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29 \begin{document}
30
31 \title{A gentler approach to RNEMD: Non-isotropic Velocity Scaling for computing Thermal Conductivity and Shear Viscosity}
32
33 \author{Shenyu Kuang and J. Daniel
34 Gezelter\footnote{Corresponding author. \ Electronic mail: gezelter@nd.edu} \\
35 Department of Chemistry and Biochemistry,\\
36 University of Notre Dame\\
37 Notre Dame, Indiana 46556}
38
39 \date{\today}
40
41 \maketitle
42
43 \begin{doublespace}
44
45 \begin{abstract}
46 We present a new method for introducing stable non-equilibrium
47 velocity and temperature gradients in molecular dynamics simulations
48 of heterogeneous systems. This method extends earlier Reverse
49 Non-Equilibrium Molecular Dynamics (RNEMD) methods which use
50 momentum exchange swapping moves. The standard swapping moves can
51 create non-thermal velocity distributions and are difficult to use
52 for interfacial calculations. By using non-isotropic velocity
53 scaling (NIVS) on the molecules in specific regions of a system, it
54 is possible to impose momentum or thermal flux between regions of a
55 simulation while conserving the linear momentum and total energy of
56 the system. To test the method, we have computed the thermal
57 conductivity of model liquid and solid systems as well as the
58 interfacial thermal conductivity of a metal-water interface. We
59 find that the NIVS-RNEMD improves the problematic velocity
60 distributions that develop in other RNEMD methods.
61 \end{abstract}
62
63 \newpage
64
65 %\narrowtext
66
67 %%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
68 % BODY OF TEXT
69 %%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
70
71 \section{Introduction}
72 The original formulation of Reverse Non-equilibrium Molecular Dynamics
73 (RNEMD) obtains transport coefficients (thermal conductivity and shear
74 viscosity) in a fluid by imposing an artificial momentum flux between
75 two thin parallel slabs of material that are spatially separated in
76 the simulation cell.\cite{MullerPlathe:1997xw,ISI:000080382700030} The
77 artificial flux is typically created by periodically ``swapping''
78 either the entire momentum vector $\vec{p}$ or single components of
79 this vector ($p_x$) between molecules in each of the two slabs. If
80 the two slabs are separated along the $z$ coordinate, the imposed flux
81 is either directional ($j_z(p_x)$) or isotropic ($J_z$), and the
82 response of a simulated system to the imposed momentum flux will
83 typically be a velocity or thermal gradient (Fig. \ref{thermalDemo}).
84 The shear viscosity ($\eta$) and thermal conductivity ($\lambda$) are
85 easily obtained by assuming linear response of the system,
86 \begin{eqnarray}
87 j_z(p_x) & = & -\eta \frac{\partial v_x}{\partial z}\\
88 J_z & = & \lambda \frac{\partial T}{\partial z}
89 \end{eqnarray}
90 RNEMD has been widely used to provide computational estimates of
91 thermal conductivities and shear viscosities in a wide range of
92 materials, from liquid copper to both monatomic and molecular fluids
93 (e.g. ionic
94 liquids).\cite{Bedrov:2000-1,Bedrov:2000,Muller-Plathe:2002,ISI:000184808400018,ISI:000231042800044,Maginn:2007,Muller-Plathe:2008,ISI:000258460400020,ISI:000258840700015,ISI:000261835100054}
95
96 \begin{figure}
97 \includegraphics[width=\linewidth]{thermalDemo}
98 \caption{RNEMD methods impose an unphysical transfer of momentum or
99 kinetic energy between a ``hot'' slab and a ``cold'' slab in the
100 simulation box. The molecular system responds to this imposed flux
101 by generating a momentum or temperature gradient. The slope of the
102 gradient can then be used to compute transport properties (e.g.
103 shear viscosity and thermal conductivity).}
104 \label{thermalDemo}
105 \end{figure}
106
107 RNEMD is preferable in many ways to the forward NEMD
108 methods\cite{ISI:A1988Q205300014,hess:209,Vasquez:2004fk,backer:154503,ISI:000266247600008}
109 because it imposes what is typically difficult to measure (a flux or
110 stress) and it is typically much easier to compute the response
111 (momentum gradients or strains). For similar reasons, RNEMD is also
112 preferable to slowly-converging equilibrium methods for measuring
113 thermal conductivity and shear viscosity (using Green-Kubo
114 relations\cite{daivis:541,mondello:9327} or the Helfand moment
115 approach of Viscardy {\it et
116 al.}\cite{Viscardy:2007bh,Viscardy:2007lq}) because these rely on
117 computing and integrating long-time correlation functions that are
118 subject to noise issues.
119
120 Another attractive feature of RNEMD is that it conserves both total
121 linear momentum and total energy during the swaps (as long as the two
122 molecules have the same identity), so the swapped configurations are
123 typically samples from the same manifold of states in the
124 microcanonical ensemble.
125
126 Recently, Tenney and Maginn\cite{Maginn:2010} have discovered some
127 problems with the original RNEMD swap technique. Notably, large
128 momentum fluxes (equivalent to frequent momentum swaps between the
129 slabs) can result in ``notched'', ``peaked'' and generally non-thermal
130 momentum distributions in the two slabs, as well as non-linear thermal
131 and velocity distributions along the direction of the imposed flux
132 ($z$). Tenney and Maginn obtained reasonable limits on imposed flux
133 and proposed self-adjusting metrics for retaining the usability of the
134 method.
