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22
23 \begin{document}
24
25 \title{The Langevin Hull: Constant pressure and temperature dynamics for non-periodic systems}
26
27 \author{Charles F. Vardeman II, Kelsey M. Stocker, and J. Daniel
28 Gezelter\footnote{Corresponding author. \ Electronic mail: gezelter@nd.edu} \\
29 Department of Chemistry and Biochemistry,\\
30 University of Notre Dame\\
31 Notre Dame, Indiana 46556}
32
33 \date{\today}
34
35 \maketitle
36
37 \begin{doublespace}
38
39 \begin{abstract}
40 We have developed a new isobaric-isothermal (NPT) algorithm which
41 applies an external pressure to the facets comprising the convex
42 hull surrounding the system. A Langevin thermostat is also applied
43 to the facets to mimic contact with an external heat bath. This new
44 method, the ``Langevin Hull'', can handle heterogeneous mixtures of
45 materials with different compressibilities. These systems are
46 problematic for traditional affine transform methods. The Langevin
47 Hull does not suffer from the edge effects of boundary potential
48 methods, and allows realistic treatment of both external pressure
49 and thermal conductivity due to the presence of an implicit solvent.
50 We apply this method to several different systems including bare
51 metal nanoparticles, nanoparticles in an explicit solvent, as well
52 as clusters of liquid water. The predicted mechanical properties of
53 these systems are in good agreement with experimental data and
54 previous simulation work.
55 \end{abstract}
56
57 \newpage
58
59 %\narrowtext
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62 % BODY OF TEXT
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64
65
66 \section{Introduction}
67
68 The most common molecular dynamics methods for sampling configurations
69 from an isobaric-isothermal (NPT) ensemble maintain a target pressure
70 in a simulation by coupling the volume of the system to a {\it
71 barostat}, which is an extra degree of freedom propagated along with
72 the particle coordinates. These methods require periodic boundary
73 conditions, because when the instantaneous pressure in the system
74 differs from the target pressure, the volume is reduced or expanded
75 using {\it affine transforms} of the system geometry. An affine
76 transform scales the size and shape of the periodic box as well as the
77 particle positions within the box (but not the sizes of the
78 particles). The most common constant pressure methods, including the
79 Melchionna modification\cite{Melchionna1993} to the
80 Nos\'e-Hoover-Andersen equations of
81 motion,\cite{Hoover85,ANDERSEN:1980vn,Sturgeon:2000kx} the Berendsen
82 pressure bath,\cite{ISI:A1984TQ73500045} and the Langevin
83 Piston,\cite{FELLER:1995fk,Jakobsen:2005uq} all utilize scaled
84 coordinate transformation to adjust the box volume. As long as the
85 material in the simulation box has a relatively uniform
86 compressibility, the standard affine transform approach provides an
87 excellent way of adjusting the volume of the system and applying
88 pressure directly via the interactions between atomic sites.
89
90 One problem with this approach appears when the system being simulated
91 is an inhomogeneous mixture in which portions of the simulation box
92 are incompressible relative to other portions. Examples include
93 simulations of metallic nanoparticles in liquid environments, proteins
94 at ice / water interfaces, as well as other heterogeneous or
95 interfacial environments. In these cases, the affine transform of
96 atomic coordinates will either cause numerical instability when the
97 sites in the incompressible medium collide with each other, or will
98 lead to inefficient sampling of system volumes if the barostat is set
99 slow enough to avoid the instabilities in the incompressible region.
100
101 \begin{figure}
102 \includegraphics[width=\linewidth]{AffineScale2}
103 \caption{Affine scaling methods use box-length scaling to adjust the
104 volume to adjust to under- or over-pressure conditions. In a system
105 with a uniform compressibility (e.g. bulk fluids) these methods can
106 work well. In systems containing heterogeneous mixtures, the affine
107 scaling moves required to adjust the pressure in the
108 high-compressibility regions can cause molecules in low
109 compressibility regions to collide.}
110 \label{affineScale}
111 \end{figure}
112
113 One may also wish to avoid affine transform periodic boundary methods
114 to simulate {\it explicitly non-periodic systems} under constant
115 pressure conditions. The use of periodic boxes to enforce a system
116 volume requires either effective solute concentrations that are much
117 higher than desirable, or unreasonable system sizes to avoid this
118 effect. For example, calculations using typical hydration boxes
119 solvating a protein under periodic boundary conditions are quite
120 expensive. A 62 \AA$^3$ box of water solvating a moderately small
121 protein like hen egg white lysozyme (PDB code: 1LYZ) yields an
122 effective protein concentration of 100 mg/mL.\cite{Asthagiri20053300}
123
124 {\it Total} protein concentrations in the cell are typically on the
125 order of 160-310 mg/ml,\cite{Brown1991195} and individual proteins
126 have concentrations orders of magnitude lower than this in the
127 cellular environment. The effective concentrations of single proteins
128 in simulations may have significant effects on the structure and
129 dynamics of simulated systems.
130
131 \subsection*{Boundary Methods}
132 There have been a number of approaches to handle simulations of
133 explicitly non-periodic systems that focus on constant or
134 nearly-constant {\it volume} conditions while maintaining bulk-like
135 behavior. Berkowitz and McCammon introduced a stochastic (Langevin)
136 boundary layer inside a region of fixed molecules which effectively
137 enforces constant temperature and volume (NVT)
138 conditions.\cite{Berkowitz1982} In this approach, the stochastic and
139 fixed regions were defined relative to a central atom. Brooks and
140 Karplus extended this method to include deformable stochastic
141 boundaries.\cite{iii:6312} The stochastic boundary approach has been
142 used widely for protein simulations.
