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22 \begin{document}
23
24 \title{Langevin dynamics for rigid bodies of arbitrary shape}
25
26 \author{Xiuquan Sun, Teng Lin and J. Daniel
27 Gezelter\footnote{Corresponding author. \ Electronic mail: gezelter@nd.edu} \\
28 Department of Chemistry and Biochemistry,\\
29 University of Notre Dame\\
30 Notre Dame, Indiana 46556}
31
32 \date{\today}
33
34
35 \maketitle
36
37
38
39 \begin{abstract}
40 We present an algorithm for carrying out Langevin dynamics simulations
41 on complex rigid bodies by incorporating the hydrodynamic resistance
42 tensors for arbitrary shapes into an advanced rotational integration
43 scheme. The integrator gives quantitative agreement with both
44 analytic and approximate hydrodynamic theories for a number of model
45 rigid bodies, and works well at reproducing the solute dynamical
46 properties (diffusion constants, and orientational relaxation times)
47 obtained from explicitly-solvated simulations.
48 \end{abstract}
49
50 \newpage
51
52 %\narrowtext
53
54 %%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
55 % BODY OF TEXT
56 %%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
57
58 \begin{doublespace}
59
60 \section{Introduction}
61
62 %applications of langevin dynamics
63 Langevin dynamics, which mimics a heat bath using both stochastic and
64 dissipative forces, has been applied in a variety of situations as an
65 alternative to molecular dynamics with explicit solvent molecules.
66 The stochastic treatment of the solvent allows the use of simulations
67 with substantially longer time and length scales. In general, the
68 dynamic and structural properties obtained from Langevin simulations
69 agree quite well with similar properties obtained from explicit
70 solvent simulations.
71
72 Recent examples of the usefulness of Langevin simulations include a
73 study of met-enkephalin in which Langevin simulations predicted
74 dynamical properties that were largely in agreement with explicit
75 solvent simulations.\cite{Shen2002} By applying Langevin dynamics with
76 the UNRES model, Liwo and his coworkers suggest that protein folding
77 pathways can be explored within a reasonable amount of
78 time.\cite{Liwo2005}
79
80 The stochastic nature of Langevin dynamics also enhances the sampling
81 of the system and increases the probability of crossing energy
82 barriers.\cite{Cui2003,Banerjee2004} Combining Langevin dynamics with
83 Kramers' theory, Klimov and Thirumalai identified free-energy
84 barriers by studying the viscosity dependence of the protein folding
85 rates.\cite{Klimov1997} In order to account for solvent induced
86 interactions missing from the implicit solvent model, Kaya
87 incorporated a desolvation free energy barrier into protein
88 folding/unfolding studies and discovered a higher free energy barrier
89 between the native and denatured states.\cite{HuseyinKaya07012005}
90
91 In typical LD simulations, the friction and random ($f_r$) forces on
92 individual atoms are taken from Stokes' law,
93 \begin{eqnarray}
94 m \dot{v}(t) & = & -\nabla U(x) - \xi m v(t) + f_r(t) \notag \\
95 \langle f_r(t) \rangle & = & 0 \\
96 \langle f_r(t) f_r(t') \rangle & = & 2 k_B T \xi m \delta(t - t') \notag
97 \end{eqnarray}
98 where $\xi \approx 6 \pi \eta \rho$. Here $\eta$ is the viscosity of the
99 implicit solvent, and $\rho$ is the hydrodynamic radius of the atom.
100
101 The use of rigid substructures,\cite{Chun:2000fj}
102 coarse-graining,\cite{Ayton01,Golubkov06,Orlandi:2006fk,SunX._jp0762020}
103 and ellipsoidal representations of protein side
104 chains~\cite{Fogolari:1996lr} has made the use of the Stokes-Einstein
105 approximation problematic. A rigid substructure moves as a single
106 unit with orientational as well as translational degrees of freedom.
107 This requires a more general treatment of the hydrodynamics than the
108 spherical approximation provides. Also, the atoms involved in a rigid
109 or coarse-grained structure have solvent-mediated interactions with
110 each other, and these interactions are ignored if all atoms are
111 treated as separate spherical particles. The theory of interactions
112 {\it between} bodies moving through a fluid has been developed over
113 the past century and has been applied to simulations of Brownian
114 motion.\cite{FIXMAN:1986lr,Ramachandran1996}
115
116 In order to account for the diffusion anisotropy of complex shapes,
117 Fernandes and Garc\'{i}a de la Torre improved an earlier Brownian
118 dynamics simulation algorithm~\cite{Ermak1978,Allison1991} by
119 incorporating a generalized $6\times6$ diffusion tensor and
120 introducing a rotational evolution scheme consisting of three
121 consecutive rotations.\cite{Fernandes2002} Unfortunately, biases are
122 introduced into the system due to the arbitrary order of applying the
123 noncommuting rotation operators.\cite{Beard2003} Based on the
124 observation the momentum relaxation time is much less than the time
125 step, one may ignore the inertia in Brownian dynamics. However, the
126 assumption of zero average acceleration is not always true for
127 cooperative motion which is common in proteins. An inertial Brownian
128 dynamics (IBD) was proposed to address this issue by adding an
129 inertial correction term.\cite{Beard2000} As a complement to IBD,
130 which has a lower bound in time step because of the inertial
131 relaxation time, long-time-step inertial dynamics (LTID) can be used
132 to investigate the inertial behavior of linked polymer segments in a
133 low friction regime.\cite{Beard2000} LTID can also deal with the
134 rotational dynamics for nonskew bodies without translation-rotation
135 coupling by separating the translation and rotation motion and taking
136 advantage of the analytical solution of hydrodynamic
137 properties. However, typical nonskew bodies like cylinders and
138 ellipsoids are inadequate to represent most complex macromolecular
139 assemblies. Therefore, the goal of this work is to adapt some of the
140 hydrodynamic methodologies developed to treat Brownian motion of
141 complex assemblies into a Langevin integrator for rigid bodies with
142 arbitrary shapes.
143
144 \subsection{Rigid Body Dynamics}
145 Rigid bodies are frequently involved in the modeling of large
146 collections of particles that move as a single unit. In molecular
147 simulations, rigid bodies have been used to simplify protein-protein
148 docking,\cite{Gray2003} and lipid bilayer
149 simulations.\cite{SunX._jp0762020} Many of the water models in common
150 use are also rigid-body
151 models,\cite{Jorgensen83,Berendsen81,Berendsen87} although they are
152 typically evolved in molecular dynamics simulations using constraints
153 rather than rigid body equations of motion.
154
155 Euler angles are a natural choice to describe the rotational degrees
156 of freedom. However, due to $\frac{1}{\sin \theta}$ singularities, the
157 numerical integration of corresponding equations of these motion can
158 become inaccurate (and inefficient). Although the use of multiple
159 sets of Euler angles can overcome this problem,\cite{Barojas1973} the
160 computational penalty and the loss of angular momentum conservation
161 remain. A singularity-free representation utilizing quaternions was
162 developed by Evans in 1977.\cite{Evans1977} The Evans quaternion
163 approach uses a nonseparable Hamiltonian, and this has prevented
164 symplectic algorithms from being utilized until very
165 recently.\cite{Miller2002}
166
167 Another approach is the application of holonomic constraints to the
168 atoms belonging to the rigid body. Each atom moves independently
169 under the normal forces deriving from potential energy and constraints
170 are used to guarantee rigidity. However, due to their iterative
171 nature, the SHAKE and RATTLE algorithms converge very slowly when the
172 number of constraints (and the number of particles that belong to the
173 rigid body) increases.\cite{Ryckaert1977,Andersen1983}
174
175 In order to develop a stable and efficient integration scheme that
176 preserves most constants of the motion in microcanonical simulations,
177 symplectic propagators are necessary. By introducing a conjugate
178 momentum to the rotation matrix ${\bf Q}$ and re-formulating
179 Hamilton's equations, a symplectic orientational integrator,
180 RSHAKE,\cite{Kol1997} was proposed to evolve rigid bodies on a
181 constraint manifold by iteratively satisfying the orthogonality
182 constraint ${\bf Q}^T {\bf Q} = 1$. An alternative method using the
183 quaternion representation was developed by Omelyan.\cite{Omelyan1998}
184 However, both of these methods are iterative and suffer from some
185 related inefficiencies. A symplectic Lie-Poisson integrator for rigid
186 bodies developed by Dullweber {\it et al.}\cite{Dullweber1997} removes
187 most of the limitations mentioned above and is therefore the basis for
188 our Langevin integrator.
189
190 The goal of the present work is to develop a Langevin dynamics
191 algorithm for arbitrary-shaped rigid particles by integrating an
192 accurate estimate of the friction tensor from hydrodynamics theory
193 into a stable and efficient rigid body dynamics propagator. In the
194 sections below, we review some of the theory of hydrodynamic tensors
195 developed primarily for Brownian simulations of multi-particle
196 systems, we then present our integration method for a set of
197 generalized Langevin equations of motion, and we compare the behavior
198 of the new Langevin integrator to dynamical quantities obtained via
199 explicit solvent molecular dynamics.
200
201 \subsection{\label{introSection:frictionTensor}The Friction Tensor}
202 Theoretically, a complete friction kernel for a solute particle can be
203 determined using the velocity autocorrelation function from a
204 simulation with explicit solvent molecules. However, this approach
205 becomes impractical when the solute becomes complex. Instead, various
206 approaches based on hydrodynamics have been developed to calculate
207 static friction coefficients. In general, the friction tensor $\Xi$ is
208 a $6\times 6$ matrix given by
209 \begin{equation}
210 \Xi = \left( \begin{array}{*{20}c}
211 \Xi^{tt} & \Xi^{rt} \\
212 \Xi^{tr} & \Xi^{rr} \\
213 \end{array} \right).
