Accepted Manuscript Rotational and translational dynamics of the SPC/E water model
Nadège Meyer, Vincent Piquet, Jean-François Wax, Hong Xu, Claude Millot PII: DOI: Reference:
S0167-7322(18)33112-X doi:10.1016/j.molliq.2018.08.024 MOLLIQ 9469
To appear in:
Journal of Molecular Liquids
Received date: Revised date: Accepted date:
15 June 2018 30 July 2018 5 August 2018
Please cite this article as: Nadège Meyer, Vincent Piquet, Jean-François Wax, Hong Xu, Claude Millot , Rotational and translational dynamics of the SPC/E water model. Molliq (2018), doi:10.1016/j.molliq.2018.08.024
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Rotational and Translational Dynamics of the SPC/E Water Model Nad`ege Meyera , Vincent Piquetb , Jean-Fran¸cois Waxa , Hong Xua , Claude Millotb,∗ a Universit´ e
de Lorraine, LCP-A2MC, F-57000 Metz, France de Lorraine, CNRS, LPCT, F-54000 Nancy, France
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b Universit´ e
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Abstract
Translational and rotational diffusion coefficients and the translation-rotation couplings of the SPC/E water model are investigated in liquid phase by molec-
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ular dynamics simulations in the micro-canonical ensemble using a sample of 512 molecules in a cubic box with periodic boundary conditions. The diffusion
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coefficients and cross-translation-rotation coupling coefficients are computed in the laboratory and/or molecular systems of axes using a Green-Kubo approach. The studied thermodynamic states explore pressures and temperatures in the following ranges: 210-373 K (1 bar); 300-700 K (400, 1000, and 3000 bar), 277 K
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(1-6000 bar). Translation diffusion is also analyzed using the Einstein approach.
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The rotational diffusion is also characterized by computing the first and second order correlation times of the OH bond vectors and of the axes of inertia of the water molecule.
Keywords: Rotational diffusion. Translational diffusion. Translation-rotation
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coupling. Water. Molecular dynamics simulation. SPC/E model.
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1. Introduction
The recently reported question of the existence of plastic phase in liquid wa-
ter under very high pressure has rekindled the interest for diffusion in molecular ∗ Corresponding
author Email address:
[email protected] (Claude Millot)
Preprint submitted to Journal of LATEX Templates
August 6, 2018
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liquids[1, 2]. Indeed, in such phases, the translational dynamics stops while the rotational dynamics still survives. On the experimental point of view, the translational diffusion coefficient can be measured quite easily and accurately in nuclear magnetic resonance (NMR) experiments for example. On the other hand, the situation is not so clear for
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the rotational diffusion as the corresponding diffusion coefficients can only be obtained indirectly, for example, from nuclear magnetic relaxation, but relying on the assumption that a given diffusion model is valid.
On the simulation point of view, both diffusion properties can be computed
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very easily and accurately from molecular dynamics (MD) simulations. The translational diffusion coefficient can either be obtained from the velocity auto-
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correlation function or from the mean squared displacement while the rotational diffusion coefficient can be computed from the angular velocity autocorrelation function or from mean square angular displacement without resorting to any
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approximate model. Moreover, as the motion of the molecule can be described either in the laboratory frame or in the molecule frame, possible anisotropy of diffusion properties can also be studied.
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Though the translational diffusion is commonly analyzed from MD simulation, relatively few studies are devoted to the explicit calculation of the rota-
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tional diffusion coefficients and particularly to the anisotropy of the rotational diffusion tensor. Most of the time, the anisotropy of the rotational diffusion is interpreted through the analysis of correlation times of vectors linked to the
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molecule, such as the electric dipole vector, in-plane and out-of-plane vectors or the OH-bond vector of a water molecule, for example. Beyond the standard determination of translational diffusion coefficients, MD simulations, generally
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in connection with NMR relaxation measurements, have been used to analyze directly the rotational diffusion coefficient, and particularly its anisotropy in the molecular frame, for several molecular liquids and solutions. For example, simulation studies have been devoted to water[3, 4, 5], benzene[6, 7], anthracene[8], perylene[9], ammonium ion[10], quinoline and isoquinoline[11, 12, 13] in neat liquid phases and/or solutions. The coupling between translation and rotation 2
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has been the subject of numerous works and can be investigated by computing correlation functions involving translation and rotational dynamical properties [14, 15, 16, 17, 18]. The analysis of translational diffusion in water by MD simulation has been reported many times in the literature with numerous intermolecular potentials.
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Surprisingly, it is no so common to find a simultaneous extensive study of the translational and rotational diffusion. Simple intermolecular potentials such as TIP3P, TIP4P, SPC, SPC/E, TIP4P-2005 are popular candidates which have been the subject of many studies [19, 20, 21, 22, 23, 24, 25], but at selected
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thermodynamic conditions. The TIP4P-2005 model [26], designed in order to improve the modeling of low temperature water with respect to the predictions
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of the popular SPC/E model [27], has been the subject of an extensive study of the translation and rotational diffusion properties [4], including the analysis of the coupling between translation and rotational degrees of freedom. However,
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this study was limited to 1 bar over a temperature range between 210 and 310 K. Moreover, this potential is not so efficient at higher temperatures and pressures. The purpose of this study is to provide a consistent systematic investigation
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with the SPC/E model of the rotational diffusion properties together with the translational properties for completeness and emphasizing also the translation-
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rotation couplings. Different values of the components of the rotational diffusion tensor at ambient conditions have been published with this model by different groups [3, 5, 28]. Early calculations of the coupling between translational veloc-
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ity and angular velocity of the SPC/E water model [29] and more recent ones [5] have been obtained at a few state points. In this study, these data will be completed by systematic calculations as a function of temperature and pressure.
