve{A
}_n$ are smaller than one.
2074 In molecules with only bond constraints, the connectivity is so low
2075 that this will always be true, even if ring structures are present.
2076 Problems can arise in angle-constrained molecules.
2077 By constraining angles with additional distance constraints,
2078 multiple small ring structures are introduced.
2079 This gives a high connectivity, leading to large eigenvalues.
2080 Therefore LINCS should NOT be used with coupled angle-constraints.
2082 For molecules with all bonds constrained the eigenvalues of $A$
2083 are around
0.4. This means that with each additional order
2084 in the expansion
\eqnref{m3
} the deviations decrease by a factor
0.4.
2085 But for relatively isolated triangles of constraints the largest
2086 eigenvalue is around
0.7.
2087 Such triangles can occur when removing hydrogen angle vibrations
2088 with an additional angle constraint in alcohol groups
2089 or when constraining water molecules with LINCS, for instance
2090 with flexible constraints.
2091 The constraints in such triangles converge twice as slow as
2092 the other constraints. Therefore, starting with
{\gromacs} 4,
2093 additional terms are added to the expansion for such triangles
2095 (
\ve{I
}-
\ve{A
}_n)^
{-
1} \approx
2096 \ve{I
} +
\ve{A
}_n +
\ldots +
\ve{A
}_n^
{N_i
} +
2097 \left(
\ve{A
}^*_n +
\ldots +
{\ve{A
}_n^*
}^
{N_i
} \right)
\ve{A
}_n^
{N_i
}
2099 where $N_i$ is the normal order of the expansion and
2100 $
\ve{A
}^*$ only contains the elements of $
\ve{A
}$ that couple
2101 constraints within rigid triangles, all other elements are zero.
2102 In this manner, the accuracy of angle constraints comes close
2103 to that of the other constraints, while the series of matrix vector
2104 multiplications required for determining the expansion
2105 only needs to be extended for a few constraint couplings.
2106 This procedure is described in the P-LINCS paper
\cite{Hess2008a
}.
2108 \subsubsection{The LINCS Parameters
}
2109 The accuracy of LINCS depends on the number of matrices used
2110 in the expansion
\eqnref{m3
}. For MD calculations a fourth order
2111 expansion is enough. For Brownian dynamics with
2112 large time steps an eighth order expansion may be necessary.
2113 The order is a parameter in the
{\tt *.mdp
} file.
2114 The implementation of LINCS is done in such a way that the
2115 algorithm will never crash. Even when it is impossible to
2116 to reset the constraints LINCS will generate a conformation
2117 which fulfills the constraints as well as possible.
2118 However, LINCS will generate a warning when in one step a bond
2119 rotates over more than a predefined angle.
2120 This angle is set by the user in the
{\tt *.mdp
} file.
2122 % } % Brace matches ifthenelse test for gmxlite
2125 \section{Simulated Annealing
}
2127 The well known
\swapindex{simulated
}{annealing
}
2128 (SA) protocol is supported in
{\gromacs}, and you can even couple multiple
2129 groups of atoms separately with an arbitrary number of reference temperatures
2130 that change during the simulation. The annealing is implemented by simply
2131 changing the current reference temperature for each group in the temperature
2132 coupling, so the actual relaxation and coupling properties depends on the
2133 type of thermostat you use and how hard you are coupling it. Since we are
2134 changing the reference temperature it is important to remember that the system
2135 will NOT instantaneously reach this value - you need to allow for the inherent
2136 relaxation time in the coupling algorithm too. If you are changing the
2137 annealing reference temperature faster than the temperature relaxation you
2138 will probably end up with a crash when the difference becomes too large.
2140 The annealing protocol is specified as a series of corresponding times and
2141 reference temperatures for each group, and you can also choose whether you only
2142 want a single sequence (after which the temperature will be coupled to the
2143 last reference value), or if the annealing should be periodic and restart at
2144 the first reference point once the sequence is completed. You can mix and
2145 match both types of annealing and non-annealed groups in your simulation.
2147 \newcommand{\vrond}{\stackrel{\circ}{\ve{r
}}}
2148 \newcommand{\rond}{\stackrel{\circ}{r
}}
2149 \newcommand{\ruis}{\ve{r
}^G
}
2151 % \ifthenelse{\equal{\gmxlite}{1}}{}{
2152 \section{Stochastic Dynamics
\swapindexquiet{stochastic
}{dynamics
}}
2154 Stochastic or velocity
\swapindex{Langevin
}{dynamics
} adds a friction
2155 and a noise term to Newton's equations of motion, as
2158 m_i
{\de^
2 \ve{r
}_i
\over \de t^
2} =
2159 - m_i
\gamma_i {\de \ve{r
}_i
\over \de t
} +
\ve{F
}_i(
\ve{r
}) +
\vrond_i,
2161 where $
\gamma_i$ is the friction constant $
[1/
\mbox{ps
}]$ and
2162 $
\vrond_i\!\!(t)$ is a noise process with
2163 $
\langle \rond_i\!\!(t)
\rond_j\!\!(t+s)
\rangle =
2164 2 m_i
\gamma_i k_B T
\delta(s)
\delta_{ij
}$.
2165 When $
1/
\gamma_i$ is large compared to the time scales present in the system,
2166 one could see stochastic dynamics as molecular dynamics with stochastic
2167 temperature-coupling. The advantage compared to MD with Berendsen
2168 temperature-coupling is that in case of SD the generated ensemble is known.
2169 For simulating a system in vacuum there is the additional advantage that there is no
2170 accumulation of errors for the overall translational and rotational
2172 When $
1/
\gamma_i$ is small compared to the time scales present in the system,
2173 the dynamics will be completely different from MD, but the sampling is
2176 In
{\gromacs} there are two algorithms to integrate equation (
\ref{SDeq
}):
2177 a simple and efficient one
2178 and a more complex leap-frog algorithm~
\cite{Gunsteren88
}, which is now deprecated.
2179 The accuracy of both integrators is equivalent to the normal MD leap-frog and
2180 Velocity Verlet integrator, except with constraints where the complex
2181 SD integrator samples at a temperature that is slightly too high (although that error is smaller than the one from the Velocity Verlet integrator that uses the kinetic energy from the full-step velocity). The simple integrator is nearly identical to the common way of discretizing the Langevin equation, but the friction and velocity term are applied in an impulse fashion~
\cite{Goga2012
}.
2182 The simple integrator is:
2185 \ve{v
}' &~=~&
\ve{v
}(t-
\hDt) +
\frac{1}{m
}\ve{F
}(t)
\Dt \\
2186 \Delta\ve{v
} &~=~& -
\alpha \,
\ve{v
}'(t+
\hDt) +
\sqrt{\frac{k_B T
}{m
}(
1 -
\alpha^
2)
} \,
\ruis_i \\
2187 \ve{r
}(t+
\Dt) &~=~&
\ve{r
}(t)+
\left(
\ve{v
}' +
\frac{1}{2}\Delta \ve{v
}\right)
\Dt \label{eqn:sd1_x_upd
}\\
2188 \ve{v
}(t+
\hDt) &~=~&
\ve{v
}' +
\Delta \ve{v
} \\
2189 \alpha &~=~&
1 - e^
{-
\gamma \Dt}
2191 where $
\ruis_i$ is Gaussian distributed noise with $
\mu =
0$, $
\sigma =
1$.
