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24 \begin{document}
25
26 \title{A gentler approach to RNEMD: Non-isotropic Velocity Scaling for computing Thermal Conductivity and Shear Viscosity}
27
28 \author{Shenyu Kuang and J. Daniel
29 Gezelter\footnote{Corresponding author. \ Electronic mail: gezelter@nd.edu} \\
30 Department of Chemistry and Biochemistry,\\
31 University of Notre Dame\\
32 Notre Dame, Indiana 46556}
33
34 \date{\today}
35
36 \maketitle
37
38 \begin{doublespace}
39
40 \begin{abstract}
41 We present a new method for introducing stable non-equilibrium
42 velocity and temperature distributions in molecular dynamics
43 simulations of heterogeneous systems. This method extends some
44 earlier Reverse Non-Equilibrium Molecular Dynamics (RNEMD) methods
45 which use momentum exchange swapping moves that can create
46 non-thermal velocity distributions (and which are difficult to use
47 for interfacial calculations). By using non-isotropic velocity
48 scaling (NIVS) on the molecules in specific regions of a system, it
49 is possible to impose momentum or thermal flux between regions of a
50 simulation and stable thermal and momentum gradients can then be
51 established. The scaling method we have developed conserves the
52 total linear momentum and total energy of the system. To test the
53 methods, we have computed the thermal conductivity of model liquid
54 and solid systems as well as the interfacial thermal conductivity of
55 a metal-water interface. We find that the NIVS-RNEMD improves the
56 problematic velocity distributions that develop in other RNEMD
57 methods.
58 \end{abstract}
59
60 \newpage
61
62 %\narrowtext
63
64 %%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
65 % BODY OF TEXT
66 %%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
67
68 \section{Introduction}
69 The original formulation of Reverse Non-equilibrium Molecular Dynamics
70 (RNEMD) obtains transport coefficients (thermal conductivity and shear
71 viscosity) in a fluid by imposing an artificial momentum flux between
72 two thin parallel slabs of material that are spatially separated in
73 the simulation cell.\cite{MullerPlathe:1997xw,ISI:000080382700030} The
74 artificial flux is typically created by periodically ``swapping''
75 either the entire momentum vector $\vec{p}$ or single components of
76 this vector ($p_x$) between molecules in each of the two slabs. If
77 the two slabs are separated along the $z$ coordinate, the imposed flux
78 is either directional ($j_z(p_x)$) or isotropic ($J_z$), and the
79 response of a simulated system to the imposed momentum flux will
80 typically be a velocity or thermal gradient (Fig. \ref{thermalDemo}).
81 The shear viscosity ($\eta$) and thermal conductivity ($\lambda$) are
82 easily obtained by assuming linear response of the system,
83 \begin{eqnarray}
84 j_z(p_x) & = & -\eta \frac{\partial v_x}{\partial z}\\
85 J_z & = & \lambda \frac{\partial T}{\partial z}
86 \end{eqnarray}
87 RNEMD has been widely used to provide computational estimates of thermal
88 conductivities and shear viscosities in a wide range of materials,
89 from liquid copper to monatomic liquids to molecular fluids
90 (e.g. ionic 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}
91
92 \begin{figure}
93 \includegraphics[width=\linewidth]{thermalDemo}
94 \caption{RNEMD methods impose an unphysical transfer of momentum or
95 kinetic energy between a ``hot'' slab and a ``cold'' slab in the
96 simulation box. The molecular system responds to this imposed flux
97 by generating a momentum or temperature gradient. The slope of the
98 gradient can then be used to compute transport properties (e.g.
99 shear viscosity and thermal conductivity).}
100 \label{thermalDemo}
101 \end{figure}
102
103 RNEMD is preferable in many ways to the forward NEMD methods\cite{ISI:A1988Q205300014} because it imposes what is typically difficult to measure
104 (a flux or stress) and it is typically much easier to compute momentum
105 gradients or strains (the response). For similar reasons, RNEMD is
106 also preferable to slowly-converging equilibrium methods for measuring
107 thermal conductivity and shear viscosity (using Green-Kubo relations
108 [CITATIONS NEEDED] or the Helfand moment approach of Viscardy {\it et
109 al.}\cite{Viscardy:2007bh,Viscardy:2007lq}) because these rely on
110 computing difficult to measure quantities.
111
112 Another attractive feature of RNEMD is that it conserves both total
113 linear momentum and total energy during the swaps (as long as the two
114 molecules have the same identity), so the swapped configurations are
115 typically samples from the same manifold of states in the
116 microcanonical ensemble.
117
118 Recently, Tenney and Maginn\cite{Maginn:2010} have discovered
119 some problems with the original RNEMD swap technique. Notably, large
120 momentum fluxes (equivalent to frequent momentum swaps between the
121 slabs) can result in ``notched'', ``peaked'' and generally non-thermal
122 momentum distributions in the two slabs, as well as non-linear thermal
123 and velocity distributions along the direction of the imposed flux
124 ($z$). Tenney and Maginn obtained reasonable limits on imposed flux
125 and self-adjusting metrics for retaining the usability of the method.