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When available, we also will compare our results with the TIP4P-2005 model. We shall also discuss several points as the anisotropy of these properties, the
accuracy of models used to estimate the rotational diffusion coefficient and the pressure effect. In Section 2, the details of the MD simulations are presented as well as the calculation of the quantities of interest (diffusion coefficients, translation3
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rotation couplings, reorientational correlation times). Then the results are presented and discussed in the light of other simulation or experimental results, emphasizing the temperature effect at 1 bar and the pressure effect. The translation properties are described in Section 3, the rotational diffusion coefficients and the reorientational correlation times are presented in Sections 4 and 5, re-
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spectively, and the translation-rotation diffusion constants is the topic of Section 6.
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2. Technical details 2.1. Molecular dynamics simulations
Molecular dynamics simulations are performed using periodic boundary con-
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ditions (PBC) with N =512 rigid molecules in the central cubic box interacting through the non polarizable SPC/E intermolecular potential [27]. The time step
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is 1 fs.
Equations of motion are solved using center of mass degrees of freedom and a leapfrog quaternion algorithm due to Svanberg [30]. It is derived from an algorithm proposed by Fincham [31] and improves the conservation of energy
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significantly. In this version, the quaternion vector Q(t+Δt/2) for each molecule
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is obtained iteratively. In our implementation of the algorithm, iterations are stopped when the norm of its variation between iterations i and i + 1 is lower than 10−9 , leading to convergence after about 4 iterations on average.
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Electrostatic interactions are computed using lattice summations based on the Ladd approach, initially proposed for assemblies of point dipoles [32, 33, 34]. The generalization to systems composed of point charges [35, 36] leads to
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expressions equivalent to the ones proposed by different groups [37, 38]. Both Ladd and Ewald approaches are physically equivalent when the same boundary conditions are applied. In our simulations, a reaction field contribution is added with the dielectric constant of the surrounding continuum equal to infinity. Thus, the Ladd approach becomes equivalent to the standard Ewald approach [34]. The expansion of the electrostatic interaction energy in cubic harmonics
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has been truncated at the rank 10, which has been proven to be sufficient to get good accuracy [34, 39]. The van der Waals interactions are truncated beyond a molecular-based cutoff of 11.3 ˚ A. Usual corrections on potential energy and pressure due to this cutoff have been applied [40]. The system has been studied at ambient pressure and 10 temperatures in the
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range 210-373 K. Pressure effects have been addressed by modeling the system at 400, 1000, and 3000 bar and nine temperatures in the range 300-700 K and in the pressure range 1-6000 bar at 277 K. The ambient pressure isobar and the isotherm at 277 K have already been considered in the literature [41] for the
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SPC/E water model. These new simulations at these thermodynamical states are simply intended to focus on the rotational diffusion coefficients and the
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translation-rotation coupling. Nevertheless, translational diffusion will also be discussed in that cases for completeness and comparison with previous studies. Each simulation, labeled by pressure P and temperature T , is obtained in
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three stages. During the first one, the system is simulated during 10 5 time steps at 10 densities with scaling of velocities and angular momenta every 100 steps in order to impose the chosen temperature. The pressure is computed and used
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to guide the changes of density. Then, the density is fitted as a function of pressure by a polynomial of rank 3 to get the value of the density at the desired
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pressure. The second stage consists of 5 ∙ 105 thermalization time steps under the same conditions, using the optimized value of the density. Figure S1 of the Supplementary Material presents our results for the density of liquid water at
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1 bar in the temperature range 210-373 K compared to results of the literature. For each simulation, the last stage is a production run of 2 ∙ 106 time steps at constant energy. The imposed energy is the average energy obtained in the last
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quarter of the previous thermalization stage. In order to correct the small drift in energy due to finite time step and cutoff of Lennard-Jones interactions, a rescaling of velocities and angular momenta is performed every 10 4 time steps
in order to impose energy conservation. Thus, along the 2 ∙ 106 time steps, the remaining energy drift with respect to the prescribed energy does not exceed 0.35% and 0.65% for simulations below and beyond 400 K, respectively. Tables 5
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S1-S2 of the Supplementary Material contain the values of density and imposed energy E of each simulation run.
2.2. Diffusion tensors
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In our study, the molecular frame xyz is defined with the z-axis in the opposite direction of the molecular electric dipole moment and the x-axis parallel to the H-H direction. The laboratory frame XY Z is bound to the simulation box. When necessary, we will distinguish between properties expressed in the
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molecular and laboratory frames by using ’mol’ and ’lab’ labels, respectively. The correlation function approach is used to calculate the translational [42,
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43, 44] and rotational [45, 46, 47] self-diffusion coefficients. Components of the corresponding tensors are defined by: Z ∞ Dtrans,ij = hvi (0).vj (t)i dt
(1)
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0
and
Drot,ij =
Z
∞
0
hωi (0).ωj (t)i dt
(2)
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where vi and ωj are i and j components of the translational and rotational ve-
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locity of a given molecule, respectively. In the laboratory frame, for an isotropic liquid, both tensors are diagonal with three equal components. In the molecular frame, anisotropy of the diffusion with respect to molecular axes can be revealed.
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In the laboratory frame, the diffusion coefficients Z 1 ∞ Dtrans = hv(0).v(t)i dt 3 0
and
Drot
1 = 3
Z
∞ 0
hω(0).ω(t)i dt
are the third of the trace of these diffusion tensors. Brackets denote a statistical average over the molecules and the time origins. In the case of water, in the
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molecular system of axes, one obtains three different translation diffusion coefmol mol ficients Dtrans,αα and three different rotational diffusion coefficients Drot,αα (α
being one of the x, y and z axes of the molecular frame). Coupling between translation and rotation can be defined by computing the
D trans,i−rot,j =
Z
∞ 0
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cross-correlation self-diffusion tensor: hvi (0).ωj (t)i dt.