214 \end{equation}
215 Here, $\Xi^{tt}$ and $\Xi^{rr}$ are $3 \times 3$ translational and
216 rotational resistance (friction) tensors respectively, while
217 $\Xi^{tr}$ is translation-rotation coupling tensor and $\Xi^{rt}$ is
218 rotation-translation coupling tensor. When a particle moves in a
219 fluid, it may experience a friction force ($\mathbf{f}_f$) and torque
220 ($\mathbf{\tau}_f$) in opposition to the velocity ($\mathbf{v}$) and
221 body-fixed angular velocity ($\mathbf{\omega}$),
222 \begin{equation}
223 \left( \begin{array}{l}
224 \mathbf{f}_f \\
225 \mathbf{\tau}_f \\
226 \end{array} \right) = - \left( \begin{array}{*{20}c}
227 \Xi^{tt} & \Xi^{rt} \\
228 \Xi^{tr} & \Xi^{rr} \\
229 \end{array} \right)\left( \begin{array}{l}
230 \mathbf{v} \\
231 \mathbf{\omega} \\
232 \end{array} \right).
233 \end{equation}
234 For an arbitrary body moving in a fluid, Peters has derived a set of
235 fluctuation-dissipation relations for the friction
236 tensors,\cite{Peters:1999qy,Peters:1999uq,Peters:2000fk}
237 \begin{eqnarray}
238 \Xi^{tt} & = & \frac{1}{k_B T} \int_0^\infty \left[ \langle {\bf
239 F}(0) {\bf F}(-s) \rangle_{eq} - \langle {\bf F} \rangle_{eq}^2
240 \right] ds \\
241 \notag \\
242 \Xi^{tr} & = & \frac{1}{k_B T} \int_0^\infty \left[ \langle {\bf
243 F}(0) {\bf \tau}(-s) \rangle_{eq} - \langle {\bf F} \rangle_{eq}
244 \langle {\bf \tau} \rangle_{eq} \right] ds \\
245 \notag \\
246 \Xi^{rt} & = & \frac{1}{k_B T} \int_0^\infty \left[ \langle {\bf
247 \tau}(0) {\bf F}(-s) \rangle_{eq} - \langle {\bf \tau} \rangle_{eq}
248 \langle {\bf F} \rangle_{eq} \right] ds \\
249 \notag \\
250 \Xi^{rr} & = & \frac{1}{k_B T} \int_0^\infty \left[ \langle {\bf
251 \tau}(0) {\bf \tau}(-s) \rangle_{eq} - \langle {\bf \tau} \rangle_{eq}^2
252 \right] ds
253 \end{eqnarray}
254 In these expressions, the forces (${\bf F}$) and torques (${\bf
255 \tau}$) are those that arise solely from the interactions of the body with
256 the surrounding fluid. For a single solute body in an isotropic fluid,
257 the average forces and torques in these expressions ($\langle {\bf F}
258 \rangle_{eq}$ and $\langle {\bf \tau} \rangle_{eq}$)
259 vanish, and one obtains the simpler force-torque correlation formulae
260 of Nienhuis.\cite{Nienhuis:1970lr} Molecular dynamics simulations with
261 explicit solvent molecules can be used to obtain estimates of the
262 friction tensors with these formulae. In practice, however, one needs
263 relatively long simulations with frequently-stored force and torque
264 information to compute friction tensors, and this becomes
265 prohibitively expensive when there are large numbers of large solute
266 particles. For bodies with simple shapes, there are a number of
267 approximate expressions that allow computation of these tensors
268 without the need for expensive simulations that utilize explicit
269 solvent particles.
270
271 \subsubsection{\label{introSection:resistanceTensorRegular}\textbf{The Resistance Tensor for Regular Shapes}}
272 For a spherical body under ``stick'' boundary conditions, the
273 translational and rotational friction tensors can be estimated from
274 Stokes' law,
275 \begin{equation}
276 \label{eq:StokesTranslation}
277 \Xi^{tt} = \left( \begin{array}{*{20}c}
278 {6\pi \eta \rho} & 0 & 0 \\
279 0 & {6\pi \eta \rho} & 0 \\
280 0 & 0 & {6\pi \eta \rho} \\
281 \end{array} \right)
282 \end{equation}
283 and
284 \begin{equation}
285 \label{eq:StokesRotation}
286 \Xi^{rr} = \left( \begin{array}{*{20}c}
287 {8\pi \eta \rho^3 } & 0 & 0 \\
288 0 & {8\pi \eta \rho^3 } & 0 \\
289 0 & 0 & {8\pi \eta \rho^3 } \\
290 \end{array} \right)
291 \end{equation}
292 where $\eta$ is the viscosity of the solvent and $\rho$ is the
293 hydrodynamic radius. The presence of the rotational resistance tensor
294 implies that the spherical body has internal structure and
295 orientational degrees of freedom that must be propagated in time. For
296 non-structured spherical bodies (i.e. the atoms in a traditional
297 molecular dynamics simulation) these degrees of freedom do not exist.
298
299 Other non-spherical shapes, such as cylinders and ellipsoids, are
300 widely used as references for developing new hydrodynamic theories,
301 because their properties can be calculated exactly. In 1936, Perrin
302 extended Stokes' law to general
303 ellipsoids,\cite{Perrin1934,Perrin1936} described in Cartesian
304 coordinates as
305 \begin{equation}
306 \frac{x^2 }{a^2} + \frac{y^2}{b^2} + \frac{z^2 }{c^2} = 1.
307 \end{equation}
308 Here, the semi-axes are of lengths $a$, $b$, and $c$. Due to the
309 complexity of the elliptic integral, only uniaxial ellipsoids, either
310 prolate ($a \ge b = c$) or oblate ($a < b = c$), were solved
311 exactly. Introducing an elliptic integral parameter $S$ for prolate,
312 \begin{equation}
313 S = \frac{2}{\sqrt{a^2 - b^2}} \ln \frac{a + \sqrt{a^2 - b^2}}{b},
314 \end{equation}
315 and oblate,
316 \begin{equation}
317 S = \frac{2}{\sqrt {b^2 - a^2 }} \arctan \frac{\sqrt {b^2 - a^2}}{a},
318 \end{equation}
319 ellipsoids, it is possible to write down exact solutions for the
320 resistance tensors. As is the case for spherical bodies, the translational,
321 \begin{eqnarray}
322 \Xi_a^{tt} & = & 16\pi \eta \frac{a^2 - b^2}{(2a^2 - b^2 )S - 2a}. \\
323 \Xi_b^{tt} = \Xi_c^{tt} & = & 32\pi \eta \frac{a^2 - b^2 }{(2a^2 - 3b^2 )S + 2a},
324 \end{eqnarray}
325 and rotational,
326 \begin{eqnarray}
327 \Xi_a^{rr} & = & \frac{32\pi}{3} \eta \frac{(a^2 - b^2 )b^2}{2a - b^2 S}, \\
328 \Xi_b^{rr} = \Xi_c^{rr} & = & \frac{32\pi}{3} \eta \frac{(a^4 - b^4)}{(2a^2 - b^2 )S - 2a}
329 \end{eqnarray}
330 resistance tensors are diagonal $3 \times 3$ matrices. For both
331 spherical and ellipsoidal particles, the translation-rotation and
332 rotation-translation coupling tensors are zero.
333
334 \subsubsection{\label{introSection:resistanceTensorRegularArbitrary}\textbf{The Resistance Tensor for Arbitrary Shapes}}
335 Other than the fluctuation dissipation formulae given by
336 Peters,\cite{Peters:1999qy,Peters:1999uq,Peters:2000fk} there are no
337 analytic solutions for the friction tensor for rigid molecules of
338 arbitrary shape. The ellipsoid of revolution and general triaxial
339 ellipsoid models have been widely used to approximate the hydrodynamic
340 properties of rigid bodies. However, the mapping from all possible
341 ellipsoidal spaces ($r$-space) to all possible combinations of
342 rotational diffusion coefficients ($D$-space) is not
343 unique.\cite{Wegener1979} Additionally, because there is intrinsic
344 coupling between translational and rotational motion of {\it skew}
345 rigid bodies, general ellipsoids are not always suitable for modeling
346 rigid molecules. A number of studies have been devoted to determining
347 the friction tensor for irregular shapes using methods in which the
348 molecule of interest is modeled with a combination of
349 spheres\cite{Carrasco1999} and the hydrodynamic properties of the
350 molecule are then calculated using a set of two-point interaction
351 tensors. We have found the {\it bead} and {\it rough shell} models of
352 Carrasco and Garc\'{i}a de la Torre to be the most useful of these
353 methods,\cite{Carrasco1999} and we review the basic outline of the
354 rough shell approach here. A more thorough explanation can be found
355 in Ref. \citen{Carrasco1999}.
356
357 Consider a rigid assembly of $N$ small beads moving through a
358 continuous medium. Due to hydrodynamic interactions between the
359 beads, the net velocity of the $i^\mathrm{th}$ bead relative to the
360 medium, ${\bf v}'_i$, is different than its unperturbed velocity ${\bf
361 v}_i$,
362 \begin{equation}
363 {\bf v}'_i = {\bf v}_i - \sum\limits_{j \ne i} {{\bf T}_{ij} {\bf F}_j }
364 \end{equation}
365 where ${\bf F}_j$ is the frictional force on the medium due to bead $j$, and
366 ${\bf T}_{ij}$ is the hydrodynamic interaction tensor between the two beads.
367 The frictional force felt by the $i^\mathrm{th}$ bead is proportional to
368 its net velocity
369 \begin{equation}
370 {\bf F}_i = \xi_i {\bf v}_i - \xi_i \sum\limits_{j \ne i} {{\bf T}_{ij} {\bf F}_j }.