2192 The velocity is first updated a full time step without friction and noise to get $
\ve{v
}'$, identical to the normal update in leap-frog. The friction and noise are then applied as an impulse at step $t+
\Dt$. The advantage of this scheme is that the velocity-dependent terms act at the full time step, which makes the correct integration of forces that depend on both coordinates and velocities, such as constraints and dissipative particle dynamics (DPD, not implented yet), straightforward. With constraints, the coordinate update
\eqnref{sd1_x_upd
} is split into a normal leap-frog update and a $
\Delta \ve{v
}$. After both of these updates the constraints are applied to coordinates and velocities.
2194 In the deprecated complex algorithm, four Gaussian random numbers are required
2195 per integration step per degree of freedom, and with constraints the
2196 coordinates need to be constrained twice per integration step.
2197 Depending on the computational cost of the force calculation,
2198 this can take a significant part of the simulation time.
2199 Exact continuation of a stochastic dynamics simulation is not possible,
2200 because the state of the random number generator is not stored.
2202 When using SD as a thermostat, an appropriate value for $
\gamma$ is e.g.
0.5 ps$^
{-
1}$,
2203 since this results in a friction that is lower than the internal friction
2204 of water, while it still provides efficient thermostatting.
2207 \section{Brownian Dynamics
\swapindexquiet{Brownian
}{dynamics
}}
2209 In the limit of high friction, stochastic dynamics reduces to
2210 Brownian dynamics, also called position Langevin dynamics.
2211 This applies to over-damped systems,
2212 {\ie} systems in which the inertia effects are negligible.
2215 {\de \ve{r
}_i
\over \de t
} =
\frac{1}{\gamma_i} \ve{F
}_i(
\ve{r
}) +
\vrond_i
2217 where $
\gamma_i$ is the friction coefficient $
[\mbox{amu/ps
}]$ and
2218 $
\vrond_i\!\!(t)$ is a noise process with
2219 $
\langle \rond_i\!\!(t)
\rond_j\!\!(t+s)
\rangle =
2220 2 \delta(s)
\delta_{ij
} k_B T /
\gamma_i$.
2221 In
{\gromacs} the equations are integrated with a simple, explicit scheme
2223 \ve{r
}_i(t+
\Delta t) =
\ve{r
}_i(t) +
2224 {\Delta t
\over \gamma_i} \ve{F
}_i(
\ve{r
}(t))
2225 +
\sqrt{2 k_B T
{\Delta t
\over \gamma_i}}\,
\ruis_i,
2227 where $
\ruis_i$ is Gaussian distributed noise with $
\mu =
0$, $
\sigma =
1$.
2228 The friction coefficients $
\gamma_i$ can be chosen the same for all
2229 particles or as $
\gamma_i = m_i\,
\gamma_i$, where the friction constants
2230 $
\gamma_i$ can be different for different groups of atoms.
2231 Because the system is assumed to be over-damped, large timesteps
2232 can be used. LINCS should be used for the constraints since SHAKE
2233 will not converge for large atomic displacements.
2234 BD is an option of the
{\tt mdrun
} program.
2235 % } % Brace matches ifthenelse test for gmxlite
2237 \section{Energy Minimization
}
2238 \label{sec:EM
}\index{energy minimization
}%
2239 Energy minimization in
{\gromacs} can be done using steepest descent,
2240 conjugate gradients, or l-bfgs (limited-memory
2241 Broyden-Fletcher-Goldfarb-Shanno quasi-Newtonian minimizer...we
2242 prefer the abbreviation). EM is just an option of the
{\tt mdrun
}
2245 \subsection{Steepest Descent
\index{steepest descent
}}
2246 Although steepest descent is certainly not the most efficient
2247 algorithm for searching, it is robust and easy to implement.
2249 We define the vector $
\ve{r
}$ as the vector of all $
3N$ coordinates.
2250 Initially a maximum displacement $h_0$ (
{\eg} 0.01 nm) must be given.
2252 First the forces $
\ve{F
}$ and potential energy are calculated.
2253 New positions are calculated by
2255 \ve{r
}_
{n+
1} =
\ve{r
}_n +
\frac{\ve{F
}_n
}{\max (|
\ve{F
}_n|)
} h_n,
2257 where $h_n$ is the maximum displacement and $
\ve{F
}_n$ is the force,
2258 or the negative gradient of the potential $V$. The notation $
\max
2259 (|
\ve{F
}_n|)$ means the largest of the absolute values of the force
2260 components. The forces and energy are again computed for the new positions \\
2261 If ($V_
{n+
1} < V_n$) the new positions are accepted and $h_
{n+
1} =
1.2
2263 If ($V_
{n+
1} \geq V_n$) the new positions are rejected and $h_n =
0.2 h_n$.
2265 The algorithm stops when either a user-specified number of force
2266 evaluations has been performed (
{\eg} 100), or when the maximum of the absolute
2267 values of the force (gradient) components is smaller than a specified
2269 Since force truncation produces some noise in the
2270 energy evaluation, the stopping criterion should not be made too tight
2271 to avoid endless iterations. A reasonable value for $
\epsilon$ can be
2272 estimated from the root mean square force $f$ a harmonic oscillator would exhibit at a
2273 temperature $T$. This value is
2275 f =
2 \pi \nu \sqrt{ 2mkT
},
2277 where $
\nu$ is the oscillator frequency, $m$ the (reduced) mass, and
2278 $k$ Boltzmann's constant. For a weak oscillator with a wave number of
2279 100 cm$^
{-
1}$ and a mass of
10 atomic units, at a temperature of
1 K,
2280 $f=
7.7$ kJ~mol$^
{-
1}$~nm$^
{-
1}$. A value for $
\epsilon$ between
1 and
2283 % \ifthenelse{\equal{\gmxlite}{1}}{}{
2284 \subsection{Conjugate Gradient
\index{conjugate gradient
}}
2285 Conjugate gradient is slower than steepest descent in the early stages
2286 of the minimization, but becomes more efficient closer to the energy
2287 minimum. The parameters and stop criterion are the same as for
2288 steepest descent. In
{\gromacs} conjugate gradient can not be used
2289 with constraints, including the SETTLE algorithm for
2290 water~
\cite{Miyamoto92
}, as this has not been implemented. If water is
2291 present it must be of a flexible model, which can be specified in the
2292 {\tt *.mdp
} file by
{\tt define = -DFLEXIBLE
}.
2294 This is not really a restriction, since the accuracy of conjugate
2295 gradient is only required for minimization prior to a normal-mode
2296 analysis, which cannot be performed with constraints. For most other
2297 purposes steepest descent is efficient enough.
2298 % } % Brace matches ifthenelse test for gmxlite
2300 % \ifthenelse{\equal{\gmxlite}{1}}{}{
2301 \subsection{\normindex{L-BFGS
}}
2302 The original BFGS algorithm works by successively creating better
2303 approximations of the inverse Hessian matrix, and moving the system to
2304 the currently estimated minimum. The memory requirements for this are
2305 proportional to the square of the number of particles, so it is not
2306 practical for large systems like biomolecules. Instead, we use the
2307 L-BFGS algorithm of Nocedal~
\cite{Byrd95a,Zhu97a
}, which approximates
2308 the inverse Hessian by a fixed number of corrections from previous
2309 steps. This sliding-window technique is almost as efficient as the
2310 original method, but the memory requirements are much lower -
2311 proportional to the number of particles multiplied with the correction
2312 steps. In practice we have found it to converge faster than conjugate
2313 gradients, but due to the correction steps it is not yet parallelized.