126
127 In this paper, we develop and test a method for non-isotropic velocity
128 scaling (NIVS-RNEMD) which retains the desirable features of RNEMD
129 (conservation of linear momentum and total energy, compatibility with
130 periodic boundary conditions) while establishing true thermal
131 distributions in each of the two slabs. In the next section, we
132 present the method for determining the scaling constraints. We then
133 test the method on both single component, multi-component, and
134 non-isotropic mixtures and show that it is capable of providing
135 reasonable estimates of the thermal conductivity and shear viscosity
136 in these cases.
137
138 \section{Methodology}
139 We retain the basic idea of M\"{u}ller-Plathe's RNEMD method; the
140 periodic system is partitioned into a series of thin slabs along one
141 axis ($z$). One of the slabs at the end of the periodic box is
142 designated the ``hot'' slab, while the slab in the center of the box
143 is designated the ``cold'' slab. The artificial momentum flux will be
144 established by transferring momentum from the cold slab and into the
145 hot slab.
146
147 Rather than using momentum swaps, we use a series of velocity scaling
148 moves. For molecules $\{i\}$ located within the cold slab,
149 \begin{equation}
150 \vec{v}_i \leftarrow \left( \begin{array}{ccc}
151 x & 0 & 0 \\
152 0 & y & 0 \\
153 0 & 0 & z \\
154 \end{array} \right) \cdot \vec{v}_i
155 \end{equation}
156 where ${x, y, z}$ are a set of 3 scaling variables for each of the
157 three directions in the system. Likewise, the molecules $\{j\}$
158 located in the hot slab will see a concomitant scaling of velocities,
159 \begin{equation}
160 \vec{v}_j \leftarrow \left( \begin{array}{ccc}
161 x^\prime & 0 & 0 \\
162 0 & y^\prime & 0 \\
163 0 & 0 & z^\prime \\
164 \end{array} \right) \cdot \vec{v}_j
165 \end{equation}
166
167 Conservation of linear momentum in each of the three directions
168 ($\alpha = x,y,z$) ties the values of the hot and cold scaling
169 parameters together:
170 \begin{equation}
171 P_h^\alpha + P_c^\alpha = \alpha^\prime P_h^\alpha + \alpha P_c^\alpha
172 \end{equation}
173 where
174 \begin{eqnarray}
175 P_c^\alpha & = & \sum_{i = 1}^{N_c} m_i \left[\vec{v}_i\right]_\alpha \\
176 P_h^\alpha & = & \sum_{j = 1}^{N_h} m_j \left[\vec{v}_j\right]_\alpha
177 \label{eq:momentumdef}
178 \end{eqnarray}
179 Therefore, for each of the three directions, the hot scaling
180 parameters are a simple function of the cold scaling parameters and
181 the instantaneous linear momentum in each of the two slabs.
182 \begin{equation}
183 \alpha^\prime = 1 + (1 - \alpha) p_\alpha
184 \label{eq:hotcoldscaling}
185 \end{equation}
186 where
187 \begin{equation}
188 p_\alpha = \frac{P_c^\alpha}{P_h^\alpha}
189 \end{equation}
190 for convenience.
191
192 Conservation of total energy also places constraints on the scaling:
193 \begin{equation}
194 \sum_{\alpha = x,y,z} K_h^\alpha + K_c^\alpha = \sum_{\alpha = x,y,z}
195 \left(\alpha^\prime\right)^2 K_h^\alpha + \alpha^2 K_c^\alpha
196 \end{equation}
197 where the translational kinetic energies, $K_h^\alpha$ and
198 $K_c^\alpha$, are computed for each of the three directions in a
199 similar manner to the linear momenta (Eq. \ref{eq:momentumdef}).
200 Substituting in the expressions for the hot scaling parameters
201 ($\alpha^\prime$) from Eq. (\ref{eq:hotcoldscaling}), we obtain the
202 {\it constraint ellipsoid}:
203 \begin{equation}
204 \sum_{\alpha = x,y,z} a_\alpha \alpha^2 + b_\alpha \alpha + c_\alpha = 0
205 \label{eq:constraintEllipsoid}
206 \end{equation}
207 where the constants are obtained from the instantaneous values of the
208 linear momenta and kinetic energies for the hot and cold slabs,
209 \begin{eqnarray}
210 a_\alpha & = &\left(K_c^\alpha + K_h^\alpha
211 \left(p_\alpha\right)^2\right) \\
212 b_\alpha & = & -2 K_h^\alpha p_\alpha \left( 1 + p_\alpha\right) \\
213 c_\alpha & = & K_h^\alpha p_\alpha^2 + 2 K_h^\alpha p_\alpha - K_c^\alpha
214 \label{eq:constraintEllipsoidConsts}
215 \end{eqnarray}
216 This ellipsoid (Eq. \ref{eq:constraintEllipsoid}) defines the set of
217 cold slab scaling parameters which can be applied while preserving
218 both linear momentum in all three directions as well as total kinetic
219 energy.