(3)
In the laboratory frame, all the elements of this tensor are zero. However, in the molecular frame, according to the C2v symmetry of the water molecule and
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to our choice of axis, both components D trans,y−rot,x and D trans,x−rot,y are non zero [48].
In our simulations, the correlation functions are integrated over 6.1 ps. Cal-
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culation of diffusion coefficients in laboratory and molecular systems of axes is discussed in the Supplementary Material (Section 2 including Fugure S2).
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In addition to this approach relying on velocity and cross-velocity autocorrelation functions (VAC), Dtrans has also been determined using the mean square
(4)
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displacement (MSD) and the Einstein relationship:
|ri (0) − ri (t)|2 Dtrans = lim t→∞ 6t
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where ri (t) is the position of molecule i at time t. Practically the slope of this curve has been obtained using the time interval 100-200 ps of the MSD averaged over the molecules and 1.8 105 time origins.
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2.3. Calculation of reorientational correlation times In simulation, the molecular reorientational correlation times are obtained
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from the single molecule reorientational correlation functions Cl (t) = hPl (u(0).u(t))i
(5)
where Pl (x) is the Legendre polynomial of order l and u(t) is a unit vector
bound to the molecule at time t. The corresponding correlation times are given by τl =
Z
∞ 0
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Cl (t)dt.
(6)
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The reorientational correlation times τ1 and τ2 have been computed for four different vectors: the OH-bond vector, the molecular dipole vector (along the z axis), the HH-vector (x axis) and the y axis vector (perpendicular to the molecular plane). To analyze rotational diffusion, these quantities are generally computed by simulation rather than the rotational diffusion coefficients
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themselves. We will discuss the validity of this substitution in the light of our results.
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3. Translational diffusion coefficients 3.1. Temperature effect at 1 bar
Figure 1a presents the evolution of the translational diffusion coefficients
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with temperature and a comparison with experimental results [49, 50, 51, 52, 53, 54, 55] and with the TIP4P-2005 model from simulations with N = 1000
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molecules in PBC[4]. Note that this simulation study of the TIP4P-2005 model has been performed between 210 and 310 K and the authors have published analytical formula fitting the various diffusion coefficients within this temperature range. For comparison with our simulations in the range 210-373 K, we have
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extrapolated the diffusion coefficients of the TIP4P-2005 model in the range
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310-373 K using the published fitted functions. Thus, our comparison between SPC/E and TIP4P-2005 between 310 and 373 K is only indicative because it is related to the robustness of the fit and does not necessarily reflect the exact be-
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haviour of the TIP4P-2005 model. This remark applies also to the comparison of rotational diffusion coefficients and of translation-rotation couplings discussed in the next sections.
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The translational diffusion coefficient for a system of infinite size has been
estimated from the equation[56, 57]: lab lab D∞ = DN +
2.837297kB T 6πηL
(7)
lab where DN and η are the translational diffusion coefficient (in the laboratory
frame) and the shear viscosity for the system of N molecules in PBC, kB the 8
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Boltzmann’s constant, T the temperature, and L the edge of the cubic box for lab the system of N molecules. This correction has been applied to DM SD . The
shear viscosity has been obtained from the Green-Kubo approach, by integrating the six off-diagonal elements of the stress-autocorrelation function[44] over 6.1 lab ps. In the investigated temperature range, the corrective term added to DN to
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lab get D∞ amounts to 10-11%, except at 210 K (40%) and 230 K (14%). Note that
our diffusion coefficients obtained for N = 512 from VAC and MSD methods coincide nearly exactly as can be seen from Figure 1a.
˚2 .ps−1 for N = 512 and 0.276 A ˚2 .ps−1 for At 298 K, our result is 0.250 A
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an infinite size system. Comparison with a compilation of literature results [3, 5, 19, 20, 58, 59, 60, 61, 62, 63, 64, 65, 66, 67, 68, 69, 70], for the SPC/E
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model at 298-300 K as a function of the system size (N −1/3 ) is presented in Figure S3 of the Supplementary Material. One can point out that the published values are somewhat scattered and dependent on simulation features.
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Globally, compared to the experiment, the SPC/E model slightly overestimates the diffusion, especially at the lowest temperatures and is rather good beyond ≈325 K. On the contrary, the TIP4P-2005 model is very good at low
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temperature, but seems to depart significantly from the experimental values beyond ≈325 K. This is not surprising remembering that this model has specially
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been designed to improve the description of the low temperature region of the phase diagram of water.
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Fitting the diffusion coefficients by a Speedy-Angell law[71] γ T −1 D = D0 Ts
(8)
gives (D0 /˚ A2 .ps−1 , Ts /K, γ) parameters equal to (1.0694, 201.401, 1.9744),
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(1.0833, 201.877, 1.97093) and (1.16191, 199.896, 2.01737) for Dtrans,V AC ,
Dtrans,M SD , and Dtrans,∞ in the laboratory frame, respectively. By comparison, the corresponding parameters are (1.7176, 218.341, 1.99572) using sets of experimental values of Figure 1a and (1.0074, 220.76, 1.50306) for the TIP4P2005 model using data from Ref. [4]. These fits consistently show that the arrest temperature Ts for TIP4P-2005 (220.8 K) is in better agreement with the ex9
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perimental value (218.3 K) than for SPC/E (199.9 K). However, the evolution with temperature governed by the power γ (1.996 experimentally) is better with SPC/E (2.017) than with TIP4P-2005 (1.503). In order to allow a direct comparison with the TIP4P-2005 model, the temperature dependence of the diffusion coefficients has also been fitted to the
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following functional form used by Rozmanov and Kusalik[4]: B D(T ) = A exp + C. T − T0
(9)
We used the same fitting strategy as these authors. In order to improve the
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quality of the fits by preserving balance between low-temperature and hightemperature points, the fitted function has been chosen to be 20D(T )+ln(D(T ))
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rather than D(T ). The results are gathered in Table 1. This functional form describes the diffusion of a glass forming liquid, interpreting T0 as the temperature of diffusion quenching. Again, the comparison with TIP4P-2005 shows that the
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dynamical arrest temperature T0 , which is around 175 K for TIP4P-2005 (in
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laboratory frame) [4], takes lower values (around 100 K) for the SPC/E model.
