| 1 | xsun | 3336 | \chapter{\label{chap:ld}LANGEVIN DYNAMICS} | 
| 2 | xsun | 3370 |  | 
| 3 |  |  | Recent examples of the usefulness of Langevin simulations include a | 
| 4 |  |  | study of met-enkephalin in which Langevin simulations predicted | 
| 5 | xsun | 3383 | dynamical properties that were large\-ly in agreement with explicit | 
| 6 | xsun | 3370 | solvent simulations.\cite{Shen2002} By applying Langevin dynamics with | 
| 7 |  |  | the UNRES model, Liwo and his coworkers suggest that protein folding | 
| 8 |  |  | pathways can be explored within a reasonable amount of | 
| 9 |  |  | time.\cite{Liwo2005} | 
| 10 |  |  |  | 
| 11 |  |  | The stochastic nature of Langevin dynamics also enhances the sampling | 
| 12 |  |  | of the system and increases the probability of crossing energy | 
| 13 |  |  | barriers.\cite{Cui2003,Banerjee2004} Combining Langevin dynamics with | 
| 14 |  |  | Kramers' theory, Klimov and Thirumalai identified free-energy | 
| 15 |  |  | barriers by studying the viscosity dependence of the protein folding | 
| 16 |  |  | rates.\cite{Klimov1997} In order to account for solvent induced | 
| 17 |  |  | interactions missing from the implicit solvent model, Kaya | 
| 18 |  |  | incorporated a desolvation free energy barrier into protein | 
| 19 |  |  | folding/unfolding studies and discovered a higher free energy barrier | 
| 20 |  |  | between the native and denatured states.\cite{HuseyinKaya07012005} | 
| 21 |  |  |  | 
| 22 |  |  | In typical LD simulations, the friction and random ($f_r$) forces on | 
| 23 |  |  | individual atoms are taken from Stokes' law, | 
| 24 |  |  | \begin{eqnarray} | 
| 25 |  |  | m \dot{v}(t) & = & -\nabla U(x) - \xi m v(t) + f_r(t) \notag \\ | 
| 26 |  |  | \langle f_r(t) \rangle & = & 0 \\ | 
| 27 |  |  | \langle f_r(t) f_r(t') \rangle & = & 2 k_B T \xi m \delta(t - t') \notag | 
| 28 |  |  | \end{eqnarray} | 
| 29 |  |  | where $\xi \approx 6 \pi \eta \rho$.  Here $\eta$ is the viscosity of the | 
| 30 |  |  | implicit solvent, and $\rho$ is the hydrodynamic radius of the atom. | 
| 31 |  |  |  | 
| 32 |  |  | The use of rigid substructures,\cite{Chun:2000fj} | 
| 33 |  |  | coarse-graining,\cite{Ayton01,Golubkov06,Orlandi:2006fk,SunX._jp0762020} | 
| 34 |  |  | and ellipsoidal representations of protein side | 
| 35 |  |  | chains~\cite{Fogolari:1996lr} has made the use of the Stokes-Einstein | 
| 36 |  |  | approximation problematic.  A rigid substructure moves as a single | 
| 37 |  |  | unit with orientational as well as translational degrees of freedom. | 
| 38 |  |  | This requires a more general treatment of the hydrodynamics than the | 
| 39 |  |  | spherical approximation provides.  Also, the atoms involved in a rigid | 
| 40 |  |  | or coarse-grained structure have solvent-mediated interactions with | 
| 41 |  |  | each other, and these interactions are ignored if all atoms are | 
| 42 |  |  | treated as separate spherical particles.  The theory of interactions | 
| 43 |  |  | {\it between} bodies moving through a fluid has been developed over | 
| 44 |  |  | the past century and has been applied to simulations of Brownian | 
| 45 |  |  | motion.\cite{FIXMAN:1986lr,Ramachandran1996} | 
| 46 |  |  |  | 
| 47 |  |  | In order to account for the diffusion anisotropy of complex shapes, | 
| 48 |  |  | Fernandes and Garc\'{i}a de la Torre improved an earlier Brownian | 
| 49 |  |  | dynamics simulation algorithm~\cite{Ermak1978,Allison1991} by | 
| 50 |  |  | incorporating a generalized $6\times6$ diffusion tensor and | 
| 51 |  |  | introducing a rotational evolution scheme consisting of three | 
| 52 |  |  | consecutive rotations.\cite{Fernandes2002} Unfortunately, biases are | 
| 53 |  |  | introduced into the system due to the arbitrary order of applying the | 
| 54 |  |  | noncommuting rotation operators.\cite{Beard2003} Based on the | 
| 55 |  |  | observation the momentum relaxation time is much less than the time | 
| 56 |  |  | step, one may ignore the inertia in Brownian dynamics.  However, the | 
| 57 |  |  | assumption of zero average acceleration is not always true for | 
| 58 |  |  | cooperative motion which is common in proteins. An inertial Brownian | 
| 59 |  |  | dynamics (IBD) was proposed to address this issue by adding an | 
| 60 |  |  | inertial correction term.\cite{Beard2000} As a complement to IBD, | 
| 61 |  |  | which has a lower bound in time step because of the inertial | 
| 62 |  |  | relaxation time, long-time-step inertial dynamics (LTID) can be used | 
| 63 |  |  | to investigate the inertial behavior of linked polymer segments in a | 
| 64 |  |  | low friction regime.\cite{Beard2000} LTID can also deal with the | 
| 65 |  |  | rotational dynamics for nonskew bodies without translation-rotation | 
| 66 |  |  | coupling by separating the translation and rotation motion and taking | 
| 67 |  |  | advantage of the analytical solution of hydrodynamic | 
| 68 |  |  | properties. However, typical nonskew bodies like cylinders and | 
| 69 |  |  | ellipsoids are inadequate to represent most complex macromolecular | 
| 70 |  |  | assemblies. Therefore, the goal of this work is to adapt some of the | 
| 71 |  |  | hydrodynamic methodologies developed to treat Brownian motion of | 
| 72 |  |  | complex assemblies into a Langevin integrator for rigid bodies with | 
| 73 |  |  | arbitrary shapes. | 
| 74 |  |  |  | 
| 75 |  |  | \subsection{Rigid Body Dynamics} | 
| 76 |  |  | Rigid bodies are frequently involved in the modeling of large | 
| 77 |  |  | collections of particles that move as a single unit.  In molecular | 
| 78 |  |  | simulations, rigid bodies have been used to simplify protein-protein | 
| 79 |  |  | docking,\cite{Gray2003} and lipid bilayer | 
| 80 |  |  | simulations.\cite{SunX._jp0762020} Many of the water models in common | 
| 81 |  |  | use are also rigid-body | 
| 82 |  |  | models,\cite{Jorgensen83,Berendsen81,Berendsen87} although they are | 
| 83 |  |  | typically evolved in molecular dynamics simulations using constraints | 
| 84 |  |  | rather than rigid body equations of motion. | 
| 85 |  |  |  | 
| 86 |  |  | Euler angles are a natural choice to describe the rotational degrees | 
| 87 |  |  | of freedom.  However, due to $\frac{1}{\sin \theta}$ singularities, the | 
| 88 |  |  | numerical integration of corresponding equations of these motion can | 
| 89 |  |  | become inaccurate (and inefficient).  Although the use of multiple | 
| 90 |  |  | sets of Euler angles can overcome this problem,\cite{Barojas1973} the | 
| 91 |  |  | computational penalty and the loss of angular momentum conservation | 
| 92 |  |  | remain.  A singularity-free representation utilizing quaternions was | 
| 93 |  |  | developed by Evans in 1977.\cite{Evans1977} The Evans quaternion | 
| 94 |  |  | approach uses a nonseparable Hamiltonian, and this has prevented | 
| 95 |  |  | symplectic algorithms from being utilized until very | 
| 96 |  |  | recently.\cite{Miller2002} | 
| 97 |  |  |  | 
| 98 |  |  | Another approach is the application of holonomic constraints to the | 
| 99 |  |  | atoms belonging to the rigid body.  Each atom moves independently | 
| 100 |  |  | under the normal forces deriving from potential energy and constraints | 
| 101 |  |  | are used to guarantee rigidity. However, due to their iterative | 
| 102 |  |  | nature, the SHAKE and RATTLE algorithms converge very slowly when the | 
| 103 |  |  | number of constraints (and the number of particles that belong to the | 
| 104 |  |  | rigid body) increases.\cite{Ryckaert1977,Andersen1983} | 
| 105 |  |  |  | 
| 106 |  |  | In order to develop a stable and efficient integration scheme that | 
| 107 |  |  | preserves most constants of the motion in microcanonical simulations, | 
| 108 |  |  | symplectic propagators are necessary.  By introducing a conjugate | 
| 109 |  |  | momentum to the rotation matrix ${\bf Q}$ and re-formulating | 
| 110 |  |  | Hamilton's equations, a symplectic orientational integrator, | 
| 111 |  |  | RSHAKE,\cite{Kol1997} was proposed to evolve rigid bodies on a | 
| 112 |  |  | constraint manifold by iteratively satisfying the orthogonality | 
| 113 |  |  | constraint ${\bf Q}^T {\bf Q} = 1$.  An alternative method using the | 
| 114 |  |  | quaternion representation was developed by Omelyan.\cite{Omelyan1998} | 
| 115 |  |  | However, both of these methods are iterative and suffer from some | 
| 116 |  |  | related inefficiencies. A symplectic Lie-Poisson integrator for rigid | 
| 117 |  |  | bodies developed by Dullweber {\it et al.}\cite{Dullweber1997} removes | 
| 118 |  |  | most of the limitations mentioned above and is therefore the basis for | 
| 119 |  |  | our Langevin integrator. | 
| 120 |  |  |  | 
| 121 |  |  | The goal of the present work is to develop a Langevin dynamics | 
| 122 | xsun | 3383 | algorithm for ar\-bi\-trary-shaped rigid particles by integrating an | 
| 123 | xsun | 3370 | accurate estimate of the friction tensor from hydrodynamics theory | 
| 124 |  |  | into a stable and efficient rigid body dynamics propagator.  In the | 
| 125 |  |  | sections below, we review some of the theory of hydrodynamic tensors | 
| 126 |  |  | developed primarily for Brownian simulations of multi-particle | 
| 127 |  |  | systems, we then present our integration method for a set of | 
| 128 |  |  | generalized Langevin equations of motion, and we compare the behavior | 
| 129 |  |  | of the new Langevin integrator to dynamical quantities obtained via | 
| 130 |  |  | explicit solvent molecular dynamics. | 
| 131 |  |  |  | 
| 132 |  |  | \subsection{\label{ldintroSection:frictionTensor}The Friction Tensor} | 
| 133 |  |  | Theoretically, a complete friction kernel for a solute particle can be | 
| 134 |  |  | determined using the velocity autocorrelation function from a | 
| 135 |  |  | simulation with explicit solvent molecules. However, this approach | 
| 136 |  |  | becomes impractical when the solute becomes complex.  Instead, various | 
| 137 |  |  | approaches based on hydrodynamics have been developed to calculate | 
| 138 |  |  | static friction coefficients. In general, the friction tensor $\Xi$ is | 
| 139 |  |  | a $6\times 6$ matrix given by | 
| 140 |  |  | \begin{equation} | 
| 141 |  |  | \Xi  = \left( \begin{array}{*{20}c} | 
| 142 |  |  | \Xi^{tt} & \Xi^{rt}  \\ | 
| 143 |  |  | \Xi^{tr} & \Xi^{rr}  \\ | 
| 144 |  |  | \end{array} \right). | 
| 145 |  |  | \end{equation} | 