135
136 In this paper, we develop and test a method for non-isotropic velocity
137 scaling (NIVS) which retains the desirable features of RNEMD
138 (conservation of linear momentum and total energy, compatibility with
139 periodic boundary conditions) while establishing true thermal
140 distributions in each of the two slabs. In the next section, we
141 present the method for determining the scaling constraints. We then
142 test the method on both liquids and solids as well as a non-isotropic
143 liquid-solid interface and show that it is capable of providing
144 reasonable estimates of the thermal conductivity and shear viscosity
145 in all of these cases.
146
147 \section{Methodology}
148 We retain the basic idea of M\"{u}ller-Plathe's RNEMD method; the
149 periodic system is partitioned into a series of thin slabs along one
150 axis ($z$). One of the slabs at the end of the periodic box is
151 designated the ``hot'' slab, while the slab in the center of the box
152 is designated the ``cold'' slab. The artificial momentum flux will be
153 established by transferring momentum from the cold slab and into the
154 hot slab.
155
156 Rather than using momentum swaps, we use a series of velocity scaling
157 moves. For molecules $\{i\}$ located within the cold slab,
158 \begin{equation}
159 \vec{v}_i \leftarrow \left( \begin{array}{ccc}
160 x & 0 & 0 \\
161 0 & y & 0 \\
162 0 & 0 & z \\
163 \end{array} \right) \cdot \vec{v}_i
164 \end{equation}
165 where ${x, y, z}$ are a set of 3 velocity-scaling variables for each
166 of the three directions in the system. Likewise, the molecules
167 $\{j\}$ located in the hot slab will see a concomitant scaling of
168 velocities,
169 \begin{equation}
170 \vec{v}_j \leftarrow \left( \begin{array}{ccc}
171 x^\prime & 0 & 0 \\
172 0 & y^\prime & 0 \\
173 0 & 0 & z^\prime \\
174 \end{array} \right) \cdot \vec{v}_j
175 \end{equation}
176
177 Conservation of linear momentum in each of the three directions
178 ($\alpha = x,y,z$) ties the values of the hot and cold scaling
179 parameters together:
180 \begin{equation}
181 P_h^\alpha + P_c^\alpha = \alpha^\prime P_h^\alpha + \alpha P_c^\alpha
182 \end{equation}
183 where
184 \begin{eqnarray}
185 P_c^\alpha & = & \sum_{i = 1}^{N_c} m_i v_{i\alpha} \\
186 P_h^\alpha & = & \sum_{j = 1}^{N_h} m_j v_{j\alpha}
187 \label{eq:momentumdef}
188 \end{eqnarray}
189 Therefore, for each of the three directions, the hot scaling
190 parameters are a simple function of the cold scaling parameters and
191 the instantaneous linear momenta in each of the two slabs.
192 \begin{equation}
193 \alpha^\prime = 1 + (1 - \alpha) p_\alpha
194 \label{eq:hotcoldscaling}
195 \end{equation}
196 where
197 \begin{equation}
198 p_\alpha = \frac{P_c^\alpha}{P_h^\alpha}
199 \end{equation}
200 for convenience.
201
202 Conservation of total energy also places constraints on the scaling:
203 \begin{equation}
204 \sum_{\alpha = x,y,z} \left\{ K_h^\alpha + K_c^\alpha \right\} = \sum_{\alpha = x,y,z}
205 \left\{ \left(\alpha^\prime\right)^2 K_h^\alpha + \alpha^2 K_c^\alpha \right\}
206 \end{equation}
207 where the translational kinetic energies, $K_h^\alpha$ and
208 $K_c^\alpha$, are computed for each of the three directions in a
209 similar manner to the linear momenta (Eq. \ref{eq:momentumdef}).
210 Substituting in the expressions for the hot scaling parameters
211 ($\alpha^\prime$) from Eq. (\ref{eq:hotcoldscaling}), we obtain the
212 {\it constraint ellipsoid}:
213 \begin{equation}
214 \sum_{\alpha = x,y,z} \left( a_\alpha \alpha^2 + b_\alpha \alpha +
215 c_\alpha \right) = 0
216 \label{eq:constraintEllipsoid}
217 \end{equation}
218 where the constants are obtained from the instantaneous values of the
219 linear momenta and kinetic energies for the hot and cold slabs,
220 \begin{eqnarray}
221 a_\alpha & = &\left(K_c^\alpha + K_h^\alpha
222 \left(p_\alpha\right)^2\right) \\
223 b_\alpha & = & -2 K_h^\alpha p_\alpha \left( 1 + p_\alpha\right) \\
224 c_\alpha & = & K_h^\alpha p_\alpha^2 + 2 K_h^\alpha p_\alpha - K_c^\alpha
225 \label{eq:constraintEllipsoidConsts}
226 \end{eqnarray}
227 This ellipsoid (Eq. \ref{eq:constraintEllipsoid}) defines the set of
228 cold slab scaling parameters which, when applied, preserve the linear
229 momentum of the system in all three directions as well as total
230 kinetic energy.
231
232 The goal of using these velocity scaling variables is to transfer
233 kinetic energy from the cold slab to the hot slab. If the hot and
234 cold slabs are separated along the z-axis, the energy flux is given
235 simply by the decrease in kinetic energy of the cold bin:
236 \begin{equation}
237 (1-x^2) K_c^x + (1-y^2) K_c^y + (1-z^2) K_c^z = J_z\Delta t
238 \end{equation}
239 The expression for the energy flux can be re-written as another
240 ellipsoid centered on $(x,y,z) = 0$:
241 \begin{equation}
242 \sum_{\alpha = x,y,z} K_c^\alpha \alpha^2 = \sum_{\alpha = x,y,z}
243 K_c^\alpha -J_z \Delta t
244 \label{eq:fluxEllipsoid}
245 \end{equation}
246 The spatial extent of the {\it thermal flux ellipsoid} is governed
247 both by the target flux, $J_z$ as well as the instantaneous values of
248 the kinetic energy components in the cold bin.