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B
C
T0
(˚ A2 .ps−1 )
(K)
(˚ A2 .ps−1 )
(K)
lab Dtrans,V AC
14.8379
−0.003676
102.30
0.003911(1.2)
lab Dtrans,M SD
−797.29
18.9024
−894.18
−0.006659
90.52
0.004790(4.7)
22.358
mol Dtrans,V AC
−920.36
6.027
mol Dtrans,xx,V AC
−524.75
6.010
mol Dtrans,yy,V AC
−548.94
7.420
mol Dtrans,zz,V AC
−504.88
4.694
−530.17
A
B
0.005182(4.5)
0.004856
130.94
0.001898(1.1)
0.003418
128.82
0.001741(1.4)
0.006259
132.32
0.003147(1.0)
0.004867
131.29
0.001122(1.0)
C
T0
RMSD(RMSD%)
(K)
(rad2 .ps−1 )
(K)
−1274.74
0.013922
38.92
0.002554(1.4)
−1182.37
0.014464
47.43
0.003262(1.5)
17.299
−1009.44
0.014759
64.69
0.002724(1.4)
12.564
−1245.59
0.019037
33.99
0.001294(1.1)
47.768
−1313.12
0.009150
37.39
0.006031(1.9)
A
B
C
T0
RMSD(RMSD%)
30.331
mol Drot,V AC
24.272
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lab Drot,V AC
mol Drot,yy,V AC
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mol Drot,zz,V AC
(˚ A.rad.ps
mol Dtrans,x−rot,y,V AC
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mol Dtrans,y−rot,x,V AC
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88.12
(rad2 .ps−1 )
mol Drot,xx,V AC
RMSD(RMSD%)
−0.006067
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lab Dtrans,∞
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A
−1
)
(K)
−0.1846 −1.6654
(˚ A.rad.ps
−1
)
(K)
−269.98
−0.0000487
195.31
0.002612(10.2)
−505.18
−0.0004578
137.94
0.001499(2.1)
Table 1: Fits of diffusion coefficients of the SPC/E water model at 1 bar using Eq. (9)
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in the temperature range 210-373 K. Simulation results with N = 512 molecules. RMSD and RMSD% are the root mean square deviation and root mean square percentage deviation between the simulation results and the fitted values, averaged over the 9 studied temperatures (RMSD has the same unit as A).
mol Figure 1b presents an Arrhenius plot of the three components of Dtrans , and lab mol the average in both frames, Dtrans and Dtrans . As it has already been observed,
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there is a marked non-Arrhenius behavior at low temperature (below ≈298 K)
mol mol and a marked anisotropy of translational diffusion with Dtrans,yy > Dtrans,xx >
mol Dtrans,zz at all temperatures. The behavior is similar to what has been ob-
served for the TIP4P-2005 model (see Figure 1c, where results from Ref. [4] are reported for comparison). Above ≈298 K, however, the temperature evolution
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of Dtrans follows relatively well the Arrhenius behavior D = D0 e−ΔE/kB T and results of such fits are given in Table 2. We find an activation energy ΔE of 3.3 kcal/mol for the SPC/E model at 1 bar. The increasing divergence at the lab mol lowest temperatures between Dtrans and Dtrans in Figure 1b should be consid-
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ered carefully. The absolute values are really small and should not be given any physical meaning. Indeed, logarithmic scale overemphasizes the differences be-
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tween both curves. The same behavior has also been reported for TIP4P-2005
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D
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(see Figure 1c).
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N→∞
0.8
0.6
2
Dtrans / Å .ps
-1
N=512
0.4
0.2
250
300
350
T/K
1
(b)
Dtrans, mol yy xx
1
aver. yy Dtrans, mol xx
2
Dtrans / Å .ps
-1
aver.
-1
0.1
0.1
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2
Dtrans / Å .ps
400
(c)
zz
zz
0.01
0.01
Dtrans, lab
2.5
3
4
3.5
1000/T / K
4.5
-1
5
2
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2
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(a) 200
2.5
3
Dtrans, lab
4
3.5
1000/T / K
4.5
5
-1
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Figure 1: Temperature dependence of the translational diffusion coefficient at 1 bar. Panel (a): experimental values from Refs.[49, 50, 51, 52, 53, 54, 55] (green dotted line). Simulation results with the SPC/E model from MSD with N =512 (magenta dotted line) and from VAC (black lines) with N =512 molecules and infinite size system corrected values N → ∞. Simulation results with the TIP4P-2005 model from VAC with N =1000 molecules[4] (blue lines). Contin-
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uous lines and dashed lines are obtained in the laboratory and molecular frames, respectively.
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Panel (b): Arrhenius plots of the non-zero components of the translational diffusion tensor in the molecular frame obtained with the SPC/E model and N =512: xx component (black continuous line), yy component (blue dot-dashed line), and zz component (dark-green dashed line). The violet dotted line and the red continuous line represent the average in molecular frame and in laboratory frame, respectively. Panel (c): same as panel (b) for the TIP4P-2005
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model with N =1000 (from Ref. [4]). Portions of curves for 1000/T < 3.22 (T >310 K) are extrapolated using analytical functions fitted from simulations results in the range 210-310 K
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(Ref. [4] and see Section 3.1).