| 146 |  |  | Here, $\Xi^{tt}$ and $\Xi^{rr}$ are $3 \times 3$ translational and | 
| 147 |  |  | rotational resistance (friction) tensors respectively, while | 
| 148 |  |  | $\Xi^{tr}$ is translation-rotation coupling tensor and $\Xi^{rt}$ is | 
| 149 |  |  | rotation-translation coupling tensor. When a particle moves in a | 
| 150 |  |  | fluid, it may experience a friction force ($\mathbf{f}_f$) and torque | 
| 151 |  |  | ($\mathbf{\tau}_f$) in opposition to the velocity ($\mathbf{v}$) and | 
| 152 |  |  | body-fixed angular velocity ($\mathbf{\omega}$), | 
| 153 |  |  | \begin{equation} | 
| 154 |  |  | \left( \begin{array}{l} | 
| 155 |  |  | \mathbf{f}_f  \\ | 
| 156 |  |  | \mathbf{\tau}_f  \\ | 
| 157 |  |  | \end{array} \right) =  - \left( \begin{array}{*{20}c} | 
| 158 |  |  | \Xi^{tt} & \Xi^{rt}  \\ | 
| 159 |  |  | \Xi^{tr} & \Xi^{rr}  \\ | 
| 160 |  |  | \end{array} \right)\left( \begin{array}{l} | 
| 161 |  |  | \mathbf{v} \\ | 
| 162 |  |  | \mathbf{\omega} \\ | 
| 163 |  |  | \end{array} \right). | 
| 164 |  |  | \end{equation} | 
| 165 |  |  | For an arbitrary body moving in a fluid, Peters has derived a set of | 
| 166 |  |  | fluctuation-dissipation relations for the friction | 
| 167 |  |  | tensors,\cite{Peters:1999qy,Peters:1999uq,Peters:2000fk} | 
| 168 |  |  | \begin{eqnarray} | 
| 169 |  |  | \Xi^{tt} & = & \frac{1}{k_B T} \int_0^\infty \left[ \langle {\bf | 
| 170 |  |  | F}(0) {\bf F}(-s) \rangle_{eq} - \langle {\bf F} \rangle_{eq}^2 | 
| 171 |  |  | \right] ds \\ | 
| 172 |  |  | \notag \\ | 
| 173 |  |  | \Xi^{tr} & = & \frac{1}{k_B T} \int_0^\infty \left[ \langle {\bf | 
| 174 |  |  | F}(0) {\bf \tau}(-s) \rangle_{eq} - \langle {\bf F} \rangle_{eq} | 
| 175 |  |  | \langle {\bf \tau} \rangle_{eq} \right] ds \\ | 
| 176 |  |  | \notag \\ | 
| 177 |  |  | \Xi^{rt} & = & \frac{1}{k_B T} \int_0^\infty \left[ \langle {\bf | 
| 178 |  |  | \tau}(0) {\bf F}(-s) \rangle_{eq} - \langle {\bf \tau} \rangle_{eq} | 
| 179 |  |  | \langle {\bf F} \rangle_{eq} \right] ds \\ | 
| 180 |  |  | \notag \\ | 
| 181 |  |  | \Xi^{rr} & = & \frac{1}{k_B T} \int_0^\infty \left[ \langle {\bf | 
| 182 |  |  | \tau}(0) {\bf \tau}(-s) \rangle_{eq} - \langle {\bf \tau} \rangle_{eq}^2 | 
| 183 |  |  | \right] ds | 
| 184 |  |  | \end{eqnarray} | 
| 185 |  |  | In these expressions, the forces (${\bf F}$) and torques (${\bf | 
| 186 |  |  | \tau}$) are those that arise solely from the interactions of the body with | 
| 187 |  |  | the surrounding fluid. For a single solute body in an isotropic fluid, | 
| 188 |  |  | the average forces and torques in these expressions ($\langle {\bf F} | 
| 189 |  |  | \rangle_{eq}$ and $\langle {\bf \tau} \rangle_{eq}$) | 
| 190 |  |  | vanish, and one obtains the simpler force-torque correlation formulae | 
| 191 |  |  | of Nienhuis.\cite{Nienhuis:1970lr} Molecular dynamics simulations with | 
| 192 |  |  | explicit solvent molecules can be used to obtain estimates of the | 
| 193 |  |  | friction tensors with these formulae. In practice, however, one needs | 
| 194 |  |  | relatively long simulations with frequently-stored force and torque | 
| 195 |  |  | information to compute friction tensors, and this becomes | 
| 196 |  |  | prohibitively expensive when there are large numbers of large solute | 
| 197 |  |  | particles.  For bodies with simple shapes, there are a number of | 
| 198 |  |  | approximate expressions that allow computation of these tensors | 
| 199 |  |  | without the need for expensive simulations that utilize explicit | 
| 200 |  |  | solvent particles. | 
| 201 |  |  |  | 
| 202 |  |  | \subsubsection{\label{ldintroSection:resistanceTensorRegular}\textbf{The Resistance Tensor for Regular Shapes}} | 
| 203 |  |  | For a spherical body under ``stick'' boundary conditions, the | 
| 204 |  |  | translational and rotational friction tensors can be estimated from | 
| 205 |  |  | Stokes' law, | 
| 206 |  |  | \begin{equation} | 
| 207 |  |  | \label{ldeq:StokesTranslation} | 
| 208 |  |  | \Xi^{tt}  = \left( \begin{array}{*{20}c} | 
| 209 |  |  | {6\pi \eta \rho} & 0 & 0  \\ | 
| 210 |  |  | 0 & {6\pi \eta \rho} & 0  \\ | 
| 211 |  |  | 0 & 0 & {6\pi \eta \rho}  \\ | 
| 212 |  |  | \end{array} \right) | 
| 213 |  |  | \end{equation} | 
| 214 |  |  | and | 
| 215 |  |  | \begin{equation} | 
| 216 |  |  | \label{ldeq:StokesRotation} | 
| 217 |  |  | \Xi^{rr}  = \left( \begin{array}{*{20}c} | 
| 218 |  |  | {8\pi \eta \rho^3 } & 0 & 0  \\ | 
| 219 |  |  | 0 & {8\pi \eta \rho^3 } & 0  \\ | 
| 220 |  |  | 0 & 0 & {8\pi \eta \rho^3 }  \\ | 
| 221 |  |  | \end{array} \right) | 
| 222 |  |  | \end{equation} | 
| 223 |  |  | where $\eta$ is the viscosity of the solvent and $\rho$ is the | 
| 224 |  |  | hydrodynamic radius.  The presence of the rotational resistance tensor | 
| 225 |  |  | implies that the spherical body has internal structure and | 
| 226 |  |  | orientational degrees of freedom that must be propagated in time.  For | 
| 227 |  |  | non-structured spherical bodies (i.e. the atoms in a traditional | 
| 228 |  |  | molecular dynamics simulation) these degrees of freedom do not exist. | 
| 229 |  |  |  | 
| 230 |  |  | Other non-spherical shapes, such as cylinders and ellipsoids, are | 
| 231 |  |  | widely used as references for developing new hydrodynamic theories, | 
| 232 |  |  | because their properties can be calculated exactly. In 1936, Perrin | 
| 233 |  |  | extended Stokes' law to general | 
| 234 |  |  | ellipsoids,\cite{Perrin1934,Perrin1936} described in Cartesian | 
| 235 |  |  | coordinates as | 
| 236 |  |  | \begin{equation} | 
| 237 |  |  | \frac{x^2 }{a^2} + \frac{y^2}{b^2} + \frac{z^2 }{c^2} = 1. | 
| 238 |  |  | \end{equation} | 
| 239 |  |  | Here, the semi-axes are of lengths $a$, $b$, and $c$. Due to the | 
| 240 |  |  | complexity of the elliptic integral, only uniaxial ellipsoids, either | 
| 241 |  |  | prolate ($a \ge b = c$) or oblate ($a < b = c$), were solved | 
| 242 |  |  | exactly. Introducing an elliptic integral parameter $S$ for prolate, | 
| 243 |  |  | \begin{equation} | 
| 244 |  |  | S = \frac{2}{\sqrt{a^2  - b^2}} \ln \frac{a + \sqrt{a^2  - b^2}}{b}, | 
| 245 |  |  | \end{equation} | 
| 246 |  |  | and oblate, | 
| 247 |  |  | \begin{equation} | 
| 248 |  |  | S = \frac{2}{\sqrt {b^2  - a^2 }} \arctan \frac{\sqrt {b^2  - a^2}}{a}, | 
| 249 |  |  | \end{equation} | 
| 250 |  |  | ellipsoids, it is possible to write down exact solutions for the | 
| 251 |  |  | resistance tensors.  As is the case for spherical bodies, the translational, | 
| 252 |  |  | \begin{eqnarray} | 
| 253 |  |  | \Xi_a^{tt}  & = & 16\pi \eta \frac{a^2  - b^2}{(2a^2  - b^2 )S - 2a}. \\ | 
| 254 |  |  | \Xi_b^{tt} =  \Xi_c^{tt} & = & 32\pi \eta \frac{a^2  - b^2 }{(2a^2 - 3b^2 )S + 2a}, | 
| 255 |  |  | \end{eqnarray} | 
| 256 |  |  | and rotational, | 
| 257 |  |  | \begin{eqnarray} | 
| 258 |  |  | \Xi_a^{rr} & = & \frac{32\pi}{3} \eta \frac{(a^2  - b^2 )b^2}{2a - b^2 S}, \\ | 
| 259 |  |  | \Xi_b^{rr} = \Xi_c^{rr} & = & \frac{32\pi}{3} \eta \frac{(a^4  - b^4)}{(2a^2  - b^2 )S - 2a} | 
| 260 |  |  | \end{eqnarray} | 
| 261 |  |  | resistance tensors are diagonal $3 \times 3$ matrices. For both | 
| 262 |  |  | spherical and ellipsoidal particles, the translation-rotation and | 
| 263 |  |  | rotation-translation coupling tensors are zero. | 
| 264 |  |  |  | 
| 265 |  |  | \subsubsection{\label{ldintroSection:resistanceTensorRegularArbitrary}\textbf{The Resistance Tensor for Arbitrary Shapes}} | 
| 266 |  |  | Other than the fluctuation dissipation formulae given by | 
| 267 |  |  | Peters,\cite{Peters:1999qy,Peters:1999uq,Peters:2000fk} there are no | 
| 268 |  |  | analytic solutions for the friction tensor for rigid molecules of | 
| 269 |  |  | arbitrary shape. The ellipsoid of revolution and general triaxial | 
| 270 |  |  | ellipsoid models have been widely used to approximate the hydrodynamic | 
| 271 |  |  | properties of rigid bodies. However, the mapping from all possible | 
| 272 |  |  | ellipsoidal spaces ($r$-space) to all possible combinations of | 
| 273 |  |  | rotational diffusion coefficients ($D$-space) is not | 
| 274 |  |  | unique.\cite{Wegener1979} Additionally, because there is intrinsic | 
| 275 |  |  | coupling between translational and rotational motion of {\it skew} | 
| 276 |  |  | rigid bodies, general ellipsoids are not always suitable for modeling | 
| 277 |  |  | rigid molecules.  A number of studies have been devoted to determining | 
| 278 |  |  | the friction tensor for irregular shapes using methods in which the | 
| 279 |  |  | molecule of interest is modeled with a combination of | 
| 280 |  |  | spheres\cite{Carrasco1999} and the hydrodynamic properties of the | 
| 281 |  |  | molecule are then calculated using a set of two-point interaction | 
| 282 |  |  | tensors.  We have found the {\it bead} and {\it rough shell} models of | 
| 283 |  |  | Carrasco and Garc\'{i}a de la Torre to be the most useful of these | 
| 284 |  |  | methods,\cite{Carrasco1999} and we review the basic outline of the | 
| 285 |  |  | rough shell approach here.  A more thorough explanation can be found | 
| 286 |  |  | in Ref. \citen{Carrasco1999}. | 
| 287 |  |  |  | 
| 288 |  |  | Consider a rigid assembly of $N$ small beads moving through a | 
| 289 |  |  | continuous medium.  Due to hydrodynamic interactions between the | 
| 290 |  |  | beads, the net velocity of the $i^\mathrm{th}$ bead relative to the | 
| 291 |  |  | medium, ${\bf v}'_i$, is different than its unperturbed velocity ${\bf | 
| 292 |  |  | v}_i$, | 
| 293 |  |  | \begin{equation} | 
| 294 |  |  | {\bf v}'_i  = {\bf v}_i  - \sum\limits_{j \ne i} {{\bf T}_{ij} {\bf F}_j } | 
| 295 |  |  | \end{equation} | 
| 296 |  |  | where ${\bf F}_j$ is the frictional force on the medium due to bead $j$, and | 
| 297 |  |  | ${\bf T}_{ij}$ is the hydrodynamic interaction tensor between the two beads. | 
| 298 |  |  | The frictional force felt by the $i^\mathrm{th}$ bead is proportional to | 
| 299 |  |  | its net velocity | 
| 300 |  |  | \begin{equation} | 
| 301 |  |  | {\bf F}_i  = \xi_i {\bf v}_i  - \xi_i \sum\limits_{j \ne i} {{\bf T}_{ij} {\bf F}_j }. | 
| 302 |  |  | \label{ldintroEquation:tensorExpression} | 
| 303 |  |  | \end{equation} | 
| 304 |  |  | Eq. (\ref{ldintroEquation:tensorExpression}) defines the two-point | 
| 305 |  |  | hydrodynamic tensor, ${\bf T}_{ij}$.  There have been many proposed | 
| 306 |  |  | solutions to this equation, including the simple solution given by | 