2314 It is also noteworthy that switched or shifted interactions usually
2315 improve the convergence, since sharp cut-offs mean the potential
2316 function at the current coordinates is slightly different from the
2317 previous steps used to build the inverse Hessian approximation.
2318 % } % Brace matches ifthenelse test for gmxlite
2320 % \ifthenelse{\equal{\gmxlite}{1}}{}{
2321 \section{Normal-Mode Analysis
\index{normal-mode analysis
}\index{NMA
}}
2322 Normal-mode analysis~
\cite{Levitt83,Go83,BBrooks83b
}
2323 can be performed using
{\gromacs}, by diagonalization of the mass-weighted
2324 \normindex{Hessian
} $H$:
2326 R^T M^
{-
1/
2} H M^
{-
1/
2} R &=&
\mbox{diag
}(
\lambda_1,
\ldots,
\lambda_{3N
})
2328 \lambda_i &=& (
2 \pi \omega_i)^
2
2330 where $M$ contains the atomic masses, $R$ is a matrix that contains
2331 the eigenvectors as columns, $
\lambda_i$ are the eigenvalues
2332 and $
\omega_i$ are the corresponding frequencies.
2334 First the Hessian matrix, which is a $
3N
\times 3N$ matrix where $N$
2335 is the number of atoms, needs to be calculated:
2337 H_
{ij
} &=&
\frac{\partial^
2 V
}{\partial x_i
\partial x_j
}
2339 where $x_i$ and $x_j$ denote the atomic x, y or z coordinates.
2340 In practice, this equation is not used, but the Hessian is
2341 calculated numerically from the force as:
2344 \frac{f_i(
{\bf x
}+h
{\bf e
}_j) - f_i(
{\bf x
}-h
{\bf e
}_j)
}{2h
}
2346 f_i &=& -
\frac{\partial V
}{\partial x_i
}
2348 where $
{\bf e
}_j$ is the unit vector in direction $j$.
2349 It should be noted that
2350 for a usual normal-mode calculation, it is necessary to completely minimize
2351 the energy prior to computation of the Hessian.
2352 The tolerance required depends on the type of system,
2353 but a rough indication is
0.001 kJ mol$^
{-
1}$.
2354 Minimization should be done with conjugate gradients or L-BFGS in double precision.
2356 A number of
{\gromacs} programs are involved in these
2357 calculations. First, the energy should be minimized using
{\tt mdrun
}.
2358 Then,
{\tt mdrun
} computes the Hessian.
{\bf Note
} that for generating
2359 the run input file, one should use the minimized conformation from
2360 the full precision trajectory file, as the structure file is not
2362 {\tt \normindex{g_nmeig
}} does the diagonalization and
2363 the sorting of the normal modes according to their frequencies.
2364 Both
{\tt mdrun
} and
{\tt g_nmeig
} should be run in double precision.
2365 The normal modes can be analyzed with the program
{\tt g_anaeig
}.
2366 Ensembles of structures at any temperature and for any subset of
2367 normal modes can be generated with
{\tt \normindex{g_nmens
}}.
2368 An overview of normal-mode analysis and the related principal component
2369 analysis (see
\secref{covanal
}) can be found in~
\cite{Hayward95b
}.
2370 % } % Brace matches ifthenelse test for gmxlite
2372 % \ifthenelse{\equal{\gmxlite}{1}}{}{
2374 \section{Free energy calculations
\index{free energy calculations
}}
2376 \subsection{Slow-growth methods
\index{slow-growth methods
}}
2377 Free energy calculations can be performed
2378 in
{\gromacs} using a number of methods, including ``slow-growth.'' An example problem
2379 might be calculating the difference in free energy of binding of an inhibitor
{\bf I
}
2380 to an enzyme
{\bf E
} and to a mutated enzyme
{\bf E$^
{\prime}$
}. It
2381 is not feasible with computer simulations to perform a docking
2382 calculation for such a large complex, or even releasing the inhibitor from
2383 the enzyme in a reasonable amount of computer time with reasonable accuracy.
2384 However, if we consider the free energy cycle in~
\figref{free
}A
2387 \Delta G_1 -
\Delta G_2 =
\Delta G_3 -
\Delta G_4
2390 If we are interested in the left-hand term we can equally well compute
2391 the right-hand term.
2393 \centerline{\includegraphics[width=
6cm,angle=
270]{plots/free1
}\hspace{2cm
}\includegraphics[width=
6cm,angle=
270]{plots/free2
}}
2394 \caption[Free energy cycles.
]{Free energy cycles.
{\bf A:
} to
2395 calculate $
\Delta G_
{12}$, the free energy difference between the
2396 binding of inhibitor
{\bf I
} to enzymes
{\bf E
} respectively
{\bf
2397 E$^
{\prime}$
}.
{\bf B:
} to calculate $
\Delta G_
{12}$, the free energy
2398 difference for binding of inhibitors
{\bf I
} respectively
{\bf I$^
{\prime}$
} to
2403 If we want to compute the difference in free energy of binding of two
2404 inhibitors
{\bf I
} and
{\bf I$^
{\prime}$
} to an enzyme
{\bf E
} (
\figref{free
}B)
2405 we can again use
\eqnref{ddg
} to compute the desired property.
2407 \newcommand{\sA}{^
{\mathrm{A
}}}
2408 \newcommand{\sB}{^
{\mathrm{B
}}}
2409 Free energy differences between two molecular species can
2410 be calculated in
{\gromacs} using the ``slow-growth'' method.
2411 Such free energy differences between different molecular species are
2412 physically meaningless, but they can be used to obtain meaningful
2413 quantities employing a thermodynamic cycle.
2414 The method requires a simulation during which the Hamiltonian of the
2415 system changes slowly from that describing one system (A) to that
2416 describing the other system (B). The change must be so slow that the
2417 system remains in equilibrium during the process; if that requirement
2418 is fulfilled, the change is reversible and a slow-growth simulation from B to A
2419 will yield the same results (but with a different sign) as a slow-growth
2420 simulation from A to B. This is a useful check, but the user should be
2421 aware of the danger that equality of forward and backward growth results does
2422 not guarantee correctness of the results.
2424 The required modification of the Hamiltonian $H$ is realized by making
2425 $H$ a function of a
\textit{coupling parameter
} $
\lambda:
2426 H=H(p,q;
\lambda)$ in such a way that $
\lambda=
0$ describes system A
2427 and $
\lambda=
1$ describes system B:
2429 H(p,q;
0)=H
\sA (p,q);~~~~ H(p,q;
1)=H
\sB (p,q).
2431 In
{\gromacs}, the functional form of the $
\lambda$-dependence is
2432 different for the various force-field contributions and is described
2433 in section
\secref{feia
}.
2435 The Helmholtz free energy $A$ is related to the
2436 partition function $Q$ of an $N,V,T$ ensemble, which is assumed to be
2437 the equilibrium ensemble generated by a MD simulation at constant
2438 volume and temperature. The generally more useful Gibbs free energy
2439 $G$ is related to the partition function $
\Delta$ of an $N,p,T$
2440 ensemble, which is assumed to be the equilibrium ensemble generated by
2441 a MD simulation at constant pressure and temperature:
2443 A(
\lambda) &=& -k_BT
\ln Q \\
2444 Q &=& c
\int\!\!