220
221 The goal of using velocity scaling variables is to transfer linear
222 momentum or kinetic energy from the cold slab to the hot slab. If the
223 hot and cold slabs are separated along the z-axis, the energy flux is
224 given simply by the decrease in kinetic energy of the cold bin:
225 \begin{equation}
226 (1-x^2) K_c^x + (1-y^2) K_c^y + (1-z^2) K_c^z = J_z\Delta t
227 \end{equation}
228 The expression for the energy flux can be re-written as another
229 ellipsoid centered on $(x,y,z) = 0$:
230 \begin{equation}
231 x^2 K_c^x + y^2 K_c^y + z^2 K_c^z = K_c^x + K_c^y + K_c^z - J_z\Delta t
232 \label{eq:fluxEllipsoid}
233 \end{equation}
234 The spatial extent of the {\it thermal flux ellipsoid} is governed
235 both by a targetted value, $J_z$ as well as the instantaneous values
236 of the kinetic energy components in the cold bin.
237
238 To satisfy an energetic flux as well as the conservation constraints,
239 we must determine the points ${x,y,z}$ which lie on both the
240 constraint ellipsoid (Eq. \ref{eq:constraintEllipsoid}) and the flux
241 ellipsoid (Eq. \ref{eq:fluxEllipsoid}), i.e. the intersection of the
242 two ellipsoids in 3-dimensional space.
243
244 \begin{figure}
245 \includegraphics[width=\linewidth]{ellipsoids}
246 \caption{Scaling points which maintain both constant energy and
247 constant linear momentum of the system lie on the surface of the
248 {\it constraint ellipsoid} while points which generate the target
249 momentum flux lie on the surface of the {\it flux ellipsoid}. The
250 velocity distributions in the cold bin are scaled by only those
251 points which lie on both ellipsoids.}
252 \label{ellipsoids}
253 \end{figure}
254
255 One may also define {\it momentum} flux (say along the $x$-direction) as:
256 \begin{equation}
257 (1-x) P_c^x = j_z(p_x)\Delta t
258 \label{eq:fluxPlane}
259 \end{equation}
260 The above {\it momentum flux plane} is perpendicular to the $x$-axis,
261 with its position governed both by a target value, $j_z(p_x)$ as well
262 as the instantaneous value of the momentum along the $x$-direction.
263
264 In order to satisfy a momentum flux as well as the conservation
265 constraints, we must determine the points ${x,y,z}$ which lie on both
266 the constraint ellipsoid (Eq. \ref{eq:constraintEllipsoid}) and the
267 flux plane (Eq. \ref{eq:fluxPlane}), i.e. the intersection of an
268 ellipsoid and a plane in 3-dimensional space.
269
270 In both the momentum and energy flux scenarios, valid scaling
271 parameters are arrived at by solving geometric intersection problems
272 in $x, y, z$ space in order to obtain cold slab scaling parameters.
273 Once the scaling variables for the cold slab are known, the hot slab
274 scaling has also been determined.
275
276
277 The following problem will be choosing an optimal set of scaling
278 variables among the possible sets. Although this method is inherently
279 non-isotropic, the goal is still to maintain the system as isotropic
280 as possible. Under this consideration, one would like the kinetic
281 energies in different directions could become as close as each other
282 after each scaling. Simultaneously, one would also like each scaling
283 as gentle as possible, i.e. ${x,y,z \rightarrow 1}$, in order to avoid
284 large perturbation to the system. Therefore, one approach to obtain
285 the scaling variables would be constructing an criteria function, with
286 constraints as above equation sets, and solving the function's minimum
287 by method like Lagrange multipliers.
288
289 In order to save computation time, we have a different approach to a
290 relatively good set of scaling variables with much less calculation
291 than above. Here is the detail of our simplification of the problem.
292
293 In the case of kinetic energy transfer, we impose another constraint
294 ${x = y}$, into the equation sets. Consequently, there are two
295 variables left. And now one only needs to solve a set of two {\it
296 ellipses equations}. This problem would be transformed into solving
297 one quartic equation for one of the two variables. There are known
298 generic methods that solve real roots of quartic equations. Then one
299 can determine the other variable and obtain sets of scaling
300 variables. Among these sets, one can apply the above criteria to
301 choose the best set, while much faster with only a few sets to choose.
302
303 In the case of momentum flux transfer, we impose another constraint to
304 set the kinetic energy transfer as zero. In another word, we apply
305 Eq. \ref{eq:fluxEllipsoid} and let ${J_z = 0}$. After that, with one
306 variable fixed by Eq. \ref{eq:fluxPlane}, one now have a similar set
307 of equations on the above kinetic energy transfer problem. Therefore,
308 an approach similar to the above would be sufficient for this as well.
309
310 \section{Computational Details}
311 \subsection{Lennard-Jones Fluid}
312 Our simulation consists of a series of systems. All of these
313 simulations were run with the OpenMD simulation software
314 package\cite{Meineke:2005gd} integrated with RNEMD codes.