249
250 To satisfy an energetic flux as well as the conservation constraints,
251 we must determine the points ${x,y,z}$ that lie on both the constraint
252 ellipsoid (Eq. \ref{eq:constraintEllipsoid}) and the flux ellipsoid
253 (Eq. \ref{eq:fluxEllipsoid}), i.e. the intersection of the two
254 ellipsoids in 3-dimensional space.
255
256 \begin{figure}
257 \includegraphics[width=\linewidth]{ellipsoids}
258 \caption{Velocity scaling coefficients which maintain both constant
259 energy and constant linear momentum of the system lie on the surface
260 of the {\it constraint ellipsoid} while points which generate the
261 target momentum flux lie on the surface of the {\it flux ellipsoid}.
262 The velocity distributions in the cold bin are scaled by only those
263 points which lie on both ellipsoids.}
264 \label{ellipsoids}
265 \end{figure}
266
267 Since ellipsoids can be expressed as polynomials up to second order in
268 each of the three coordinates, finding the the intersection points of
269 two ellipsoids is isomorphic to finding the roots a polynomial of
270 degree 16. There are a number of polynomial root-finding methods in
271 the literature,\cite{Hoffman:2001sf,384119} but numerically finding
272 the roots of high-degree polynomials is generally an ill-conditioned
273 problem.\cite{Hoffman:2001sf} One simplification is to maintain
274 velocity scalings that are {\it as isotropic as possible}. To do
275 this, we impose $x=y$, and treat both the constraint and flux
276 ellipsoids as 2-dimensional ellipses. In reduced dimensionality, the
277 intersecting-ellipse problem reduces to finding the roots of
278 polynomials of degree 4.
279
280 Depending on the target flux and current velocity distributions, the
281 ellipsoids can have between 0 and 4 intersection points. If there are
282 no intersection points, it is not possible to satisfy the constraints
283 while performing a non-equilibrium scaling move, and no change is made
284 to the dynamics.
285
286 With multiple intersection points, any of the scaling points will
287 conserve the linear momentum and kinetic energy of the system and will
288 generate the correct target flux. Although this method is inherently
289 non-isotropic, the goal is still to maintain the system as close to an
290 isotropic fluid as possible. With this in mind, we would like the
291 kinetic energies in the three different directions could become as
292 close as each other as possible after each scaling. Simultaneously,
293 one would also like each scaling to be as gentle as possible, i.e.
294 ${x,y,z \rightarrow 1}$, in order to avoid large perturbation to the
295 system. To do this, we pick the intersection point which maintains
296 the three scaling variables ${x, y, z}$ as well as the ratio of
297 kinetic energies ${K_c^z/K_c^x, K_c^z/K_c^y}$ as close as possible to
298 1.
299
300 After the valid scaling parameters are arrived at by solving geometric
301 intersection problems in $x, y, z$ space in order to obtain cold slab
302 scaling parameters, Eq. (\ref{eq:hotcoldscaling}) is used to
303 determine the conjugate hot slab scaling variables.
304
305 \subsection{Introducing shear stress via velocity scaling}
306 It is also possible to use this method to magnify the random
307 fluctuations of the average momentum in each of the bins to induce a
308 momentum flux. Doing this repeatedly will create a shear stress on
309 the system which will respond with an easily-measured strain. The
310 momentum flux (say along the $x$-direction) may be defined as:
311 \begin{equation}
312 (1-x) P_c^x = j_z(p_x)\Delta t
313 \label{eq:fluxPlane}
314 \end{equation}
315 This {\it momentum flux plane} is perpendicular to the $x$-axis, with
316 its position governed both by a target value, $j_z(p_x)$ as well as
317 the instantaneous value of the momentum along the $x$-direction.
318
319 In order to satisfy a momentum flux as well as the conservation
320 constraints, we must determine the points ${x,y,z}$ which lie on both
321 the constraint ellipsoid (Eq. \ref{eq:constraintEllipsoid}) and the
322 flux plane (Eq. \ref{eq:fluxPlane}), i.e. the intersection of an
323 ellipsoid and a plane in 3-dimensional space.
324
325 In the case of momentum flux transfer, we also impose another
326 constraint to set the kinetic energy transfer as zero. In other
327 words, we apply Eq. \ref{eq:fluxEllipsoid} and let ${J_z = 0}$. With
328 one variable fixed by Eq. \ref{eq:fluxPlane}, one now have a similar
329 set of quartic equations to the above kinetic energy transfer problem.
330
331 \section{Computational Details}
332
333 We have implemented this methodology in our molecular dynamics code,
334 OpenMD,\cite{Meineke:2005gd,openmd} performing the NIVS scaling moves
335 with a variable frequency after the molecular dynamics (MD) steps. We
336 have tested the method in a variety of different systems, including:
337 homogeneous fluids (Lennard-Jones and SPC/E water), crystalline
338 solids, using both the embedded atom method
339 (EAM)~\cite{PhysRevB.33.7983} and quantum Sutton-Chen
340 (QSC)~\cite{PhysRevB.59.3527} models for Gold, and heterogeneous
341 interfaces (QSC gold - SPC/E water). The last of these systems would
342 have been difficult to study using previous RNEMD methods, but the
343 current method can easily provide estimates of the interfacial thermal
344 conductivity ($G$).
345
346 \subsection{Simulation Cells}
347
348 In each of the systems studied, the dynamics was carried out in a
349 rectangular simulation cell using periodic boundary conditions in all
350 three dimensions. The cells were longer along the $z$ axis and the
351 space was divided into $N$ slabs along this axis (typically $N=20$).