143
144 The electrostatic and dispersive behavior near the boundary has long
145 been a cause for concern when performing simulations of explicitly
146 non-periodic systems. Early work led to the surface constrained soft
147 sphere dipole model (SCSSD)\cite{Warshel1978} in which the surface
148 molecules are fixed in a random orientation representative of the bulk
149 solvent structural properties. Belch {\it et al.}\cite{Belch1985}
150 simulated clusters of TIPS2 water surrounded by a hydrophobic bounding
151 potential. The spherical hydrophobic boundary induced dangling
152 hydrogen bonds at the surface that propagated deep into the cluster,
153 affecting most of the molecules in the simulation. This result echoes
154 an earlier study which showed that an extended planar hydrophobic
155 surface caused orientational preferences at the surface which extended
156 relatively deep (7 \AA) into the liquid simulation cell.\cite{Lee1984}
157 The surface constrained all-atom solvent (SCAAS) model \cite{King1989}
158 improved upon its SCSSD predecessor. The SCAAS model utilizes a
159 polarization constraint which is applied to the surface molecules to
160 maintain bulk-like structure at the cluster surface. A radial
161 constraint is used to maintain the desired bulk density of the
162 liquid. Both constraint forces are applied only to a pre-determined
163 number of the outermost molecules.
164
165 Beglov and Roux have developed a boundary model in which the hard
166 sphere boundary has a radius that varies with the instantaneous
167 configuration of the solute (and solvent) molecules.\cite{beglov:9050}
168 This model contains a clear pressure and surface tension contribution
169 to the free energy.
170
171 \subsection*{Restraining Potentials}
172 Restraining {\it potentials} introduce repulsive potentials at the
173 surface of a sphere or other geometry. The solute and any explicit
174 solvent are therefore restrained inside the range defined by the
175 external potential. Often the potentials include a weak short-range
176 attraction to maintain the correct density at the boundary. Beglov
177 and Roux have also introduced a restraining boundary potential which
178 relaxes dynamically depending on the solute geometry and the force the
179 explicit system exerts on the shell.\cite{Beglov:1995fk}
180
181 Recently, Krilov {\it et al.} introduced a {\it flexible} boundary
182 model that uses a Lennard-Jones potential between the solvent
183 molecules and a boundary which is determined dynamically from the
184 position of the nearest solute atom.\cite{LiY._jp046852t,Zhu:2008fk} This
185 approach allows the confining potential to prevent solvent molecules
186 from migrating too far from the solute surface, while providing a weak
187 attractive force pulling the solvent molecules towards a fictitious
188 bulk solvent. Although this approach is appealing and has physical
189 motivation, nanoparticles do not deform far from their original
190 geometries even at temperatures which vaporize the nearby solvent. For
191 the systems like this, the flexible boundary model will be nearly
192 identical to a fixed-volume restraining potential.
193
194 \subsection*{Hull methods}
195 The approach of Kohanoff, Caro, and Finnis is the most promising of
196 the methods for introducing both constant pressure and temperature
197 into non-periodic simulations.\cite{Kohanoff:2005qm,Baltazar:2006ru}
198 This method is based on standard Langevin dynamics, but the Brownian
199 or random forces are allowed to act only on peripheral atoms and exert
200 forces in a direction that is inward-facing relative to the facets of
201 a closed bounding surface. The statistical distribution of the random
202 forces are uniquely tied to the pressure in the external reservoir, so
203 the method can be shown to sample the isobaric-isothermal ensemble.
204 Kohanoff {\it et al.} used a Delaunay tessellation to generate a
205 bounding surface surrounding the outermost atoms in the simulated
206 system. This is not the only possible triangulated outer surface, but
207 guarantees that all of the random forces point inward towards the
208 cluster.
209
210 In the following sections, we extend and generalize the approach of
211 Kohanoff, Caro, and Finnis. The new method, which we are calling the
212 ``Langevin Hull'' applies the external pressure, Langevin drag, and
213 random forces on the {\it facets of the hull} instead of the atomic
214 sites comprising the vertices of the hull. This allows us to decouple
215 the external pressure contribution from the drag and random force.
216 The methodology is introduced in section \ref{sec:meth}, tests on
217 crystalline nanoparticles, liquid clusters, and heterogeneous mixtures
218 are detailed in section \ref{sec:tests}. Section \ref{sec:discussion}
219 summarizes our findings.
220
221 \section{Methodology}
222 \label{sec:meth}
223
224 The Langevin Hull uses an external bath at a fixed constant pressure
225 ($P$) and temperature ($T$) with an effective solvent viscosity
226 ($\eta$). This bath interacts only with the objects on the exterior
227 hull of the system. Defining the hull of the atoms in a simulation is
228 done in a manner similar to the approach of Kohanoff, Caro and
229 Finnis.\cite{Kohanoff:2005qm} That is, any instantaneous configuration
230 of the atoms in the system is considered as a point cloud in three
231 dimensional space. Delaunay triangulation is used to find all facets
232 between coplanar
233 neighbors.\cite{delaunay,springerlink:10.1007/BF00977785} In highly
234 symmetric point clouds, facets can contain many atoms, but in all but
235 the most symmetric of cases, the facets are simple triangles in
236 3-space which contain exactly three atoms.