315
316 A Lennard-Jones fluid system was built and tested first. In order to
317 compare our method with swapping RNEMD, a series of simulations were
318 performed to calculate the shear viscosity and thermal conductivity of
319 argon. 2592 atoms were in a orthorhombic cell, which was ${10.06\sigma
320 \times 10.06\sigma \times 30.18\sigma}$ by size. The reduced density
321 ${\rho^* = \rho\sigma^3}$ was thus 0.85, which enabled direct
322 comparison between our results and others. These simulations used
323 velocity Verlet algorithm with reduced timestep ${\tau^* =
324 4.6\times10^{-4}}$.
325
326 For shear viscosity calculation, the reduced temperature was ${T^* =
327 k_B T/\varepsilon = 0.72}$. Simulations were first equilibrated in canonical
328 ensemble (NVT), then equilibrated in microcanonical ensemble
329 (NVE). Establishing and stablizing momentum gradient were followed
330 also in NVE ensemble. For the swapping part, Muller-Plathe's algorithm was
331 adopted.\cite{ISI:000080382700030} The simulation box was under
332 periodic boundary condition, and devided into ${N = 20}$ slabs. In each swap,
333 the top slab ${(n = 1)}$ exchange the most negative $x$ momentum with the
334 most positive $x$ momentum in the center slab ${(n = N/2 + 1)}$. Referred
335 to Tenney {\it et al.}\cite{ISI:000273472300004}, a series of swapping
336 frequency were chosen. According to each result from swapping
337 RNEMD, scaling RNEMD simulations were run with the target momentum
338 flux set to produce a similar momentum flux, and consequently shear
339 rate. Furthermore, various scaling frequencies can be tested for one
340 single swapping rate. To test the temperature homogeneity in our
341 system of swapping and scaling methods, temperatures of different
342 dimensions in all the slabs were observed. Most of the simulations
343 include $10^5$ steps of equilibration without imposing momentum flux,
344 $10^5$ steps of stablization with imposing unphysical momentum
345 transfer, and $10^6$ steps of data collection under RNEMD. For
346 relatively high momentum flux simulations, ${5\times10^5}$ step data
347 collection is sufficient. For some low momentum flux simulations,
348 ${2\times10^6}$ steps were necessary.
349
350 After each simulation, the shear viscosity was calculated in reduced
351 unit. The momentum flux was calculated with total unphysical
352 transferred momentum ${P_x}$ and data collection time $t$:
353 \begin{equation}
354 j_z(p_x) = \frac{P_x}{2 t L_x L_y}
355 \end{equation}
356 where $L_x$ and $L_y$ denotes $x$ and $y$ lengths of the simulation
357 box, and physical momentum transfer occurs in two ways due to our
358 periodic boundary condition settings. And the velocity gradient
359 ${\langle \partial v_x /\partial z \rangle}$ can be obtained by a
360 linear regression of the velocity profile. From the shear viscosity
361 $\eta$ calculated with the above parameters, one can further convert
362 it into reduced unit ${\eta^* = \eta \sigma^2 (\varepsilon m)^{-1/2}}$.
363
364 For thermal conductivity calculations, simulations were first run under
365 reduced temperature ${\langle T^*\rangle = 0.72}$ in NVE
366 ensemble. Muller-Plathe's algorithm was adopted in the swapping
367 method. Under identical simulation box parameters with our shear
368 viscosity calculations, in each swap, the top slab exchanges all three
369 translational momentum components of the molecule with least kinetic
370 energy with the same components of the molecule in the center slab
371 with most kinetic energy, unless this ``coldest'' molecule in the
372 ``hot'' slab is still ``hotter'' than the ``hottest'' molecule in the
373 ``cold'' slab. According to swapping RNEMD results, target energy flux
374 for scaling RNEMD simulations can be set. Also, various scaling
375 frequencies can be tested for one target energy flux. To compare the
376 performance between swapping and scaling method, distributions of
377 velocity and speed in different slabs were observed.
378
379 For each swapping rate, thermal conductivity was calculated in reduced
380 unit. The energy flux was calculated similarly to the momentum flux,
381 with total unphysical transferred energy ${E_{total}}$ and data collection
382 time $t$:
383 \begin{equation}
384 J_z = \frac{E_{total}}{2 t L_x L_y}
385 \end{equation}
386 And the temperature gradient ${\langle\partial T/\partial z\rangle}$
387 can be obtained by a linear regression of the temperature
388 profile. From the thermal conductivity $\lambda$ calculated, one can
389 further convert it into reduced unit ${\lambda^*=\lambda \sigma^2
390 m^{1/2} k_B^{-1}\varepsilon^{-1/2}}$.
391
392 \subsection{ Water / Metal Thermal Conductivity}
393 Another series of our simulation is the calculation of interfacial
394 thermal conductivity of a Au/H$_2$O system. Respective calculations of
395 liquid water (Extended Simple Point Charge model) and crystal gold
396 thermal conductivity were performed and compared with current results
397 to ensure the validity of NIVS-RNEMD. After that, a mixture system was
398 simulated.