352 The top slab ($n=1$) was designated the ``hot'' slab, while the
353 central slab ($n= N/2 + 1$) was designated the ``cold'' slab. In all
354 cases, simulations were first thermalized in canonical ensemble (NVT)
355 using a Nos\'{e}-Hoover thermostat.\cite{Hoover85} then equilibrated in
356 microcanonical ensemble (NVE) before introducing any non-equilibrium
357 method.
358
359 \subsection{RNEMD with M\"{u}ller-Plathe swaps}
360
361 In order to compare our new methodology with the original
362 M\"{u}ller-Plathe swapping algorithm,\cite{ISI:000080382700030} we
363 first performed simulations using the original technique. At fixed
364 intervals, kinetic energy or momentum exchange moves were performed
365 between the hot and the cold slabs. The interval between exchange
366 moves governs the effective momentum flux ($j_z(p_x)$) or energy flux
367 ($J_z$) between the two slabs so to vary this quantity, we performed
368 simulations with a variety of delay intervals between the swapping moves.
369
370 For thermal conductivity measurements, the particle with smallest
371 speed in the hot slab and the one with largest speed in the cold slab
372 had their entire momentum vectors swapped. In the test cases run
373 here, all particles had the same chemical identity and mass, so this
374 move preserves both total linear momentum and total energy. It is
375 also possible to exchange energy by assuming an elastic collision
376 between the two particles which are exchanging energy.
377
378 For shear stress simulations, the particle with the most negative
379 $p_x$ in the hot slab and the one with the most positive $p_x$ in the
380 cold slab exchanged only this component of their momentum vectors.
381
382 \subsection{RNEMD with NIVS scaling}
383
384 For each simulation utilizing the swapping method, a corresponding
385 NIVS-RNEMD simulation was carried out using a target momentum flux set
386 to produce the same flux experienced in the swapping simulation.
387
388 To test the temperature homogeneity, momentum and temperature
389 distributions (for all three dimensions) were accumulated for
390 molecules in each of the slabs. Transport coefficients were computed
391 using the temperature (and momentum) gradients across the $z$-axis as
392 well as the total momentum flux the system experienced during data
393 collection portion of the simulation.
394
395 \subsection{Shear viscosities}
396
397 The momentum flux was calculated using the total non-physical momentum
398 transferred (${P_x}$) and the data collection time ($t$):
399 \begin{equation}
400 j_z(p_x) = \frac{P_x}{2 t L_x L_y}
401 \end{equation}
402 where $L_x$ and $L_y$ denote the $x$ and $y$ lengths of the simulation
403 box. The factor of two in the denominator is present because physical
404 momentum transfer between the slabs occurs in two directions ($+z$ and
405 $-z$). The velocity gradient ${\langle \partial v_x /\partial z
406 \rangle}$ was obtained using linear regression of the mean $x$
407 component of the velocity, $\langle v_x \rangle$, in each of the bins.
408 For Lennard-Jones simulations, shear viscosities are reported in
409 reduced units (${\eta^* = \eta \sigma^2 (\varepsilon m)^{-1/2}}$).
410
411 \subsection{Thermal Conductivities}
412
413 The energy flux was calculated in a similar manner to the momentum
414 flux, using the total non-physical energy transferred (${E_{total}}$)
415 and the data collection time $t$:
416 \begin{equation}
417 J_z = \frac{E_{total}}{2 t L_x L_y}
418 \end{equation}
419 The temperature gradient ${\langle\partial T/\partial z\rangle}$ was
420 obtained by a linear regression of the temperature profile. For
421 Lennard-Jones simulations, thermal conductivities are reported in
422 reduced units (${\lambda^*=\lambda \sigma^2 m^{1/2}
423 k_B^{-1}\varepsilon^{-1/2}}$).
424
425 \subsection{Interfacial Thermal Conductivities}
426
427 For interfaces with a relatively low interfacial conductance, the bulk
428 regions on either side of an interface rapidly come to a state in
429 which the two phases have relatively homogeneous (but distinct)
430 temperatures. The interfacial thermal conductivity $G$ can therefore
431 be approximated as:
432
433 \begin{equation}
434 G = \frac{E_{total}}{2 t L_x L_y \left( \langle T_\mathrm{hot}\rangle -
435 \langle T_\mathrm{cold}\rangle \right)}
436 \label{interfaceCalc}
437 \end{equation}
438 where ${E_{total}}$ is the imposed non-physical kinetic energy
439 transfer and ${\langle T_\mathrm{hot}\rangle}$ and ${\langle
440 T_\mathrm{cold}\rangle}$ are the average observed temperature of the
441 two separated phases. If the interfacial conductance is {\it not}
442 small, it would also be possible to compute the interfacial thermal
443 conductivity using this method by utilizing the change in the slope of
444 the thermal gradient ($\partial^2 \langle T \rangle /
445 \partial z^2$) at the interface.
446
447 \section{Results}
448
449 \subsection{Lennard-Jones Fluid}
450 2592 Lennard-Jones atoms were placed in an orthorhombic cell
451 ${10.06\sigma \times 10.06\sigma \times 30.18\sigma}$ on a side. The
452 reduced density ${\rho^* = \rho\sigma^3}$ was thus 0.85, which enabled
453 direct comparison between our results and previous methods. These
454 simulations were carried out with a reduced timestep ${\tau^* =
455 4.6\times10^{-4}}$. For the shear viscosity calculations, the mean
456 temperature was ${T^* = k_B T/\varepsilon = 0.72}$. For thermal
457 conductivity calculations, simulations were run under reduced
458 temperature ${\langle T^*\rangle = 0.72}$ in the microcanonical
459 ensemble. The simulations included $10^5$ steps of equilibration
460 without any momentum flux, $10^5$ steps of stablization with an
461 imposed momentum transfer to create a gradient, and $10^6$ steps of
462 data collection under RNEMD.