237
238 The convex hull is the set of facets that have {\it no concave
239 corners} at an atomic site.\cite{Barber96,EDELSBRUNNER:1994oq} This
240 eliminates all facets on the interior of the point cloud, leaving only
241 those exposed to the bath. Sites on the convex hull are dynamic; as
242 molecules re-enter the cluster, all interactions between atoms on that
243 molecule and the external bath are removed. Since the edge is
244 determined dynamically as the simulation progresses, no {\it a priori}
245 geometry is defined. The pressure and temperature bath interacts only
246 with the atoms on the edge and not with atoms interior to the
247 simulation.
248
249 \begin{figure}
250 \includegraphics[width=\linewidth]{solvatedNano}
251 \caption{The external temperature and pressure bath interacts only
252 with those atoms on the convex hull (grey surface). The hull is
253 computed dynamically at each time step, and molecules can move
254 between the interior (Newtonian) region and the Langevin Hull.}
255 \label{fig:hullSample}
256 \end{figure}
257
258 Atomic sites in the interior of the simulation move under standard
259 Newtonian dynamics,
260 \begin{equation}
261 m_i \dot{\mathbf v}_i(t)=-{\mathbf \nabla}_i U,
262 \label{eq:Newton}
263 \end{equation}
264 where $m_i$ is the mass of site $i$, ${\mathbf v}_i(t)$ is the
265 instantaneous velocity of site $i$ at time $t$, and $U$ is the total
266 potential energy. For atoms on the exterior of the cluster
267 (i.e. those that occupy one of the vertices of the convex hull), the
268 equation of motion is modified with an external force, ${\mathbf
269 F}_i^{\mathrm ext}$:
270 \begin{equation}
271 m_i \dot{\mathbf v}_i(t)=-{\mathbf \nabla}_i U + {\mathbf F}_i^{\mathrm ext}.
272 \end{equation}
273
274 The external bath interacts indirectly with the atomic sites through
275 the intermediary of the hull facets. Since each vertex (or atom)
276 provides one corner of a triangular facet, the force on the facets are
277 divided equally to each vertex. However, each vertex can participate
278 in multiple facets, so the resultant force is a sum over all facets
279 $f$ containing vertex $i$:
280 \begin{equation}
281 {\mathbf F}_{i}^{\mathrm ext} = \sum_{\begin{array}{c}\mathrm{facets\
282 } f \\ \mathrm{containing\ } i\end{array}} \frac{1}{3}\ {\mathbf
283 F}_f^{\mathrm ext}
284 \end{equation}
285
286 The external pressure bath applies a force to the facets of the convex
287 hull in direct proportion to the area of the facet, while the thermal
288 coupling depends on the solvent temperature, viscosity and the size
289 and shape of each facet. The thermal interactions are expressed as a
290 standard Langevin description of the forces,
291 \begin{equation}
292 \begin{array}{rclclcl}
293 {\mathbf F}_f^{\text{ext}} & = & \text{external pressure} & + & \text{drag force} & + & \text{random force} \\
294 & = & -\hat{n}_f P A_f & - & \Xi_f(t) {\mathbf v}_f(t) & + & {\mathbf R}_f(t)
295 \end{array}
296 \end{equation}
297 Here, $A_f$ and $\hat{n}_f$ are the area and (outward-facing) normal
298 vectors for facet $f$, respectively. ${\mathbf v}_f(t)$ is the
299 velocity of the facet centroid,
300 \begin{equation}
301 {\mathbf v}_f(t) = \frac{1}{3} \sum_{i=1}^{3} {\mathbf v}_i,
302 \end{equation}
303 and $\Xi_f(t)$ is an approximate ($3 \times 3$) resistance tensor that
304 depends on the geometry and surface area of facet $f$ and the
305 viscosity of the bath. The resistance tensor is related to the
306 fluctuations of the random force, $\mathbf{R}(t)$, by the
307 fluctuation-dissipation theorem,
308 \begin{eqnarray}
309 \left< {\mathbf R}_f(t) \right> & = & 0 \\
310 \left<{\mathbf R}_f(t) {\mathbf R}_f^T(t^\prime)\right> & = & 2 k_B T\
311 \Xi_f(t)\delta(t-t^\prime).
312 \label{eq:randomForce}
313 \end{eqnarray}
314
315 Once the resistance tensor is known for a given facet, a stochastic
316 vector that has the properties in Eq. (\ref{eq:randomForce}) can be
317 calculated efficiently by carrying out a Cholesky decomposition to
318 obtain the square root matrix of the resistance tensor,
319 \begin{equation}
320 \Xi_f = {\bf S} {\bf S}^{T},
321 \label{eq:Cholesky}
322 \end{equation}
323 where ${\bf S}$ is a lower triangular matrix.\cite{Schlick2002} A
324 vector with the statistics required for the random force can then be
325 obtained by multiplying ${\bf S}$ onto a random 3-vector ${\bf Z}$ which
326 has elements chosen from a Gaussian distribution, such that:
327 \begin{equation}
328 \langle {\bf Z}_i \rangle = 0, \hspace{1in} \langle {\bf Z}_i \cdot
329 {\bf Z}_j \rangle = \frac{2 k_B T}{\delta t} \delta_{ij},
330 \end{equation}
331 where $\delta t$ is the timestep in use during the simulation. The
332 random force, ${\bf R}_{f} = {\bf S} {\bf Z}$, can be shown to
333 have the correct properties required by Eq. (\ref{eq:randomForce}).
334
335 Our treatment of the resistance tensor is approximate. $\Xi_f$ for a
336 rigid triangular plate would normally be treated as a $6 \times 6$
337 tensor that includes translational and rotational drag as well as
338 translational-rotational coupling. The computation of resistance
339 tensors for rigid bodies has been detailed
340 elsewhere,\cite{JoseGarciadelaTorre02012000,Garcia-de-la-Torre:2001wd,GarciadelaTorreJ2002,Sun:2008fk}
341 but the standard approach involving bead approximations would be
342 prohibitively expensive if it were recomputed at each step in a
343 molecular dynamics simulation.