399
400 For thermal conductivity calculation of bulk water, a simulation box
401 consisting of 1000 molecules were first equilibrated under ambient
402 pressure and temperature conditions using NPT ensemble, followed by
403 equilibration in fixed volume (NVT). The system was then equilibrated in
404 microcanonical ensemble (NVE). Also in NVE ensemble, establishing a
405 stable thermal gradient was followed. The simulation box was under
406 periodic boundary condition and devided into 10 slabs. Data collection
407 process was similar to Lennard-Jones fluid system.
408
409 Thermal conductivity calculation of bulk crystal gold used a similar
410 protocol. Two types of force field parameters, Embedded Atom Method
411 (EAM) and Quantum Sutten-Chen (QSC) force field were used
412 respectively. The face-centered cubic crystal simulation box consists of
413 2880 Au atoms. The lattice was first allowed volume change to relax
414 under ambient temperature and pressure. Equilibrations in canonical and
415 microcanonical ensemble were followed in order. With the simulation
416 lattice devided evenly into 10 slabs, different thermal gradients were
417 established by applying a set of target thermal transfer flux. Data of
418 the series of thermal gradients was collected for calculation.
419
420 After simulations of bulk water and crystal gold, a mixture system was
421 constructed, consisting of 1188 Au atoms and 1862 H$_2$O
422 molecules. Spohr potential was adopted in depicting the interaction
423 between metal atom and water molecule.\cite{ISI:000167766600035} A
424 similar protocol of equilibration was followed. Several thermal
425 gradients was built under different target thermal flux. It was found
426 out that compared to our previous simulation systems, the two phases
427 could have large temperature difference even under a relatively low
428 thermal flux. Therefore, under our low flux conditions, it is assumed
429 that the metal and water phases have respectively homogeneous
430 temperature, excluding the surface regions. In calculating the
431 interfacial thermal conductivity $G$, this assumptioin was applied and
432 thus our formula becomes:
433
434 \begin{equation}
435 G = \frac{E_{total}}{2 t L_x L_y \left( \langle T_{gold}\rangle -
436 \langle T_{water}\rangle \right)}
437 \label{interfaceCalc}
438 \end{equation}
439 where ${E_{total}}$ is the imposed unphysical kinetic energy transfer
440 and ${\langle T_{gold}\rangle}$ and ${\langle T_{water}\rangle}$ are the
441 average observed temperature of gold and water phases respectively.
442
443 \section{Results And Discussions}
444 \subsection{Thermal Conductivity}
445 \subsubsection{Lennard-Jones Fluid}
446 Our thermal conductivity calculations show that scaling method results
447 agree with swapping method. Four different exchange intervals were
448 tested (Table \ref{thermalLJRes}) using swapping method. With a fixed
449 10fs exchange interval, target exchange kinetic energy was set to
450 produce equivalent kinetic energy flux as in swapping method. And
451 similar thermal gradients were observed with similar thermal flux in
452 two simulation methods (Figure \ref{thermalGrad}).
453
454 \begin{table*}
455 \begin{minipage}{\linewidth}
456 \begin{center}
457
458 \caption{Calculation results for thermal conductivity of Lennard-Jones
459 fluid at ${\langle T^* \rangle = 0.72}$ and ${\rho^* = 0.85}$, with
460 swap and scale methods at various kinetic energy exchange rates. Results
461 in reduced unit. Errors of calculations in parentheses.}
462
463 \begin{tabular}{ccc}
464 \hline
465 (Equilvalent) Exchange Interval (fs) & $\lambda^*_{swap}$ &
466 $\lambda^*_{scale}$\\
467 \hline
468 250 & 7.03(0.34) & 7.30(0.10)\\
469 500 & 7.03(0.14) & 6.95(0.09)\\
470 1000 & 6.91(0.42) & 7.19(0.07)\\
471 2000 & 7.52(0.15) & 7.19(0.28)\\
472 \hline
473 \end{tabular}
474 \label{thermalLJRes}
475 \end{center}
476 \end{minipage}
477 \end{table*}
478
479 \begin{figure}
480 \includegraphics[width=\linewidth]{thermalGrad}
481 \caption{Temperature gradients under various kinetic energy flux of
482 thermal conductivity simulations}
483 \label{thermalGrad}
484 \end{figure}
485
486 During these simulations, molecule velocities were recorded in 1000 of
487 all the snapshots of one single data collection process. These
488 velocity data were used to produce histograms of velocity and speed
489 distribution in different slabs. From these histograms, it is observed
490 that under relatively high unphysical kinetic energy flux, speed and
491 velocity distribution of molecules in slabs where swapping occured
492 could deviate from Maxwell-Boltzmann distribution. Figure
493 \ref{histSwap} illustrates how these distributions deviate from an
494 ideal distribution. In high temperature slab, probability density in
495 low speed is confidently smaller than ideal curve fit; in low
496 temperature slab, probability density in high speed is smaller than
497 ideal, while larger than ideal in low speed. This phenomenon is more
498 obvious in our high swapping rate simulations. And this deviation
499 could also leads to deviation of distribution of velocity in various
500 dimensions. One feature of these deviated distribution is that in high
501 temperature slab, the ideal Gaussian peak was changed into a
502 relatively flat plateau; while in low temperature slab, that peak
503 appears sharper. This problem is rooted in the mechanism of the
504 swapping method. Continually depleting low (high) speed particles in
505 the high (low) temperature slab could not be complemented by
506 diffusions of low (high) speed particles from neighbor slabs, unless
507 in suffciently low swapping rate. Simutaneously, surplus low speed
508 particles in the low temperature slab do not have sufficient time to
509 diffuse to neighbor slabs. However, thermal exchange rate should reach
510 a minimum level to produce an observable thermal gradient under noise
511 interference. Consequently, swapping RNEMD has a relatively narrow
512 choice of swapping rate to satisfy these above restrictions.