| 307 |  |  | Oseen and Burgers in 1930 for two beads of identical radius, | 
| 308 |  |  | \begin{equation} | 
| 309 |  |  | {\bf T}_{ij}  = \frac{1}{{8\pi \eta R_{ij} }}\left( {{\bf I} + | 
| 310 |  |  | \frac{{{\bf R}_{ij} {\bf R}_{ij}^T }}{{R_{ij}^2 }}} \right). | 
| 311 |  |  | \label{ldintroEquation:oseenTensor} | 
| 312 |  |  | \end{equation} | 
| 313 |  |  | Here ${\bf R}_{ij}$ is the distance vector between beads $i$ and | 
| 314 |  |  | $j$. A second order expression for beads of different hydrodynamic | 
| 315 |  |  | radii was introduced by Rotne and Prager,\cite{Rotne1969} and improved | 
| 316 |  |  | by Garc\'{i}a de la Torre and Bloomfield,\cite{Torre1977} | 
| 317 |  |  | \begin{equation} | 
| 318 |  |  | {\bf T}_{ij}  = \frac{1}{{8\pi \eta R_{ij} }}\left[ {\left( {{\bf I} + | 
| 319 |  |  | \frac{{{\bf R}_{ij} {\bf R}_{ij}^T }}{{R_{ij}^2 }}} \right) + \frac{{\rho | 
| 320 |  |  | _i^2  + \rho_j^2 }}{{R_{ij}^2 }}\left( {\frac{{\bf I}}{3} - | 
| 321 |  |  | \frac{{{\bf R}_{ij} {\bf R}_{ij}^T }}{{R_{ij}^2 }}} \right)} \right]. | 
| 322 |  |  | \label{ldintroEquation:RPTensorNonOverlapped} | 
| 323 |  |  | \end{equation} | 
| 324 |  |  | Both the Oseen-Burgers tensor and | 
| 325 |  |  | Eq.~\ref{ldintroEquation:RPTensorNonOverlapped} have an assumption | 
| 326 |  |  | that the beads do not overlap ($R_{ij} \ge \rho_i + \rho_j$). | 
| 327 |  |  |  | 
| 328 |  |  | To calculate the resistance tensor for a body represented as the union | 
| 329 |  |  | of many non-overlapping beads, we first pick an arbitrary origin $O$ | 
| 330 |  |  | and then construct a $3N \times 3N$ supermatrix consisting of $N | 
| 331 |  |  | \times N$ ${\bf B}_{ij}$ blocks | 
| 332 |  |  | \begin{equation} | 
| 333 |  |  | {\bf B} = \left( \begin{array}{*{20}c} | 
| 334 |  |  | {\bf B}_{11} &  \ldots  & {\bf B}_{1N}   \\ | 
| 335 |  |  | \vdots  &  \ddots  &  \vdots   \\ | 
| 336 |  |  | {\bf B}_{N1} &  \cdots  & {\bf B}_{NN} | 
| 337 |  |  | \end{array} \right) | 
| 338 |  |  | \end{equation} | 
| 339 |  |  | ${\bf B}_{ij}$ is a version of the hydrodynamic tensor which includes the | 
| 340 |  |  | self-contributions for spheres, | 
| 341 |  |  | \begin{equation} | 
| 342 |  |  | {\bf B}_{ij}  = \delta _{ij} \frac{{\bf I}}{{6\pi \eta R_{ij}}} + (1 - \delta_{ij} | 
| 343 |  |  | ){\bf T}_{ij} | 
| 344 |  |  | \end{equation} | 
| 345 |  |  | where $\delta_{ij}$ is the Kronecker delta function. Inverting the | 
| 346 |  |  | ${\bf B}$ matrix, we obtain | 
| 347 |  |  | \begin{equation} | 
| 348 |  |  | {\bf C} = {\bf B}^{ - 1}  = \left(\begin{array}{*{20}c} | 
| 349 |  |  | {\bf C}_{11} &  \ldots  & {\bf C}_{1N} \\ | 
| 350 |  |  | \vdots  &  \ddots  &  \vdots   \\ | 
| 351 |  |  | {\bf C}_{N1} &  \cdots  & {\bf C}_{NN} | 
| 352 |  |  | \end{array} \right), | 
| 353 |  |  | \end{equation} | 
| 354 |  |  | which can be partitioned into $N \times N$ blocks labeled ${\bf C}_{ij}$. | 
| 355 |  |  | (Each of the ${\bf C}_{ij}$ blocks is a $3 \times 3$ matrix.)  Using the | 
| 356 |  |  | skew matrix, | 
| 357 |  |  | \begin{equation} | 
| 358 |  |  | {\bf U}_i  = \left(\begin{array}{*{20}c} | 
| 359 |  |  | 0 & -z_i & y_i \\ | 
| 360 |  |  | z_i &  0   & - x_i \\ | 
| 361 |  |  | -y_i & x_i & 0 | 
| 362 |  |  | \end{array}\right) | 
| 363 |  |  | \label{ldeq:skewMatrix} | 
| 364 |  |  | \end{equation} | 
| 365 |  |  | where $x_i$, $y_i$, $z_i$ are the components of the vector joining | 
| 366 |  |  | bead $i$ and origin $O$, the elements of the resistance tensor (at the | 
| 367 |  |  | arbitrary origin $O$) can be written as | 
| 368 |  |  | \begin{eqnarray} | 
| 369 |  |  | \label{ldintroEquation:ResistanceTensorArbitraryOrigin} | 
| 370 |  |  | \Xi^{tt}  & = & \sum\limits_i {\sum\limits_j {{\bf C}_{ij} } } \notag , \\ | 
| 371 |  |  | \Xi^{tr}  = \Xi _{}^{rt}  & = & \sum\limits_i {\sum\limits_j {{\bf U}_i {\bf C}_{ij} } } , \\ | 
| 372 |  |  | \Xi^{rr}  & = &  -\sum\limits_i \sum\limits_j {\bf U}_i {\bf C}_{ij} {\bf U}_j + 6 \eta V {\bf I}. \notag | 
| 373 |  |  | \end{eqnarray} | 
| 374 |  |  | The final term in the expression for $\Xi^{rr}$ is a correction that | 
| 375 |  |  | accounts for errors in the rotational motion of the bead models. The | 
| 376 |  |  | additive correction uses the solvent viscosity ($\eta$) as well as the | 
| 377 |  |  | total volume of the beads that contribute to the hydrodynamic model, | 
| 378 |  |  | \begin{equation} | 
| 379 |  |  | V = \frac{4 \pi}{3} \sum_{i=1}^{N} \rho_i^3, | 
| 380 |  |  | \end{equation} | 
| 381 |  |  | where $\rho_i$ is the radius of bead $i$.  This correction term was | 
| 382 |  |  | rigorously tested and compared with the analytical results for | 
| 383 |  |  | two-sphere and ellipsoidal systems by Garc\'{i}a de la Torre and | 
| 384 |  |  | Rodes.\cite{Torre:1983lr} | 
| 385 |  |  |  | 
| 386 |  |  | In general, resistance tensors depend on the origin at which they were | 
| 387 |  |  | computed.  However, the proper location for applying the friction | 
| 388 |  |  | force is the center of resistance, the special point at which the | 
| 389 |  |  | trace of rotational resistance tensor, $\Xi^{rr}$ reaches a minimum | 
| 390 |  |  | value.  Mathematically, the center of resistance can also be defined | 
| 391 |  |  | as the unique point for a rigid body at which the translation-rotation | 
| 392 |  |  | coupling tensors are symmetric, | 
| 393 |  |  | \begin{equation} | 
| 394 |  |  | \Xi^{tr}  = \left(\Xi^{tr}\right)^T | 
| 395 |  |  | \label{ldintroEquation:definitionCR} | 
| 396 |  |  | \end{equation} | 
| 397 |  |  | From Eq. \ref{ldintroEquation:ResistanceTensorArbitraryOrigin}, we can | 
| 398 |  |  | easily derive that the {\it translational} resistance tensor is origin | 
| 399 |  |  | independent, while the rotational resistance tensor and | 
| 400 |  |  | translation-rotation coupling resistance tensor depend on the | 
| 401 |  |  | origin. Given the resistance tensor at an arbitrary origin $O$, and a | 
| 402 |  |  | vector ,${\bf r}_{OP} = (x_{OP}, y_{OP}, z_{OP})$, from $O$ to $P$, we | 
| 403 |  |  | can obtain the resistance tensor at $P$ by | 
| 404 |  |  | \begin{eqnarray} | 
| 405 |  |  | \label{ldintroEquation:resistanceTensorTransformation} | 
| 406 |  |  | \Xi_P^{tt}  & = & \Xi_O^{tt}  \notag \\ | 
| 407 |  |  | \Xi_P^{tr}  = \Xi_P^{rt}  & = & \Xi_O^{tr}  - {\bf U}_{OP} \Xi _O^{tt}  \\ | 
| 408 |  |  | \Xi_P^{rr}  & = &\Xi_O^{rr}  - {\bf U}_{OP} \Xi_O^{tt} {\bf U}_{OP} | 
| 409 |  |  | + \Xi_O^{tr} {\bf U}_{OP}  - {\bf U}_{OP} \left( \Xi_O^{tr} | 
| 410 |  |  | \right)^{^T} \notag | 
| 411 |  |  | \end{eqnarray} | 
| 412 |  |  | where ${\bf U}_{OP}$ is the skew matrix (Eq. (\ref{ldeq:skewMatrix})) | 
| 413 |  |  | for the vector between the origin $O$ and the point $P$. Using | 
| 414 |  |  | Eqs.~\ref{ldintroEquation:definitionCR}~and~\ref{ldintroEquation:resistanceTensorTransformation}, | 
| 415 |  |  | one can locate the position of center of resistance, | 
| 416 |  |  | \begin{eqnarray*} | 
| 417 |  |  | \left(\begin{array}{l} | 
| 418 |  |  | x_{OR} \\ | 
| 419 |  |  | y_{OR} \\ | 
| 420 |  |  | z_{OR} \\ | 
| 421 |  |  | \end{array}\right) & = & | 
| 422 |  |  | \left(\begin{array}{*{20}c} | 
| 423 |  |  | (\Xi_O^{rr})_{yy} + (\Xi_O^{rr})_{zz} & -(\Xi_O^{rr})_{xy} & -(\Xi_O^{rr})_{xz} \\ | 
| 424 |  |  | -(\Xi_O^{rr})_{xy} & (\Xi_O^{rr})_{zz} + (\Xi_O^{rr})_{xx} & -(\Xi_O^{rr})_{yz} \\ | 
| 425 |  |  | -(\Xi_O^{rr})_{xz} & -(\Xi_O^{rr})_{yz} & (\Xi_O^{rr})_{xx} + (\Xi_O^{rr})_{yy} \\ | 
| 426 |  |  | \end{array}\right)^{-1} \\ | 
| 427 |  |  | & & \left(\begin{array}{l} | 
| 428 |  |  | (\Xi_O^{tr})_{yz} - (\Xi_O^{tr})_{zy} \\ | 
| 429 |  |  | (\Xi_O^{tr})_{zx} - (\Xi_O^{tr})_{xz} \\ | 
| 430 |  |  | (\Xi_O^{tr})_{xy} - (\Xi_O^{tr})_{yx} \\ | 
| 431 |  |  | \end{array}\right) \\ | 
| 432 |  |  | \end{eqnarray*} | 
| 433 |  |  | where $x_{OR}$, $y_{OR}$, $z_{OR}$ are the components of the vector | 
| 434 |  |  | joining center of resistance $R$ and origin $O$. | 
| 435 |  |  |  | 
| 436 |  |  | For a general rigid molecular substructure, finding the $6 \times 6$ | 
| 437 |  |  | resistance tensor can be a computationally demanding task.  First, a | 
| 438 |  |  | lattice of small beads that extends well beyond the boundaries of the | 
| 439 |  |  | rigid substructure is created.  The lattice is typically composed of | 
| 440 |  |  | 0.25 \AA\ beads on a dense FCC lattice.  The lattice constant is taken | 
| 441 |  |  | to be the bead diameter, so that adjacent beads are touching, but do | 
| 442 |  |  | not overlap. To make a shape corresponding to the rigid structure, | 
| 443 |  |  | beads that sit on lattice sites that are outside the van der Waals | 
| 444 |  |  | radii of all of the atoms comprising the rigid body are excluded from | 
| 445 |  |  | the calculation. | 
| 446 |  |  |  | 
| 447 |  |  | For large structures, most of the beads will be deep within the rigid | 
| 448 |  |  | body and will not contribute to the hydrodynamic tensor.  In the {\it | 
| 449 |  |  | rough shell} approach, beads which have all of their lattice neighbors | 
| 450 |  |  | inside the structure are considered interior beads, and are removed | 
| 451 |  |  | from the calculation.  After following this procedure, only those | 
| 452 |  |  | beads in direct contact with the van der Waals surface of the rigid | 
| 453 |  |  | body are retained.  For reasonably large molecular structures, this | 
| 454 |  |  | truncation can still produce bead assemblies with thousands of | 
| 455 |  |  | members. | 
| 456 |  |  |  | 
| 457 |  |  | If all of the {\it atoms} comprising the rigid substructure are | 
| 458 |  |  | spherical and non-overlapping, the tensor in | 
| 459 |  |  | Eq.~(\ref{ldintroEquation:RPTensorNonOverlapped}) may be used directly | 
| 460 |  |  | using the atoms themselves as the hydrodynamic beads.  This is a | 
| 461 |  |  | variant of the {\it bead model} approach of Carrasco and Garc\'{i}a de | 
| 462 |  |  | la Torre.\cite{Carrasco1999} In this case, the size of the ${\bf B}$ | 
| 463 |  |  | matrix can be quite small, and the calculation of the hydrodynamic | 
| 464 |  |  | tensor is straightforward. | 
| 465 |  |  |  | 
| 466 |  |  | In general, the inversion of the ${\bf B}$ matrix is the most | 
| 467 |  |  | computationally demanding task.  This inversion is done only once for | 
| 468 |  |  | each type of rigid structure.  We have used straightforward | 
| 469 |  |  | LU-decomposition to solve the linear system and to obtain the elements | 