344
345 Instead, we are utilizing an approximate resistance tensor obtained by
346 first constructing the Oseen tensor for the interaction of the
347 centroid of the facet ($f$) with each of the subfacets $\ell=1,2,3$,
348 \begin{equation}
349 T_{\ell f}=\frac{A_\ell}{8\pi\eta R_{\ell f}}\left(I +
350 \frac{\mathbf{R}_{\ell f}\mathbf{R}_{\ell f}^T}{R_{\ell f}^2}\right)
351 \end{equation}
352 Here, $A_\ell$ is the area of subfacet $\ell$ which is a triangle
353 containing two of the vertices of the facet along with the centroid.
354 $\mathbf{R}_{\ell f}$ is the vector between the centroid of facet $f$
355 and the centroid of sub-facet $\ell$, and $I$ is the ($3 \times 3$)
356 identity matrix. $\eta$ is the viscosity of the external bath.
357
358 \begin{figure}
359 \includegraphics[width=\linewidth]{hydro}
360 \caption{The resistance tensor $\Xi$ for a facet comprising sites $i$,
361 $j$, and $k$ is constructed using Oseen tensor contributions between
362 the centoid of the facet $f$ and each of the sub-facets ($i,f,j$),
363 ($j,f,k$), and ($k,f,i$). The centroids of the sub-facets are
364 located at $1$, $2$, and $3$, and the area of each sub-facet is
365 easily computed using half the cross product of two of the edges.}
366 \label{hydro}
367 \end{figure}
368
369 The tensors for each of the sub-facets are added together, and the
370 resulting matrix is inverted to give a $3 \times 3$ resistance tensor
371 for translations of the triangular facet,
372 \begin{equation}
373 \Xi_f(t) =\left[\sum_{i=1}^3 T_{if}\right]^{-1}.
374 \end{equation}
375 Note that this treatment ignores rotations (and
376 translational-rotational coupling) of the facet. In compact systems,
377 the facets stay relatively fixed in orientation between
378 configurations, so this appears to be a reasonably good approximation.
379
380 We have implemented this method by extending the Langevin dynamics
381 integrator in our code, OpenMD.\cite{Meineke2005,open_md} At each
382 molecular dynamics time step, the following process is carried out:
383 \begin{enumerate}
384 \item The standard inter-atomic forces ($\nabla_iU$) are computed.
385 \item Delaunay triangulation is carried out using the current atomic
386 configuration.
387 \item The convex hull is computed and facets are identified.
388 \item For each facet:
389 \begin{itemize}
390 \item[a.] The force from the pressure bath ($-\hat{n}_fPA_f$) is
391 computed.
392 \item[b.] The resistance tensor ($\Xi_f(t)$) is computed using the
393 viscosity ($\eta$) of the bath.
394 \item[c.] Facet drag ($-\Xi_f(t) \mathbf{v}_f(t)$) forces are
395 computed.
396 \item[d.] Random forces ($\mathbf{R}_f(t)$) are computed using the
397 resistance tensor and the temperature ($T$) of the bath.
398 \end{itemize}
399 \item The facet forces are divided equally among the vertex atoms.
400 \item Atomic positions and velocities are propagated.
401 \end{enumerate}
402 The Delaunay triangulation and computation of the convex hull are done
403 using calls to the qhull library.\cite{Q_hull} There is a minimal
404 penalty for computing the convex hull and resistance tensors at each
405 step in the molecular dynamics simulation (roughly 0.02 $\times$ cost
406 of a single force evaluation), and the convex hull is remarkably easy
407 to parallelize on distributed memory machines (see Appendix A).
408
409 \section{Tests \& Applications}
410 \label{sec:tests}
411
412 To test the new method, we have carried out simulations using the
413 Langevin Hull on: 1) a crystalline system (gold nanoparticles), 2) a
414 liquid droplet (SPC/E water),\cite{Berendsen1987} and 3) a
415 heterogeneous mixture (gold nanoparticles in an SPC/E water droplet). In each case, we have computed properties that depend on the external applied pressure. Of particular interest for the single-phase systems is the isothermal compressibility,
416 \begin{equation}
417 \kappa_{T} = -\frac{1}{V} \left ( \frac{\partial V}{\partial P} \right
418 )_{T}.
419 \label{eq:BM}
420 \end{equation}
421
422 One problem with eliminating periodic boundary conditions and
423 simulation boxes is that the volume of a three-dimensional point cloud
424 is not well-defined. In order to compute the compressibility of a
425 bulk material, we make an assumption that the number density, $\rho =
426 \frac{N}{V}$, is uniform within some region of the point cloud. The
427 compressibility can then be expressed in terms of the average number
428 of particles in that region,
429 \begin{equation}
430 \kappa_{T} = -\frac{1}{N} \left ( \frac{\partial N}{\partial P} \right
431 )_{T}.
432 \label{eq:BMN}
433 \end{equation}
434 The region we used is a spherical volume of 20 \AA\ radius centered in
435 the middle of the cluster with a roughly 25 \AA\ radius. $N$ is the average number of molecules
436 found within this region throughout a given simulation. The geometry
437 of the region is arbitrary, and any bulk-like portion of the
438 cluster can be used to compute the compressibility.