513
514 \begin{figure}
515 \includegraphics[width=\linewidth]{histSwap}
516 \caption{Speed distribution for thermal conductivity using swapping
517 RNEMD. Shown is from the simulation with 250 fs exchange interval.}
518 \label{histSwap}
519 \end{figure}
520
521 Comparatively, NIVS-RNEMD has a speed distribution closer to the ideal
522 curve fit (Figure \ref{histScale}). Essentially, after scaling, a
523 Gaussian distribution function would remain Gaussian. Although a
524 single scaling is non-isotropic in all three dimensions, our scaling
525 coefficient criteria could help maintian the scaling region as
526 isotropic as possible. On the other hand, scaling coefficients are
527 preferred to be as close to 1 as possible, which also helps minimize
528 the difference among different dimensions. This is possible if scaling
529 interval and one-time thermal transfer energy are well
530 chosen. Consequently, NIVS-RNEMD is able to impose an unphysical
531 thermal flux as the previous RNEMD method without large perturbation
532 to the distribution of velocity and speed in the exchange regions.
533
534 \begin{figure}
535 \includegraphics[width=\linewidth]{histScale}
536 \caption{Speed distribution for thermal conductivity using scaling
537 RNEMD. Shown is from the simulation with an equilvalent thermal flux
538 as an 250 fs exchange interval swapping simulation.}
539 \label{histScale}
540 \end{figure}
541
542 \subsubsection{SPC/E Water}
543 Our results of SPC/E water thermal conductivity are comparable to
544 Bedrov {\it et al.}\cite{ISI:000090151400044}, which employed the
545 previous swapping RNEMD method for their calculation. Bedrov {\it et
546 al.}\cite{ISI:000090151400044} argued that exchange of the molecule
547 center-of-mass velocities instead of single atom velocities in a
548 molecule conserves the total kinetic energy and linear momentum. This
549 principle is adopted in our simulations. Scaling is applied to the
550 velocities of the rigid bodies of SPC/E model water molecules, instead
551 of each hydrogen and oxygen atoms in relevant water molecules. As
552 shown in Figure \ref{spceGrad}, temperature gradients were established
553 similar to their system. However, the average temperature of our
554 system is 300K, while theirs is 318K, which would be attributed for
555 part of the difference between the final calculation results (Table
556 \ref{spceThermal}). Both methods yields values in agreement with
557 experiment. And this shows the applicability of our method to
558 multi-atom molecular system.
559
560 \begin{figure}
561 \includegraphics[width=\linewidth]{spceGrad}
562 \caption{Temperature gradients for SPC/E water thermal conductivity.}
563 \label{spceGrad}
564 \end{figure}
565
566 \begin{table*}
567 \begin{minipage}{\linewidth}
568 \begin{center}
569
570 \caption{Calculation results for thermal conductivity of SPC/E water
571 at ${\langle T\rangle}$ = 300K at various thermal exchange rates. Errors of
572 calculations in parentheses. }
573
574 \begin{tabular}{cccc}
575 \hline
576 $\langle dT/dz\rangle$(K/\AA) & & $\lambda$(W/m/K) & \\
577 & This work & Previous simulations\cite{ISI:000090151400044} &
578 Experiment$^a$\\
579 \hline
580 0.38 & 0.816(0.044) & & 0.64\\
581 0.81 & 0.770(0.008) & 0.784\\
582 1.54 & 0.813(0.007) & 0.730\\
583 \hline
584 \end{tabular}
585 \label{spceThermal}
586 \end{center}
587 \end{minipage}
588 \end{table*}
589
590 \subsubsection{Crystal Gold}
591 Our results of gold thermal conductivity using two force fields are
592 shown separately in Table \ref{qscThermal} and \ref{eamThermal}. In
593 these calculations,the end and middle slabs were excluded in thermal
594 gradient regession and only used as heat source and drain in the
595 systems. Our yielded values using EAM force field are slightly larger
596 than those using QSC force field. However, both series are
597 significantly smaller than experimental value by an order of more than
598 100. It has been verified that this difference is mainly attributed to
599 the lack of electron interaction representation in these force field
600 parameters. Richardson {\it et al.}\cite{Clancy:1992} used EAM
601 force field parameters in their metal thermal conductivity
602 calculations. The Non-Equilibrium MD method they employed in their
603 simulations produced comparable results to ours. As Zhang {\it et
604 al.}\cite{ISI:000231042800044} stated, thermal conductivity values
605 are influenced mainly by force field. Therefore, it is confident to
606 conclude that NIVS-RNEMD is applicable to metal force field system.