| 470 |  |  | of ${\bf C}$. Once ${\bf C}$ has been obtained, the location of the | 
| 471 |  |  | center of resistance ($R$) is found and the resistance tensor at this | 
| 472 |  |  | point is calculated.  The $3 \times 1$ vector giving the location of | 
| 473 |  |  | the rigid body's center of resistance and the $6 \times 6$ resistance | 
| 474 |  |  | tensor are then stored for use in the Langevin dynamics calculation. | 
| 475 |  |  | These quantities depend on solvent viscosity and temperature and must | 
| 476 |  |  | be recomputed if different simulation conditions are required. | 
| 477 |  |  |  | 
| 478 |  |  | \section{Langevin Dynamics for Rigid Particles of Arbitrary Shape\label{ldLDRB}} | 
| 479 |  |  |  | 
| 480 |  |  | Consider the Langevin equations of motion in generalized coordinates | 
| 481 |  |  | \begin{equation} | 
| 482 |  |  | {\bf M} \dot{{\bf V}}(t) = {\bf F}_{s}(t) + | 
| 483 |  |  | {\bf F}_{f}(t)  + {\bf F}_{r}(t) | 
| 484 |  |  | \label{ldLDGeneralizedForm} | 
| 485 |  |  | \end{equation} | 
| 486 |  |  | where ${\bf M}$ is a $6 \times 6$ diagonal mass matrix (which | 
| 487 |  |  | includes the mass of the rigid body as well as the moments of inertia | 
| 488 |  |  | in the body-fixed frame) and ${\bf V}$ is a generalized velocity, | 
| 489 |  |  | ${\bf V} = | 
| 490 |  |  | \left\{{\bf v},{\bf \omega}\right\}$. The right side of | 
| 491 |  |  | Eq.~\ref{ldLDGeneralizedForm} consists of three generalized forces: a | 
| 492 |  |  | system force (${\bf F}_{s}$), a frictional or dissipative force (${\bf | 
| 493 |  |  | F}_{f}$) and a stochastic force (${\bf F}_{r}$). While the evolution | 
| 494 |  |  | of the system in Newtonian mechanics is typically done in the lab | 
| 495 |  |  | frame, it is convenient to handle the dynamics of rigid bodies in | 
| 496 |  |  | body-fixed frames. Thus the friction and random forces on each | 
| 497 |  |  | substructure are calculated in a body-fixed frame and may converted | 
| 498 |  |  | back to the lab frame using that substructure's rotation matrix (${\bf | 
| 499 |  |  | Q}$): | 
| 500 |  |  | \begin{equation} | 
| 501 |  |  | {\bf F}_{f,r} = | 
| 502 |  |  | \left( \begin{array}{c} | 
| 503 |  |  | {\bf f}_{f,r} \\ | 
| 504 |  |  | {\bf \tau}_{f,r} | 
| 505 |  |  | \end{array} \right) | 
| 506 |  |  | = | 
| 507 |  |  | \left( \begin{array}{c} | 
| 508 |  |  | {\bf Q}^{T} {\bf f}^{~b}_{f,r} \\ | 
| 509 |  |  | {\bf Q}^{T} {\bf \tau}^{~b}_{f,r} | 
| 510 |  |  | \end{array} \right) | 
| 511 |  |  | \end{equation} | 
| 512 |  |  | The body-fixed friction force, ${\bf F}_{f}^{~b}$, is proportional to | 
| 513 |  |  | the (body-fixed) velocity at the center of resistance | 
| 514 |  |  | ${\bf v}_{R}^{~b}$ and the angular velocity ${\bf \omega}$ | 
| 515 |  |  | \begin{equation} | 
| 516 |  |  | {\bf F}_{f}^{~b}(t) = \left( \begin{array}{l} | 
| 517 |  |  | {\bf f}_{f}^{~b}(t) \\ | 
| 518 |  |  | {\bf \tau}_{f}^{~b}(t) \\ | 
| 519 |  |  | \end{array} \right) =  - \left( \begin{array}{*{20}c} | 
| 520 |  |  | \Xi_{R}^{tt} & \Xi_{R}^{rt} \\ | 
| 521 |  |  | \Xi_{R}^{tr} & \Xi_{R}^{rr}    \\ | 
| 522 |  |  | \end{array} \right)\left( \begin{array}{l} | 
| 523 |  |  | {\bf v}_{R}^{~b}(t) \\ | 
| 524 |  |  | {\bf \omega}(t) \\ | 
| 525 |  |  | \end{array} \right), | 
| 526 |  |  | \end{equation} | 
| 527 |  |  | while the random force, ${\bf F}_{r}$, is a Gaussian stochastic | 
| 528 |  |  | variable with zero mean and variance, | 
| 529 |  |  | \begin{equation} | 
| 530 |  |  | \left\langle {{\bf F}_{r}(t) ({\bf F}_{r}(t'))^T } \right\rangle  = | 
| 531 |  |  | \left\langle {{\bf F}_{r}^{~b} (t) ({\bf F}_{r}^{~b} (t'))^T } \right\rangle  = | 
| 532 |  |  | 2 k_B T \Xi_R \delta(t - t'). \label{ldeq:randomForce} | 
| 533 |  |  | \end{equation} | 
| 534 |  |  | $\Xi_R$ is the $6\times6$ resistance tensor at the center of | 
| 535 |  |  | resistance.  Once this tensor is known for a given rigid body (as | 
| 536 |  |  | described in the previous section) obtaining a stochastic vector that | 
| 537 |  |  | has the properties in Eq. (\ref{ldeq:randomForce}) can be done | 
| 538 |  |  | efficiently by carrying out a one-time Cholesky decomposition to | 
| 539 |  |  | obtain the square root matrix of the resistance tensor, | 
| 540 |  |  | \begin{equation} | 
| 541 |  |  | \Xi_R = {\bf S} {\bf S}^{T}, | 
| 542 |  |  | \label{ldeq:Cholesky} | 
| 543 |  |  | \end{equation} | 
| 544 |  |  | where ${\bf S}$ is a lower triangular matrix.\cite{Schlick2002} A | 
| 545 |  |  | vector with the statistics required for the random force can then be | 
| 546 |  |  | obtained by multiplying ${\bf S}$ onto a random 6-vector ${\bf Z}$ which | 
| 547 |  |  | has elements chosen from a Gaussian distribution, such that: | 
| 548 |  |  | \begin{equation} | 
| 549 |  |  | \langle {\bf Z}_i \rangle = 0, \hspace{1in} \langle {\bf Z}_i \cdot | 
| 550 |  |  | {\bf Z}_j \rangle = \frac{2 k_B T}{\delta t} \delta_{ij}, | 
| 551 |  |  | \end{equation} | 
| 552 |  |  | where $\delta t$ is the timestep in use during the simulation. The | 
| 553 |  |  | random force, ${\bf F}_{r}^{~b} = {\bf S} {\bf Z}$, can be shown to have the | 
| 554 |  |  | correct properties required by Eq. (\ref{ldeq:randomForce}). | 
| 555 |  |  |  | 
| 556 |  |  | The equation of motion for the translational velocity of the center of | 
| 557 |  |  | mass (${\bf v}$) can be written as | 
| 558 |  |  | \begin{equation} | 
| 559 |  |  | m \dot{{\bf v}} (t) =  {\bf f}_{s}(t) + {\bf f}_{f}(t) + | 
| 560 |  |  | {\bf f}_{r}(t) | 
| 561 |  |  | \end{equation} | 
| 562 |  |  | Since the frictional and random forces are applied at the center of | 
| 563 |  |  | resistance, which generally does not coincide with the center of mass, | 
| 564 |  |  | extra torques are exerted at the center of mass. Thus, the net | 
| 565 |  |  | body-fixed torque at the center of mass, $\tau^{~b}(t)$, | 
| 566 |  |  | is given by | 
| 567 |  |  | \begin{equation} | 
| 568 |  |  | \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) | 
| 569 |  |  | \end{equation} | 
| 570 |  |  | where ${\bf r}_{MR}$ is the vector from the center of mass to the center of | 
| 571 |  |  | resistance. Instead of integrating the angular velocity in lab-fixed | 
| 572 |  |  | frame, we consider the equation of motion for the angular momentum | 
| 573 |  |  | (${\bf j}$) in the body-fixed frame | 
| 574 |  |  | \begin{equation} | 
| 575 |  |  | \frac{\partial}{\partial t}{\bf j}(t) = \tau^{~b}(t) | 
| 576 |  |  | \end{equation} | 
| 577 |  |  | Embedding the friction and random forces into the the total force and | 
| 578 |  |  | torque, one can integrate the Langevin equations of motion for a rigid | 
| 579 |  |  | body of arbitrary shape in a velocity-Verlet style 2-part algorithm, | 
| 580 |  |  | where $h = \delta t$: | 
| 581 |  |  |  | 
| 582 |  |  | {\tt move A:} | 
| 583 |  |  | \begin{align*} | 
| 584 |  |  | {\bf v}\left(t + h / 2\right)  &\leftarrow  {\bf v}(t) | 
| 585 |  |  | + \frac{h}{2} \left( {\bf f}(t) / m \right), \\ | 
| 586 |  |  | % | 
| 587 |  |  | {\bf r}(t + h) &\leftarrow {\bf r}(t) | 
| 588 |  |  | + h  {\bf v}\left(t + h / 2 \right), \\ | 
| 589 |  |  | % | 
| 590 |  |  | {\bf j}\left(t + h / 2 \right)  &\leftarrow {\bf j}(t) | 
| 591 |  |  | + \frac{h}{2} {\bf \tau}^{~b}(t), \\ | 
| 592 |  |  | % | 
| 593 |  |  | {\bf Q}(t + h) &\leftarrow \mathrm{rotate}\left( h {\bf j} | 
| 594 |  |  | (t + h / 2) \cdot \overleftrightarrow{\mathsf{I}}^{-1} \right). | 
| 595 |  |  | \end{align*} | 
| 596 |  |  | In this context, $\overleftrightarrow{\mathsf{I}}$ is the diagonal | 
| 597 |  |  | moment of inertia tensor, and the $\mathrm{rotate}$ function is the | 
| 598 |  |  | reversible product of the three body-fixed rotations, | 
| 599 |  |  | \begin{equation} | 
| 600 |  |  | \mathrm{rotate}({\bf a}) = \mathsf{G}_x(a_x / 2) \cdot | 
| 601 |  |  | \mathsf{G}_y(a_y / 2) \cdot \mathsf{G}_z(a_z) \cdot \mathsf{G}_y(a_y | 
| 602 |  |  | / 2) \cdot \mathsf{G}_x(a_x /2), | 
| 603 |  |  | \end{equation} | 
| 604 |  |  | where each rotational propagator, $\mathsf{G}_\alpha(\theta)$, | 
| 605 |  |  | rotates both the rotation matrix ($\mathbf{Q}$) and the body-fixed | 
| 606 |  |  | angular momentum (${\bf j}$) by an angle $\theta$ around body-fixed | 
| 607 |  |  | axis $\alpha$, | 
| 608 |  |  | \begin{equation} | 
| 609 |  |  | \mathsf{G}_\alpha( \theta ) = \left\{ | 
| 610 |  |  | \begin{array}{lcl} | 
| 611 |  |  | \mathbf{Q}(t) & \leftarrow & \mathbf{Q}(0) \cdot \mathsf{R}_\alpha(\theta)^T, \\ | 
| 612 |  |  | {\bf j}(t) & \leftarrow & \mathsf{R}_\alpha(\theta) \cdot {\bf | 
| 613 |  |  | j}(0). | 
| 614 |  |  | \end{array} | 
| 615 |  |  | \right. | 
| 616 |  |  | \end{equation} | 
| 617 |  |  | $\mathsf{R}_\alpha$ is a quadratic approximation to the single-axis | 
| 618 |  |  | rotation matrix.  For example, in the small-angle limit, the | 
| 619 |  |  | rotation matrix around the body-fixed x-axis can be approximated as | 
| 620 |  |  | \begin{equation} | 
| 621 |  |  | \mathsf{R}_x(\theta) \approx \left( | 
| 622 |  |  | \begin{array}{ccc} | 
| 623 |  |  | 1 & 0 & 0 \\ | 
| 624 |  |  | 0 & \frac{1-\theta^2 / 4}{1 + \theta^2 / 4}  & -\frac{\theta}{1+ | 
| 625 |  |  | \theta^2 / 4} \\ | 
| 626 |  |  | 0 & \frac{\theta}{1+ \theta^2 / 4} & \frac{1-\theta^2 / 4}{1 + | 
| 627 |  |  | \theta^2 / 4} | 
| 628 |  |  | \end{array} | 
| 629 |  |  | \right). | 
| 630 |  |  | \end{equation} | 
| 631 |  |  | All other rotations follow in a straightforward manner. After the | 
| 632 |  |  | first part of the propagation, the forces and body-fixed torques are | 
| 633 |  |  | calculated at the new positions and orientations.  The system forces | 
| 634 |  |  | and torques are derivatives of the total potential energy function | 
| 635 |  |  | ($U$) with respect to the rigid body positions (${\bf r}$) and the | 
| 636 |  |  | columns of the transposed rotation matrix ${\bf Q}^T = \left({\bf | 
| 637 |  |  | u}_x, {\bf u}_y, {\bf u}_z \right)$: | 
| 638 |  |  |  | 
| 639 |  |  | {\tt Forces:} | 
| 640 |  |  | \begin{align*} | 
| 641 |  |  | {\bf f}_{s}(t + h) & \leftarrow | 
| 642 |  |  | - \left(\frac{\partial U}{\partial {\bf r}}\right)_{{\bf r}(t + h)} \\ | 
| 643 |  |  | % | 
| 644 |  |  | {\bf \tau}_{s}(t + h) &\leftarrow {\bf u}(t + h) | 
| 645 |  |  | \times \frac{\partial U}{\partial {\bf u}} \\ | 
| 646 |  |  | % | 
| 647 |  |  | {\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) \\ | 
| 648 |  |  | % | 
| 649 |  |  | {\bf f}_{R,f}^{b}(t+h) & \leftarrow - \Xi_{R}^{tt} \cdot | 