463
464 \subsubsection*{Thermal Conductivity}
465
466 Our thermal conductivity calculations show that the NIVS method agrees
467 well with the swapping method. Five different swap intervals were
468 tested (Table \ref{LJ}). Similar thermal gradients were observed with
469 similar thermal flux under the two different methods (Fig.
470 \ref{thermalGrad}). Furthermore, the 1-d temperature profiles showed
471 no observable differences between the $x$, $y$ and $z$ axes (lower
472 panel of Fig. \ref{thermalGrad}), so even though we are using a
473 non-isotropic scaling method, none of the three directions are
474 experience disproportionate heating due to the velocity scaling.
475
476 \begin{table*}
477 \begin{minipage}{\linewidth}
478 \begin{center}
479
480 \caption{Thermal conductivity ($\lambda^*$) and shear viscosity
481 ($\eta^*$) (in reduced units) of a Lennard-Jones fluid at
482 ${\langle T^* \rangle = 0.72}$ and ${\rho^* = 0.85}$ computed
483 at various momentum fluxes. The original swapping method and
484 the velocity scaling method give similar results.
485 Uncertainties are indicated in parentheses.}
486
487 \begin{tabular}{|cc|cc|cc|}
488 \hline
489 \multicolumn{2}{|c}{Momentum Exchange} &
490 \multicolumn{2}{|c}{Swapping RNEMD} &
491 \multicolumn{2}{|c|}{NIVS-RNEMD} \\
492 \hline
493 \multirow{2}{*}{Swap Interval (fs)} & Equivalent $J_z^*$ or &
494 \multirow{2}{*}{$\lambda^*_{swap}$} &
495 \multirow{2}{*}{$\eta^*_{swap}$} &
496 \multirow{2}{*}{$\lambda^*_{scale}$} &
497 \multirow{2}{*}{$\eta^*_{scale}$} \\
498 & $j_z^*(p_x)$ (reduced units) & & & & \\
499 \hline
500 250 & 0.16 & 7.03(0.34) & 3.57(0.06) & 7.30(0.10) & 3.54(0.04)\\
501 500 & 0.09 & 7.03(0.14) & 3.64(0.05) & 6.95(0.09) & 3.76(0.09)\\
502 1000 & 0.047 & 6.91(0.42) & 3.52(0.16) & 7.19(0.07) & 3.66(0.06)\\
503 2000 & 0.024 & 7.52(0.15) & 3.72(0.05) & 7.19(0.28) & 3.32(0.18)\\
504 2500 & 0.019 & 7.41(0.29) & 3.42(0.06) & 7.98(0.33) & 3.43(0.08)\\
505 \hline
506 \end{tabular}
507 \label{LJ}
508 \end{center}
509 \end{minipage}
510 \end{table*}
511
512 \begin{figure}
513 \includegraphics[width=\linewidth]{thermalGrad}
514 \caption{The NIVS-RNEMD method creates similar temperature gradients
515 compared with the swapping method under a variety of imposed
516 kinetic energy flux values. Furthermore, the implementation of
517 Non-Isotropic Velocity Scaling does not cause temperature
518 anisotropy to develop in thermal conductivity calculations.}
519 \label{thermalGrad}
520 \end{figure}
521
522 \subsubsection*{Velocity Distributions}
523
524 To test the effects on the velocity distributions, we accumulated
525 velocities every 100 steps and produced distributions of both velocity
526 and speed in each of the slabs. From these distributions, we observed
527 that under high non-physical kinetic energy flux, the speed of
528 molecules in slabs where {\it swapping} occured could deviate from the
529 Maxwell-Boltzmann distribution. This behavior was also noted by Tenney
530 and Maginn.\cite{Maginn:2010} Figure \ref{thermalHist} shows how these
531 distributions deviate from an ideal distribution. In the ``hot'' slab,
532 the probability density is notched at low speeds and has a substantial
533 shoulder at higher speeds relative to the ideal distribution. In the
534 cold slab, the opposite notching and shouldering occurs. This
535 phenomenon is more obvious at high swapping rates.
536
537 The peak of the velocity distribution is substantially flattened in
538 the hot slab, and is overly sharp (with truncated wings) in the cold
539 slab. This problem is rooted in the mechanism of the swapping method.
540 Continually depleting low (high) speed particles in the high (low)
541 temperature slab is not complemented by diffusion of low (high) speed
542 particles from neighboring slabs unless the swapping rate is
543 sufficiently small. Simutaneously, surplus low speed particles in the
544 cold slab do not have sufficient time to diffuse to neighboring slabs.
545 Since the thermal exchange rate must reach a minimum level to produce
546 an observable thermal gradient, the swapping-method RNEMD has a
547 relatively narrow choice of exchange times that can be utilized.
548
549 For comparison, NIVS-RNEMD produces a speed distribution closer to the
550 Maxwell-Boltzmann curve (Fig. \ref{thermalHist}). The reason for this
551 is simple; upon velocity scaling, a Gaussian distribution remains
552 Gaussian. Although a single scaling move is non-isotropic in three
553 dimensions, our criteria for choosing a set of scaling coefficients
554 helps maintain the distributions as close to isotropic as possible.
555 Consequently, NIVS-RNEMD is able to impose a non-physical thermal flux
556 without large perturbations to the velocity distributions in the two
557 slabs.