371 \label{introEquation:tensorExpression}
372 \end{equation}
373 Eq. (\ref{introEquation:tensorExpression}) defines the two-point
374 hydrodynamic tensor, ${\bf T}_{ij}$. There have been many proposed
375 solutions to this equation, including the simple solution given by
376 Oseen and Burgers in 1930 for two beads of identical radius. A second
377 order expression for beads of different hydrodynamic radii was
378 introduced by Rotne and Prager,\cite{Rotne1969} and improved by
379 Garc\'{i}a de la Torre and Bloomfield,\cite{Torre1977}
380 \begin{equation}
381 {\bf T}_{ij} = \frac{1}{{8\pi \eta R_{ij} }}\left[ {\left( {{\bf I} +
382 \frac{{{\bf R}_{ij} {\bf R}_{ij}^T }}{{R_{ij}^2 }}} \right) + \frac{{\rho
383 _i^2 + \rho_j^2 }}{{R_{ij}^2 }}\left( {\frac{{\bf I}}{3} -
384 \frac{{{\bf R}_{ij} {\bf R}_{ij}^T }}{{R_{ij}^2 }}} \right)} \right].
385 \label{introEquation:RPTensorNonOverlapped}
386 \end{equation}
387 Here ${\bf R}_{ij}$ is the distance vector between beads $i$ and $j$. Both
388 the Oseen-Burgers tensor and
389 Eq.~\ref{introEquation:RPTensorNonOverlapped} have an assumption that
390 the beads do not overlap ($R_{ij} \ge \rho_i + \rho_j$).
391
392 To calculate the resistance tensor for a body represented as the union
393 of many non-overlapping beads, we first pick an arbitrary origin $O$
394 and then construct a $3N \times 3N$ supermatrix consisting of $N
395 \times N$ ${\bf B}_{ij}$ blocks
396 \begin{equation}
397 {\bf B} = \left( \begin{array}{*{20}c}
398 {\bf B}_{11} & \ldots & {\bf B}_{1N} \\
399 \vdots & \ddots & \vdots \\
400 {\bf B}_{N1} & \cdots & {\bf B}_{NN}
401 \end{array} \right)
402 \end{equation}
403 ${\bf B}_{ij}$ is a version of the hydrodynamic tensor which includes the
404 self-contributions for spheres,
405 \begin{equation}
406 {\bf B}_{ij} = \delta _{ij} \frac{{\bf I}}{{6\pi \eta R_{ij}}} + (1 - \delta_{ij}
407 ){\bf T}_{ij}
408 \end{equation}
409 where $\delta_{ij}$ is the Kronecker delta function. Inverting the
410 ${\bf B}$ matrix, we obtain
411 \begin{equation}
412 {\bf C} = {\bf B}^{ - 1} = \left(\begin{array}{*{20}c}
413 {\bf C}_{11} & \ldots & {\bf C}_{1N} \\
414 \vdots & \ddots & \vdots \\
415 {\bf C}_{N1} & \cdots & {\bf C}_{NN}
416 \end{array} \right),
417 \end{equation}
418 which can be partitioned into $N \times N$ blocks labeled ${\bf C}_{ij}$.
419 (Each of the ${\bf C}_{ij}$ blocks is a $3 \times 3$ matrix.) Using the
420 skew matrix,
421 \begin{equation}
422 {\bf U}_i = \left(\begin{array}{*{20}c}
423 0 & -z_i & y_i \\
424 z_i & 0 & - x_i \\
425 -y_i & x_i & 0
426 \end{array}\right)
427 \label{eq:skewMatrix}
428 \end{equation}
429 where $x_i$, $y_i$, $z_i$ are the components of the vector joining
430 bead $i$ and origin $O$, the elements of the resistance tensor (at the
431 arbitrary origin $O$) can be written as
432 \begin{eqnarray}
433 \label{introEquation:ResistanceTensorArbitraryOrigin}
434 \Xi^{tt} & = & \sum\limits_i {\sum\limits_j {{\bf C}_{ij} } } \notag , \\
435 \Xi^{tr} = \Xi _{}^{rt} & = & \sum\limits_i {\sum\limits_j {{\bf U}_i {\bf C}_{ij} } } , \\
436 \Xi^{rr} & = & -\sum\limits_i \sum\limits_j {\bf U}_i {\bf C}_{ij} {\bf U}_j + 6 \eta V {\bf I}. \notag
437 \end{eqnarray}
438 The final term in the expression for $\Xi^{rr}$ is a correction that
439 accounts for errors in the rotational motion of the bead models. The
440 additive correction uses the solvent viscosity ($\eta$) as well as the
441 total volume of the beads that contribute to the hydrodynamic model,
442 \begin{equation}
443 V = \frac{4 \pi}{3} \sum_{i=1}^{N} \rho_i^3,
444 \end{equation}
445 where $\rho_i$ is the radius of bead $i$. This correction term was
446 rigorously tested and compared with the analytical results for
447 two-sphere and ellipsoidal systems by Garc\'{i}a de la Torre and
448 Rodes.\cite{Torre:1983lr}
449
450 In general, resistance tensors depend on the origin at which they were
451 computed. However, the proper location for applying the friction
452 force is the center of resistance, the special point at which the
453 trace of rotational resistance tensor, $\Xi^{rr}$ reaches a minimum
454 value. Mathematically, the center of resistance can also be defined
455 as the unique point for a rigid body at which the translation-rotation
456 coupling tensors are symmetric,
457 \begin{equation}
458 \Xi^{tr} = \left(\Xi^{tr}\right)^T
459 \label{introEquation:definitionCR}
460 \end{equation}
461 From Eq. \ref{introEquation:ResistanceTensorArbitraryOrigin}, we can
462 easily derive that the {\it translational} resistance tensor is origin
463 independent, while the rotational resistance tensor and
464 translation-rotation coupling resistance tensor depend on the
465 origin. Given the resistance tensor at an arbitrary origin $O$, and a
466 vector ,${\bf r}_{OP} = (x_{OP}, y_{OP}, z_{OP})$, from $O$ to $P$, we
467 can obtain the resistance tensor at $P$ by
468 \begin{eqnarray}
469 \label{introEquation:resistanceTensorTransformation}
470 \Xi_P^{tt} & = & \Xi_O^{tt} \notag \\
471 \Xi_P^{tr} = \Xi_P^{rt} & = & \Xi_O^{tr} - {\bf U}_{OP} \Xi _O^{tt} \\
472 \Xi_P^{rr} & = &\Xi_O^{rr} - {\bf U}_{OP} \Xi_O^{tt} {\bf U}_{OP}
473 + \Xi_O^{tr} {\bf U}_{OP} - {\bf U}_{OP} \left( \Xi_O^{tr}
474 \right)^{^T} \notag
475 \end{eqnarray}
476 where ${\bf U}_{OP}$ is the skew matrix (Eq. (\ref{eq:skewMatrix}))
477 for the vector between the origin $O$ and the point $P$. Using
478 Eqs.~\ref{introEquation:definitionCR}~and~\ref{introEquation:resistanceTensorTransformation},
479 one can locate the position of center of resistance,
480 \begin{equation*}
481 \left(\begin{array}{l}
482 x_{OR} \\
483 y_{OR} \\
484 z_{OR}
485 \end{array}\right) =
486 \left(\begin{array}{*{20}c}
487 (\Xi_O^{rr})_{yy} + (\Xi_O^{rr})_{zz} & -(\Xi_O^{rr})_{xy} & -(\Xi_O^{rr})_{xz} \\
488 -(\Xi_O^{rr})_{xy} & (\Xi_O^{rr})_{zz} + (\Xi_O^{rr})_{xx} & -(\Xi_O^{rr})_{yz} \\
489 -(\Xi_O^{rr})_{xz} & -(\Xi_O^{rr})_{yz} & (\Xi_O^{rr})_{xx} + (\Xi_O^{rr})_{yy} \\
490 \end{array}\right)^{-1}
491 \left(\begin{array}{l}
492 (\Xi_O^{tr})_{yz} - (\Xi_O^{tr})_{zy} \\
493 (\Xi_O^{tr})_{zx} - (\Xi_O^{tr})_{xz} \\
494 (\Xi_O^{tr})_{xy} - (\Xi_O^{tr})_{yx}
495 \end{array}\right)
496 \end{equation*}
497 where $x_{OR}$, $y_{OR}$, $z_{OR}$ are the components of the vector
498 joining center of resistance $R$ and origin $O$.
499
500 For a general rigid molecular substructure, finding the $6 \times 6$
501 resistance tensor can be a computationally demanding task. First, a
502 lattice of small beads that extends well beyond the boundaries of the
503 rigid substructure is created. The lattice is typically composed of
504 0.25 \AA\ beads on a dense FCC lattice. The lattice constant is taken
505 to be the bead diameter, so that adjacent beads are touching, but do
506 not overlap. To make a shape corresponding to the rigid structure,
507 beads that sit on lattice sites that are outside the van der Waals
508 radii of all of the atoms comprising the rigid body are excluded from
509 the calculation.
510
511 For large structures, most of the beads will be deep within the rigid
512 body and will not contribute to the hydrodynamic tensor. In the {\it
513 rough shell} approach, beads which have all of their lattice neighbors
514 inside the structure are considered interior beads, and are removed
515 from the calculation. After following this procedure, only those
516 beads in direct contact with the van der Waals surface of the rigid
517 body are retained. For reasonably large molecular structures, this
518 truncation can still produce bead assemblies with thousands of
519 members.
520
521 If all of the {\it atoms} comprising the rigid substructure are
522 spherical and non-overlapping, the tensor in
523 Eq.~(\ref{introEquation:RPTensorNonOverlapped}) may be used directly
524 using the atoms themselves as the hydrodynamic beads. This is a
525 variant of the {\it bead model} approach of Carrasco and Garc\'{i}a de
526 la Torre.\cite{Carrasco1999} In this case, the size of the ${\bf B}$
527 matrix can be quite small, and the calculation of the hydrodynamic
528 tensor is straightforward.