| 650 |  |  | {\bf v}^{b}_{R}(t+h) - \Xi_{R}^{rt} \cdot {\bf \omega}(t+h) \\ | 
| 651 |  |  | % | 
| 652 |  |  | {\bf \tau}_{R,f}^{b}(t+h) & \leftarrow - \Xi_{R}^{tr} \cdot | 
| 653 |  |  | {\bf v}^{b}_{R}(t+h) - \Xi_{R}^{rr} \cdot {\bf \omega}(t+h) \\ | 
| 654 |  |  | % | 
| 655 |  |  | Z & \leftarrow  {\tt GaussianNormal}(2 k_B T / h, 6) \\ | 
| 656 |  |  | {\bf F}_{R,r}^{b}(t+h) & \leftarrow {\bf S} \cdot Z \\ | 
| 657 |  |  | % | 
| 658 |  |  | {\bf f}(t+h) & \leftarrow {\bf f}_{s}(t+h) + \mathbf{Q}^{T}(t+h) | 
| 659 |  |  | \cdot \left({\bf f}_{R,f}^{~b} + {\bf f}_{R,r}^{~b} \right) \\ | 
| 660 |  |  | % | 
| 661 |  |  | \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) \\ | 
| 662 |  |  | \tau^{~b}(t+h) & \leftarrow \mathbf{Q}(t+h) \cdot \tau(t+h) \\ | 
| 663 |  |  | \end{align*} | 
| 664 |  |  | Frictional (and random) forces and torques must be computed at the | 
| 665 |  |  | center of resistance, so there are additional steps required to find | 
| 666 |  |  | the body-fixed velocity (${\bf v}_{R}^{~b}$) at this location.  Mapping | 
| 667 |  |  | the frictional and random forces at the center of resistance back to | 
| 668 |  |  | the center of mass also introduces an additional term in the torque | 
| 669 |  |  | one obtains at the center of mass. | 
| 670 |  |  |  | 
| 671 |  |  | Once the forces and torques have been obtained at the new time step, | 
| 672 |  |  | the velocities can be advanced to the same time value. | 
| 673 |  |  |  | 
| 674 |  |  | {\tt move B:} | 
| 675 |  |  | \begin{align*} | 
| 676 |  |  | {\bf v}\left(t + h \right)  &\leftarrow  {\bf v}\left(t + h / 2 | 
| 677 |  |  | \right) | 
| 678 |  |  | + \frac{h}{2} \left( {\bf f}(t + h) / m \right), \\ | 
| 679 |  |  | % | 
| 680 |  |  | {\bf j}\left(t + h \right)  &\leftarrow {\bf j}\left(t + h / 2 | 
| 681 |  |  | \right) | 
| 682 |  |  | + \frac{h}{2} {\bf \tau}^{~b}(t + h) . | 
| 683 |  |  | \end{align*} | 
| 684 |  |  |  | 
| 685 |  |  | \section{Validating the Method\label{ldsec:validating}} | 
| 686 |  |  | In order to validate our Langevin integrator for arbitrarily-shaped | 
| 687 |  |  | rigid bodies, we implemented the algorithm in {\sc | 
| 688 |  |  | oopse}\cite{Meineke2005} and  compared the results of this algorithm | 
| 689 |  |  | with the known | 
| 690 |  |  | hydrodynamic limiting behavior for a few model systems, and to | 
| 691 |  |  | microcanonical molecular dynamics simulations for some more | 
| 692 |  |  | complicated bodies. The model systems and their analytical behavior | 
| 693 |  |  | (if known) are summarized below. Parameters for the primary particles | 
| 694 |  |  | comprising our model systems are given in table \ref{ldtab:parameters}, | 
| 695 |  |  | and a sketch of the arrangement of these primary particles into the | 
| 696 |  |  | model rigid bodies is shown in figure \ref{ldfig:models}. In table | 
| 697 |  |  | \ref{ldtab:parameters}, $d$ and $l$ are the physical dimensions of | 
| 698 |  |  | ellipsoidal (Gay-Berne) particles.  For spherical particles, the value | 
| 699 |  |  | of the Lennard-Jones $\sigma$ parameter is the particle diameter | 
| 700 |  |  | ($d$).  Gay-Berne ellipsoids have an energy scaling parameter, | 
| 701 |  |  | $\epsilon^s$, which describes the well depth for two identical | 
| 702 |  |  | ellipsoids in a {\it side-by-side} configuration.  Additionally, a | 
| 703 |  |  | well depth aspect ratio, $\epsilon^r = \epsilon^e / \epsilon^s$, | 
| 704 |  |  | describes the ratio between the well depths in the {\it end-to-end} | 
| 705 |  |  | and side-by-side configurations.  For spheres, $\epsilon^r \equiv 1$. | 
| 706 |  |  | Moments of inertia are also required to describe the motion of primary | 
| 707 |  |  | particles with orientational degrees of freedom. | 
| 708 |  |  |  | 
| 709 |  |  | \begin{table*} | 
| 710 |  |  | \begin{minipage}{\linewidth} | 
| 711 |  |  | \begin{center} | 
| 712 | xsun | 3383 | \caption{PARAMETERS FOR THE PRIMARY PARTICLES IN USE BY THE RIGID BODY | 
| 713 |  |  | MODELS IN FIGURE \ref{ldfig:models}} | 
| 714 | xsun | 3370 | \begin{tabular}{lrcccccccc} | 
| 715 |  |  | \hline | 
| 716 |  |  | & & & & & & \multicolumn{3}c{$\overleftrightarrow{\mathsf I}$ (amu \AA$^2$)} \\ | 
| 717 |  |  | & $d$ (\AA) & $l$ (\AA) & $\epsilon^s$ ($\frac{kcal}{mol}$) & $\epsilon^r$ & | 
| 718 |  |  | $m$ (amu) & $I_{xx}$ & $I_{yy}$ & $I_{zz}$ \\ \hline | 
| 719 |  |  | Sphere   & 6.5 & $= d$ & 0.8 & 1 & 190 & 802.75 & 802.75  & 802.75  \\ | 
| 720 |  |  | Ellipsoid & 4.6 & 13.8  & 0.8 & 0.2 & 200 & 2105 & 2105 & 421 \\ | 
| 721 |  |  | Dumbbell: & & & & & & & & \\ | 
| 722 |  |  | \quad {\it 2 spheres} & 6.5 & $= d$ & 0.8 & 1   & 190 & 802.75 & 802.75 & 802.75 \\ | 
| 723 |  |  | Banana: & & & & & & & & \\ | 
| 724 |  |  | \quad {\it 3 ellipsoids} & 4.2 & 11.2  & 0.8 & 0.2 & 240 & 10000 & 10000 & 0 \\ | 
| 725 |  |  | Lipid: & & & & & & & & \\ | 
| 726 |  |  | \quad {\it head} & 6.5 & $= d$ & 0.185 & 1 & 196 & & & \\ | 
| 727 |  |  | \quad {\it Tail} & 4.6 & 13.8  & 0.8   & 0.2 & 760 & 45000 & 45000 & 9000 \\ | 
| 728 |  |  | Solvent & 4.7 & $= d$ & 0.8 & 1   & 72.06 & & & \\ | 
| 729 |  |  | \hline | 
| 730 |  |  | \end{tabular} | 
| 731 |  |  | \label{ldtab:parameters} | 
| 732 |  |  | \end{center} | 
| 733 |  |  | \end{minipage} | 
| 734 |  |  | \end{table*} | 
| 735 |  |  |  | 
| 736 |  |  | \begin{figure} | 
| 737 |  |  | \centering | 
| 738 |  |  | \includegraphics[width=3in]{./figures/ldSketch} | 
| 739 |  |  | \caption[Sketch of the model systems]{A sketch of the model systems | 
| 740 |  |  | used in evaluating the behavior of the rigid body Langevin | 
| 741 |  |  | integrator.} \label{ldfig:models} | 
| 742 |  |  | \end{figure} | 
| 743 |  |  |  | 
| 744 |  |  | \subsection{Simulation Methodology} | 
| 745 |  |  | We performed reference microcanonical simulations with explicit | 
| 746 |  |  | solvents for each of the different model system.  In each case there | 
| 747 |  |  | was one solute model and 1929 solvent molecules present in the | 
| 748 |  |  | simulation box.  All simulations were equilibrated for 5 ns using a | 
| 749 |  |  | constant-pressure and temperature integrator with target values of 300 | 
| 750 |  |  | K for the temperature and 1 atm for pressure.  Following this stage, | 
| 751 |  |  | further equilibration (5 ns) and sampling (10 ns) was done in a | 
| 752 |  |  | microcanonical ensemble.  Since the model bodies are typically quite | 
| 753 |  |  | massive, we were able to use a time step of 25 fs. | 
| 754 |  |  |  | 
| 755 |  |  | The model systems studied used both Lennard-Jones spheres as well as | 
| 756 |  |  | uniaxial Gay-Berne ellipoids. The Gay-Berne potential is given by | 
| 757 |  |  | equation~\ref{mdeq:gb}.  For the interaction between nonequivalent | 
| 758 |  |  | uniaxial ellipsoids (or between spheres and ellipsoids), the spheres | 
| 759 |  |  | are treated as ellipsoids with an aspect ratio of 1 ($d = l$) and with | 
| 760 |  |  | an well depth ratio ($\epsilon^r$) of 1 ($\epsilon^e = \epsilon^s$). | 
| 761 |  |  | A switching function (Eq.~\ref{mdeq:dipoleSwitching}) was applied to | 
| 762 |  |  | all potentials to smoothly turn off the interactions between a range | 
| 763 |  |  | of $22$ and $25$ \AA. | 
| 764 |  |  |  | 
| 765 |  |  | To measure shear viscosities from our microcanonical simulations, we | 
| 766 |  |  | used the Einstein form of the pressure correlation function,\cite{hess:209} | 
| 767 |  |  | \begin{equation} | 
| 768 |  |  | \eta = \lim_{t->\infty} \frac{V}{2 k_B T} \frac{d}{dt} \left\langle \left( | 
| 769 |  |  | \int_{t_0}^{t_0 + t} P_{xz}(t') dt' \right)^2 \right\rangle_{t_0}. | 
| 770 |  |  | \label{ldeq:shear} | 
| 771 |  |  | \end{equation} | 
| 772 |  |  | which converges much more rapidly in molecular dynamics simulations | 
| 773 |  |  | than the traditional Green-Kubo formula. | 
| 774 |  |  |  | 
| 775 |  |  | The Langevin dynamics for the different model systems were performed | 
| 776 |  |  | at the same temperature as the average temperature of the | 
| 777 |  |  | microcanonical simulations and with a solvent viscosity taken from | 
| 778 |  |  | Eq. (\ref{ldeq:shear}) applied to these simulations.  We used 1024 | 
| 779 |  |  | independent solute simulations to obtain statistics on our Langevin | 
| 780 |  |  | integrator. | 
| 781 |  |  |  | 
| 782 |  |  | \subsection{Analysis} | 
| 783 |  |  |  | 
| 784 |  |  | The quantities of interest when comparing the Langevin integrator to | 
| 785 |  |  | analytic hydrodynamic equations and to molecular dynamics simulations | 
| 786 |  |  | are typically translational diffusion constants and orientational | 
| 787 |  |  | relaxation times.  Translational diffusion constants for point | 
| 788 |  |  | particles are computed easily from the long-time slope of the | 
| 789 |  |  | mean-square displacement (Eq.~\ref{mdeq:msdisplacement}) of the solute | 
| 790 |  |  | molecules.  For models in which the translational diffusion tensor | 
| 791 |  |  | (${\bf D}_{tt}$) has non-degenerate eigenvalues (i.e. any | 
| 792 |  |  | non-spherically-symmetric rigid body), it is possible to compute the | 
| 793 |  |  | diffusive behavior for motion parallel to each body-fixed axis by | 
| 794 |  |  | projecting the displacement of the particle onto the body-fixed | 
| 795 |  |  | reference frame at $t=0$.  With an isotropic solvent, as we have used | 
| 796 |  |  | in this study, there may be differences between the three diffusion | 
| 797 |  |  | constants at short times, but these must converge to the same value at | 
| 798 |  |  | longer times.  Translational diffusion constants for the different | 
| 799 |  |  | shaped models are shown in table \ref{ldtab:translation}. | 
| 800 |  |  |  | 
| 801 |  |  | In general, the three eigenvalues ($D_1, D_2, D_3$) of the rotational | 
| 802 |  |  | diffusion tensor (${\bf D}_{rr}$) measure the diffusion of an object | 
| 803 |  |  | {\it around} a particular body-fixed axis and {\it not} the diffusion | 
| 804 |  |  | of a vector pointing along the axis.  However, these eigenvalues can | 
| 805 |  |  | be combined to find 5 characteristic rotational relaxation | 
| 806 |  |  | times,\cite{PhysRev.119.53,Berne90} | 
| 807 |  |  | \begin{eqnarray} | 
| 808 |  |  | 1 / \tau_1 & = & 6 D_r + 2 \Delta \\ | 
| 809 |  |  | 1 / \tau_2 & = & 6 D_r - 2 \Delta \\ | 
| 810 |  |  | 1 / \tau_3 & = & 3 (D_r + D_1)  \\ | 
| 811 |  |  | 1 / \tau_4 & = & 3 (D_r + D_2) \\ | 
| 812 |  |  | 1 / \tau_5 & = & 3 (D_r + D_3) | 