439
440 One might assume that the volume of the convex hull could simply be
441 taken as the system volume $V$ in the compressibility expression
442 (Eq. \ref{eq:BM}), but this has implications at lower pressures (which
443 are explored in detail in the section on water droplets).
444
445 The metallic force field in use for the gold nanoparticles is the
446 quantum Sutton-Chen (QSC) model.\cite{PhysRevB.59.3527} In all
447 simulations involving point charges, we utilized damped shifted-force
448 (DSF) electrostatics\cite{Fennell06} which is a variant of the Wolf
449 summation\cite{wolf:8254} that has been shown to provide good forces
450 and torques on molecular models for water in a computationally
451 efficient manner.\cite{Fennell06} The damping parameter ($\alpha$) was
452 set to 0.18 \AA$^{-1}$, and the cutoff radius was set to 12 \AA. The
453 Spohr potential was adopted in depicting the interaction between metal
454 atoms and the SPC/E water molecules.\cite{ISI:000167766600035}
455
456 \subsection{Bulk Modulus of gold nanoparticles}
457
458 The compressibility (and its inverse, the bulk modulus) is well-known
459 for gold, and is captured well by the embedded atom method
460 (EAM)~\cite{PhysRevB.33.7983} potential and related multi-body force
461 fields. In particular, the quantum Sutton-Chen potential gets nearly
462 quantitative agreement with the experimental bulk modulus values, and
463 makes a good first test of how the Langevin Hull will perform at large
464 applied pressures.
465
466 The Sutton-Chen (SC) potentials are based on a model of a metal which
467 treats the nuclei and core electrons as pseudo-atoms embedded in the
468 electron density due to the valence electrons on all of the other
469 atoms in the system.\cite{Chen90} The SC potential has a simple form
470 that closely resembles the Lennard Jones potential,
471 \begin{equation}
472 \label{eq:SCP1}
473 U_{tot}=\sum _{i}\left[ \frac{1}{2}\sum _{j\neq i}D_{ij}V^{pair}_{ij}(r_{ij})-c_{i}D_{ii}\sqrt{\rho_{i}}\right] ,
474 \end{equation}
475 where $V^{pair}_{ij}$ and $\rho_{i}$ are given by
476 \begin{equation}
477 \label{eq:SCP2}
478 V^{pair}_{ij}(r)=\left( \frac{\alpha_{ij}}{r_{ij}}\right)^{n_{ij}}, \rho_{i}=\sum_{j\neq i}\left( \frac{\alpha_{ij}}{r_{ij}}\right) ^{m_{ij}}.
479 \end{equation}
480 $V^{pair}_{ij}$ is a repulsive pairwise potential that accounts for
481 interactions between the pseudoatom cores. The $\sqrt{\rho_i}$ term in
482 Eq. (\ref{eq:SCP1}) is an attractive many-body potential that models
483 the interactions between the valence electrons and the cores of the
484 pseudo-atoms. $D_{ij}$ and $D_{ii}$ set the appropriate overall energy
485 scale, $c_i$ scales the attractive portion of the potential relative
486 to the repulsive interaction and $\alpha_{ij}$ is a length parameter
487 that assures a dimensionless form for $\rho$. These parameters are
488 tuned to various experimental properties such as the density, cohesive
489 energy, and elastic moduli for FCC transition metals. The quantum
490 Sutton-Chen (QSC) formulation matches these properties while including
491 zero-point quantum corrections for different transition
492 metals.\cite{PhysRevB.59.3527,QSC2}
493
494 In bulk gold, the experimentally-measured value for the bulk modulus
495 is 180.32 GPa, while previous calculations on the QSC potential in
496 periodic-boundary simulations of the bulk crystal have yielded values
497 of 175.53 GPa.\cite{QSC2} Using the same force field, we have
498 performed a series of 1 ns simulations on gold nanoparticles of three
499 different radii: 20 \AA~ (1985 atoms), 30 \AA~ (6699 atoms), and 40
500 \AA~ (15707 atoms) utilizing the Langevin Hull at a variety of applied
501 pressures ranging from 0 -- 10 GPa. For the 40 \AA~ radius
502 nanoparticle we obtain a value of 177.55 GPa for the bulk modulus of
503 gold, in close agreement with both previous simulations and the
504 experimental bulk modulus reported for gold single
505 crystals.\cite{Collard1991} The smaller gold nanoparticles (30 and 20
506 \AA~ radii) have calculated bulk moduli of 215.58 and 208.86 GPa,
507 respectively, indicating that smaller nanoparticles are somewhat
508 stiffer (less compressible) than the larger nanoparticles. This
509 stiffening of the small nanoparticles may be related to their high
510 degree of surface curvature, resulting in a lower coordination number
511 of surface atoms relative to the the surface atoms in the 40 \AA~
512 radius particle.
513
514 We obtain a gold lattice constant of 4.051 \AA~ using the Langevin
515 Hull at 1 atm, close to the experimentally-determined value for bulk
516 gold and the value for gold simulated using the QSC potential and
517 periodic boundary conditions (4.079 \AA~ and 4.088\AA~,
518 respectively).\cite{QSC2} The slightly smaller calculated lattice
519 constant is most likely due to the presence of surface tension in the
520 non-periodic Langevin Hull cluster, an effect absent from a bulk
521 simulation. The specific heat of a 40 \AA~ gold nanoparticle under the
522 Langevin Hull at 1 atm is 24.914 $\mathrm {\frac{J}{mol \, K}}$, which
523 compares very well with the experimental value of 25.42 $\mathrm
524 {\frac{J}{mol \, K}}$.