529
530 In general, the inversion of the ${\bf B}$ matrix is the most
531 computationally demanding task. This inversion is done only once for
532 each type of rigid structure. We have used straightforward
533 LU-decomposition to solve the linear system and to obtain the elements
534 of ${\bf C}$. Once ${\bf C}$ has been obtained, the location of the
535 center of resistance ($R$) is found and the resistance tensor at this
536 point is calculated. The $3 \times 1$ vector giving the location of
537 the rigid body's center of resistance and the $6 \times 6$ resistance
538 tensor are then stored for use in the Langevin dynamics calculation.
539 These quantities depend on solvent viscosity and temperature and must
540 be recomputed if different simulation conditions are required.
541
542 \section{Langevin Dynamics for Rigid Particles of Arbitrary Shape\label{LDRB}}
543
544 Consider the Langevin equations of motion in generalized coordinates
545 \begin{equation}
546 {\bf M} \dot{{\bf V}}(t) = {\bf F}_{s}(t) +
547 {\bf F}_{f}(t) + {\bf F}_{r}(t)
548 \label{LDGeneralizedForm}
549 \end{equation}
550 where ${\bf M}$ is a $6 \times 6$ diagonal mass matrix (which
551 includes the mass of the rigid body as well as the moments of inertia
552 in the body-fixed frame) and ${\bf V}$ is a generalized velocity,
553 ${\bf V} =
554 \left\{{\bf v},{\bf \omega}\right\}$. The right side of
555 Eq.~\ref{LDGeneralizedForm} consists of three generalized forces: a
556 system force (${\bf F}_{s}$), a frictional or dissipative force (${\bf
557 F}_{f}$) and a stochastic force (${\bf F}_{r}$). While the evolution
558 of the system in Newtonian mechanics is typically done in the lab
559 frame, it is convenient to handle the dynamics of rigid bodies in
560 body-fixed frames. Thus the friction and random forces on each
561 substructure are calculated in a body-fixed frame and may converted
562 back to the lab frame using that substructure's rotation matrix (${\bf
563 Q}$):
564 \begin{equation}
565 {\bf F}_{f,r} =
566 \left( \begin{array}{c}
567 {\bf f}_{f,r} \\
568 {\bf \tau}_{f,r}
569 \end{array} \right)
570 =
571 \left( \begin{array}{c}
572 {\bf Q}^{T} {\bf f}^{~b}_{f,r} \\
573 {\bf Q}^{T} {\bf \tau}^{~b}_{f,r}
574 \end{array} \right)
575 \end{equation}
576 The body-fixed friction force, ${\bf F}_{f}^{~b}$, is proportional to
577 the (body-fixed) velocity at the center of resistance
578 ${\bf v}_{R}^{~b}$ and the angular velocity ${\bf \omega}$
579 \begin{equation}
580 {\bf F}_{f}^{~b}(t) = \left( \begin{array}{l}
581 {\bf f}_{f}^{~b}(t) \\
582 {\bf \tau}_{f}^{~b}(t) \\
583 \end{array} \right) = - \left( \begin{array}{*{20}c}
584 \Xi_{R}^{tt} & \Xi_{R}^{rt} \\
585 \Xi_{R}^{tr} & \Xi_{R}^{rr} \\
586 \end{array} \right)\left( \begin{array}{l}
587 {\bf v}_{R}^{~b}(t) \\
588 {\bf \omega}(t) \\
589 \end{array} \right),
590 \end{equation}
591 while the random force, ${\bf F}_{r}$, is a Gaussian stochastic
592 variable with zero mean and variance,
593 \begin{equation}
594 \left\langle {{\bf F}_{r}(t) ({\bf F}_{r}(t'))^T } \right\rangle =
595 \left\langle {{\bf F}_{r}^{~b} (t) ({\bf F}_{r}^{~b} (t'))^T } \right\rangle =
596 2 k_B T \Xi_R \delta(t - t'). \label{eq:randomForce}
597 \end{equation}
598 $\Xi_R$ is the $6\times6$ resistance tensor at the center of
599 resistance. Once this tensor is known for a given rigid body (as
600 described in the previous section) obtaining a stochastic vector that
601 has the properties in Eq. (\ref{eq:randomForce}) can be done
602 efficiently by carrying out a one-time Cholesky decomposition to
603 obtain the square root matrix of the resistance tensor,
604 \begin{equation}
605 \Xi_R = {\bf S} {\bf S}^{T},
606 \label{eq:Cholesky}
607 \end{equation}
608 where ${\bf S}$ is a lower triangular matrix.\cite{Schlick2002} A
609 vector with the statistics required for the random force can then be
610 obtained by multiplying ${\bf S}$ onto a random 6-vector ${\bf Z}$ which
611 has elements chosen from a Gaussian distribution, such that:
612 \begin{equation}
613 \langle {\bf Z}_i \rangle = 0, \hspace{1in} \langle {\bf Z}_i \cdot
614 {\bf Z}_j \rangle = \frac{2 k_B T}{\delta t} \delta_{ij},
615 \end{equation}
616 where $\delta t$ is the timestep in use during the simulation. The
617 random force, ${\bf F}_{r}^{~b} = {\bf S} {\bf Z}$, can be shown to have the
618 correct properties required by Eq. (\ref{eq:randomForce}).
619
620 The equation of motion for the translational velocity of the center of
621 mass (${\bf v}$) can be written as
622 \begin{equation}
623 m \dot{{\bf v}} (t) = {\bf f}_{s}(t) + {\bf f}_{f}(t) +
624 {\bf f}_{r}(t)
625 \end{equation}
626 Since the frictional and random forces are applied at the center of
627 resistance, which generally does not coincide with the center of mass,
628 extra torques are exerted at the center of mass. Thus, the net
629 body-fixed torque at the center of mass, $\tau^{~b}(t)$,
630 is given by
631 \begin{equation}
632 \tau^{~b} \leftarrow \tau_{s}^{~b} + \tau_{f}^{~b} + \tau_{r}^{~b} + {\bf r}_{MR} \times \left( {\bf f}_{f}^{~b} + {\bf f}_{r}^{~b} \right)
633 \end{equation}
634 where ${\bf r}_{MR}$ is the vector from the center of mass to the center of
635 resistance. Instead of integrating the angular velocity in lab-fixed
636 frame, we consider the equation of motion for the angular momentum
637 (${\bf j}$) in the body-fixed frame
638 \begin{equation}
639 \frac{\partial}{\partial t}{\bf j}(t) = \tau^{~b}(t)
640 \end{equation}
641 Embedding the friction and random forces into the the total force and
642 torque, one can integrate the Langevin equations of motion for a rigid
643 body of arbitrary shape in a velocity-Verlet style 2-part algorithm,
644 where $h = \delta t$:
645
646 {\tt move A:}
647 \begin{align*}
648 {\bf v}\left(t + h / 2\right) &\leftarrow {\bf v}(t)
649 + \frac{h}{2} \left( {\bf f}(t) / m \right), \\
650 %
651 {\bf r}(t + h) &\leftarrow {\bf r}(t)
652 + h {\bf v}\left(t + h / 2 \right), \\
653 %
654 {\bf j}\left(t + h / 2 \right) &\leftarrow {\bf j}(t)
655 + \frac{h}{2} {\bf \tau}^{~b}(t), \\
656 %
657 {\bf Q}(t + h) &\leftarrow \mathrm{rotate}\left( h {\bf j}
658 (t + h / 2) \cdot \overleftrightarrow{\mathsf{I}}^{-1} \right).
659 \end{align*}
660 In this context, $\overleftrightarrow{\mathsf{I}}$ is the diagonal
661 moment of inertia tensor, and the $\mathrm{rotate}$ function is the
662 reversible product of the three body-fixed rotations,
663 \begin{equation}
664 \mathrm{rotate}({\bf a}) = \mathsf{G}_x(a_x / 2) \cdot
665 \mathsf{G}_y(a_y / 2) \cdot \mathsf{G}_z(a_z) \cdot \mathsf{G}_y(a_y
666 / 2) \cdot \mathsf{G}_x(a_x /2),
667 \end{equation}
668 where each rotational propagator, $\mathsf{G}_\alpha(\theta)$,
669 rotates both the rotation matrix ($\mathbf{Q}$) and the body-fixed
670 angular momentum (${\bf j}$) by an angle $\theta$ around body-fixed
671 axis $\alpha$,
672 \begin{equation}
673 \mathsf{G}_\alpha( \theta ) = \left\{
674 \begin{array}{lcl}
675 \mathbf{Q}(t) & \leftarrow & \mathbf{Q}(0) \cdot \mathsf{R}_\alpha(\theta)^T, \\
676 {\bf j}(t) & \leftarrow & \mathsf{R}_\alpha(\theta) \cdot {\bf
677 j}(0).
678 \end{array}
679 \right.
680 \end{equation}
681 $\mathsf{R}_\alpha$ is a quadratic approximation to the single-axis
682 rotation matrix. For example, in the small-angle limit, the
683 rotation matrix around the body-fixed x-axis can be approximated as
684 \begin{equation}
685 \mathsf{R}_x(\theta) \approx \left(
686 \begin{array}{ccc}
687 1 & 0 & 0 \\
688 0 & \frac{1-\theta^2 / 4}{1 + \theta^2 / 4} & -\frac{\theta}{1+
689 \theta^2 / 4} \\
690 0 & \frac{\theta}{1+ \theta^2 / 4} & \frac{1-\theta^2 / 4}{1 +
691 \theta^2 / 4}
692 \end{array}
693 \right).