558
559 \begin{figure}
560 \includegraphics[width=\linewidth]{thermalHist}
561 \caption{Velocity and speed distributions that develop under the
562 swapping and NIVS-RNEMD methods at high flux. The distributions for
563 the hot bins (upper panels) and cold bins (lower panels) were
564 obtained from Lennard-Jones simulations with $\langle T^* \rangle =
565 4.5$ with a flux of $J_z^* \sim 5$ (equivalent to a swapping interval
566 of 10 time steps). This is a relatively large flux which shows the
567 non-thermal distributions that develop under the swapping method.
568 NIVS does a better job of producing near-thermal distributions in
569 the bins.}
570 \label{thermalHist}
571 \end{figure}
572
573
574 \subsubsection*{Shear Viscosity}
575 Our calculations (Table \ref{LJ}) show that velocity-scaling RNEMD
576 predicted similar values for shear viscosities to the swapping RNEMD
577 method. The average molecular momentum gradients of these samples are
578 shown in the upper two panels of Fig. \ref{shear}.
579
580 \begin{figure}
581 \includegraphics[width=\linewidth]{shear}
582 \caption{Average momentum gradients in shear viscosity simulations,
583 using ``swapping'' method (top panel) and NIVS-RNEMD method
584 (middle panel). NIVS-RNEMD produces a thermal anisotropy artifact
585 in the hot and cold bins when used for shear viscosity. This
586 artifact does not appear in thermal conductivity calculations.}
587 \label{shear}
588 \end{figure}
589
590 Observations of the three one-dimensional temperatures in each of the
591 slabs shows that NIVS-RNEMD does produce some thermal anisotropy,
592 particularly in the hot and cold slabs. The lower panel of Fig.
593 \ref{shear} indicates that with a relatively large imposed momentum
594 flux, $j_z(p_x)$, the $x$ direction approaches a different temperature
595 from the $y$ and $z$ directions in both the hot and cold bins. This
596 is an artifact of the scaling constraints. After a momentum gradient
597 has been established, $P_c^x$ is always less than zero. Consequently,
598 the scaling factor $x$ is always greater than one in order to satisfy
599 the constraints. This will continually increase the kinetic energy in
600 $x$-dimension, $K_c^x$. If there is not enough time for the kinetic
601 energy to exchange among different directions and different slabs, the
602 system will exhibit the observed thermal anisotropy in the hot and
603 cold bins.
604
605 Although results between scaling and swapping methods are comparable,
606 the inherent temperature anisotropy does make NIVS-RNEMD method less
607 attractive than swapping RNEMD for shear viscosity calculations. We
608 note that this problem appears only when a large {\it linear} momentum
609 flux is applied, and does not appear in {\it thermal} flux
610 calculations.
611
612 \subsection{Bulk SPC/E water}
613
614 We compared the thermal conductivity of SPC/E water using NIVS-RNEMD
615 to the work of Bedrov {\it et al.}\cite{Bedrov:2000}, which employed
616 the original swapping RNEMD method. Bedrov {\it et
617 al.}\cite{Bedrov:2000} argued that exchange of the molecular
618 center-of-mass velocities instead of single atom velocities conserves
619 the total kinetic energy and linear momentum. This principle is also
620 adopted in our simulations. Scaling was applied to the center-of-mass
621 velocities of SPC/E water molecules.
622
623 To construct the simulations, a simulation box consisting of 1000
624 molecules were first equilibrated under ambient pressure and
625 temperature conditions using the isobaric-isothermal (NPT)
626 ensemble.\cite{melchionna93} A fixed volume was chosen to match the
627 average volume observed in the NPT simulations, and this was followed
628 by equilibration, first in the canonical (NVT) ensemble, followed by a
629 100~ps period under constant-NVE conditions without any momentum flux.
630 Another 100~ps was allowed to stabilize the system with an imposed
631 momentum transfer to create a gradient, and 1~ns was allotted for data
632 collection under RNEMD.
633
634 In our simulations, the established temperature gradients were similar
635 to the previous work. Our simulation results at 318K are in good
636 agreement with those from Bedrov {\it et al.} (Table
637 \ref{spceThermal}). And both methods yield values in reasonable
638 agreement with experimental values.
639
640 \begin{table*}
641 \begin{minipage}{\linewidth}
642 \begin{center}
643
644 \caption{Thermal conductivity of SPC/E water under various
645 imposed thermal gradients. Uncertainties are indicated in
646 parentheses.}
647
648 \begin{tabular}{|c|c|ccc|}
649 \hline
650 \multirow{2}{*}{$\langle T\rangle$(K)} &
651 \multirow{2}{*}{$\langle dT/dz\rangle$(K/\AA)} &
652 \multicolumn{3}{|c|}{$\lambda (\mathrm{W m}^{-1}
653 \mathrm{K}^{-1})$} \\
654 & & This work & Previous simulations\cite{Bedrov:2000} &
655 Experiment\cite{WagnerKruse}\\
656 \hline
657 \multirow{3}{*}{300} & 0.38 & 0.816(0.044) & &
658 \multirow{3}{*}{0.61}\\
659 & 0.81 & 0.770(0.008) & & \\
660 & 1.54 & 0.813(0.007) & & \\
661 \hline
662 \multirow{2}{*}{318} & 0.75 & 0.750(0.032) & 0.784 &
663 \multirow{2}{*}{0.64}\\
664 & 1.59 & 0.778(0.019) & 0.730 & \\
665 \hline
666 \end{tabular}
667 \label{spceThermal}
668 \end{center}
669 \end{minipage}
670 \end{table*}
671
672 \subsection{Crystalline Gold}
673
674 To see how the method performed in a solid, we calculated thermal
675 conductivities using two atomistic models for gold. Several different
676 potential models have been developed that reasonably describe
677 interactions in transition metals. In particular, the Embedded Atom
678 Model (EAM)~\cite{PhysRevB.33.7983} and Sutton-Chen (SC)~\cite{Chen90}
679 potential have been used to study a wide range of phenomena in both
680 bulk materials and
681 nanoparticles.\cite{ISI:000207079300006,Clancy:1992,Vardeman:2008fk,Vardeman-II:2001jn,ShibataT._ja026764r,Sankaranarayanan:2005lr,Chui:2003fk,Wang:2005qy,Medasani:2007uq}
682 Both potentials are based on a model of a metal which treats the
683 nuclei and core electrons as pseudo-atoms embedded in the electron
684 density due to the valence electrons on all of the other atoms in the
685 system. The SC potential has a simple form that closely resembles the
686 Lennard Jones potential,
687 \begin{equation}
688 \label{eq:SCP1}
689 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] ,
690 \end{equation}
691 where $V^{pair}_{ij}$ and $\rho_{i}$ are given by
692 \begin{equation}
693 \label{eq:SCP2}
694 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}}.