3.2. Pressure effect Figure 2 presents the evolution with temperature at different pressure of
Dtrans obtained for VAC with N = 512. At moderate temperatures, Dtrans follows reasonably an Arrhenius evolution with temperature. As mentioned before, Table 2 reports such Arrhenius fits of the different determinations of 13
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translational diffusion coefficients. Up to 3000 bar, one observes a decrease of the activation energy as the pressure increases. This quantity is the smallest for the diffusional translation along the y molecular axis and the largest along the x molecular axis. lab Table 3 gathers the numerical values for DVlabAC and DM SD at 1, 400, 1000
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and 3000 bar with the error bars. At 300 K, our simulation results and especially DVlabAC present a maximum somewhere between 400 and 3000 bar with sufficiently small error bars to clearly show the presence of a maximum. The small number of pressures investigated does not allow to precisely locate the
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maximum. At 277 K, the translation diffusion coefficient seems to present also a maximum somewhere between 1000 and 3000 bar. The effect is subtle but
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noticeable. However, the conclusion must be tempered by the importance of the error bars. Figure 3 presents Dtrans at 277 K for pressure up to 6000 bar compared to the experiment; a maximum is located around 1750 bar. Although
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the error bars are too large to be absolutely conclusive, the trend corresponds to what has been observed by Bagchi et al.[41]. Though in that previous work, the error bars are also too large to say that the existence of a maximum is
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reproduced, the trend is the same and their simulation data seem to present a maximum between 1000 and 2000 bar. Noticeably, this maximum is also recov-
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ered in the molecular frame, whatever the axis considered. At 350 K and higher temperatures, this effect has disappeared. To compare these findings with experimental results, one can define at a
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given temperature the amplitude of the diffusion increase by the ratio between the maximum diffusion coefficient and the value at 1 bar. From experimental results, this amplitude is in the range 1.03-1.10 at 277 (or 273) K (with a
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pressure of the maximum ranging from '500 to '2000 bar) and in the range
1.02-1.08 at 298 K (with a pressure of the maximum in the range '900-'1300
bar) [51, 53, 72, 73, 74, 75, 76]. Our results are around '1.03 at 277 K (with a
maximum at pressure around 2000 bar) and '1.04 at 300 K (with a maximum at pressure around 1000 bar). Qualitatively, the SPC/E model reproduces the increase of translational diffusion induced by pressure. 14
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DVlabAC
lab DM SD
lab D∞
DVmol AC
DVmol AC,xx
DVmol AC,yy
DVmol AC,zz
65.596
67.334
77.411
29.175
29.683
35.141
23.078
3.284
3.300
3.326
2.765
2.840
2.697
2.794
53.408
56.355
65.385
20.768
20.703
24.978
16.870
3.179
3.221
3.242
2.554
2.613
2.489
2.597
39.461
48.561
55.405
17.775
19.050
20.603
14.298
2.979
3.168
3.175
2.465
2.573
2.381
2.493
24.125
23.722
2.692
2.667
D0 /˚ A2 .ps−1 ΔE/kcal.mol−1
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1 bar
400 bar D0 /˚ A2 .ps−1 ΔE/kcal.mol−1 D0 /˚ A2 .ps−1 ΔE/kcal.mol−1
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1000 bar
D0 /˚ A2 .ps−1
27.626
14.439
15.147
16.828
11.548
2.694
2.379
2.461
2.316
2.388
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ΔE/kcal.mol
−1
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3000 bar
Table 2: Arrhenius fits of the translational diffusion coefficients of the simulation results with N = 512 molecules with the SPC/E model: at 1 bar in the temperature range 298-373 K; at 400, 1000, and 3000 bar in the range 300-550 K for D lab and in the range 300-400 K for
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D
D mol .
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1 bar
400 bar
1000 bar
3000 bar
277 K
0.156(3)
0.157(1)
0.158(2)
0.156(2)
300 K or 298 K
0.250(3)
0.263(5)
0.259(2)
0.243(2)
350 K or 353 K
0.603(3)
0.574(4)
0.555(4)
0.500(4)
0.998(8)
0.939(6)
0.827(3)
400 K
RI PT
A2 .ps−1 DVlabAC /˚
lab ˚2 −1 DM SD /A .ps
0.157(3)
0.157(3)
0.156(3)
0.152(4)
300 K or 298 K
0.250(5)
0.248(5)
0.263(2)
0.243(3)
350 K or 353 K
0.612(6)
0.558(14)
0.557(4)
0.482(5)
0.993(6)
0.963(23)
0.821(8)
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400 K
SC
277 K
Table 3: Pressure effect on translational diffusion coefficient. Simulation results with the
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D
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SPC/E model and N = 512 molecules. Absolute error on last digits are given in parentheses.
16
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-1
8
2
Dtrans / Å .ps
6
2
RI PT
4
(a)
300
400
600
500
T/K
SC
10
700
(b)
1
NU
1
yy xx zz Dtrans, mol
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2
Dtrans / Å .ps
-1
Dtrans, lab
1.5
2
3
2.5
1000/T / K
3.5
4
-1
D
Figure 2: Pressure and temperature dependence of the translational diffusion coefficient of the SPC/E water model from VAC and N =512 molecules. Panel (a): diffusion coefficient in
PT E
laboratory frame vs. temperature : 400 bar (black continuous line), 1000 bar (blue dot-dashed line), and 3000 bar (dark-green dashed line). Panel (b): Arrhenius plots of components in molecular frame. Thin lines : 400 bar; medium lines : 1000 bar; thick lines : 3000 bar. Black continuous line : xx; blue dot-dashed line : yy; dark-green dashed line : zz. The continuous
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red line represents the average in laboratory frame.