\int \exp[-
\beta H(p,q;
\lambda)
]\,dp\,dq \\
2445 G(
\lambda) &=& -k_BT
\ln \Delta \\
2446 \Delta &=& c
\int\!\!
\int\!\!
\int \exp[-
\beta H(p,q;
\lambda) -
\beta
2450 where $
\beta =
1/(k_BT)$ and $c = (N! h^
{3N
})^
{-
1}$.
2451 These integrals over phase space cannot be evaluated from a
2452 simulation, but it is possible to evaluate the derivative with
2453 respect to $
\lambda$ as an ensemble average:
2455 \frac{dA
}{d
\lambda} =
\frac{\int\!\!
\int (
\partial H/
\partial
2456 \lambda)
\exp[-
\beta H(p,q;
\lambda)
]\,dp\,dq
}{\int\!\!
\int \exp[-
\beta
2457 H(p,q;
\lambda)
]\,dp\,dq
} =
2458 \left\langle \frac{\partial H
}{\partial \lambda} \right\rangle_{NVT;
\lambda},
2460 with a similar relation for $dG/d
\lambda$ in the $N,p,T$
2461 ensemble. The difference in free energy between A and B can be found
2462 by integrating the derivative over $
\lambda$:
2464 A
\sB(V,T)-A
\sA(V,T) &=&
\int_0^
1 \left\langle \frac{\partial
2465 H
}{\partial \lambda} \right\rangle_{NVT;
\lambda} \,d
\lambda
2467 G
\sB(p,T)-G
\sA(p,T) &=&
\int_0^
1 \left\langle \frac{\partial
2468 H
}{\partial \lambda} \right\rangle_{NpT;
\lambda} \,d
\lambda.
2471 If one wishes to evaluate $G
\sB(p,T)-G
\sA(p,T)$,
2472 the natural choice is a constant-pressure simulation. However, this
2473 quantity can also be obtained from a slow-growth simulation at
2474 constant volume, starting with system A at pressure $p$ and volume $V$
2475 and ending with system B at pressure $p_B$, by applying the following
2476 small (but, in principle, exact) correction:
2479 A
\sB(V)-A
\sA(V) -
\int_p^
{p
\sB}[V
\sB(p')-V
]\,dp'
2481 Here we omitted the constant $T$ from the notation. This correction is
2482 roughly equal to $-
\frac{1}{2} (p
\sB-p)
\Delta V=(
\Delta V)^
2/(
2
2483 \kappa V)$, where $
\Delta V$ is the volume change at $p$ and $
\kappa$
2484 is the isothermal compressibility. This is usually
2485 small; for example, the growth of a water molecule from nothing
2486 in a bath of
1000 water molecules at constant volume would produce an
2487 additional pressure of as much as
22 bar, but a correction to the
2488 Helmholtz free energy of just -
1 kJ mol$^
{-
1}$.
%-20 J/mol.
2490 In Cartesian coordinates, the kinetic energy term in the Hamiltonian
2491 depends only on the momenta, and can be separately integrated and, in
2492 fact, removed from the equations. When masses do not change, there is
2493 no contribution from the kinetic energy at all; otherwise the
2494 integrated contribution to the free energy is $-
\frac{3}{2} k_BT
\ln
2495 (m
\sB/m
\sA)$.
{\bf Note
} that this is only true in the absence of constraints.
2497 \subsection{Thermodynamic integration
\index{thermodynamic integration
}\index{BAR
}\index{Bennett's acceptance ratio
}}
2498 {\gromacs} offers the possibility to integrate eq.~
\ref{eq:delA
} or
2499 eq.
\ref{eq:delG
} in one simulation over the full range from A to
2500 B. However, if the change is large and insufficient sampling can be
2501 expected, the user may prefer to determine the value of $
\langle
2502 dG/d
\lambda \rangle$ accurately at a number of well-chosen
2503 intermediate values of $
\lambda$. This can easily be done by setting
2504 the stepsize
{\tt delta_lambda
} to zero. Each simulation can be
2505 equilibrated first, and a proper error estimate can be made for each
2506 value of $dG/d
\lambda$ from the fluctuation of $
\partial H/
\partial
2507 \lambda$. The total free energy change is then determined afterward
2508 by an appropriate numerical integration procedure.
2510 {\gromacs} now also supports the use of Bennett's Acceptance Ratio~
\cite{Bennett1976
}
2511 for calculating values of $
\Delta$G for transformations from state A to state B using
2512 the program
{\tt \normindex{g_bar
}}. The same data can also be used to calculate free
2513 energies using MBAR~
\cite{Shirts2008
}, though the analysis currently requires external tools from
2514 the external
{\tt pymbar
} package, at https://SimTK.org/home/pymbar.
2516 The $
\lambda$-dependence for the force-field contributions is
2517 described in detail in section
\secref{feia
}.
2518 % } % Brace matches ifthenelse test for gmxlite
2520 % \ifthenelse{\equal{\gmxlite}{1}}{}{
2521 \section{Replica exchange
\index{replica exchange
}}
2522 Replica exchange molecular dynamics (
\normindex{REMD
})
2523 is a method that can be used to speed up
2524 the sampling of any type of simulation, especially if
2525 conformations are separated by relatively high energy barriers.
2526 It involves simulating multiple replicas of the same system
2527 at different temperatures and randomly exchanging the complete state
2528 of two replicas at regular intervals with the probability:
2530 P(
1 \leftrightarrow 2)=
\min\left(
1,
\exp\left[
2531 \left(
\frac{1}{k_B T_1
} -
\frac{1}{k_B T_2
}\right)(U_1 - U_2)
2534 where $T_1$ and $T_2$ are the reference temperatures and $U_1$ and $U_2$
2535 are the instantaneous potential energies of replicas
1 and
2 respectively.
2536 After exchange the velocities are scaled by $(T_1/T_2)^
{\pm0.5
}$
2537 and a neighbor search is performed the next step.
2538 This combines the fast sampling and frequent barrier-crossing
2539 of the highest temperature with correct Boltzmann sampling at
2540 all the different temperatures~
\cite{Hukushima96a,Sugita99
}.
2541 We only attempt exchanges for neighboring temperatures as the probability
2542 decreases very rapidly with the temperature difference.
2543 One should not attempt exchanges for all possible pairs in one step.
2544 If, for instance, replicas
1 and
2 would exchange, the chance of
2545 exchange for replicas
2 and
3 not only depends on the energies of
2546 replicas
2 and
3, but also on the energy of replica
1.
2547 In
{\gromacs} this is solved by attempting exchange for all ``odd''
2548 pairs on ``odd'' attempts and for all ``even'' pairs on ``even'' attempts.
2549 If we have four replicas:
0,
1,
2 and
3, ordered in temperature
2550 and we attempt exchange every
1000 steps, pairs
0-
1 and
2-
3
2551 will be tried at steps
1000,
3000 etc. and pair
1-
2 at steps
2000,
4000 etc.
2553 How should one choose the temperatures?
2554 The energy difference can be written as:
2556 U_1 - U_2 = N_
{df
} \frac{c
}{2} k_B (T_1 - T_2)
2558 where $N_
{df
}$ is the total number of degrees of freedom of one replica
2559 and $c$ is
1 for harmonic potentials and around
2 for protein/water systems.