| 813 |  |  | \end{eqnarray} | 
| 814 |  |  | where | 
| 815 |  |  | \begin{equation} | 
| 816 |  |  | D_r = \frac{1}{3} \left(D_1 + D_2 + D_3 \right) | 
| 817 |  |  | \end{equation} | 
| 818 |  |  | and | 
| 819 |  |  | \begin{equation} | 
| 820 |  |  | \Delta = \left( (D_1 - D_2)^2 + (D_3 - D_1 )(D_3 - D_2)\right)^{1/2} | 
| 821 |  |  | \end{equation} | 
| 822 |  |  | Each of these characteristic times can be used to predict the decay of | 
| 823 |  |  | part of the rotational correlation function when $\ell = 2$, | 
| 824 |  |  | \begin{equation} | 
| 825 |  |  | C_2(t)  =  \frac{a^2}{N^2} e^{-t/\tau_1} + \frac{b^2}{N^2} e^{-t/\tau_2}. | 
| 826 |  |  | \end{equation} | 
| 827 |  |  | This is the same as the $F^2_{0,0}(t)$ correlation function that | 
| 828 |  |  | appears in Ref. \citen{Berne90}.  The amplitudes of the two decay | 
| 829 |  |  | terms are expressed in terms of three dimensionless functions of the | 
| 830 |  |  | eigenvalues: $a = \sqrt{3} (D_1 - D_2)$, $b = (2D_3 - D_1 - D_2 + | 
| 831 |  |  | 2\Delta)$, and $N = 2 \sqrt{\Delta b}$.  Similar expressions can be | 
| 832 |  |  | obtained for other angular momentum correlation | 
| 833 |  |  | functions.\cite{PhysRev.119.53,Berne90} In all of the model systems we | 
| 834 |  |  | studied, only one of the amplitudes of the two decay terms was | 
| 835 |  |  | non-zero, so it was possible to derive a single relaxation time for | 
| 836 |  |  | each of the hydrodynamic tensors. In many cases, these characteristic | 
| 837 |  |  | times are averaged and reported in the literature as a single relaxation | 
| 838 |  |  | time,\cite{Garcia-de-la-Torre:1997qy} | 
| 839 |  |  | \begin{equation} | 
| 840 |  |  | 1 / \tau_0 = \frac{1}{5} \sum_{i=1}^5 \tau_{i}^{-1}, | 
| 841 |  |  | \end{equation} | 
| 842 |  |  | although for the cases reported here, this averaging is not necessary | 
| 843 |  |  | and only one of the five relaxation times is relevant. | 
| 844 |  |  |  | 
| 845 |  |  | To test the Langevin integrator's behavior for rotational relaxation, | 
| 846 |  |  | we have compared the analytical orientational relaxation times (if | 
| 847 |  |  | they are known) with the general result from the diffusion tensor and | 
| 848 |  |  | with the results from both the explicitly solvated molecular dynamics | 
| 849 |  |  | and Langevin simulations.  Relaxation times from simulations (both | 
| 850 |  |  | microcanonical and Langevin), were computed using Legendre polynomial | 
| 851 |  |  | correlation functions for a unit vector (${\bf u}$) fixed along one or | 
| 852 |  |  | more of the body-fixed axes of the model. | 
| 853 |  |  | \begin{equation} | 
| 854 |  |  | C_{\ell}(t)  =  \left\langle P_{\ell}\left({\bf u}_{i}(t) \cdot {\bf | 
| 855 |  |  | u}_{i}(0) \right) \right\rangle | 
| 856 |  |  | \end{equation} | 
| 857 |  |  | For simulations in the high-friction limit, orientational correlation | 
| 858 |  |  | times can then be obtained from exponential fits of this function, or by | 
| 859 |  |  | integrating, | 
| 860 |  |  | \begin{equation} | 
| 861 |  |  | \tau = \ell (\ell + 1) \int_0^{\infty} C_{\ell}(t) dt. | 
| 862 |  |  | \end{equation} | 
| 863 |  |  | In lower-friction solvents, the Legendre correlation functions often | 
| 864 | xsun | 3383 | exhibit non-ex\-po\-nen\-tial decay, and may not be characterized by a | 
| 865 | xsun | 3370 | single decay constant. | 
| 866 |  |  |  | 
| 867 |  |  | In table \ref{ldtab:rotation} we show the characteristic rotational | 
| 868 |  |  | relaxation times (based on the diffusion tensor) for each of the model | 
| 869 |  |  | systems compared with the values obtained via microcanonical and Langevin | 
| 870 |  |  | simulations. | 
| 871 |  |  |  | 
| 872 |  |  | \subsection{Spherical particles} | 
| 873 |  |  | Our model system for spherical particles was a Lennard-Jones sphere of | 
| 874 |  |  | diameter ($\sigma$) 6.5 \AA\ in a sea of smaller spheres ($\sigma$ = | 
| 875 |  |  | 4.7 \AA).  The well depth ($\epsilon$) for both particles was set to | 
| 876 |  |  | an arbitrary value of 0.8 kcal/mol. | 
| 877 |  |  |  | 
| 878 |  |  | The Stokes-Einstein behavior of large spherical particles in | 
| 879 |  |  | hydrodynamic flows with ``stick'' boundary conditions is well known, | 
| 880 |  |  | and is given in Eqs. (\ref{ldeq:StokesTranslation}) and | 
| 881 |  |  | (\ref{ldeq:StokesRotation}).  Recently, Schmidt and Skinner have | 
| 882 |  |  | computed the behavior of spherical tag particles in molecular dynamics | 
| 883 |  |  | simulations, and have shown that {\it slip} boundary conditions | 
| 884 |  |  | ($\Xi_{tt} = 4 \pi \eta \rho$) may be more appropriate for | 
| 885 |  |  | molecule-sized spheres embedded in a sea of spherical solvent | 
| 886 |  |  | particles.\cite{Schmidt:2004fj,Schmidt:2003kx} | 
| 887 |  |  |  | 
| 888 |  |  | Our simulation results show similar behavior to the behavior observed | 
| 889 |  |  | by Schmidt and Skinner.  The diffusion constant obtained from our | 
| 890 |  |  | microcanonical molecular dynamics simulations lies between the slip | 
| 891 |  |  | and stick boundary condition results obtained via Stokes-Einstein | 
| 892 |  |  | behavior.  Since the Langevin integrator assumes Stokes-Einstein stick | 
| 893 |  |  | boundary conditions in calculating the drag and random forces for | 
| 894 |  |  | spherical particles, our Langevin routine obtains nearly quantitative | 
| 895 |  |  | agreement with the hydrodynamic results for spherical particles.  One | 
| 896 |  |  | avenue for improvement of the method would be to compute elements of | 
| 897 |  |  | $\Xi^{tt}$ assuming behavior intermediate between the two boundary | 
| 898 |  |  | conditions. | 
| 899 |  |  |  | 
| 900 |  |  | In the explicit solvent simulations, both our solute and solvent | 
| 901 |  |  | particles were structureless, exerting no torques upon each other. | 
| 902 |  |  | Therefore, there are not rotational correlation times available for | 
| 903 |  |  | this model system. | 
| 904 |  |  |  | 
| 905 |  |  | \subsection{Ellipsoids} | 
| 906 |  |  | For uniaxial ellipsoids ($a > b = c$), Perrin's formulae for both | 
| 907 |  |  | translational and rotational diffusion of each of the body-fixed axes | 
| 908 |  |  | can be combined to give a single translational diffusion | 
| 909 |  |  | constant,\cite{Berne90} | 
| 910 |  |  | \begin{equation} | 
| 911 |  |  | D = \frac{k_B T}{6 \pi \eta a} G(s), | 
| 912 |  |  | \label{ldDperrin} | 
| 913 |  |  | \end{equation} | 
| 914 |  |  | as well as a single rotational diffusion coefficient, | 
| 915 |  |  | \begin{equation} | 
| 916 |  |  | \Theta = \frac{3 k_B T}{16 \pi \eta a^3} \left\{ \frac{(2 - s^2) | 
| 917 |  |  | G(s) - 1}{1 - s^4} \right\}. | 
| 918 |  |  | \label{ldThetaPerrin} | 
| 919 |  |  | \end{equation} | 
| 920 |  |  | In these expressions, $G(s)$ is a function of the axial ratio | 
| 921 |  |  | ($s = b / a$), which for prolate ellipsoids, is | 
| 922 |  |  | \begin{equation} | 
| 923 |  |  | G(s) = (1- s^2)^{-1/2} \ln \left\{ \frac{1 + (1 - s^2)^{1/2}}{s} \right\} | 
| 924 |  |  | \label{ldGPerrin} | 
| 925 |  |  | \end{equation} | 
| 926 |  |  | Again, there is some uncertainty about the correct boundary conditions | 
| 927 | xsun | 3383 | to use for molecular scale ellipsoids in a sea of similarly-sized | 
| 928 | xsun | 3370 | solvent particles.  Ravichandran and Bagchi found that {\it slip} | 
| 929 |  |  | boundary conditions most closely resembled the simulation | 
| 930 |  |  | results,\cite{Ravichandran:1999fk} in agreement with earlier work of | 
| 931 |  |  | Tang and Evans.\cite{TANG:1993lr} | 
| 932 |  |  |  | 
| 933 |  |  | Even though there are analytic resistance tensors for ellipsoids, we | 
| 934 |  |  | constructed a rough-shell model using 2135 beads (each with a diameter | 
| 935 |  |  | of 0.25 \AA) to approximate the shape of the model ellipsoid.  We | 
| 936 |  |  | compared the Langevin dynamics from both the simple ellipsoidal | 
| 937 |  |  | resistance tensor and the rough shell approximation with | 
| 938 |  |  | microcanonical simulations and the predictions of Perrin.  As in the | 
| 939 |  |  | case of our spherical model system, the Langevin integrator reproduces | 
| 940 |  |  | almost exactly the behavior of the Perrin formulae (which is | 
| 941 |  |  | unsurprising given that the Perrin formulae were used to derive the | 
| 942 |  |  | drag and random forces applied to the ellipsoid).  We obtain | 
| 943 |  |  | translational diffusion constants and rotational correlation times | 
| 944 |  |  | that are within a few percent of the analytic values for both the | 
| 945 |  |  | exact treatment of the diffusion tensor as well as the rough-shell | 
| 946 |  |  | model for the ellipsoid. | 
| 947 |  |  |  | 
| 948 |  |  | The translational diffusion constants from the microcanonical | 
| 949 |  |  | simulations agree well with the predictions of the Perrin model, | 
| 950 |  |  | although the {\it rotational} correlation times are a factor of 2 | 
| 951 |  |  | shorter than expected from hydrodynamic theory.  One explanation for | 
| 952 |  |  | the slower rotation of explicitly-solvated ellipsoids is the | 
| 953 |  |  | possibility that solute-solvent collisions happen at both ends of the | 
| 954 |  |  | solute whenever the principal axis of the ellipsoid is turning. In the | 
| 955 |  |  | upper portion of figure \ref{ldfig:explanation} we sketch a physical | 
| 956 |  |  | picture of this explanation.  Since our Langevin integrator is | 
| 957 |  |  | providing nearly quantitative agreement with the Perrin model, it also | 
| 958 |  |  | predicts orientational diffusion for ellipsoids that exceed explicitly | 
| 959 |  |  | solvated correlation times by a factor of two. | 
| 960 |  |  |  | 
| 961 |  |  | \subsection{Rigid dumbbells} | 
| 962 |  |  | Perhaps the only {\it composite} rigid body for which analytic | 
| 963 |  |  | expressions for the hydrodynamic tensor are available is the | 
| 964 |  |  | two-sphere dumbbell model.  This model consists of two non-overlapping | 
| 965 |  |  | spheres held by a rigid bond connecting their centers. There are | 
| 966 |  |  | competing expressions for the 6x6 resistance tensor for this | 
| 967 |  |  | model. The second order expression introduced by Rotne and | 
| 968 |  |  | Prager,\cite{Rotne1969} and improved by Garc\'{i}a de la Torre and | 
| 969 |  |  | Bloomfield,\cite{Torre1977} is given above as | 