17
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0.24
0.2
2
Dtrans / Å .ps
-1
0.22
0.18 0.16
0
(a)
1000
2000
3000
4000
P / bar
-1
0.2
2
Dtrans / Å .ps
6000
(b)
0.22
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0.18 0.16 0.14
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0.12
0
5000
SC
0.24
0.1
RI PT
0.14 0.12
1000
2000
3000
4000
5000
6000
P / bar
Figure 3: Pressure dependence of the translational diffusion coefficient of the SPC/E model
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at 277 K. Panel (a) : black continuous line : from VAC, N =512, in the laboratory frame.
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Black dashed line : from VAC, N =512, in the molecular frame. Blue continuous line : from MSD, N =512. Blue dashed line: from MSD, N→ ∞. Green dotted line : experiment at 278 K from Ref. [76]. Panel (b) : components in the molecular frame. Black continuous line : xx;
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blue dot-dashed line : yy; dark-green dashed line : zz; violet dotted line : average.
4. Rotational diffusion coefficients
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4.1. Temperature effect at 1 bar Figure 4 presents the rotational diffusion coefficients obtained from angu-
lar velocity autocorrelation functions. Figure 4a shows a comparison with the TIP4P-2005 model which gives rotational diffusion coefficients smaller than the SPC/E ones. Figure 4b shows the evolution with temperature of the ratio Drot /Dtrans , evaluated in the laboratory system of axes. This ratio remains
18
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roughly constant at high temperature, but increases significantly below 250 K, sign of a decoupling between translation and rotation. This curve is qualitatively similar to the result obtained by Mazza et al. [28] with the same potential, but the numerical values are quite different. However, this curve is in contradiction with the curve obtained from experimental data using an empirical approximate
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expression of Drot [77].
The anisotropy of the rotational diffusion coefficient is substantial (Figmol ure 4c), whatever the temperature. At 298 K, one finds components (Drot,xx , mol mol Drot,yy , Drot,zz ) equal to (0.244, 0.132, 0.322) in rad 2 .ps−1 . In the literature,
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different sets of rotational diffusion coefficient components have been proposed for the SPC/E model near ambient conditions. For example, the values ob-
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tained at 298 K by Svishchev and Kusalik[3] are equal to (0.46, 0.22, 0.45) and (0.211, 0.114, 0.272) as obtained by Chevrot et al.[5]. At 300 K and a density of '0.9756 g/cm3 (2.3% lower than our density), Zasetsky et al.[64] obtained
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three rotational diffusion coefficients equal to 0.30, 0.45 and 0.82 rad 2 .ps−1 .
Our values are in good agreement with the values obtained by Chevrot et al.[5] The difference of '15%, similar to that observed for the translational
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diffusion coefficient in Figure S3 of the Supplementary Material, remains unexplained and can perhaps be attributed to the differences in simulation details
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(integration of atomic equations of motion with holonomic constraints to rigidify the molecules vs. rigid body quaternion algorithm here, Particle Mesh Ewald vs. Ladd summation for the treatment of electrostatic interactions, notably).
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Figures 4a and 4c show that the rotational coefficients computed in the laboratory frame and the average in the molecular frame remain very similar in the temperature range 210-373 K. Moreover, in that range, the average values
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and the components in the molecular frame obey an Arrhenius law from the highest temperature down to 250 K. Table 4 contains results of such fits between 273-373 K with an activation energy ΔE equal to 3.1 kcal/mol for the average
Drot and 3.0, 2.8, and 3.2 kcal/mol for the diffusion coefficients around the x, y and z molecular axes, respectively.
19
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DVlabAC
DVmol AC
DVmol AC,xx
DVmol AC,yy
DVmol AC,zz
45.995
41.007
36.973
13.988
76.891
3.121
3.064
2.971
2.762
3.245
41.807
36.454
33.476
3.058
2.978
2.898
37.656
32.795
30.756
2.994
2.917
2.847
29.674
28.819
2.829
2.826
D0 /rad2 .ps−1 ΔE/kcal.mol−1 400 bar D0 /rad2 .ps−1 ΔE/kcal.mol−1
15.864
67.171
2.843
3.157
12.832
56.625
2.698
3.054
28.781
12.266
46.420
2.773
2.653
2.936
ΔE/kcal.mol−1
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1000 bar D0 /rad2 .ps−1
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ΔE/kcal.mol
−1
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3000 bar D0 /rad2 .ps−1
RI PT
1 bar
Table 4: Arrhenius fits of the rotational diffusion coefficients of the SPC/E water model in the temperature ranges 273-373 K at 1 bar and 300-400 K at 400, 1000 and 3000 bar. Simulation
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results with N = 512 molecules.
20
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8 7
0.6 -2 2
0.4 0.3 0.2
(a) 300
250
3 2 1
400
350
5 4
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200
(b)
6
Drot/Dtrans / rad .Å
2
Drot / rad .ps
-1
0.5
200
T/K
(c) zz
1
2
0.1
2.5
3
4
3.5
1000/T / K
4.5
-1
5
yy
0.1
NU
2
Drot, lab
(d)
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Drot / rad .ps
yy
400
350
zz Drot, mol xx aver.
-1
Drot, mol xx aver.
2
Drot / rad .ps
-1
1
300 T/K
250
2
2.5
3
Drot, lab
4
3.5
1000/T / K
4.5
5
-1
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Figure 4: Temperature dependence of the rotational diffusion coefficient and of its ratio with the translational diffusion coefficient at 1 bar. Panel (a): SPC/E model (N =512) in black, TIP4P-2005 model (N =1000) in blue (from Ref. [4]). Continuous lines with squares and dashed lines with crosses correspond to results from VAC in the laboratory and molecular
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frames, respectively. Panel (b): rotational to translational diffusion coefficient ratio, SPC/E model. Panel (c): Arrhenius plots of the non-zero components of the rotational diffusion tensor
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of the SPC/E model in the molecular frame with N =512: xx component (black continuous line), yy component (blue dot-dashed line), and zz component (dark-green dashed line). The violet dotted line and the red continuous line represent the average in molecular and laboratory frames, respectively. Panel (d): same as panel (c) for the TIP4P-2005 model (from Ref. [4]).