694 \end{equation}
695 All other rotations follow in a straightforward manner. After the
696 first part of the propagation, the forces and body-fixed torques are
697 calculated at the new positions and orientations. The system forces
698 and torques are derivatives of the total potential energy function
699 ($U$) with respect to the rigid body positions (${\bf r}$) and the
700 columns of the transposed rotation matrix ${\bf Q}^T = \left({\bf
701 u}_x, {\bf u}_y, {\bf u}_z \right)$:
702
703 {\tt Forces:}
704 \begin{align*}
705 {\bf f}_{s}(t + h) & \leftarrow
706 - \left(\frac{\partial U}{\partial {\bf r}}\right)_{{\bf r}(t + h)} \\
707 %
708 {\bf \tau}_{s}(t + h) &\leftarrow {\bf u}(t + h)
709 \times \frac{\partial U}{\partial {\bf u}} \\
710 %
711 {\bf v}^{b}_{R}(t+h) & \leftarrow \mathbf{Q}(t+h) \cdot \left({\bf v}(t+h) + {\bf \omega}(t+h) \times {\bf r}_{MR} \right) \\
712 %
713 {\bf f}_{R,f}^{b}(t+h) & \leftarrow - \Xi_{R}^{tt} \cdot
714 {\bf v}^{b}_{R}(t+h) - \Xi_{R}^{rt} \cdot {\bf \omega}(t+h) \\
715 %
716 {\bf \tau}_{R,f}^{b}(t+h) & \leftarrow - \Xi_{R}^{tr} \cdot
717 {\bf v}^{b}_{R}(t+h) - \Xi_{R}^{rr} \cdot {\bf \omega}(t+h) \\
718 %
719 Z & \leftarrow {\tt GaussianNormal}(2 k_B T / h, 6) \\
720 {\bf F}_{R,r}^{b}(t+h) & \leftarrow {\bf S} \cdot Z \\
721 %
722 {\bf f}(t+h) & \leftarrow {\bf f}_{s}(t+h) + \mathbf{Q}^{T}(t+h)
723 \cdot \left({\bf f}_{R,f}^{~b} + {\bf f}_{R,r}^{~b} \right) \\
724 %
725 \tau(t+h) & \leftarrow \tau_{s}(t+h) + \mathbf{Q}^{T}(t+h) \cdot \left(\tau_{R,f}^{~b} + \tau_{R,r}^{~b} \right) + {\bf r}_{MR} \times \left({\bf f}_{f}(t+h) + {\bf f}_{r}(t+h) \right) \\
726 \tau^{~b}(t+h) & \leftarrow \mathbf{Q}(t+h) \cdot \tau(t+h) \\
727 \end{align*}
728 Frictional (and random) forces and torques must be computed at the
729 center of resistance, so there are additional steps required to find
730 the body-fixed velocity (${\bf v}_{R}^{~b}$) at this location. Mapping
731 the frictional and random forces at the center of resistance back to
732 the center of mass also introduces an additional term in the torque
733 one obtains at the center of mass.
734
735 Once the forces and torques have been obtained at the new time step,
736 the velocities can be advanced to the same time value.
737
738 {\tt move B:}
739 \begin{align*}
740 {\bf v}\left(t + h \right) &\leftarrow {\bf v}\left(t + h / 2
741 \right)
742 + \frac{h}{2} \left( {\bf f}(t + h) / m \right), \\
743 %
744 {\bf j}\left(t + h \right) &\leftarrow {\bf j}\left(t + h / 2
745 \right)
746 + \frac{h}{2} {\bf \tau}^{~b}(t + h) .
747 \end{align*}
748
749 \section{Validating the Method\label{sec:validating}}
750 In order to validate our Langevin integrator for arbitrarily-shaped
751 rigid bodies, we implemented the algorithm in {\sc
752 oopse}\cite{Meineke2005} and compared the results of this algorithm
753 with the known
754 hydrodynamic limiting behavior for a few model systems, and to
755 microcanonical molecular dynamics simulations for some more
756 complicated bodies. The model systems and their analytical behavior
757 (if known) are summarized below. Parameters for the primary particles
758 comprising our model systems are given in table \ref{tab:parameters},
759 and a sketch of the arrangement of these primary particles into the
760 model rigid bodies is shown in figure \ref{fig:models}. In table
761 \ref{tab:parameters}, $d$ and $l$ are the physical dimensions of
762 ellipsoidal (Gay-Berne) particles. For spherical particles, the value
763 of the Lennard-Jones $\sigma$ parameter is the particle diameter
764 ($d$). Gay-Berne ellipsoids have an energy scaling parameter,
765 $\epsilon^s$, which describes the well depth for two identical
766 ellipsoids in a {\it side-by-side} configuration. Additionally, a
767 well depth aspect ratio, $\epsilon^r = \epsilon^e / \epsilon^s$,
768 describes the ratio between the well depths in the {\it end-to-end}
769 and side-by-side configurations. For spheres, $\epsilon^r \equiv 1$.
770 Moments of inertia are also required to describe the motion of primary
771 particles with orientational degrees of freedom.
772
773 \begin{table*}
774 \begin{minipage}{\linewidth}
775 \begin{center}
776 \caption{Parameters for the primary particles in use by the rigid body
777 models in figure \ref{fig:models}.}
778 \begin{tabular}{lrcccccccc}
779 \hline
780 & & & & & & & \multicolumn{3}c{$\overleftrightarrow{\mathsf I}$ (amu \AA$^2$)} \\
781 & & $d$ (\AA) & $l$ (\AA) & $\epsilon^s$ (kcal/mol) & $\epsilon^r$ &
782 $m$ (amu) & $I_{xx}$ & $I_{yy}$ & $I_{zz}$ \\ \hline
783 Sphere & & 6.5 & $= d$ & 0.8 & 1 & 190 & 802.75 & 802.75 & 802.75 \\
784 Ellipsoid & & 4.6 & 13.8 & 0.8 & 0.2 & 200 & 2105 & 2105 & 421 \\
785 Dumbbell &(2 identical spheres) & 6.5 & $= d$ & 0.8 & 1 & 190 & 802.75 & 802.75 & 802.75 \\
786 Banana &(3 identical ellipsoids)& 4.2 & 11.2 & 0.8 & 0.2 & 240 & 10000 & 10000 & 0 \\
787 Lipid: & Spherical Head & 6.5 & $= d$ & 0.185 & 1 & 196 & & & \\
788 & Ellipsoidal Tail & 4.6 & 13.8 & 0.8 & 0.2 & 760 & 45000 & 45000 & 9000 \\
789 Solvent & & 4.7 & $= d$ & 0.8 & 1 & 72.06 & & & \\
790 \hline
791 \end{tabular}
792 \label{tab:parameters}
793 \end{center}
794 \end{minipage}
795 \end{table*}
796
797 \begin{figure}
798 \centering
799 \includegraphics[width=3in]{sketch}
800 \caption[A sketch of the model systems used in evaluating the behavior
801 of the rigid body Langevin integrator]{} \label{fig:models}
802 \end{figure}
803
804 \subsection{Simulation Methodology}
805 We performed reference microcanonical simulations with explicit
806 solvents for each of the different model system. In each case there
807 was one solute model and 1929 solvent molecules present in the
808 simulation box. All simulations were equilibrated for 5 ns using a
809 constant-pressure and temperature integrator with target values of 300
810 K for the temperature and 1 atm for pressure. Following this stage,
811 further equilibration (5 ns) and sampling (10 ns) was done in a
812 microcanonical ensemble. Since the model bodies are typically quite
813 massive, we were able to use a time step of 25 fs.
814
815 The model systems studied used both Lennard-Jones spheres as well as
816 uniaxial Gay-Berne ellipoids. In its original form, the Gay-Berne
817 potential was a single site model for the interactions of rigid
818 ellipsoidal molecules.\cite{Gay1981} It can be thought of as a
819 modification of the Gaussian overlap model originally described by
820 Berne and Pechukas.\cite{Berne72} The potential is constructed in the
821 familiar form of the Lennard-Jones function using
822 orientation-dependent $\sigma$ and $\epsilon$ parameters,
823 \begin{equation*}
824 V_{ij}({{\bf \hat u}_i}, {{\bf \hat u}_j}, {{\bf \hat
825 r}_{ij}}) = 4\epsilon ({{\bf \hat u}_i}, {{\bf \hat u}_j},
826 {{\bf \hat r}_{ij}})\left[\left(\frac{\sigma_0}{r_{ij}-\sigma({{\bf \hat u
827 }_i},
828 {{\bf \hat u}_j}, {{\bf \hat r}_{ij}})+\sigma_0}\right)^{12}
829 -\left(\frac{\sigma_0}{r_{ij}-\sigma({{\bf \hat u}_i}, {{\bf \hat u}_j},
830 {{\bf \hat r}_{ij}})+\sigma_0}\right)^6\right]
831 \label{eq:gb}
832 \end{equation*}
833
834 The range $(\sigma({\bf \hat{u}}_{i},{\bf \hat{u}}_{j},{\bf
835 \hat{r}}_{ij}))$, and strength $(\epsilon({\bf \hat{u}}_{i},{\bf
836 \hat{u}}_{j},{\bf \hat{r}}_{ij}))$ parameters
837 are dependent on the relative orientations of the two ellipsoids (${\bf
838 \hat{u}}_{i},{\bf \hat{u}}_{j}$) as well as the direction of the
839 inter-ellipsoid separation (${\bf \hat{r}}_{ij}$). The shape and
840 attractiveness of each ellipsoid is governed by a relatively small set
841 of parameters: $l$ and $d$ describe the length and width of each
842 uniaxial ellipsoid, while $\epsilon^s$, which describes the well depth
843 for two identical ellipsoids in a {\it side-by-side} configuration.