| 970 |  |  | Eq. (\ref{ldintroEquation:RPTensorNonOverlapped}).  In our case, we use | 
| 971 |  |  | a model dumbbell in which the two spheres are identical Lennard-Jones | 
| 972 |  |  | particles ($\sigma$ = 6.5 \AA\ , $\epsilon$ = 0.8 kcal / mol) held at | 
| 973 |  |  | a distance of 6.532 \AA. | 
| 974 |  |  |  | 
| 975 |  |  | The theoretical values for the translational diffusion constant of the | 
| 976 |  |  | dumbbell are calculated from the work of Stimson and Jeffery, who | 
| 977 |  |  | studied the motion of this system in a flow parallel to the | 
| 978 |  |  | inter-sphere axis,\cite{Stimson:1926qy} and Davis, who studied the | 
| 979 |  |  | motion in a flow {\it perpendicular} to the inter-sphere | 
| 980 |  |  | axis.\cite{Davis:1969uq} We know of no analytic solutions for the {\it | 
| 981 |  |  | orientational} correlation times for this model system (other than | 
| 982 |  |  | those derived from the 6 x 6 tensor mentioned above). | 
| 983 |  |  |  | 
| 984 |  |  | The bead model for this model system comprises the two large spheres | 
| 985 |  |  | by themselves, while the rough shell approximation used 3368 separate | 
| 986 |  |  | beads (each with a diameter of 0.25 \AA) to approximate the shape of | 
| 987 |  |  | the rigid body.  The hydrodynamics tensors computed from both the bead | 
| 988 |  |  | and rough shell models are remarkably similar.  Computing the initial | 
| 989 |  |  | hydrodynamic tensor for a rough shell model can be quite expensive (in | 
| 990 |  |  | this case it requires inverting a 10104 x 10104 matrix), while the | 
| 991 |  |  | bead model is typically easy to compute (in this case requiring | 
| 992 |  |  | inversion of a 6 x 6 matrix). | 
| 993 |  |  |  | 
| 994 |  |  | \begin{figure} | 
| 995 |  |  | \centering | 
| 996 |  |  | \includegraphics[width=2in]{./figures/ldRoughShell} | 
| 997 |  |  | \caption[Model rigid bodies and their rough shell approximations]{The | 
| 998 |  |  | model rigid bodies (left column) used to test this algorithm and their | 
| 999 |  |  | rough-shell approximations (right-column) that were used to compute | 
| 1000 |  |  | the hydrodynamic tensors.  The top two models (ellipsoid and dumbbell) | 
| 1001 |  |  | have analytic solutions and were used to test the rough shell | 
| 1002 |  |  | approximation.  The lower two models (banana and lipid) were compared | 
| 1003 |  |  | with explicitly-solvated molecular dynamics simulations. } | 
| 1004 |  |  | \label{ldfig:roughShell} | 
| 1005 |  |  | \end{figure} | 
| 1006 |  |  |  | 
| 1007 |  |  |  | 
| 1008 |  |  | Once the hydrodynamic tensor has been computed, there is no additional | 
| 1009 |  |  | penalty for carrying out a Langevin simulation with either of the two | 
| 1010 |  |  | different hydrodynamics models.  Our naive expectation is that since | 
| 1011 |  |  | the rigid body's surface is roughened under the various shell models, | 
| 1012 |  |  | the diffusion constants will be even farther from the ``slip'' | 
| 1013 |  |  | boundary conditions than observed for the bead model (which uses a | 
| 1014 |  |  | Stokes-Einstein model to arrive at the hydrodynamic tensor).  For the | 
| 1015 |  |  | dumbbell, this prediction is correct although all of the Langevin | 
| 1016 |  |  | diffusion constants are within 6\% of the diffusion constant predicted | 
| 1017 |  |  | from the fully solvated system. | 
| 1018 |  |  |  | 
| 1019 |  |  | For rotational motion, Langevin integration (and the hydrodynamic tensor) | 
| 1020 |  |  | yields rotational correlation times that are substantially shorter than those | 
| 1021 |  |  | obtained from explicitly-solvated simulations.  It is likely that this is due | 
| 1022 |  |  | to the large size of the explicit solvent spheres, a feature that prevents | 
| 1023 |  |  | the solvent from coming in contact with a substantial fraction of the surface | 
| 1024 |  |  | area of the dumbbell.  Therefore, the explicit solvent only provides drag | 
| 1025 |  |  | over a substantially reduced surface area of this model, while the | 
| 1026 |  |  | hydrodynamic theories utilize the entire surface area for estimating | 
| 1027 |  |  | rotational diffusion.  A sketch of the free volume available in the explicit | 
| 1028 |  |  | solvent simulations is shown in figure \ref{ldfig:explanation}. | 
| 1029 |  |  |  | 
| 1030 |  |  |  | 
| 1031 |  |  | \begin{figure} | 
| 1032 |  |  | \centering | 
| 1033 |  |  | \includegraphics[width=4in]{./figures/ldExplanation} | 
| 1034 |  |  | \caption[Explanations of the differences between orientational | 
| 1035 |  |  | correlation times for explicitly-solvated models and hydrodynamics | 
| 1036 |  |  | predictions]{Explanations of the differences between orientational | 
| 1037 |  |  | correlation times for explicitly-solvated models and hydrodynamic | 
| 1038 |  |  | predictions.   For the ellipsoids (upper figures), rotation of the | 
| 1039 |  |  | principal axis can involve correlated collisions at both sides of the | 
| 1040 |  |  | solute.  In the rigid dumbbell model (lower figures), the large size | 
| 1041 |  |  | of the explicit solvent spheres prevents them from coming in contact | 
| 1042 |  |  | with a substantial fraction of the surface area of the dumbbell. | 
| 1043 |  |  | Therefore, the explicit solvent only provides drag over a | 
| 1044 |  |  | substantially reduced surface area of this model, where the | 
| 1045 |  |  | hydrodynamic theories utilize the entire surface area for estimating | 
| 1046 |  |  | rotational diffusion. | 
| 1047 |  |  | } \label{ldfig:explanation} | 
| 1048 |  |  | \end{figure} | 
| 1049 |  |  |  | 
| 1050 |  |  | \subsection{Composite banana-shaped molecules} | 
| 1051 |  |  | Banana-shaped rigid bodies composed of three Gay-Berne ellipsoids have | 
| 1052 |  |  | been used by Orlandi {\it et al.} to observe mesophases in | 
| 1053 |  |  | coarse-grained models for bent-core liquid crystalline | 
| 1054 |  |  | molecules.\cite{Orlandi:2006fk} We have used the same overlapping | 
| 1055 |  |  | ellipsoids as a way to test the behavior of our algorithm for a | 
| 1056 |  |  | structure of some interest to the materials science community, | 
| 1057 |  |  | although since we are interested in capturing only the hydrodynamic | 
| 1058 |  |  | behavior of this model, we have left out the dipolar interactions of | 
| 1059 |  |  | the original Orlandi model. | 
| 1060 |  |  |  | 
| 1061 |  |  | A reference system composed of a single banana rigid body embedded in | 
| 1062 |  |  | a sea of 1929 solvent particles was created and run under standard | 
| 1063 |  |  | (microcanonical) molecular dynamics.  The resulting viscosity of this | 
| 1064 |  |  | mixture was 0.298 centipoise (as estimated using | 
| 1065 |  |  | Eq. (\ref{ldeq:shear})).  To calculate the hydrodynamic properties of | 
| 1066 |  |  | the banana rigid body model, we created a rough shell (see | 
| 1067 |  |  | Fig.~\ref{ldfig:roughShell}), in which the banana is represented as a | 
| 1068 |  |  | ``shell'' made of 3321 identical beads (0.25 \AA\ in diameter) | 
| 1069 |  |  | distributed on the surface.  Applying the procedure described in | 
| 1070 |  |  | Sec.~\ref{ldintroEquation:ResistanceTensorArbitraryOrigin}, we | 
| 1071 |  |  | identified the center of resistance, ${\bf r} = $(0 \AA, 0.81 \AA, 0 | 
| 1072 |  |  | \AA). | 
| 1073 |  |  |  | 
| 1074 |  |  | The Langevin rigid-body integrator (and the hydrodynamic diffusion | 
| 1075 |  |  | tensor) are essentially quantitative for translational diffusion of | 
| 1076 |  |  | this model.  Orientational correlation times under the Langevin | 
| 1077 |  |  | rigid-body integrator are within 11\% of the values obtained from | 
| 1078 |  |  | explicit solvent, but these models also exhibit some solvent | 
| 1079 |  |  | inaccessible surface area in the explicitly-solvated case. | 
| 1080 |  |  |  | 
| 1081 |  |  | \subsection{Composite sphero-ellipsoids} | 
| 1082 |  |  |  | 
| 1083 |  |  | Spherical heads perched on the ends of Gay-Berne ellipsoids have been | 
| 1084 |  |  | used recently as models for lipid | 
| 1085 |  |  | molecules.\cite{SunX._jp0762020,Ayton01} A reference system composed | 
| 1086 |  |  | of a single lipid rigid body embedded in a sea of 1929 solvent | 
| 1087 |  |  | particles was created and run under a microcanonical ensemble.  The | 
| 1088 |  |  | resulting viscosity of this mixture was 0.349 centipoise (as estimated | 
| 1089 |  |  | using Eq. (\ref{ldeq:shear})).  To calculate the hydrodynamic properties | 
| 1090 |  |  | of the lipid rigid body model, we created a rough shell (see | 
| 1091 |  |  | Fig.~\ref{ldfig:roughShell}), in which the lipid is represented as a | 
| 1092 |  |  | ``shell'' made of 3550 identical beads (0.25 \AA\ in diameter) | 
| 1093 |  |  | distributed on the surface.  Applying the procedure described by | 
| 1094 |  |  | Eq. (\ref{ldintroEquation:ResistanceTensorArbitraryOrigin}), we | 
| 1095 |  |  | identified the center of resistance, ${\bf r} = $(0 \AA, 0 \AA, 1.46 | 
| 1096 |  |  | \AA). | 
| 1097 |  |  |  | 
| 1098 |  |  | The translational diffusion constants and rotational correlation times | 
| 1099 |  |  | obtained using the Langevin rigid-body integrator (and the | 
| 1100 |  |  | hydrodynamic tensor) are essentially quantitative when compared with | 
| 1101 |  |  | the explicit solvent simulations for this model system. | 
| 1102 |  |  |  | 
| 1103 |  |  | \subsection{Summary of comparisons with explicit solvent simulations} | 
| 1104 |  |  | The Langevin rigid-body integrator we have developed is a reliable way | 
| 1105 |  |  | to replace explicit solvent simulations in cases where the detailed | 
| 1106 |  |  | solute-solvent interactions do not greatly impact the behavior of the | 
| 1107 |  |  | solute.  As such, it has the potential to greatly increase the length | 
| 1108 |  |  | and time scales of coarse grained simulations of large solvated | 
| 1109 |  |  | molecules.  In cases where the dielectric screening of the solvent, or | 
| 1110 |  |  | specific solute-solvent interactions become important for structural | 
| 1111 |  |  | or dynamic features of the solute molecule, this integrator may be | 
| 1112 |  |  | less useful.  However, for the kinds of coarse-grained modeling that | 
| 1113 |  |  | have become popular in recent years (ellipsoidal side chains, rigid | 
| 1114 |  |  | bodies, and molecular-scale models), this integrator may prove itself | 
| 1115 |  |  | to be quite valuable. | 
| 1116 |  |  |  | 