525
526 \begin{figure}
527 \includegraphics[width=\linewidth]{stacked}
528 \caption{The response of the internal pressure and temperature of gold
529 nanoparticles when first placed in the Langevin Hull
530 ($T_\mathrm{bath}$ = 300K, $P_\mathrm{bath}$ = 4 GPa), starting
531 from initial conditions that were far from the bath pressure and
532 temperature. The pressure response is rapid (after the breathing mode oscillations in the nanoparticle die out), and the rate of thermal equilibration depends on both exposed surface area (top panel) and the viscosity of the bath (middle panel).}
533 \label{fig:pressureResponse}
534 \end{figure}
535
536 We note that the Langevin Hull produces rapidly-converging behavior
537 for structures that are started far from equilibrium. In
538 Fig. \ref{fig:pressureResponse} we show how the pressure and
539 temperature respond to the Langevin Hull for nanoparticles that were
540 initialized far from the target pressure and temperature. As
541 expected, the rate at which thermal equilibrium is achieved depends on
542 the total surface area of the cluster exposed to the bath as well as
543 the bath viscosity. Pressure that is applied suddenly to a cluster
544 can excite breathing vibrations, but these rapidly damp out (on time
545 scales of 30 -- 50 ps).
546
547 \subsection{Compressibility of SPC/E water clusters}
548
549 Prior molecular dynamics simulations on SPC/E water (both in
550 NVT~\cite{Glattli2002} and NPT~\cite{Motakabbir1990, Pi2009}
551 ensembles) have yielded values for the isothermal compressibility that
552 agree well with experiment.\cite{Fine1973} The results of two
553 different approaches for computing the isothermal compressibility from
554 Langevin Hull simulations for pressures between 1 and 3000 atm are
555 shown in Fig. \ref{fig:compWater} along with compressibility values
556 obtained from both other SPC/E simulations and experiment.
557
558 \begin{figure}
559 \includegraphics[width=\linewidth]{new_isothermalN}
560 \caption{Compressibility of SPC/E water}
561 \label{fig:compWater}
562 \end{figure}
563
564 Isothermal compressibility values calculated using the number density
565 (Eq. \ref{eq:BMN}) expression are in good agreement with experimental
566 and previous simulation work throughout the 1 -- 1000 atm pressure
567 regime. Compressibilities computed using the Hull volume, however,
568 deviate dramatically from the experimental values at low applied
569 pressures. The reason for this deviation is quite simple: at low
570 applied pressures, the liquid is in equilibrium with a vapor phase,
571 and it is entirely possible for one (or a few) molecules to drift away
572 from the liquid cluster (see Fig. \ref{fig:coneOfShame}). At low
573 pressures, the restoring forces on the facets are very gentle, and
574 this means that the hulls often take on relatively distorted
575 geometries which include large volumes of empty space.
576
577 \begin{figure}
578 \includegraphics[width=\linewidth]{coneOfShame}
579 \caption{At low pressures, the liquid is in equilibrium with the vapor
580 phase, and isolated molecules can detach from the liquid droplet.
581 This is expected behavior, but the volume of the convex hull
582 includes large regions of empty space. For this reason,
583 compressibilities are computed using local number densities rather
584 than hull volumes.}
585 \label{fig:coneOfShame}
586 \end{figure}
587
588 At higher pressures, the equilibrium strongly favors the liquid phase,
589 and the hull geometries are much more compact. Because of the
590 liquid-vapor effect on the convex hull, the regional number density
591 approach (Eq. \ref{eq:BMN}) provides more reliable estimates of the
592 compressibility.
593
594 In both the traditional compressibility formula (Eq. \ref{eq:BM}) and
595 the number density version (Eq. \ref{eq:BMN}), multiple simulations at
596 different pressures must be done to compute the first derivatives. It
597 is also possible to compute the compressibility using the fluctuation
598 dissipation theorem using either fluctuations in the
599 volume,\cite{Debenedetti1986}
600 \begin{equation}
601 \kappa_{T} = \frac{\left \langle V^{2} \right \rangle - \left \langle
602 V \right \rangle ^{2}}{V \, k_{B} \, T},
603 \label{eq:BMVfluct}
604 \end{equation}
605 or, equivalently, fluctuations in the number of molecules within the
606 fixed region,
607 \begin{equation}
608 \kappa_{T} = \frac{\left \langle N^{2} \right \rangle - \left \langle
609 N \right \rangle ^{2}}{N \, k_{B} \, T}.
610 \label{eq:BMNfluct}
611 \end{equation}
612 Thus, the compressibility of each simulation can be calculated
613 entirely independently from other trajectories. Compressibility
614 calculations that rely on the hull volume will still suffer the
615 effects of the empty space due to the vapor phase; for this reason, we
616 recommend using the number density (Eq. \ref{eq:BMN}) or number
617 density fluctuations (Eq. \ref{eq:BMNfluct}) for computing
618 compressibilities. We obtained the results in
619 Fig. \ref{fig:compWater} using a sampling radius that was
620 approximately 80\% of the mean distance between the center of mass of
621 the cluster and the hull atoms. This ratio of sampling radius to
622 average hull radius excludes the problematic vapor phase on the
623 outside of the cluster while including enough of the liquid phase to
624 avoid poor statistics due to fluctuating local densities.
625
626 A comparison of the oxygen-oxygen radial distribution functions for
627 SPC/E water simulated using both the Langevin Hull and more
628 traditional periodic boundary methods -- both at 1 atm and 300K --
629 reveals an understructuring of water in the Langevin Hull that
630 manifests as a slight broadening of the solvation shells. This effect
631 may be due to the introduction of a liquid-vapor interface in the
632 Langevin Hull simulations (an interface which is missing in most
633 periodic simulations of bulk water). Vapor-phase molecules contribute
634 a small but nearly flat portion of the radial distribution function.