844 Additionally, a well depth aspect ratio, $\epsilon^r = \epsilon^e /
845 \epsilon^s$, describes the ratio between the well depths in the {\it
846 end-to-end} and side-by-side configurations. Details of the potential
847 are given elsewhere,\cite{Luckhurst90,Golubkov06,SunX._jp0762020} and an
848 excellent overview of the computational methods that can be used to
849 efficiently compute forces and torques for this potential can be found
850 in Ref. \citen{Golubkov06}
851
852 For the interaction between nonequivalent uniaxial ellipsoids (or
853 between spheres and ellipsoids), the spheres are treated as ellipsoids
854 with an aspect ratio of 1 ($d = l$) and with an well depth ratio
855 ($\epsilon^r$) of 1 ($\epsilon^e = \epsilon^s$). The form of the
856 Gay-Berne potential we are using was generalized by Cleaver {\it et
857 al.} and is appropriate for dissimilar uniaxial
858 ellipsoids.\cite{Cleaver96}
859
860 A switching function was applied to all potentials to smoothly turn
861 off the interactions between a range of $22$ and $25$ \AA. The
862 switching function was the standard (cubic) function,
863 \begin{equation}
864 s(r) =
865 \begin{cases}
866 1 & \text{if $r \le r_{\text{sw}}$},\\
867 \frac{(r_{\text{cut}} + 2r - 3r_{\text{sw}})(r_{\text{cut}} - r)^2}
868 {(r_{\text{cut}} - r_{\text{sw}})^3}
869 & \text{if $r_{\text{sw}} < r \le r_{\text{cut}}$}, \\
870 0 & \text{if $r > r_{\text{cut}}$.}
871 \end{cases}
872 \label{eq:switchingFunc}
873 \end{equation}
874
875 To measure shear viscosities from our microcanonical simulations, we
876 used the Einstein form of the pressure correlation function,\cite{hess:209}
877 \begin{equation}
878 \eta = \lim_{t->\infty} \frac{V}{2 k_B T} \frac{d}{dt} \left\langle \left(
879 \int_{t_0}^{t_0 + t} P_{xz}(t') dt' \right)^2 \right\rangle_{t_0}.
880 \label{eq:shear}
881 \end{equation}
882 which converges much more rapidly in molecular dynamics simulations
883 than the traditional Green-Kubo formula.
884
885 The Langevin dynamics for the different model systems were performed
886 at the same temperature as the average temperature of the
887 microcanonical simulations and with a solvent viscosity taken from
888 Eq. (\ref{eq:shear}) applied to these simulations. We used 1024
889 independent solute simulations to obtain statistics on our Langevin
890 integrator.
891
892 \subsection{Analysis}
893
894 The quantities of interest when comparing the Langevin integrator to
895 analytic hydrodynamic equations and to molecular dynamics simulations
896 are typically translational diffusion constants and orientational
897 relaxation times. Translational diffusion constants for point
898 particles are computed easily from the long-time slope of the
899 mean-square displacement,
900 \begin{equation}
901 D = \lim_{t\rightarrow \infty} \frac{1}{6 t} \left\langle {|\left({\bf r}_{i}(t) - {\bf r}_{i}(0) \right)|}^2 \right\rangle,
902 \end{equation}
903 of the solute molecules. For models in which the translational
904 diffusion tensor (${\bf D}_{tt}$) has non-degenerate eigenvalues
905 (i.e. any non-spherically-symmetric rigid body), it is possible to
906 compute the diffusive behavior for motion parallel to each body-fixed
907 axis by projecting the displacement of the particle onto the
908 body-fixed reference frame at $t=0$. With an isotropic solvent, as we
909 have used in this study, there may be differences between the three
910 diffusion constants at short times, but these must converge to the
911 same value at longer times. Translational diffusion constants for the
912 different shaped models are shown in table \ref{tab:translation}.
913
914 In general, the three eigenvalues ($D_1, D_2, D_3$) of the rotational
915 diffusion tensor (${\bf D}_{rr}$) measure the diffusion of an object
916 {\it around} a particular body-fixed axis and {\it not} the diffusion
917 of a vector pointing along the axis. However, these eigenvalues can
918 be combined to find 5 characteristic rotational relaxation
919 times,\cite{PhysRev.119.53,Berne90}
920 \begin{eqnarray}
921 1 / \tau_1 & = & 6 D_r + 2 \Delta \\
922 1 / \tau_2 & = & 6 D_r - 2 \Delta \\
923 1 / \tau_3 & = & 3 (D_r + D_1) \\
924 1 / \tau_4 & = & 3 (D_r + D_2) \\
925 1 / \tau_5 & = & 3 (D_r + D_3)
926 \end{eqnarray}
927 where
928 \begin{equation}
929 D_r = \frac{1}{3} \left(D_1 + D_2 + D_3 \right)
930 \end{equation}
931 and
932 \begin{equation}
933 \Delta = \left( (D_1 - D_2)^2 + (D_3 - D_1 )(D_3 - D_2)\right)^{1/2}
934 \end{equation}
935 Each of these characteristic times can be used to predict the decay of
936 part of the rotational correlation function when $\ell = 2$,
937 \begin{equation}
938 C_2(t) = \frac{a^2}{N^2} e^{-t/\tau_1} + \frac{b^2}{N^2} e^{-t/\tau_2}.
939 \end{equation}
940 This is the same as the $F^2_{0,0}(t)$ correlation function that
941 appears in Ref. \citen{Berne90}. The amplitudes of the two decay
942 terms are expressed in terms of three dimensionless functions of the
943 eigenvalues: $a = \sqrt{3} (D_1 - D_2)$, $b = (2D_3 - D_1 - D_2 +
944 2\Delta)$, and $N = 2 \sqrt{\Delta b}$. Similar expressions can be
945 obtained for other angular momentum correlation
946 functions.\cite{PhysRev.119.53,Berne90} In all of the model systems we
947 studied, only one of the amplitudes of the two decay terms was
948 non-zero, so it was possible to derive a single relaxation time for
949 each of the hydrodynamic tensors. In many cases, these characteristic
950 times are averaged and reported in the literature as a single relaxation
951 time,\cite{Garcia-de-la-Torre:1997qy}
952 \begin{equation}
953 1 / \tau_0 = \frac{1}{5} \sum_{i=1}^5 \tau_{i}^{-1},
954 \end{equation}
955 although for the cases reported here, this averaging is not necessary
956 and only one of the five relaxation times is relevant.
957
958 To test the Langevin integrator's behavior for rotational relaxation,
959 we have compared the analytical orientational relaxation times (if
960 they are known) with the general result from the diffusion tensor and
961 with the results from both the explicitly solvated molecular dynamics
962 and Langevin simulations. Relaxation times from simulations (both
963 microcanonical and Langevin), were computed using Legendre polynomial
964 correlation functions for a unit vector (${\bf u}$) fixed along one or
965 more of the body-fixed axes of the model.
966 \begin{equation}
967 C_{\ell}(t) = \left\langle P_{\ell}\left({\bf u}_{i}(t) \cdot {\bf
968 u}_{i}(0) \right) \right\rangle
969 \end{equation}
970 For simulations in the high-friction limit, orientational correlation
971 times can then be obtained from exponential fits of this function, or by
972 integrating,
973 \begin{equation}
974 \tau = \ell (\ell + 1) \int_0^{\infty} C_{\ell}(t) dt.
975 \end{equation}
976 In lower-friction solvents, the Legendre correlation functions often
977 exhibit non-exponential decay, and may not be characterized by a
978 single decay constant.
979
980 In table \ref{tab:rotation} we show the characteristic rotational
981 relaxation times (based on the diffusion tensor) for each of the model
982 systems compared with the values obtained via microcanonical and Langevin
983 simulations.
984
985 \subsection{Spherical particles}
986 Our model system for spherical particles was a Lennard-Jones sphere of
987 diameter ($\sigma$) 6.5 \AA\ in a sea of smaller spheres ($\sigma$ =
988 4.7 \AA). The well depth ($\epsilon$) for both particles was set to
989 an arbitrary value of 0.8 kcal/mol.
990
991 The Stokes-Einstein behavior of large spherical particles in
992 hydrodynamic flows with ``stick'' boundary conditions is well known,
993 and is given in Eqs. (\ref{eq:StokesTranslation}) and
994 (\ref{eq:StokesRotation}). Recently, Schmidt and Skinner have
995 computed the behavior of spherical tag particles in molecular dynamics
996 simulations, and have shown that {\it slip} boundary conditions
997 ($\Xi_{tt} = 4 \pi \eta \rho$) may be more appropriate for
998 molecule-sized spheres embedded in a sea of spherical solvent
999 particles.\cite{Schmidt:2004fj,Schmidt:2003kx}
1000
1001 Our simulation results show similar behavior to the behavior observed
1002 by Schmidt and Skinner. The diffusion constant obtained from our
1003 microcanonical molecular dynamics simulations lies between the slip
1004 and stick boundary condition results obtained via Stokes-Einstein
1005 behavior. Since the Langevin integrator assumes Stokes-Einstein stick
1006 boundary conditions in calculating the drag and random forces for
1007 spherical particles, our Langevin routine obtains nearly quantitative
1008 agreement with the hydrodynamic results for spherical particles. One
1009 avenue for improvement of the method would be to compute elements of
1010 $\Xi_{tt}$ assuming behavior intermediate between the two boundary
1011 conditions.
1012
1013 In the explicit solvent simulations, both our solute and solvent
1014 particles were structureless, exerting no torques upon each other.
1015 Therefore, there are not rotational correlation times available for
1016 this model system.