2560 If $T_2 = (
1+
\epsilon) T_1$ the probability becomes:
2562 P(
1 \leftrightarrow 2)
2563 =
\exp\left( -
\frac{\epsilon^
2 c\,N_
{df
}}{2 (
1+
\epsilon)
} \right)
2564 \approx \exp\left(-
\epsilon^
2 \frac{c
}{2} N_
{df
} \right)
2566 Thus for a probability of $e^
{-
2}\approx 0.135$
2567 one obtains $
\epsilon \approx 2/
\sqrt{c\,N_
{df
}}$.
2568 With all bonds constrained one has $N_
{df
} \approx 2\, N_
{atoms
}$
2569 and thus for $c$ =
2 one should choose $
\epsilon$ as $
1/
\sqrt{N_
{atoms
}}$.
2570 However there is one problem when using pressure coupling. The density at
2571 higher temperatures will decrease, leading to higher energy~
\cite{Seibert2005a
},
2572 which should be taken into account. The
{\gromacs} website features a
2573 so-called ``REMD calculator,'' that lets you type in the temperature range and
2574 the number of atoms, and based on that proposes a set of temperatures.
2576 An extension to the REMD for the isobaric-isothermal ensemble was
2577 proposed by Okabe
{\em et al.
}~
\cite{Okabe2001a
}. In this work the
2578 exchange probability is modified to:
2580 P(
1 \leftrightarrow 2)=
\min\left(
1,
\exp\left[
2581 \left(
\frac{1}{k_B T_1
} -
\frac{1}{k_B T_2
}\right)(U_1 - U_2) +
2582 \left(
\frac{P_1
}{k_B T_1
} -
\frac{P_2
}{k_B T_2
}\right)
\left(V_1-V_2
\right)
2585 where $P_1$ and $P_2$ are the respective reference pressures and $V_1$ and
2586 $V_2$ are the respective instantaneous volumes in the simulations.
2587 In most cases the differences in volume are so small that the second
2588 term is negligible. It only plays a role when the difference between
2589 $P_1$ and $P_2$ is large or in phase transitions.
2591 Hamiltonian replica exchange is also supported in
{\gromacs}. In
2592 Hamiltonian replica exchange, each replica has a different
2593 Hamiltonian, defined by the free energy pathway specified for the simulation. The
2594 exchange probability to maintain the correct ensemble probabilities is:
2595 \beq P(
1 \leftrightarrow 2)=
\min\left(
1,
\exp\left[
2596 \left(
\frac{1}{k_B T
} -
\frac{1}{k_B T
}\right)((U_1(x_2) - U_1(x_1)) + (U_2(x_1) - U_2(x_2)))
2600 The separate Hamiltonians are defined by the free energy functionality
2601 of
{\gromacs}, with swaps made between the different values of
2602 $
\lambda$ defined in the mdp file.
2604 Hamiltonian and temperature replica exchange can also be performed
2605 simultaneously, using the acceptance criteria:
2607 P(
1 \leftrightarrow 2)=
\min\left(
1,
\exp\left[
2608 \left(
\frac{1}{k_B T
} -
\right)(
\frac{U_1(x_2) - U_1(x_1)
}{k_B T_1
} +
\frac{U_2(x_1) - U_2(x_2)
}{k_B T_2
})
2612 Gibbs sampling replica exchange has also been implemented in
2613 {\gromacs}~
\cite{Chodera2011
}. In Gibbs sampling replica exchange, all
2614 possible pairs are tested for exchange, allowing swaps between
2615 replicas that are not neighbors.
2617 Gibbs sampling replica exchange requires no additional potential
2618 energy calculations. However there is an additional communication
2619 cost in Gibbs sampling replica exchange, as for some permutations,
2620 more than one round of swaps must take place. In some cases, this
2621 extra communication cost might affect the efficiency.
2623 All replica exchange variants are options of the
{\tt mdrun
}
2624 program. It will only work when MPI is installed, due to the inherent
2625 parallelism in the algorithm. For efficiency each replica can run on a
2626 separate rank. See the manual page of
{\tt mdrun
} on how to use these
2629 % \ifthenelse{\equal{\gmxlite}{1}}{}{
2631 \section{Essential Dynamics sampling
\index{essential dynamics
}\index{principal component analysis
}\seeindexquiet{PCA
}{covariance analysis
}}
2632 The results from Essential Dynamics (see
\secref{covanal
})
2633 of a protein can be used to guide MD simulations. The idea is that
2634 from an initial MD simulation (or from other sources) a definition of
2635 the collective fluctuations with largest amplitude is obtained. The
2636 position along one or more of these collective modes can be
2637 constrained in a (second) MD simulation in a number of ways for
2638 several purposes. For example, the position along a certain mode may
2639 be kept fixed to monitor the average force (free-energy gradient) on
2640 that coordinate in that position. Another application is to enhance
2641 sampling efficiency with respect to usual MD
2642 \cite{Degroot96a,Degroot96b
}. In this case, the system is encouraged
2643 to sample its available configuration space more systematically than
2644 in a diffusion-like path that proteins usually take.
2646 Another possibility to enhance sampling is
\normindex{flooding
}.
2647 Here a flooding potential is added to certain
2648 (collective) degrees of freedom to expel the system out
2649 of a region of phase space
\cite{Lange2006a
}.
2651 The procedure for essential dynamics sampling or flooding is as follows.
2652 First, the eigenvectors and eigenvalues need to be determined
2653 using covariance analysis (
{\tt g_covar
})
2654 or normal-mode analysis (
{\tt g_nmeig
}).
2655 Then, this information is fed into
{\tt make_edi
},
2656 which has many options for selecting vectors and setting parameters,
2657 see
{\tt gmx make_edi -h
}.
2658 The generated
{\tt edi
} input file is then passed to
{\tt mdrun
}.
2660 % } % Brace matches ifthenelse test for gmxlite
2662 % \ifthenelse{\equal{\gmxlite}{1}}{}{
2663 \section{\normindex{Expanded Ensemble
}}
2665 In an expanded ensemble simulation~
\cite{Lyubartsev1992
}, both the coordinates and the
2666 thermodynamic ensemble are treated as configuration variables that can
2667 be sampled over. The probability of any given state can be written as:
2669 P(
\vec{x
},k)
\propto \exp\left(-
\beta_k U_k + g_k
\right),
2671 where $
\beta_k =
\frac{1}{k_B T_k
}$ is the $
\beta$ corresponding to the $k$th
2672 thermodynamic state, and $g_k$ is a user-specified weight factor corresponding
2673 to the $k$th state. This space is therefore a
{\em mixed
},
{\em generalized
}, or
{\em
2674 expanded
} ensemble which samples from multiple thermodynamic
2675 ensembles simultaneously. $g_k$ is chosen to give a specific weighting
2676 of each subensemble in the expanded ensemble, and can either be fixed,
2677 or determined by an iterative procedure. The set of $g_k$ is
2678 frequently chosen to give each thermodynamic ensemble equal
2679 probability, in which case $g_k$ is equal to the free energy in
2680 non-dimensional units, but they can be set to arbitrary values as
2681 desired. Several different algorithms can be used to equilibrate
2682 these weights, described in the mdp option listings.
2683 % } % Brace matches ifthenelse test for gmxlite
2685 In
{\gromacs}, this space is sampled by alternating sampling in the $k$
2686 and $
\vec{x
}$ directions. Sampling in the $
\vec{x
}$ direction is done
2687 by standard molecular dynamics sampling; sampling between the
2688 different thermodynamics states is done by Monte Carlo, with several
2689 different Monte Carlo moves supported. The $k$ states can be defined
2690 by different temperatures, or choices of the free energy $
\lambda$
2691 variable, or both. Expanded ensemble simulations thus represent a
2692 serialization of the replica exchange formalism, allowing a single
2693 simulation to explore many thermodynamic states.