635
636 \subsection{Molecular orientation distribution at cluster boundary}
637
638 In order for a non-periodic boundary method to be widely applicable,
639 it must be constructed in such a way that they allow a finite system
640 to replicate the properties of the bulk. Early non-periodic simulation
641 methods (e.g. hydrophobic boundary potentials) induced spurious
642 orientational correlations deep within the simulated
643 system.\cite{Lee1984,Belch1985} This behavior spawned many methods for
644 fixing and characterizing the effects of artificial boundaries
645 including methods which fix the orientations of a set of edge
646 molecules.\cite{Warshel1978,King1989}
647
648 As described above, the Langevin Hull does not require that the
649 orientation of molecules be fixed, nor does it utilize an explicitly
650 hydrophobic boundary, or orientational or radial constraints.
651 Therefore, the orientational correlations of the molecules in water
652 clusters are of particular interest in testing this method. Ideally,
653 the water molecules on the surfaces of the clusters will have enough
654 mobility into and out of the center of the cluster to maintain
655 bulk-like orientational distribution in the absence of orientational
656 and radial constraints. However, since the number of hydrogen bonding
657 partners available to molecules on the exterior are limited, it is
658 likely that there will be an effective hydrophobicity of the hull.
659
660 To determine the extent of these effects, we examined the
661 orientations exhibited by SPC/E water in a cluster of 1372
662 molecules at 300 K and at pressures ranging from 1 -- 1000 atm. The
663 orientational angle of a water molecule is described by
664 \begin{equation}
665 \cos{\theta}=\frac{\vec{r}_i\cdot\vec{\mu}_i}{|\vec{r}_i||\vec{\mu}_i|}
666 \end{equation}
667 where $\vec{r}_{i}$ is the vector between molecule {\it i}'s center of
668 mass and the cluster center of mass, and $\vec{\mu}_{i}$ is the vector
669 bisecting the H-O-H angle of molecule {\it i}. Bulk-like
670 distributions will result in $\langle \cos \theta \rangle$ values
671 close to zero. If the hull exhibits an overabundance of
672 externally-oriented oxygen sites, the average orientation will be
673 negative, while dangling hydrogen sites will result in positive
674 average orientations.
675
676 Fig. \ref{fig:pAngle} shows the distribution of $\cos{\theta}$ values
677 for molecules in the interior of the cluster (squares) and for
678 molecules included in the convex hull (circles).
679 \begin{figure}
680 \includegraphics[width=\linewidth]{pAngle}
681 \caption{Distribution of $\cos{\theta}$ values for molecules on the
682 interior of the cluster (squares) and for those participating in the
683 convex hull (circles) at a variety of pressures. The Langevin Hull
684 exhibits minor dewetting behavior with exposed oxygen sites on the
685 hull water molecules. The orientational preference for exposed
686 oxygen appears to be independent of applied pressure. }
687 \label{fig:pAngle}
688 \end{figure}
689
690 As expected, interior molecules (those not included in the convex
691 hull) maintain a bulk-like structure with a uniform distribution of
692 orientations. Molecules included in the convex hull show a slight
693 preference for values of $\cos{\theta} < 0.$ These values correspond
694 to molecules with oxygen directed toward the exterior of the cluster,
695 forming dangling hydrogen bond acceptor sites.
696
697 The orientational preference exhibited by water molecules on the hull
698 is significantly weaker than the preference caused by an explicit
699 hydrophobic bounding potential. Additionally, the Langevin Hull does
700 not require that the orientation of any molecules be fixed in order to
701 maintain bulk-like structure, even near the cluster surface.
702
703 Previous molecular dynamics simulations of SPC/E liquid / vapor
704 interfaces using periodic boundary conditions have shown that
705 molecules on the liquid side of interface favor a similar orientation
706 where oxygen is directed away from the bulk.\cite{Taylor1996} These
707 simulations had well-defined liquid and vapor phase regions
708 equilibrium and it was observed that {\it vapor} molecules generally
709 had one hydrogen protruding from the surface, forming a dangling
710 hydrogen bond donor. Our water clusters do not have a true vapor
711 region, but rather a few transient molecules that leave the liquid
712 droplet (and which return to the droplet relatively quickly).
713 Although we cannot obtain an orientational preference of vapor phase
714 molecules in a Langevin Hull simulation, but we do agree with previous
715 estimates of the orientation of {\it liquid phase} molecules at the
716 interface.
717
718 \subsection{Heterogeneous nanoparticle / water mixtures}
719
720 To further test the method, we simulated gold nanoparticles ($r = 18$
721 \AA~, 1433 atoms) solvated by explicit SPC/E water clusters (5000
722 molecules) using a model for the gold / water interactions that has
723 been used by Dou {\it et. al.} for investigating the separation of
724 water films near hot metal surfaces.\cite{ISI:000167766600035} The
725 Langevin Hull was used to sample pressures of 1, 2, 5, 10, 20, 50, 100
726 and 200 atm, while all simulations were done at a temperature of 300
727 K. At these temperatures and pressures, there is no observed
728 separation of the water film from the surface.
729
730 In Fig. \ref{fig:RhoR} we show the density of water and gold as a
731 function of the distance from the center of the nanoparticle. Higher
732 applied pressures appear to destroy structural correlations in the
733 outermost monolayer of the gold nanoparticle as well as in the water
734 at the near the metal / water interface. Simulations at increased
735 pressures exhibit significant overlap of the gold and water densities,
736 indicating a less well-defined interfacial surface.