| 1117 |  |  | \begin{figure} | 
| 1118 |  |  | \centering | 
| 1119 |  |  | \includegraphics[width=\linewidth]{./figures/ldGraph} | 
| 1120 |  |  | \caption[Mean squared displacements and orientational | 
| 1121 | xsun | 3383 | correlation functions for each of the model rigid bodies]{The | 
| 1122 | xsun | 3370 | mean-squared displacements ($\langle r^2(t) \rangle$) and | 
| 1123 |  |  | orientational correlation functions ($C_2(t)$) for each of the model | 
| 1124 |  |  | rigid bodies studied.  The circles are the results for microcanonical | 
| 1125 |  |  | simulations with explicit solvent molecules, while the other data sets | 
| 1126 |  |  | are results for Langevin dynamics using the different hydrodynamic | 
| 1127 |  |  | tensor approximations.  The Perrin model for the ellipsoids is | 
| 1128 |  |  | considered the ``exact'' hydrodynamic behavior (this can also be said | 
| 1129 |  |  | for the translational motion of the dumbbell operating under the bead | 
| 1130 |  |  | model). In most cases, the various hydrodynamics models reproduce | 
| 1131 |  |  | each other quantitatively.} | 
| 1132 |  |  | \label{ldfig:results} | 
| 1133 |  |  | \end{figure} | 
| 1134 |  |  |  | 
| 1135 |  |  | \begin{table*} | 
| 1136 |  |  | \begin{center} | 
| 1137 | xsun | 3383 | \caption{TRANSLATIONAL DIFFUSION CONSTANTS (D) FOR THE MODEL SYSTEMS | 
| 1138 |  |  | CALCULATED USING MICROCANONICAL SIM\-U\-LA\-TIONS (WITH EXPLICIT | 
| 1139 |  |  | SOLVENT), THEORETICAL PREDICTIONS, AND LANGEVIN SIMULATIONS (WITH | 
| 1140 |  |  | IMPLICIT SOLVENT)} | 
| 1141 | xsun | 3370 | \begin{tabular}{lccccccc} | 
| 1142 |  |  | \hline | 
| 1143 |  |  | & \multicolumn{2}c{microcanonical} & & \multicolumn{3}c{Theoretical} & Langevin \\ | 
| 1144 |  |  | \cline{2-3} \cline{5-7} | 
| 1145 |  |  | model & $\eta$ (cP)  & D & & Analytical & method & Hydro &  \\ | 
| 1146 |  |  | \hline | 
| 1147 |  |  | sphere    & 0.279  & 3.06 & & 2.42 & exact       & 2.42 & 2.33 \\ | 
| 1148 |  |  | ellipsoid & 0.255  & 2.44 & & 2.34 & exact       & 2.34 & 2.37 \\ | 
| 1149 |  |  | & 0.255  & 2.44 & & 2.34 & rough shell & 2.36 & 2.28 \\ | 
| 1150 |  |  | dumbbell  & 0.308  & 2.06 & & 1.64 & bead model  & 1.65 & 1.62 \\ | 
| 1151 |  |  | & 0.308  & 2.06 & & 1.64 & rough shell & 1.59 & 1.62 \\ | 
| 1152 |  |  | banana    & 0.298  & 1.53 & &      & rough shell & 1.56 & 1.55 \\ | 
| 1153 |  |  | lipid     & 0.349  & 1.41 & &      & rough shell & 1.33 & 1.32 \\ | 
| 1154 | xsun | 3383 | \hline | 
| 1155 | xsun | 3370 | \end{tabular} | 
| 1156 | xsun | 3383 | \begin{minipage}{\linewidth} | 
| 1157 |  |  | %\centering | 
| 1158 |  |  | \vspace{2mm} | 
| 1159 |  |  | Analytical solutions for the exactly-solved hydrodynamics models are | 
| 1160 |  |  | obtained from: Stokes' law (sphere), and Refs. \citen{Perrin1934} and | 
| 1161 |  |  | \citen{Perrin1936} (ellipsoid), \citen{Stimson:1926qy} and | 
| 1162 |  |  | \citen{Davis:1969uq} (dumbbell). The other model systems have no known | 
| 1163 |  |  | analytic solution.  All diffusion constants are reported in units of | 
| 1164 |  |  | $10^{-3}$ cm$^2$ / ps (= $10^{-4}$ \AA$^2$ / fs). | 
| 1165 | xsun | 3370 | \label{ldtab:translation} | 
| 1166 | xsun | 3383 | \end{minipage} | 
| 1167 | xsun | 3370 | \end{center} | 
| 1168 |  |  | \end{table*} | 
| 1169 |  |  |  | 
| 1170 |  |  | \begin{table*} | 
| 1171 |  |  | \begin{center} | 
| 1172 | xsun | 3383 | \caption{ORIENTATIONAL RELAXATION TIMES ($\tau$) FOR THE MODEL SYSTEMS USING | 
| 1173 |  |  | MICROCANONICAL SIMULATION (WITH EXPLICIT SOLVENT), THEORETICAL | 
| 1174 |  |  | PREDICTIONS, AND LANGEVIN SIMULATIONS (WITH IMPLICIT SOLVENT)} | 
| 1175 | xsun | 3370 | \begin{tabular}{lccccccc} | 
| 1176 |  |  | \hline | 
| 1177 |  |  | & \multicolumn{2}c{microcanonical} & & \multicolumn{3}c{Theoretical} & Langevin \\ | 
| 1178 |  |  | \cline{2-3} \cline{5-7} | 
| 1179 |  |  | model & $\eta$ (cP) & $\tau$ & & Analytical & method & Hydro &  \\ | 
| 1180 |  |  | \hline | 
| 1181 |  |  | sphere    & 0.279  &      & & 9.69 & exact       & 9.69 & 9.64 \\ | 
| 1182 |  |  | ellipsoid & 0.255  & 46.7 & & 22.0 & exact       & 22.0 & 22.2 \\ | 
| 1183 |  |  | & 0.255  & 46.7 & & 22.0 & rough shell & 22.6 & 22.2 \\ | 
| 1184 |  |  | dumbbell  & 0.308  & 14.1 & &      & bead model  & 50.0 & 50.1 \\ | 
| 1185 |  |  | & 0.308  & 14.1 & &      & rough shell & 41.5 & 41.3 \\ | 
| 1186 |  |  | banana    & 0.298  & 63.8 & &      & rough shell & 70.9 & 70.9 \\ | 
| 1187 |  |  | lipid     & 0.349  & 78.0 & &      & rough shell & 76.9 & 77.9 \\ | 
| 1188 |  |  | \hline | 
| 1189 |  |  | \end{tabular} | 
| 1190 | xsun | 3383 | \begin{minipage}{\linewidth} | 
| 1191 |  |  | %\centering | 
| 1192 |  |  | \vspace{2mm} | 
| 1193 |  |  | All relaxation times are for the rotational correlation function with | 
| 1194 |  |  | $\ell = 2$ and are reported in units of ps.  The ellipsoidal model has | 
| 1195 |  |  | an exact solution for the orientational correlation time due to | 
| 1196 |  |  | Perrin, but the other model systems have no known analytic solution. | 
| 1197 | xsun | 3370 | \label{ldtab:rotation} | 
| 1198 | xsun | 3383 | \end{minipage} | 
| 1199 | xsun | 3370 | \end{center} | 
| 1200 |  |  | \end{table*} | 
| 1201 |  |  |  | 
| 1202 |  |  | \section{Application: A rigid-body lipid bilayer} | 
| 1203 |  |  |  | 
| 1204 |  |  | To test the accuracy and efficiency of the new integrator, we applied | 
| 1205 |  |  | it to study the formation of corrugated structures emerging from | 
| 1206 |  |  | simulations of the coarse grained lipid molecular models presented | 
| 1207 |  |  | above.  The initial configuration is taken from earlier molecular | 
| 1208 |  |  | dynamics studies on lipid bilayers which had used spherical | 
| 1209 |  |  | (Lennard-Jones) solvent particles and moderate (480 solvated lipid | 
| 1210 |  |  | molecules) system sizes.\cite{SunX._jp0762020} the solvent molecules | 
| 1211 |  |  | were excluded from the system and the box was replicated three times | 
| 1212 |  |  | in the x- and y- axes (giving a single simulation cell containing 4320 | 
| 1213 |  |  | lipids).  The experimental value for the viscosity of water at 20C | 
| 1214 |  |  | ($\eta = 1.00$ cp) was used with the Langevin integrator to mimic the | 
| 1215 |  |  | hydrodynamic effects of the solvent.  The absence of explicit solvent | 
| 1216 |  |  | molecules and the stability of the integrator allowed us to take | 
| 1217 |  |  | timesteps of 50 fs. A simulation run time of 30 ns was sampled to | 
| 1218 |  |  | calculate structural properties.  Fig. \ref{ldfig:bilayer} shows the | 
| 1219 |  |  | configuration of the system after 30 ns.  Structural properties of the | 
| 1220 |  |  | bilayer (e.g. the head and body $P_2$ order parameters) are nearly | 
| 1221 |  |  | identical to those obtained via solvated molecular dynamics. The | 
| 1222 |  |  | ripple structure remained stable during the entire trajectory. | 
| 1223 |  |  | Compared with using explicit bead-model solvent molecules, the 30 ns | 
| 1224 |  |  | trajectory for 4320 lipids with the Langevin integrator is now {\it | 
| 1225 |  |  | faster} on the same hardware than the same length trajectory was for | 
| 1226 |  |  | the 480-lipid system previously studied. | 
| 1227 |  |  |  | 
| 1228 |  |  | \begin{figure} | 
| 1229 |  |  | \centering | 
| 1230 |  |  | \includegraphics[width=\linewidth]{./figures/ldBilayer} | 
| 1231 |  |  | \caption[Snapshot of a bilayer of rigid-body models for lipids]{A | 
| 1232 |  |  | snapshot of a bilayer composed of 4320 rigid-body models for lipid | 
| 1233 |  |  | molecules evolving using the Langevin integrator described in this | 
| 1234 |  |  | work.} \label{ldfig:bilayer} | 
| 1235 |  |  | \end{figure} | 
| 1236 |  |  |  | 
| 1237 |  |  | \section{Conclusions} | 
| 1238 |  |  |  | 
| 1239 |  |  | We have presented a new algorithm for carrying out Langevin dynamics | 
| 1240 |  |  | simulations on complex rigid bodies by incorporating the hydrodynamic | 
| 1241 |  |  | resistance tensors for arbitrary shapes into a stable and efficient | 
| 1242 |  |  | integration scheme.  The integrator gives quantitative agreement with | 
| 1243 |  |  | both analytic and approximate hydrodynamic theories, and works | 
| 1244 |  |  | reasonably well at reproducing the solute dynamical properties | 
| 1245 |  |  | (diffusion constants, and orientational relaxation times) from | 
| 1246 |  |  | explicitly-solvated simulations.  For the cases where there are | 
| 1247 |  |  | discrepancies between our Langevin integrator and the explicit solvent | 
| 1248 |  |  | simulations, two features of molecular simulations help explain the | 
| 1249 |  |  | differences. | 
| 1250 |  |  |  | 
| 1251 |  |  | First, the use of ``stick'' boundary conditions for molecular-sized | 
| 1252 |  |  | solutes in a sea of similarly-sized solvent particles may be | 
| 1253 |  |  | problematic.  We are certainly not the first group to notice this | 
| 1254 |  |  | difference between hydrodynamic theories and explicitly-solvated | 
| 1255 |  |  | molecular | 
| 1256 |  |  | simulations.\cite{Schmidt:2004fj,Schmidt:2003kx,Ravichandran:1999fk,TANG:1993lr} | 
| 1257 |  |  | The problem becomes particularly noticable in both the translational | 
| 1258 |  |  | diffusion of the spherical particles and the rotational diffusion of | 
| 1259 |  |  | the ellipsoids.  In both of these cases it is clear that the | 
| 1260 |  |  | approximations that go into hydrodynamics are the source of the error, | 
| 1261 |  |  | and not the integrator itself. | 
| 1262 |  |  |  | 
| 1263 |  |  | Second, in the case of structures which have substantial surface area | 
| 1264 |  |  | that is inaccessible to solvent particles, the hydrodynamic theories | 
| 1265 |  |  | (and the Langevin integrator) may overestimate the effects of solvent | 
| 1266 |  |  | friction because they overestimate the exposed surface area of the | 
| 1267 |  |  | rigid body.  This is particularly noticable in the rotational | 
| 1268 |  |  | diffusion of the dumbbell model.  We believe that given a solvent of | 
| 1269 |  |  | known radius, it may be possible to modify the rough shell approach to | 
| 1270 |  |  | place beads on solvent-accessible surface, instead of on the geometric | 
| 1271 |  |  | surface defined by the van der Waals radii of the components of the | 
| 1272 |  |  | rigid body.  Further work to confirm the behavior of this new | 
| 1273 |  |  | approximation is ongoing. |