695 \end{equation}
696 $V^{pair}_{ij}$ is a repulsive pairwise potential that accounts for
697 interactions between the pseudoatom cores. The $\sqrt{\rho_i}$ term in
698 Eq. (\ref{eq:SCP1}) is an attractive many-body potential that models
699 the interactions between the valence electrons and the cores of the
700 pseudo-atoms. $D_{ij}$, $D_{ii}$ set the appropriate overall energy
701 scale, $c_i$ scales the attractive portion of the potential relative
702 to the repulsive interaction and $\alpha_{ij}$ is a length parameter
703 that assures a dimensionless form for $\rho$. These parameters are
704 tuned to various experimental properties such as the density, cohesive
705 energy, and elastic moduli for FCC transition metals. The quantum
706 Sutton-Chen (QSC) formulation matches these properties while including
707 zero-point quantum corrections for different transition
708 metals.\cite{PhysRevB.59.3527} The EAM functional forms differ
709 slightly from SC but the overall method is very similar.
710
711 In this work, we have utilized both the EAM and the QSC potentials to
712 test the behavior of scaling RNEMD.
713
714 A face-centered-cubic (FCC) lattice was prepared containing 2880 Au
715 atoms (i.e. ${6\times 6\times 20}$ unit cells). Simulations were run
716 both with and without isobaric-isothermal (NPT)~\cite{melchionna93}
717 pre-equilibration at a target pressure of 1 atm. When equilibrated
718 under NPT conditions, our simulation box expanded by approximately 1\%
719 in volume. Following adjustment of the box volume, equilibrations in
720 both the canonical and microcanonical ensembles were carried out. With
721 the simulation cell divided evenly into 10 slabs, different thermal
722 gradients were established by applying a set of target thermal fluxes.
723
724 The results for the thermal conductivity of gold are shown in Table
725 \ref{AuThermal}. In these calculations, the end and middle slabs were
726 excluded from the thermal gradient linear regession. EAM predicts
727 slightly larger thermal conductivities than QSC. However, both values
728 are smaller than experimental value by a factor of more than 200. This
729 behavior has been observed previously by Richardson and Clancy, and
730 has been attributed to the lack of electronic contribution in these
731 force fields.\cite{Clancy:1992} It should be noted that the density of
732 the metal being simulated has an effect on thermal conductance. With
733 an expanded lattice, lower thermal conductance is expected (and
734 observed). We also observed a decrease in thermal conductance at
735 higher temperatures, a trend that agrees with experimental
736 measurements.\cite{AshcroftMermin}
737
738 \begin{table*}
739 \begin{minipage}{\linewidth}
740 \begin{center}
741
742 \caption{Calculated thermal conductivity of crystalline gold
743 using two related force fields. Calculations were done at both
744 experimental and equilibrated densities and at a range of
745 temperatures and thermal flux rates. Uncertainties are
746 indicated in parentheses. Richardson {\it et
747 al.}\cite{Clancy:1992} give an estimate of 1.74 $\mathrm{W
748 m}^{-1}\mathrm{K}^{-1}$ for EAM gold
749 at a density of 19.263 g / cm$^3$.}
750
751 \begin{tabular}{|c|c|c|cc|}
752 \hline
753 Force Field & $\rho$ (g/cm$^3$) & ${\langle T\rangle}$ (K) &
754 $\langle dT/dz\rangle$ (K/\AA) & $\lambda (\mathrm{W m}^{-1} \mathrm{K}^{-1})$\\
755 \hline
756 \multirow{7}{*}{QSC} & \multirow{3}{*}{19.188} & \multirow{3}{*}{300} & 1.44 & 1.10(0.06)\\
757 & & & 2.86 & 1.08(0.05)\\
758 & & & 5.14 & 1.15(0.07)\\\cline{2-5}
759 & \multirow{4}{*}{19.263} & \multirow{2}{*}{300} & 2.31 & 1.25(0.06)\\
760 & & & 3.02 & 1.26(0.05)\\\cline{3-5}
761 & & \multirow{2}{*}{575} & 3.02 & 1.02(0.07)\\
762 & & & 4.84 & 0.92(0.05)\\
763 \hline
764 \multirow{8}{*}{EAM} & \multirow{3}{*}{19.045} & \multirow{3}{*}{300} & 1.24 & 1.24(0.16)\\
765 & & & 2.06 & 1.37(0.04)\\
766 & & & 2.55 & 1.41(0.07)\\\cline{2-5}
767 & \multirow{5}{*}{19.263} & \multirow{3}{*}{300} & 1.06 & 1.45(0.13)\\
768 & & & 2.04 & 1.41(0.07)\\
769 & & & 2.41 & 1.53(0.10)\\\cline{3-5}
770 & & \multirow{2}{*}{575} & 2.82 & 1.08(0.03)\\
771 & & & 4.14 & 1.08(0.05)\\
772 \hline
773 \end{tabular}
774 \label{AuThermal}
775 \end{center}
776 \end{minipage}
777 \end{table*}
778
779 \subsection{Thermal Conductance at the Au/H$_2$O interface}
780 The most attractive aspect of the scaling approach for RNEMD is the
781 ability to use the method in non-homogeneous systems, where molecules
782 of different identities are segregated in different slabs. To test
783 this application, we simulated a Gold (111) / water interface. To
784 construct the interface, a box containing a lattice of 1188 Au atoms
785 (with the 111 surface in the $+z$ and $-z$ directions) was allowed to
786 relax under ambient temperature and pressure. A separate (but
787 identically sized) box of SPC/E water was also equilibrated at ambient
788 conditions. The two boxes were combined by removing all water
789 molecules within 3 \AA~ radius of any gold atom. The final
790 configuration contained 1862 SPC/E water molecules.