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For TIP4P-2005 model in panels (a) and (d), the portions of curves for 1000/T < 3.22 (T >310 K) are extrapolated using analytical functions fitted from simulations results in the range 210-
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310 K (Ref. [4] and see Section 3.1).
Comparison between Figures 4c (SPC/E) and 6d (TIP4P-2005[4]) shows
mol that in the temperature range 210-373 K, the SPC/E model leads to Drot,zz >
mol mol Drot,xx > Drot,yy contrary to the TIP4P-2005 model for which an inversion
mol mol mol occurs below ' 240 K where the order becomes Drot,yy > Drot,zz > Drot,xx .
As in the case of translational diffusion, the rotational diffusion coefficients
21
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have been fitted using the functional form of Eq. (9). The results are given in Table 1. For rotational diffusion coefficients too, the SPC/E model presents an arrest temperature T0 lower than the TIP4P-2005 model (' 40 K vs. ' 110 K lab for Drot , for example).
The temperature dependence of the rotational diffusion with the SPC/E
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model has been studied previously by MD simulations with PBC at a density of 1 g/cm3 between 200 and 350 K by Mazza et al.[28, 78] for a system of N =1728 molecules and at densities corresponding to ambient pressure between 222 and 356 K for a system of N =256 molecules by Galamba[58]. This last
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author characterizes the rotational diffusion by correlation times τl associated with the Legendre polynomial of rank l = 1, 2, 3 of the reorientational time-
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correlation function of the OH bond normalized vector and makes correlation with the diffusion coefficient using the Debye model (Eq. (11), Section 5.3), emphasizing, however, the limitations of this relation. We will come back later
Einstein-type approach as
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to this statement. Mazza et al. define rotational diffusion coefficients by an
1
Δϕ(t)2 t→∞ 4t
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Drot = lim
(10)
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with Δϕ(t) being an unbounded angular displacement of one axis bound to the molecule during a time interval t. With this definition, the rotational diffusion coefficient obtained from the reorientation of a given molecular axis is related to the components of the rotational diffusion tensor corresponding to rotations
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around both other perpendicular axes. At 300 K, these authors obtain three rotational diffusion coefficients with numerical values '0.090, '0.115, and '0.080
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rad2 /ps from the reorientation of molecular x, y and z axes, respectively (using
our definition of inertia axes). Our values for Drot,αα (α = x, y, z) are significantly larger. A possible explanation of the discrepancies can be related to the fact that the use of Eq. (10) to get rotation is particularly delicate, as noted by Laage and Hynes[79]. By contrast, the use of Eq. (2) is straightforward.
22
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4.2. Pressure effect Figure 5 shows the pressure effect on Drot at 277 K up to 6000 bar and completes the study of Bagchi et al.[41] who analyzed the rotational diffusion
RI PT
0.2
2
Drot / rad .ps
-1
0.25
0.15
0
1000
2000
3000
5000
6000
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-1 2
Drot / rad .ps
4000
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P / bar
SC
(a)
0.2
0.1
D
(b) 1000
PT E
0
2000
3000
4000
5000
6000
P / bar
Figure 5: Pressure dependence of the rotational diffusion coefficient of the SPC/E model at 277 K from VAC with N =512. Panel (a): in the laboratory frame (black continuous line with
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squares) and in the molecular frame (black dashed line with crosses). Panel (b): components in the molecular frame, xx (black continuous line), yy (blue dot-dashed line), zz (dark-green
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dashed line), and average (violet dotted line).
in terms of reorientational correlation times only. It is found that Drot
slightly increases from 0.159 to 0.182 rad 2 .ps−1 between 1 and 6000 bar (in
the laboratory frame). Bagchi et al. interpreted this behaviour by an analysis of the structure showing that the pressure increases the presence of interstitial water molecule in the first solvation shell of the molecules. Interstitial molecules
23
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have been previously observed in water with the SPC/E model by Svishchev and Kusalik [80]. This pressure induced structural change leads to a weakening of hydrogen bonding and an increase of the diffusion. We also observed it considering Dtrans . At 277 K, when the pressure increases up to '4000 bar, mol mol the components of Drot increase. Between 4000 and 6000 bar, Drot,zz remains
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nearly constant and Drot,yy increase very little. This is probably the first sign that the broad maximum is nearly reached and Drot will soon start to decrease at additional pressure increase.
lab Figure 6a presents the evolution of the rotational diffusion coefficients Drot
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with temperature at 400, 1000 and 3000 bar and, at the scale of the plot, illustrates clearly that, at sufficiently high temperature (for example, 400 K), the
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rotational diffusion decreases with an increase of pressure. This is also apparent from Figure 6b presenting Arrhenius plots of the three rotational diffusion comol efficients Drot,αα (α = x, y and z). Figure 6c compares the rotational diffusion
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coefficients obtained in the laboratory and molecular frames. Up to ' 450 K, both determinations are close to each other. Figure 6d shows an Arrhenius plot lab of Drot below 400 K at the four considered pressures. This plot shows that,
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at the lowest temperatures, the rotational diffusion coefficient increases as the pressure increases and that the inversion temperature is around 338 K. Looking
PT E
mol at Drot , a very similar plot is obtained (not shown here) and the inversion tem-
perature is around 336 K. One can conclude that, starting from atmospheric pressure, the rotational diffusion coefficient of the SPC/E model increases if
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pressure increases below 340±5 K, and the opposite behavior occurs beyond that temperature.