2697 \section{Parallelization
\index{parallelization
}}
2698 The CPU time required for a simulation can be reduced by running the simulation
2699 in parallel over more than one core.
2700 Ideally, one would want to have linear scaling: running on $N$ cores
2701 makes the simulation $N$ times faster. In practice this can only be
2702 achieved for a small number of cores. The scaling will depend
2703 a lot on the algorithms used. Also, different algorithms can have different
2704 restrictions on the interaction ranges between atoms.
2706 \section{Domain decomposition
\index{domain decomposition
}}
2707 Since most interactions in molecular simulations are local,
2708 domain decomposition is a natural way to decompose the system.
2709 In domain decomposition, a spatial domain is assigned to each rank,
2710 which will then integrate the equations of motion for the particles
2711 that currently reside in its local domain. With domain decomposition,
2712 there are two choices that have to be made: the division of the unit cell
2713 into domains and the assignment of the forces to domains.
2714 Most molecular simulation packages use the half-shell method for assigning
2715 the forces. But there are two methods that always require less communication:
2716 the eighth shell~
\cite{Liem1991
} and the midpoint~
\cite{Shaw2006
} method.
2717 {\gromacs} currently uses the eighth shell method, but for certain systems
2718 or hardware architectures it might be advantageous to use the midpoint
2719 method. Therefore, we might implement the midpoint method in the future.
2720 Most of the details of the domain decomposition can be found
2721 in the
{\gromacs} 4 paper~
\cite{Hess2008b
}.
2723 \subsection{Coordinate and force communication
}
2724 In the most general case of a triclinic unit cell,
2725 the space in divided with a
1-,
2-, or
3-D grid in parallelepipeds
2726 that we call domain decomposition cells.
2727 Each cell is assigned to a particle-particle rank.
2728 The system is partitioned over the ranks at the beginning
2729 of each MD step in which neighbor searching is performed.
2730 Since the neighbor searching is based on charge groups, charge groups
2731 are also the units for the domain decomposition.
2732 Charge groups are assigned to the cell where their center of geometry resides.
2733 Before the forces can be calculated, the coordinates from some
2734 neighboring cells need to be communicated,
2735 and after the forces are calculated, the forces need to be communicated
2736 in the other direction.
2737 The communication and force assignment is based on zones that
2738 can cover one or multiple cells.
2739 An example of a zone setup is shown in
\figref{ddcells
}.
2742 \centerline{\includegraphics[width=
6cm
]{plots/dd-cells
}}
2744 A non-staggered domain decomposition grid of
3$
\times$
2$
\times$
2 cells.
2745 Coordinates in zones
1 to
7 are communicated to the corner cell
2746 that has its home particles in zone
0.
2747 $r_c$ is the cut-off radius.
2752 The coordinates are communicated by moving data along the ``negative''
2753 direction in $x$, $y$ or $z$ to the next neighbor. This can be done in one
2754 or multiple pulses. In
\figref{ddcells
} two pulses in $x$ are required,
2755 then one in $y$ and then one in $z$. The forces are communicated by
2756 reversing this procedure. See the
{\gromacs} 4 paper~
\cite{Hess2008b
}
2757 for details on determining which non-bonded and bonded forces
2758 should be calculated on which rank.
2760 \subsection{Dynamic load balancing
\swapindexquiet{dynamic
}{load balancing
}}
2761 When different ranks have a different computational load
2762 (load imbalance), all ranks will have to wait for the one
2763 that takes the most time. One would like to avoid such a situation.
2764 Load imbalance can occur due to three reasons:
2766 \item inhomogeneous particle distribution
2767 \item inhomogeneous interaction cost distribution (charged/uncharged,
2768 water/non-water due to
{\gromacs} water innerloops)
2769 \item statistical fluctuation (only with small particle numbers)
2771 So we need a dynamic load balancing algorithm
2772 where the volume of each domain decomposition cell
2773 can be adjusted
{\em independently
}.
2774 To achieve this, the
2- or
3-D domain decomposition grids need to be
2775 staggered.
\figref{ddtric
} shows the most general case in
2-D.
2776 Due to the staggering, one might require two distance checks
2777 for deciding if a charge group needs to be communicated:
2778 a non-bonded distance and a bonded distance check.
2781 \centerline{\includegraphics[width=
7cm
]{plots/dd-tric
}}
2783 The zones to communicate to the rank of zone
0,
2784 see the text for details. $r_c$ and $r_b$ are the non-bonded
2785 and bonded cut-off radii respectively, $d$ is an example
2786 of a distance between following, staggered boundaries of cells.
2791 By default,
{\tt mdrun
} automatically turns on the dynamic load
2792 balancing during a simulation when the total performance loss
2793 due to the force calculation imbalance is
5\% or more.
2794 {\bf Note
} that the reported force load imbalance numbers might be higher,
2795 since the force calculation is only part of work that needs to be done
2796 during an integration step.
2797 The load imbalance is reported in the log file at log output steps
2798 and when the
{\tt -v
} option is used also on screen.
2799 The average load imbalance and the total performance loss
2800 due to load imbalance are reported at the end of the log file.
2802 There is one important parameter for the dynamic load balancing,
2803 which is the minimum allowed scaling. By default, each dimension
2804 of the domain decomposition cell can scale down by at least
2805 a factor of
0.8. For
3-D domain decomposition this allows cells
2806 to change their volume by about a factor of
0.5, which should allow
2807 for compensation of a load imbalance of
100\%.
2808 The minimum allowed scaling can be changed with the
{\tt -dds
}
2809 option of
{\tt mdrun
}.
2811 \subsection{Constraints in parallel
\index{constraints
}}
2812 \label{subsec:plincs
}
2813 Since with domain decomposition parts of molecules can reside
2814 on different ranks, bond constraints can cross cell boundaries.
2815 Therefore a parallel constraint algorithm is required.
2816 {\gromacs} uses the
\normindex{P-LINCS
} algorithm~
\cite{Hess2008a
},
2817 which is the parallel version of the
\normindex{LINCS
} algorithm~
\cite{Hess97
}
2818 % \ifthenelse{\equal{\gmxlite}{1}}
2820 {(see
\ssecref{lincs
}).
}
2821 The P-LINCS procedure is illustrated in
\figref{plincs
}.
2822 When molecules cross the cell boundaries, atoms in such molecules
2823 up to (
{\tt lincs_order +
1}) bonds away are communicated over the cell boundaries.
2824 Then, the normal LINCS algorithm can be applied to the local bonds
2825 plus the communicated ones. After this procedure, the local bonds
2826 are correctly constrained, even though the extra communicated ones are not.
2827 One coordinate communication step is required for the initial LINCS step
2828 and one for each iteration. Forces do not need to be communicated.
2831 \centerline{\includegraphics[width=
6cm
]{plots/par-lincs2
}}
2833 Example of the parallel setup of P-LINCS with one molecule
2834 split over three domain decomposition cells, using a matrix
2835 expansion order of
3.
2836 The top part shows which atom coordinates need to be communicated
2837 to which cells. The bottom parts show the local constraints (solid)
2838 and the non-local constraints (dashed) for each of the three cells.