1017
1018 \subsection{Ellipsoids}
1019 For uniaxial ellipsoids ($a > b = c$), Perrin's formulae for both
1020 translational and rotational diffusion of each of the body-fixed axes
1021 can be combined to give a single translational diffusion
1022 constant,\cite{Berne90}
1023 \begin{equation}
1024 D = \frac{k_B T}{6 \pi \eta a} G(s),
1025 \label{Dperrin}
1026 \end{equation}
1027 as well as a single rotational diffusion coefficient,
1028 \begin{equation}
1029 \Theta = \frac{3 k_B T}{16 \pi \eta a^3} \left\{ \frac{(2 - s^2)
1030 G(s) - 1}{1 - s^4} \right\}.
1031 \label{ThetaPerrin}
1032 \end{equation}
1033 In these expressions, $G(s)$ is a function of the axial ratio
1034 ($s = b / a$), which for prolate ellipsoids, is
1035 \begin{equation}
1036 G(s) = (1- s^2)^{-1/2} \ln \left\{ \frac{1 + (1 - s^2)^{1/2}}{s} \right\}
1037 \label{GPerrin}
1038 \end{equation}
1039 Again, there is some uncertainty about the correct boundary conditions
1040 to use for molecular-scale ellipsoids in a sea of similarly-sized
1041 solvent particles. Ravichandran and Bagchi found that {\it slip}
1042 boundary conditions most closely resembled the simulation
1043 results,\cite{Ravichandran:1999fk} in agreement with earlier work of
1044 Tang and Evans.\cite{TANG:1993lr}
1045
1046 Even though there are analytic resistance tensors for ellipsoids, we
1047 constructed a rough-shell model using 2135 beads (each with a diameter
1048 of 0.25 \AA) to approximate the shape of the model ellipsoid. We
1049 compared the Langevin dynamics from both the simple ellipsoidal
1050 resistance tensor and the rough shell approximation with
1051 microcanonical simulations and the predictions of Perrin. As in the
1052 case of our spherical model system, the Langevin integrator reproduces
1053 almost exactly the behavior of the Perrin formulae (which is
1054 unsurprising given that the Perrin formulae were used to derive the
1055 drag and random forces applied to the ellipsoid). We obtain
1056 translational diffusion constants and rotational correlation times
1057 that are within a few percent of the analytic values for both the
1058 exact treatment of the diffusion tensor as well as the rough-shell
1059 model for the ellipsoid.
1060
1061 The translational diffusion constants from the microcanonical
1062 simulations agree well with the predictions of the Perrin model,
1063 although the {\it rotational} correlation times are a factor of 2
1064 shorter than expected from hydrodynamic theory. One explanation for
1065 the slower rotation of explicitly-solvated ellipsoids is the
1066 possibility that solute-solvent collisions happen at both ends of the
1067 solute whenever the principal axis of the ellipsoid is turning. In the
1068 upper portion of figure \ref{fig:explanation} we sketch a physical
1069 picture of this explanation. Since our Langevin integrator is
1070 providing nearly quantitative agreement with the Perrin model, it also
1071 predicts orientational diffusion for ellipsoids that exceed explicitly
1072 solvated correlation times by a factor of two.
1073
1074 \subsection{Rigid dumbbells}
1075 Perhaps the only {\it composite} rigid body for which analytic
1076 expressions for the hydrodynamic tensor are available is the
1077 two-sphere dumbbell model. This model consists of two non-overlapping
1078 spheres held by a rigid bond connecting their centers. There are
1079 competing expressions for the 6x6 resistance tensor for this
1080 model. The second order expression introduced by Rotne and
1081 Prager,\cite{Rotne1969} and improved by Garc\'{i}a de la Torre and
1082 Bloomfield,\cite{Torre1977} is given above as
1083 Eq. (\ref{introEquation:RPTensorNonOverlapped}). In our case, we use
1084 a model dumbbell in which the two spheres are identical Lennard-Jones
1085 particles ($\sigma$ = 6.5 \AA\ , $\epsilon$ = 0.8 kcal / mol) held at
1086 a distance of 6.532 \AA.
1087
1088 The theoretical values for the translational diffusion constant of the
1089 dumbbell are calculated from the work of Stimson and Jeffery, who
1090 studied the motion of this system in a flow parallel to the
1091 inter-sphere axis,\cite{Stimson:1926qy} and Davis, who studied the
1092 motion in a flow {\it perpendicular} to the inter-sphere
1093 axis.\cite{Davis:1969uq} We know of no analytic solutions for the {\it
1094 orientational} correlation times for this model system (other than
1095 those derived from the 6 x 6 tensor mentioned above).
1096
1097 The bead model for this model system comprises the two large spheres
1098 by themselves, while the rough shell approximation used 3368 separate
1099 beads (each with a diameter of 0.25 \AA) to approximate the shape of
1100 the rigid body. The hydrodynamics tensors computed from both the bead
1101 and rough shell models are remarkably similar. Computing the initial
1102 hydrodynamic tensor for a rough shell model can be quite expensive (in
1103 this case it requires inverting a 10104 x 10104 matrix), while the
1104 bead model is typically easy to compute (in this case requiring
1105 inversion of a 6 x 6 matrix).
1106
1107 \begin{figure}
1108 \centering
1109 \includegraphics[width=2in]{RoughShell}
1110 \caption[The model rigid bodies (left column) used to test this
1111 algorithm and their rough-shell approximations (right-column) that
1112 were used to compute the hydrodynamic tensors. The top two models
1113 (ellipsoid and dumbbell) have analytic solutions and were used to test
1114 the rough shell approximation. The lower two models (banana and
1115 lipid) were compared with explicitly-solvated molecular dynamics
1116 simulations]{}
1117 \label{fig:roughShell}
1118 \end{figure}
1119
1120
1121 Once the hydrodynamic tensor has been computed, there is no additional
1122 penalty for carrying out a Langevin simulation with either of the two
1123 different hydrodynamics models. Our naive expectation is that since
1124 the rigid body's surface is roughened under the various shell models,
1125 the diffusion constants will be even farther from the ``slip''
1126 boundary conditions than observed for the bead model (which uses a
1127 Stokes-Einstein model to arrive at the hydrodynamic tensor). For the
1128 dumbbell, this prediction is correct although all of the Langevin
1129 diffusion constants are within 6\% of the diffusion constant predicted
1130 from the fully solvated system.
1131
1132 For rotational motion, Langevin integration (and the hydrodynamic tensor)
1133 yields rotational correlation times that are substantially shorter than those
1134 obtained from explicitly-solvated simulations. It is likely that this is due
1135 to the large size of the explicit solvent spheres, a feature that prevents
1136 the solvent from coming in contact with a substantial fraction of the surface
1137 area of the dumbbell. Therefore, the explicit solvent only provides drag
1138 over a substantially reduced surface area of this model, while the
1139 hydrodynamic theories utilize the entire surface area for estimating
1140 rotational diffusion. A sketch of the free volume available in the explicit
1141 solvent simulations is shown in figure \ref{fig:explanation}.
1142
1143
1144 \begin{figure}
1145 \centering
1146 \includegraphics[width=6in]{explanation}
1147 \caption[Explanations of the differences between orientational
1148 correlation times for explicitly-solvated models and hydrodynamic
1149 predictions. For the ellipsoids (upper figures), rotation of the
1150 principal axis can involve correlated collisions at both sides of the
1151 solute. In the rigid dumbbell model (lower figures), the large size
1152 of the explicit solvent spheres prevents them from coming in contact
1153 with a substantial fraction of the surface area of the dumbbell.
1154 Therefore, the explicit solvent only provides drag over a
1155 substantially reduced surface area of this model, where the
1156 hydrodynamic theories utilize the entire surface area for estimating
1157 rotational diffusion]{} \label{fig:explanation}
1158 \end{figure}
1159
1160 \subsection{Composite banana-shaped molecules}
1161 Banana-shaped rigid bodies composed of three Gay-Berne ellipsoids have
1162 been used by Orlandi {\it et al.} to observe mesophases in
1163 coarse-grained models for bent-core liquid crystalline
1164 molecules.\cite{Orlandi:2006fk} We have used the same overlapping
1165 ellipsoids as a way to test the behavior of our algorithm for a
1166 structure of some interest to the materials science community,
1167 although since we are interested in capturing only the hydrodynamic
1168 behavior of this model, we have left out the dipolar interactions of
1169 the original Orlandi model.
1170
1171 A reference system composed of a single banana rigid body embedded in
1172 a sea of 1929 solvent particles was created and run under standard
1173 (microcanonical) molecular dynamics. The resulting viscosity of this
1174 mixture was 0.298 centipoise (as estimated using
1175 Eq. (\ref{eq:shear})). To calculate the hydrodynamic properties of
1176 the banana rigid body model, we created a rough shell (see
1177 Fig.~\ref{fig:roughShell}), in which the banana is represented as a
1178 ``shell'' made of 3321 identical beads (0.25 \AA\ in diameter)
1179 distributed on the surface. Applying the procedure described in
1180 Sec.~\ref{introEquation:ResistanceTensorArbitraryOrigin}, we
1181 identified the center of resistance, ${\bf r} = $(0 \AA, 0.81 \AA, 0
1182 \AA).
1183
1184 The Langevin rigid-body integrator (and the hydrodynamic diffusion
1185 tensor) are essentially quantitative for translational diffusion of
1186 this model. Orientational correlation times under the Langevin
1187 rigid-body integrator are within 11\% of the values obtained from
1188 explicit solvent, but these models also exhibit some solvent
1189 inaccessible surface area in the explicitly-solvated case.
1190
1191 \subsection{Composite sphero-ellipsoids}
1192
1193 Spherical heads perched on the ends of Gay-Berne ellipsoids have been
1194 used recently as models for lipid
1195 molecules.\cite{SunX._jp0762020,Ayton01} A reference system composed
1196 of a single lipid rigid body embedded in a sea of 1929 solvent
1197 particles was created and run under a microcanonical ensemble. The
1198 resulting viscosity of this mixture was 0.349 centipoise (as estimated
1199 using Eq. (\ref{eq:shear})). To calculate the hydrodynamic properties
1200 of the lipid rigid body model, we created a rough shell (see
1201 Fig.~\ref{fig:roughShell}), in which the lipid is represented as a
1202 ``shell'' made of 3550 identical beads (0.25 \AA\ in diameter)
1203 distributed on the surface. Applying the procedure described by
1204 Eq. (\ref{introEquation:ResistanceTensorArbitraryOrigin}), we
1205 identified the center of resistance, ${\bf r} = $(0 \AA, 0 \AA, 1.46
1206 \AA).