791
792 The Spohr potential was adopted in depicting the interaction between
793 metal atoms and water molecules.\cite{ISI:000167766600035} A similar
794 protocol of equilibration to our water simulations was followed. We
795 observed that the two phases developed large temperature differences
796 even under a relatively low thermal flux.
797
798 The low interfacial conductance is probably due to an acoustic
799 impedance mismatch between the solid and the liquid
800 phase.\cite{Cahill:793,RevModPhys.61.605} Experiments on the thermal
801 conductivity of gold nanoparticles and nanorods in solvent and in
802 glass cages have predicted values for $G$ between 100 and 350
803 (MW/m$^2$/K). The experiments typically have multiple gold surfaces
804 that have been protected by a capping agent (citrate or CTAB) or which
805 are in direct contact with various glassy solids. In these cases, the
806 acoustic impedance mismatch would be substantially reduced, leading to
807 much higher interfacial conductances. It is also possible, however,
808 that the lack of electronic effects that gives rise to the low thermal
809 conductivity of EAM gold is also causing a low reading for this
810 particular interface.
811
812 Under this low thermal conductance, both gold and water phase have
813 sufficient time to eliminate local temperature differences (Fig.
814 \ref{interface}). With flat thermal profiles with each phase, it is
815 valid to assume that the temperature difference between gold and water
816 on surface would be approximately the same as the difference between
817 the gold and water phase. This assumption enables convenient
818 calculation of $G$ using Eq. \ref{interfaceCalc} instead of measuring
819 temperatures of thin layer of water and gold close enough to surface,
820 which would have greater fluctuation and lower accuracy. Reported
821 results (Table \ref{interfaceRes}) are of two orders of magnitude
822 smaller than our calculations on homogeneous systems, and thus have
823 larger relative errors than our calculation results on homogeneous
824 systems.
825
826 \begin{figure}
827 \includegraphics[width=\linewidth]{interface}
828 \caption{Temperature profiles of the Gold / Water interface at four
829 different values for the thermal flux. Temperatures for slabs
830 either in the gold or in the water show no significant differences,
831 although there is a large discontinuity between the materials
832 because of the relatively low interfacial thermal conductivity.}
833 \label{interface}
834 \end{figure}
835
836 \begin{table*}
837 \begin{minipage}{\linewidth}
838 \begin{center}
839
840 \caption{Computed interfacial thermal conductivity ($G$) values
841 for the Au(111) / water interface at ${\langle T\rangle \sim}$
842 300K using a range of energy fluxes. Uncertainties are
843 indicated in parentheses. }
844
845 \begin{tabular}{|cccc| }
846 \hline
847 $J_z$ (MW/m$^2$) & $\langle T_{gold} \rangle$ (K) & $\langle
848 T_{water} \rangle$ (K) & $G$
849 (MW/m$^2$/K)\\
850 \hline
851 98.0 & 355.2 & 295.8 & 1.65(0.21) \\
852 78.8 & 343.8 & 298.0 & 1.72(0.32) \\
853 73.6 & 344.3 & 298.0 & 1.59(0.24) \\
854 49.2 & 330.1 & 300.4 & 1.65(0.35) \\
855 \hline
856 \end{tabular}
857 \label{interfaceRes}
858 \end{center}
859 \end{minipage}
860 \end{table*}
861
862
863 \section{Conclusions}
864
865 Our simulations demonstrate that validity of non-isotropic velocity
866 scaling (NIVS) in RNEMD calculations of thermal conductivity in atomic
867 and molecular liquids and solids. NIVS-RNEMD improves the problematic
868 velocity distributions which can develop in other RNEMD methods.
869 Furthermore, it provides a means for carrying out non-physical thermal
870 transfer between different species of molecules, and thus extends its
871 applicability to interfacial systems. Our calculation of the gold /
872 water interfacial thermal conductivity demonstrates this advantage
873 over previous RNEMD methods. NIVS-RNEMD also has limited applications
874 for shear viscosity calculations, but has the potential to cause
875 temperature anisotropy under high momentum fluxes. Further work will
876 be necessary to eliminate the one-dimensional heating if shear
877 viscosities are required.
878
879 \section{Acknowledgments}
880 The authors would like to thank Craig Tenney and Ed Maginn for many
881 helpful discussions. Support for this project was provided by the
882 National Science Foundation under grant CHE-0848243. Computational
883 time was provided by the Center for Research Computing (CRC) at the
884 University of Notre Dame.
885 \newpage
886
887 \bibliography{nivsRnemd}
888
889 \end{doublespace}
890 \end{document}
891