607
608 \begin{figure}
609 \includegraphics[width=\linewidth]{AuGrad}
610 \caption{Temperature gradients for thermal conductivity calculation of
611 crystal gold using QSC force field.}
612 \label{AuGrad}
613 \end{figure}
614
615 \begin{table*}
616 \begin{minipage}{\linewidth}
617 \begin{center}
618
619 \caption{Calculation results for thermal conductivity of crystal gold
620 using QSC force field at ${\langle T\rangle}$ = 300K at various
621 thermal exchange rates. Errors of calculations in parentheses. }
622
623 \begin{tabular}{cc}
624 \hline
625 $\langle dT/dz\rangle$(K/\AA) & $\lambda$(W/m/K)\\
626 \hline
627 1.44 & 1.10(0.01)\\
628 2.86 & 1.08(0.02)\\
629 5.14 & 1.15(0.01)\\
630 \hline
631 \end{tabular}
632 \label{qscThermal}
633 \end{center}
634 \end{minipage}
635 \end{table*}
636
637 \begin{figure}
638 \includegraphics[width=\linewidth]{eamGrad}
639 \caption{Temperature gradients for thermal conductivity calculation of
640 crystal gold using EAM force field.}
641 \label{eamGrad}
642 \end{figure}
643
644 \begin{table*}
645 \begin{minipage}{\linewidth}
646 \begin{center}
647
648 \caption{Calculation results for thermal conductivity of crystal gold
649 using EAM force field at ${\langle T\rangle}$ = 300K at various
650 thermal exchange rates. Errors of calculations in parentheses. }
651
652 \begin{tabular}{cc}
653 \hline
654 $\langle dT/dz\rangle$(K/\AA) & $\lambda$(W/m/K)\\
655 \hline
656 1.24 & 1.24(0.06)\\
657 2.06 & 1.37(0.04)\\
658 2.55 & 1.41(0.03)\\
659 \hline
660 \end{tabular}
661 \label{eamThermal}
662 \end{center}
663 \end{minipage}
664 \end{table*}
665
666
667 \subsection{Interfaciel Thermal Conductivity}
668 After simulations of homogeneous water and gold systems using
669 NIVS-RNEMD method were proved valid, calculation of gold/water
670 interfacial thermal conductivity was followed. It is found out that
671 the low interfacial conductance is probably due to the hydrophobic
672 surface in our system. Figure \ref{interfaceDensity} demonstrates mass
673 density change along $z$-axis, which is perpendicular to the
674 gold/water interface. It is observed that water density significantly
675 decreases when approaching the surface. Under this low thermal
676 conductance, both gold and water phase have sufficient time to
677 eliminate temperature difference inside respectively (Figure
678 \ref{interfaceGrad}). With indistinguishable temperature difference
679 within respective phase, it is valid to assume that the temperature
680 difference between gold and water on surface would be approximately
681 the same as the difference between the gold and water phase. This
682 assumption enables convenient calculation of $G$ using
683 Eq. \ref{interfaceCalc} instead of measuring temperatures of thin
684 layer of water and gold close enough to surface, which would have
685 greater fluctuation and lower accuracy. Reported results (Table
686 \ref{interfaceRes}) are of two orders of magnitude smaller than our
687 calculations on homogeneous systems, and thus have larger relative
688 errors than our calculation results on homogeneous systems.
689
690 \begin{figure}
691 \includegraphics[width=\linewidth]{interfaceDensity}
692 \caption{Density profile for interfacial thermal conductivity
693 simulation box. Significant water density decrease is observed on
694 gold surface.}
695 \label{interfaceDensity}
696 \end{figure}
697
698 \begin{figure}
699 \includegraphics[width=\linewidth]{interfaceGrad}
700 \caption{Temperature profiles for interfacial thermal conductivity
701 simulation box. Temperatures of different slabs in the same phase
702 show no significant difference.}
703 \label{interfaceGrad}
704 \end{figure}
705
706 \begin{table*}
707 \begin{minipage}{\linewidth}
708 \begin{center}
709
710 \caption{Calculation results for interfacial thermal conductivity
711 at ${\langle T\rangle \sim}$ 300K at various thermal exchange
712 rates. Errors of calculations in parentheses. }
713
714 \begin{tabular}{cccc}
715 \hline
716 $J_z$(MW/m$^2$) & $T_{gold}$ & $T_{water}$ & $G$(MW/m$^2$/K)\\
717 \hline
718 98.0 & 355.2 & 295.8 & 1.65(0.21) \\
719 78.8 & 343.8 & 298.0 & 1.72(0.32) \\
720 73.6 & 344.3 & 298.0 & 1.59(0.24) \\
721 49.2 & 330.1 & 300.4 & 1.65(0.35) \\
722 \hline
723 \end{tabular}
724 \label{interfaceRes}
725 \end{center}
726 \end{minipage}
727 \end{table*}
728
729 \subsection{Shear Viscosity}
730 Our calculations (Table \ref{shearRate}) shows that scale RNEMD method
731 produced comparable shear viscosity to swap RNEMD method. In Table
732 \ref{shearRate}, the names of the calculated samples are devided into
733 two parts. The first number refers to total slabs in one simulation
734 box. The second number refers to the swapping interval in swap method, or
735 in scale method the equilvalent swapping interval that the same
736 momentum flux would theoretically result in swap method. All the scale
737 method results were from simulations that had a scaling interval of 10
738 time steps. The average molecular momentum gradients of these samples
739 are shown in Figure \ref{shearGrad}.