737
738 \begin{figure}
739 \includegraphics[width=\linewidth]{RhoR}
740 \caption{Density profiles of gold and water at the nanoparticle
741 surface. Each curve has been normalized by the average density in
742 the bulk-like region available to the corresponding material.
743 Higher applied pressures de-structure both the gold nanoparticle
744 surface and water at the metal/water interface.}
745 \label{fig:RhoR}
746 \end{figure}
747
748 At even higher pressures (500 atm and above), problems with the metal
749 - water interaction potential became quite clear. The model we are
750 using appears to have been parameterized for relatively low pressures;
751 it utilizes both shifted Morse and repulsive Morse potentials to model
752 the Au/O and Au/H interactions, respectively. The repulsive wall of
753 the Morse potential does not diverge quickly enough at short distances
754 to prevent water from diffusing into the center of the gold
755 nanoparticles. This behavior is likely not a realistic description of
756 the real physics of the situation. A better model of the gold-water
757 adsorption behavior would require harder repulsive walls to prevent
758 this behavior.
759
760 \section{Discussion}
761 \label{sec:discussion}
762
763 The Langevin Hull samples the isobaric-isothermal ensemble for
764 non-periodic systems by coupling the system to a bath characterized by
765 pressure, temperature, and solvent viscosity. This enables the
766 simulation of heterogeneous systems composed of materials with
767 significantly different compressibilities. Because the boundary is
768 dynamically determined during the simulation and the molecules
769 interacting with the boundary can change, the method inflicts minimal
770 perturbations on the behavior of molecules at the edges of the
771 simulation. Further work on this method will involve implicit
772 electrostatics at the boundary (which is missing in the current
773 implementation) as well as more sophisticated treatments of the
774 surface geometry (alpha
775 shapes\cite{EDELSBRUNNER:1994oq,EDELSBRUNNER:1995cj} and Tight
776 Cocone\cite{Dey:2003ts}). The non-convex hull geometries are
777 significantly more expensive ($\mathcal{O}(N^2)$) than the convex hull
778 ($\mathcal{O}(N \log N)$), but would enable the use of hull volumes
779 directly in computing the compressibility of the sample.
780
781 \section*{Appendix A: Computing Convex Hulls on Parallel Computers}
782
783 In order to use the Langevin Hull for simulations on parallel
784 computers, one of the more difficult tasks is to compute the bounding
785 surface, facets, and resistance tensors when the individual processors
786 have incomplete information about the entire system's topology. Most
787 parallel decomposition methods assign primary responsibility for the
788 motion of an atomic site to a single processor, and we can exploit
789 this to efficiently compute the convex hull for the entire system.
790
791 The basic idea involves splitting the point cloud into
792 spatially-overlapping subsets and computing the convex hulls for each
793 of the subsets. The points on the convex hull of the entire system
794 are all present on at least one of the subset hulls. The algorithm
795 works as follows:
796 \begin{enumerate}
797 \item Each processor computes the convex hull for its own atomic sites
798 (left panel in Fig. \ref{fig:parallel}).
799 \item The Hull vertices from each processor are communicated to all of
800 the processors, and each processor assembles a complete list of hull
801 sites (this is much smaller than the original number of points in
802 the point cloud).
803 \item Each processor computes the global convex hull (right panel in
804 Fig. \ref{fig:parallel}) using only those points that are the union
805 of sites gathered from all of the subset hulls. Delaunay
806 triangulation is then done to obtain the facets of the global hull.
807 \end{enumerate}
808
809 \begin{figure}
810 \includegraphics[width=\linewidth]{parallel}
811 \caption{When the sites are distributed among many nodes for parallel
812 computation, the processors first compute the convex hulls for their
813 own sites (dashed lines in left panel). The positions of the sites
814 that make up the subset hulls are then communicated to all
815 processors (middle panel). The convex hull of the system (solid line in
816 right panel) is the convex hull of the points on the union of the subset
817 hulls.}
818 \label{fig:parallel}
819 \end{figure}
820
821 The individual hull operations scale with
822 $\mathcal{O}(\frac{n}{p}\log\frac{n}{p})$ where $n$ is the total
823 number of sites, and $p$ is the number of processors. These local
824 hull operations create a set of $p$ hulls, each with approximately
825 $\frac{n}{3pr}$ sites for a cluster of radius $r$. The worst-case
826 communication cost for using a ``gather'' operation to distribute this
827 information to all processors is $\mathcal{O}( \alpha (p-1) + \frac{n
828 \beta (p-1)}{3 r p^2})$, while the final computation of the system
829 hull scales as $\mathcal{O}(\frac{n}{3r}\log\frac{n}{3r})$.
830
831 For a large number of atoms on a moderately parallel machine, the
832 total costs are dominated by the computations of the individual hulls,
833 and communication of these hulls to create the Langevin Hull sees roughly
834 linear speed-up with increasing processor counts.
835
836 \section*{Acknowledgments}
837 Support for this project was provided by the
838 National Science Foundation under grant CHE-0848243. Computational
839 time was provided by the Center for Research Computing (CRC) at the
840 University of Notre Dame.
841
842 Molecular graphics images were produced using the UCSF Chimera package from
843 the Resource for Biocomputing, Visualization, and Informatics at the
844 University of California, San Francisco (supported by NIH P41 RR001081).
845 \newpage
846
847 \bibliography{langevinHull}
848
849 \end{doublespace}
850 \end{document}