2843 \subsection{Interaction ranges
}
2844 Domain decomposition takes advantage of the locality of interactions.
2845 This means that there will be limitations on the range of interactions.
2846 By default,
{\tt mdrun
} tries to find the optimal balance between
2847 interaction range and efficiency. But it can happen that a simulation
2848 stops with an error message about missing interactions,
2849 or that a simulation might run slightly faster with shorter
2850 interaction ranges. A list of interaction ranges
2851 and their default values is given in
\tabref{dd_ranges
}.
2855 \begin{tabular
}{|c|c|ll|
}
2857 interaction & range & option & default \\
2859 non-bonded & $r_c$ = max($r_
{\mathrm{list
}}$,$r_
{\mathrm{VdW
}}$,$r_
{\mathrm{Coul
}}$) &
{\tt mdp
} file & \\
2860 two-body bonded & max($r_
{\mathrm{mb
}}$,$r_c$) &
{\tt mdrun -rdd
} & starting conf. +
10\% \\
2861 multi-body bonded & $r_
{\mathrm{mb
}}$ &
{\tt mdrun -rdd
} & starting conf. +
10\% \\
2862 constraints & $r_
{\mathrm{con
}}$ &
{\tt mdrun -rcon
} & est. from bond lengths \\
2863 virtual sites & $r_
{\mathrm{con
}}$ &
{\tt mdrun -rcon
} &
0 \\
2867 \caption{The interaction ranges with domain decomposition.
}
2868 \label{tab:dd_ranges
}
2871 In most cases the defaults of
{\tt mdrun
} should not cause the simulation
2872 to stop with an error message of missing interactions.
2873 The range for the bonded interactions is determined from the distance
2874 between bonded charge-groups in the starting configuration, with
10\% added
2875 for headroom. For the constraints, the value of $r_
{\mathrm{con
}}$ is determined by
2876 taking the maximum distance that (
{\tt lincs_order +
1}) bonds can cover
2877 when they all connect at angles of
120 degrees.
2878 The actual constraint communication is not limited by $r_
{\mathrm{con
}}$,
2879 but by the minimum cell size $L_C$, which has the following lower limit:
2881 L_C
\geq \max(r_
{\mathrm{mb
}},r_
{\mathrm{con
}})
2883 Without dynamic load balancing the system is actually allowed to scale
2884 beyond this limit when pressure scaling is used.
2885 {\bf Note
} that for triclinic boxes, $L_C$ is not simply the box diagonal
2886 component divided by the number of cells in that direction,
2887 rather it is the shortest distance between the triclinic cells borders.
2888 For rhombic dodecahedra this is a factor of $
\sqrt{3/
2}$ shorter
2891 When $r_
{\mathrm{mb
}} > r_c$,
{\tt mdrun
} employs a smart algorithm to reduce
2892 the communication. Simply communicating all charge groups within
2893 $r_
{\mathrm{mb
}}$ would increase the amount of communication enormously.
2894 Therefore only charge-groups that are connected by bonded interactions
2895 to charge groups which are not locally present are communicated.
2896 This leads to little extra communication, but also to a slightly
2897 increased cost for the domain decomposition setup.
2898 In some cases,
{\eg} coarse-grained simulations with a very short cut-off,
2899 one might want to set $r_
{\mathrm{mb
}}$ by hand to reduce this cost.
2901 \subsection{Multiple-Program, Multiple-Data PME parallelization
\index{PME
}}
2902 \label{subsec:mpmd_pme
}
2903 Electrostatics interactions are long-range, therefore special
2904 algorithms are used to avoid summation over many atom pairs.
2905 In
{\gromacs} this is usually
2906 % \ifthenelse{\equal{\gmxlite}{1}}
2908 {PME (
\secref{pme
}).
}
2909 Since with PME all particles interact with each other, global communication
2910 is required. This will usually be the limiting factor for
2911 scaling with domain decomposition.
2912 To reduce the effect of this problem, we have come up with
2913 a Multiple-Program, Multiple-Data approach~
\cite{Hess2008b
}.
2914 Here, some ranks are selected to do only the PME mesh calculation,
2915 while the other ranks, called particle-particle (PP) ranks,
2916 do all the rest of the work.
2917 For rectangular boxes the optimal PP to PME rank ratio is usually
3:
1,
2918 for rhombic dodecahedra usually
2:
1.
2919 When the number of PME ranks is reduced by a factor of
4, the number
2920 of communication calls is reduced by about a factor of
16.
2921 Or put differently, we can now scale to
4 times more ranks.
2922 In addition, for modern
4 or
8 core machines in a network,
2923 the effective network bandwidth for PME is quadrupled,
2924 since only a quarter of the cores will be using the network connection
2925 on each machine during the PME calculations.
2928 \centerline{\includegraphics[width=
12cm
]{plots/mpmd-pme
}}
2930 Example of
8 ranks without (left) and with (right) MPMD.
2931 The PME communication (red arrows) is much higher on the left
2932 than on the right. For MPMD additional PP - PME coordinate
2933 and force communication (blue arrows) is required,
2934 but the total communication complexity is lower.
2935 \label{fig:mpmd_pme
}
2939 {\tt mdrun
} will by default interleave the PP and PME ranks.
2940 If the ranks are not number consecutively inside the machines,
2941 one might want to use
{\tt mdrun -ddorder pp_pme
}.
2942 For machines with a real
3-D torus and proper communication software
2943 that assigns the ranks accordingly one should use
2944 {\tt mdrun -ddorder cartesian
}.
2946 To optimize the performance one should usually set up the cut-offs
2947 and the PME grid such that the PME load is
25 to
33\% of the total
2948 calculation load.
{\tt grompp
} will print an estimate for this load
2949 at the end and also
{\tt mdrun
} calculates the same estimate
2950 to determine the optimal number of PME ranks to use.
2951 For high parallelization it might be worthwhile to optimize
2952 the PME load with the
{\tt mdp
} settings and/or the number
2953 of PME ranks with the
{\tt -npme
} option of
{\tt mdrun
}.
2954 For changing the electrostatics settings it is useful to know
2955 the accuracy of the electrostatics remains nearly constant
2956 when the Coulomb cut-off and the PME grid spacing are scaled
2958 {\bf Note
} that it is usually better to overestimate than to underestimate
2959 the number of PME ranks, since the number of PME ranks is smaller
2960 than the number of PP ranks, which leads to less total waiting time.
2962 The PME domain decomposition can be
1-D or
2-D along the $x$ and/or
2963 $y$ axis.
2-D decomposition is also known as
\normindex{pencil decomposition
} because of
2964 the shape of the domains at high parallelization.
2965 1-D decomposition along the $y$ axis can only be used when
2966 the PP decomposition has only
1 domain along $x$.
2-D PME decomposition
2967 has to have the number of domains along $x$ equal to the number of
2968 the PP decomposition.
{\tt mdrun
} automatically chooses
1-D or
2-D
2969 PME decomposition (when possible with the total given number of ranks),
2970 based on the minimum amount of communication for the coordinate redistribution
2971 in PME plus the communication for the grid overlap and transposes.
2972 To avoid superfluous communication of coordinates and forces
2973 between the PP and PME ranks, the number of DD cells in the $x$
2974 direction should ideally be the same or a multiple of the number
2975 of PME ranks. By default,
{\tt mdrun
} takes care of this issue.
2977 \subsection{Domain decomposition flow chart
}
2978 In
\figref{dd_flow
} a flow chart is shown for domain decomposition
2979 with all possible communication for different algorithms.