740
741 \begin{table*}
742 \begin{minipage}{\linewidth}
743 \begin{center}
744
745 \caption{Calculation results for shear viscosity of Lennard-Jones
746 fluid at ${T^* = 0.72}$ and ${\rho^* = 0.85}$, with swap and scale
747 methods at various momentum exchange rates. Results in reduced
748 unit. Errors of calculations in parentheses. }
749
750 \begin{tabular}{ccc}
751 \hline
752 Series & $\eta^*_{swap}$ & $\eta^*_{scale}$\\
753 \hline
754 20-500 & 3.64(0.05) & 3.76(0.09)\\
755 20-1000 & 3.52(0.16) & 3.66(0.06)\\
756 20-2000 & 3.72(0.05) & 3.32(0.18)\\
757 20-2500 & 3.42(0.06) & 3.43(0.08)\\
758 \hline
759 \end{tabular}
760 \label{shearRate}
761 \end{center}
762 \end{minipage}
763 \end{table*}
764
765 \begin{figure}
766 \includegraphics[width=\linewidth]{shearGrad}
767 \caption{Average momentum gradients of shear viscosity simulations}
768 \label{shearGrad}
769 \end{figure}
770
771 \begin{figure}
772 \includegraphics[width=\linewidth]{shearTempScale}
773 \caption{Temperature profile for scaling RNEMD simulation.}
774 \label{shearTempScale}
775 \end{figure}
776 However, observations of temperatures along three dimensions show that
777 inhomogeneity occurs in scaling RNEMD simulations, particularly in the
778 two slabs which were scaled. Figure \ref{shearTempScale} indicate that with
779 relatively large imposed momentum flux, the temperature difference among $x$
780 and the other two dimensions was significant. This would result from the
781 algorithm of scaling method. From Eq. \ref{eq:fluxPlane}, after
782 momentum gradient is set up, $P_c^x$ would be roughly stable
783 ($<0$). Consequently, scaling factor $x$ would most probably larger
784 than 1. Therefore, the kinetic energy in $x$-dimension $K_c^x$ would
785 keep increase after most scaling steps. And if there is not enough time
786 for the kinetic energy to exchange among different dimensions and
787 different slabs, the system would finally build up temperature
788 (kinetic energy) difference among the three dimensions. Also, between
789 $y$ and $z$ dimensions in the scaled slabs, temperatures of $z$-axis
790 are closer to neighbor slabs. This is due to momentum transfer along
791 $z$ dimension between slabs.
792
793 Although results between scaling and swapping methods are comparable,
794 the inherent temperature inhomogeneity even in relatively low imposed
795 exchange momentum flux simulations makes scaling RNEMD method less
796 attractive than swapping RNEMD in shear viscosity calculation.
797
798 \section{Conclusions}
799 NIVS-RNEMD simulation method is developed and tested on various
800 systems. Simulation results demonstrate its validity in thermal
801 conductivity calculations, from Lennard-Jones fluid to multi-atom
802 molecule like water and metal crystals. NIVS-RNEMD improves
803 non-Boltzmann-Maxwell distributions, which exist in previous RNEMD
804 methods. Furthermore, it develops a valid means for unphysical thermal
805 transfer between different species of molecules, and thus extends its
806 applicability to interfacial systems. Our calculation of gold/water
807 interfacial thermal conductivity demonstrates this advantage over
808 previous RNEMD methods. NIVS-RNEMD has also limited application on
809 shear viscosity calculations, but could cause temperature difference
810 among different dimensions under high momentum flux. Modification is
811 necessary to extend the applicability of NIVS-RNEMD in shear viscosity
812 calculations.
813
814 \section{Acknowledgments}
815 Support for this project was provided by the National Science
816 Foundation under grant CHE-0848243. Computational time was provided by
817 the Center for Research Computing (CRC) at the University of Notre
818 Dame. \newpage
819
820 \bibliographystyle{aip}
821 \bibliography{nivsRnemd}
822
823 \end{doublespace}
824 \end{document}
825