1207
1208 The translational diffusion constants and rotational correlation times
1209 obtained using the Langevin rigid-body integrator (and the
1210 hydrodynamic tensor) are essentially quantitative when compared with
1211 the explicit solvent simulations for this model system.
1212
1213 \subsection{Summary of comparisons with explicit solvent simulations}
1214 The Langevin rigid-body integrator we have developed is a reliable way
1215 to replace explicit solvent simulations in cases where the detailed
1216 solute-solvent interactions do not greatly impact the behavior of the
1217 solute. As such, it has the potential to greatly increase the length
1218 and time scales of coarse grained simulations of large solvated
1219 molecules. In cases where the dielectric screening of the solvent, or
1220 specific solute-solvent interactions become important for structural
1221 or dynamic features of the solute molecule, this integrator may be
1222 less useful. However, for the kinds of coarse-grained modeling that
1223 have become popular in recent years (ellipsoidal side chains, rigid
1224 bodies, and molecular-scale models), this integrator may prove itself
1225 to be quite valuable.
1226
1227 \begin{figure}
1228 \centering
1229 \includegraphics[width=\linewidth]{graph}
1230 \caption[The mean-squared displacements ($\langle r^2(t) \rangle$) and
1231 orientational correlation functions ($C_2(t)$) for each of the model
1232 rigid bodies studied. The circles are the results for microcanonical
1233 simulations with explicit solvent molecules, while the other data sets
1234 are results for Langevin dynamics using the different hydrodynamic
1235 tensor approximations. The Perrin model for the ellipsoids is
1236 considered the ``exact'' hydrodynamic behavior (this can also be said
1237 for the translational motion of the dumbbell operating under the bead
1238 model). In most cases, the various hydrodynamics models reproduce each
1239 other quantitatively]{}
1240 \label{fig:results}
1241 \end{figure}
1242
1243 \begin{table*}
1244 \begin{minipage}{\linewidth}
1245 \begin{center}
1246 \caption{Translational diffusion constants (D) for the model systems
1247 calculated using microcanonical simulations (with explicit solvent),
1248 theoretical predictions, and Langevin simulations (with implicit solvent).
1249 Analytical solutions for the exactly-solved hydrodynamics models are obtained
1250 from: Stokes' law (sphere), and Refs. \citen{Perrin1934} and \citen{Perrin1936}
1251 (ellipsoid), \citen{Stimson:1926qy} and \citen{Davis:1969uq}
1252 (dumbbell). The other model systems have no known analytic solution.
1253 All diffusion constants are reported in units of $10^{-3}$ cm$^2$ / ps (=
1254 $10^{-4}$ \AA$^2$ / fs). }
1255 \begin{tabular}{lccccccc}
1256 \hline
1257 & \multicolumn{2}c{microcanonical simulation} & & \multicolumn{3}c{Theoretical} & Langevin \\
1258 \cline{2-3} \cline{5-7}
1259 model & $\eta$ (centipoise) & D & & Analytical & method & Hydrodynamics & simulation \\
1260 \hline
1261 sphere & 0.279 & 3.06 & & 2.42 & exact & 2.42 & 2.33 \\
1262 ellipsoid & 0.255 & 2.44 & & 2.34 & exact & 2.34 & 2.37 \\
1263 & 0.255 & 2.44 & & 2.34 & rough shell & 2.36 & 2.28 \\
1264 dumbbell & 0.308 & 2.06 & & 1.64 & bead model & 1.65 & 1.62 \\
1265 & 0.308 & 2.06 & & 1.64 & rough shell & 1.59 & 1.62 \\
1266 banana & 0.298 & 1.53 & & & rough shell & 1.56 & 1.55 \\
1267 lipid & 0.349 & 1.41 & & & rough shell & 1.33 & 1.32 \\
1268 \end{tabular}
1269 \label{tab:translation}
1270 \end{center}
1271 \end{minipage}
1272 \end{table*}
1273
1274 \begin{table*}
1275 \begin{minipage}{\linewidth}
1276 \begin{center}
1277 \caption{Orientational relaxation times ($\tau$) for the model systems using
1278 microcanonical simulation (with explicit solvent), theoretical
1279 predictions, and Langevin simulations (with implicit solvent). All
1280 relaxation times are for the rotational correlation function with
1281 $\ell = 2$ and are reported in units of ps. The ellipsoidal model has
1282 an exact solution for the orientational correlation time due to
1283 Perrin, but the other model systems have no known analytic solution.}
1284 \begin{tabular}{lccccccc}
1285 \hline
1286 & \multicolumn{2}c{microcanonical simulation} & & \multicolumn{3}c{Theoretical} & Langevin \\
1287 \cline{2-3} \cline{5-7}
1288 model & $\eta$ (centipoise) & $\tau$ & & Perrin & method & Hydrodynamic & simulation \\
1289 \hline
1290 sphere & 0.279 & & & 9.69 & exact & 9.69 & 9.64 \\
1291 ellipsoid & 0.255 & 46.7 & & 22.0 & exact & 22.0 & 22.2 \\
1292 & 0.255 & 46.7 & & 22.0 & rough shell & 22.6 & 22.2 \\
1293 dumbbell & 0.308 & 14.1 & & & bead model & 50.0 & 50.1 \\
1294 & 0.308 & 14.1 & & & rough shell & 41.5 & 41.3 \\
1295 banana & 0.298 & 63.8 & & & rough shell & 70.9 & 70.9 \\
1296 lipid & 0.349 & 78.0 & & & rough shell & 76.9 & 77.9 \\
1297 \hline
1298 \end{tabular}
1299 \label{tab:rotation}
1300 \end{center}
1301 \end{minipage}
1302 \end{table*}
1303
1304 \section{Application: A rigid-body lipid bilayer}
1305
1306 To test the accuracy and efficiency of the new integrator, we applied
1307 it to study the formation of corrugated structures emerging from
1308 simulations of the coarse grained lipid molecular models presented
1309 above. The initial configuration is taken from earlier molecular
1310 dynamics studies on lipid bilayers which had used spherical
1311 (Lennard-Jones) solvent particles and moderate (480 solvated lipid
1312 molecules) system sizes.\cite{SunX._jp0762020} the solvent molecules
1313 were excluded from the system and the box was replicated three times
1314 in the x- and y- axes (giving a single simulation cell containing 4320
1315 lipids). The experimental value for the viscosity of water at 20C
1316 ($\eta = 1.00$ cp) was used with the Langevin integrator to mimic the
1317 hydrodynamic effects of the solvent. The absence of explicit solvent
1318 molecules and the stability of the integrator allowed us to take
1319 timesteps of 50 fs. A simulation run time of 30 ns was sampled to
1320 calculate structural properties. Fig. \ref{fig:bilayer} shows the
1321 configuration of the system after 30 ns. Structural properties of the
1322 bilayer (e.g. the head and body $P_2$ order parameters) are nearly
1323 identical to those obtained via solvated molecular dynamics. The
1324 ripple structure remained stable during the entire trajectory.
1325 Compared with using explicit bead-model solvent molecules, the 30 ns
1326 trajectory for 4320 lipids with the Langevin integrator is now {\it
1327 faster} on the same hardware than the same length trajectory was for
1328 the 480-lipid system previously studied.
1329
1330 \begin{figure}
1331 \centering
1332 \includegraphics[width=\linewidth]{bilayer}
1333 \caption[A snapshot of a bilayer composed of 4320 rigid-body models
1334 for lipid molecules evolving using the Langevin integrator described
1335 in this work]{} \label{fig:bilayer}
1336 \end{figure}
1337
1338 \section{Conclusions}
1339
1340 We have presented a new algorithm for carrying out Langevin dynamics
1341 simulations on complex rigid bodies by incorporating the hydrodynamic
1342 resistance tensors for arbitrary shapes into a stable and efficient
1343 integration scheme. The integrator gives quantitative agreement with
1344 both analytic and approximate hydrodynamic theories, and works
1345 reasonably well at reproducing the solute dynamical properties
1346 (diffusion constants, and orientational relaxation times) from
1347 explicitly-solvated simulations. For the cases where there are
1348 discrepancies between our Langevin integrator and the explicit solvent
1349 simulations, two features of molecular simulations help explain the
1350 differences.
1351
1352 First, the use of ``stick'' boundary conditions for molecular-sized
1353 solutes in a sea of similarly-sized solvent particles may be
1354 problematic. We are certainly not the first group to notice this
1355 difference between hydrodynamic theories and explicitly-solvated
1356 molecular
1357 simulations.\cite{Schmidt:2004fj,Schmidt:2003kx,Ravichandran:1999fk,TANG:1993lr}
1358 The problem becomes particularly noticable in both the translational
1359 diffusion of the spherical particles and the rotational diffusion of
1360 the ellipsoids. In both of these cases it is clear that the
1361 approximations that go into hydrodynamics are the source of the error,
1362 and not the integrator itself.
1363
1364 Second, in the case of structures which have substantial surface area
1365 that is inaccessible to solvent particles, the hydrodynamic theories
1366 (and the Langevin integrator) may overestimate the effects of solvent
1367 friction because they overestimate the exposed surface area of the
1368 rigid body. This is particularly noticable in the rotational
1369 diffusion of the dumbbell model. We believe that given a solvent of
1370 known radius, it may be possible to modify the rough shell approach to
1371 place beads on solvent-accessible surface, instead of on the geometric
1372 surface defined by the van der Waals radii of the components of the
1373 rigid body. Further work to confirm the behavior of this new
1374 approximation is ongoing.
1375
1376 \section{Acknowledgments}
1377 Support for this project was provided by the National Science
1378 Foundation under grant CHE-0134881. T.L. also acknowledges the
1379 financial support from Center of Applied Mathematics at University of
1380 Notre Dame.
1381
1382 \end{doublespace}
1383 \newpage
1384
1385 \bibliographystyle{jcp2}
1386 \bibliography{langevin}
1387 \end{document}