2980 For simpler simulations, the same flow chart applies,
2981 without the algorithms and communication for
2982 the algorithms that are not used.
2985 \centerline{\includegraphics[width=
12cm
]{plots/flowchart
}}
2987 Flow chart showing the algorithms and communication (arrows)
2988 for a standard MD simulation with virtual sites, constraints
2989 and separate PME-mesh ranks.
2995 \section{Implicit solvation
\index{implicit solvation
}\index{Generalized Born methods
}}
2997 Implicit solvent models provide an efficient way of representing
2998 the electrostatic effects of solvent molecules, while saving a
2999 large piece of the computations involved in an accurate, aqueous
3000 description of the surrounding water in molecular dynamics simulations.
3001 Implicit solvation models offer several advantages compared with
3002 explicit solvation, including eliminating the need for the equilibration of water
3003 around the solute, and the absence of viscosity, which allows the protein
3004 to more quickly explore conformational space.
3006 Implicit solvent calculations in
{\gromacs} can be done using the
3007 generalized Born-formalism, and the Still~
\cite{Still97
}, HCT~
\cite{Truhlar96
},
3008 and OBC~
\cite{Case04
} models are available for calculating the Born radii.
3010 Here, the free energy $G_
{\mathrm{solv
}}$ of solvation is the sum of three terms,
3011 a solvent-solvent cavity term ($G_
{\mathrm{cav
}}$), a solute-solvent van der
3012 Waals term ($G_
{\mathrm{vdw
}}$), and finally a solvent-solute electrostatics
3013 polarization term ($G_
{\mathrm{pol
}}$).
3015 The sum of $G_
{\mathrm{cav
}}$ and $G_
{\mathrm{vdw
}}$ corresponds to the (non-polar)
3016 free energy of solvation for a molecule from which all charges
3017 have been removed, and is commonly called $G_
{\mathrm{np
}}$,
3018 calculated from the total solvent accessible surface area
3019 multiplied with a surface tension.
3020 The total expression for the solvation free energy then becomes:
3023 G_
{\mathrm{solv
}} = G_
{\mathrm{np
}} + G_
{\mathrm{pol
}}
3027 Under the generalized Born model, $G_
{\mathrm{pol
}}$ is calculated from the generalized Born equation~
\cite{Still97
}:
3030 G_
{\mathrm{pol
}} =
\left(
1-
\frac{1}{\epsilon}\right)
\sum_{i=
1}^n
\sum_{j>i
}^n
\frac {q_i q_j
}{\sqrt{r^
2_
{ij
} + b_i b_j
\exp\left(
\frac{-r^
2_
{ij
}}{4 b_i b_j
}\right)
}}
3031 \label{eqn:gb_still
}
3034 In
{\gromacs}, we have introduced the substitution~
\cite{Larsson10
}:
3037 c_i=
\frac{1}{\sqrt{b_i
}}
3038 \label{eqn:gb_subst
}
3041 which makes it possible to introduce a cheap transformation to a new
3042 variable $x$ when evaluating each interaction, such that:
3045 x=
\frac{r_
{ij
}}{\sqrt{b_i b_j
}} = r_
{ij
} c_i c_j
3046 \label{eqn:gb_subst2
}
3049 In the end, the full re-formulation of~
\ref{eqn:gb_still
} becomes:
3052 G_
{\mathrm{pol
}} =
\left(
1-
\frac{1}{\epsilon}\right)
\sum_{i=
1}^n
\sum_{j>i
}^n
\frac{q_i q_j
}{\sqrt{b_i b_j
}} ~
\xi (x) =
\left(
1-
\frac{1}{\epsilon}\right)
\sum_{i=
1}^n q_i c_i
\sum_{j>i
}^n q_j c_j~
\xi (x)
3053 \label{eqn:gb_final
}
3056 The non-polar part ($G_
{\mathrm{np
}}$) of Equation~
\ref{eqn:gb_solv
} is calculated
3057 directly from the Born radius of each atom using a simple ACE type
3058 approximation by Schaefer
{\em et al.
}~
\cite{Karplus98
}, including a
3059 simple loop over all atoms.
3060 This requires only one extra solvation parameter, independent of atom type,
3061 but differing slightly between the three Born radii models.
3063 % LocalWords: GROningen MAchine BIOSON Groningen GROMACS Berendsen der Spoel
3064 % LocalWords: Drunen Comp Phys Comm ROck NS FFT pbc EM ifthenelse gmxlite ff
3065 % LocalWords: octahedra triclinic Ewald PME PPPM trjconv xy solvated
3066 % LocalWords: boxtypes boxshapes editconf Lennard COM XTC TNG kT defunits
3067 % LocalWords: Boltzmann's Mueller nb int mdrun chargegroup simplerc prefactor
3068 % LocalWords: pme waterloops CH NH CO df com virial integrator Verlet vverlet
3069 % LocalWords: integrators ref timepoint timestep timesteps mdp md vv avek NVE
3070 % LocalWords: NVT off's leapfrogv lll LR rmfast SPC fs Nos physicality ps GMX
3071 % LocalWords: Tcoupling nonergodic thermostatting NOSEHOOVER algorithmes ij yx
3072 % LocalWords: Parrinello Rahman rescales atm anisotropically ccc xz zx yy yz
3073 % LocalWords: zy zz se barostat compressibilities MTTK NPT Martyna al isobaric
3074 % LocalWords: Tuckerman vir PV fkT iLt iL Liouville NHC Eq baro mu trj mol bc
3075 % LocalWords: freezegroup Shannon's polarizability Overhauser barostats iLn KE
3076 % LocalWords: negligibly thermostatted Tobias rhombic maxwell et xtc tng TC rlist
3077 % LocalWords: waals LINCS holonomic plincs lincs unc ang SA Langevin SD amu BD
3078 % LocalWords: bfgs Broyden Goldfarb Shanno mkT kJ DFLEXIBLE Nocedal diag nmeig
3079 % LocalWords: diagonalization anaeig nmens covanal ddg feia BT dp dq pV dV dA
3080 % LocalWords: NpT eq stepsize REMD constrainted website Okabe MPI covar edi dd
3081 % LocalWords: progman NMR ddcells innerloops ddtric tric dds rdd conf rcon est
3082 % LocalWords: mb PP MPMD ddorder pp cartesian grompp npme parallelizable edr
3083 % LocalWords: macromolecule nstlist vacuo parallelization dof indices MBAR AVX
3084 % LocalWords: TOL numerics parallelized eigenvectors dG parallelepipeds VdW np
3085 % LocalWords: Coul multi solvation HCT OBC solv cav vdw Schaefer symplectic dt
3086 % LocalWords: pymbar multinode subensemble Monte solute subst groupconcept GPU
3087 % LocalWords: dodecahedron octahedron dodecahedra equilibration usinggroups nm
3088 % LocalWords: topologies rlistlong CUDA GPUs rcoulomb SIMD BlueGene FPUs erfc
3089 % LocalWords: cutoffschemesupport unbuffered bondeds OpenMP ewald rtol
3090 % LocalWords: verletdrift peptide RMS rescaling ergodicity ergodic discretized
3091 % LocalWords: isothermal compressibility isotropically anisotropic iteratively
3092 % LocalWords: incompressible integrations translational biomolecules NMA PCA
3093 % LocalWords: Bennett's equilibrated Hamiltonians covariance equilibrate
3094 % LocalWords: inhomogeneous conformational online other's th