Concerning the anisotropy of the rotational diffusion, one can observe in Fig-
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ure 6b that, at all investigated pressures and temperatures, this model predicts mol mol mol that Drot,zz > Drot,xx > Drot,yy . mol mol mol mol Figure 6e shows the ratio Drot,xx /Drot,zz and Drot,yy /Drot,zz at different
pressures as a function of temperature. At 300 K and above, the anisotropy is significant. Above 300 K, the anisotropy of rotational diffusion is only slightly mol mol temperature dependent, especially Drot,yy /Drot,zz that remains nearly constant.
24
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mol mol The ratio Drot,xx /Drot,zz slightly decreases by about 10-15 % between 300 and
700 K. In this temperature range, a pressure increase leads to a small increase of these ratios, meaning a lowering of the anisotropy. Below 300 K, the Hbonds become more and more important. The involvement of a molecule in a strong rigid three-dimensional H-bond network at very low temperature removes
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the existence of facilitated rotation around a given axis, the rotation becomes
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equally difficult around any molecular axis.
25
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100
20
(b)
(a) zz
10
xx Drot, mol yy
2
Drot / rad .ps
2
Drot / rad .ps
-1
-1
15
10
1
300
400
1
700
600
500
1
(c) Drot, lab -1
Drot, mol
3
2.5
1000/T / K
4
3.5
-1
0.7 0.6 0.5
3
2.5
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0.8
mol mol Drot,xx /Drot,zz
(d)
1000/T / K
3.5 -1
(e)
mol mol Drot,yy /Drot,zz
0.4
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anisotropy of rotational diffusion
1 0.9
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1
4
3.5
-1
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2
Drot / rad .ps
2
Drot / rad .ps
-1
Drot, lab
2
3
2.5
1000/T / K
10
1.5
2
1.5
T/K
1
RI PT
5
0.3
PT E
200
300
400
500
600
700
T/K
Figure 6: Pressure and temperature dependence of the rotational diffusion coefficient of SPC/E water model from VAC and N =512 molecules. Panel (a): diffusion coefficient in laboratory
CE
frame vs. temperature at 400 bar (black continuous line), 1000 bar (blue dot-dashed line), and 3000 bar (dark-green dashed line). Panel (b): Arrhenius plots of rotational diffusion coefficients in molecular frame: xx component (black continuous lines), yy component (blue
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dot-dashed lines), zz component (dark-green dashed lines), and average in the laboratory
frame (red continuous lines). Thin lines : 400 bar; medium lines : 1000 bar; thick lines : 3000 bar. Panel (c): Arrhenius plots of average in the laboratory frame (red continuous lines) and in the molecular frame (violet dotted lines). Thin line : 400 bar; medium : 1000 bar; thick : 3000 bar. Panel (d): Arrhenius plots of average in the laboratory frame for T ≤ 400 K at
1 bar (green thin continuous line), 400 bar (magenta dotted line), 1000 bar (blue dot-dashed line), and 3000 bar (red thick continuous line). Panel (e): anisotropy of rotational diffusion mol /D mol mol mol represented by the ratios Drot,xx rot,zz and Drot,yy /Drot,zz . Temperature dependence at
1 bar (green thin continuous line), 400 bar (magenta dotted line), 1000 bar (blue dot-dashed
26 line), and 3000 bar (red thick continuous line).
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5. Reorientational correlation times 5.1. Temperature effect at 1 bar Figure 7 presents our results for τ1 and τ2 for the inertia axes and the OH bond vector at 1 bar. Our values at 298 K are 4.31, 2.77, 4.42, 4.34 ps (τ1 ) and
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1.90, 1.10, 1.47, 1.71 ps (τ2 ) for the x, y, z axes and OH bond vector, respectively. These values are consistent with some determinations from literature for the SPC/E model[3, 64, 79, 81, 82] and differences larger than ± 10 % can be found with others[19, 83]. Compared to experimental results (τ2,x = 2.0 ps[84],
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τ1,z = 4.76[85], τ2,z = 1.92 ps[85, 86], τ2,OH = 1.95 ps[87, 88, 89]), our results are in reasonable agreement, with rotational motions slightly too fast with this intermolecular potential.
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The temperature dependence of τ2,OH and τ2,y between 275 K and 350 K obtained from NMR relaxation data and from MD simulations with the SPC/E
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model for D2 −16 O liquid water have been reported before [90]. Our values for H2 −16 O are consistently smaller (about 10-20 %) than the MD values of that study due to the difference of inertia momenta. Compared with the simulation of Galamba[58] at 1 bar in the temperature range 222-356 K with N = 256
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molecules, our values are in good agreement except at the lowest temperatures.
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At 230 K, our values for τ1,OH and τ2,OH are smaller by about 20 %. Though our densities are slightly different, the discrepancy reflects mainly the statistical
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error.
27
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10
τ1
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τ / ps
100
z x OH y x OH z y
1
τ2 200
300 T/K
350
400
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250
Figure 7: Reorientational correlation times τ1 (thin lines, upper group) and τ2 (thick lines, lower group) for the inertia axes and the OH bond vector at 1 bar: x-axis (black continuous
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line), y-axis (blue dot-dashed line), z-axis (green dashed line), and OH-bond vector (red dotted line) for the SPC/E model.
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5.2. Pressure effect
The pressure dependence of correlation times τ1 and τ2 of the inertia axes and −1 OH-bond vector is presented in Figure 8. Paralleling the behavior of Drot , the
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correlation times decrease when pressure increases at low-enough temperature
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and has the opposite behavior at higher temperature. The turning temperatures are 405±10, 410±15, 465±10, 420±10 K for τ1 and τ2 of the x, y, z and OH−1 bond axis, respectively. As the relationship τl ∝ Drot is not strictly valid, the
turning temperature obtained from the correlations times does not necessarily
AC
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have to be identical to the one obtained from Drot .
28
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100
τ1
1
τ2
0.1
4
100
10
τ1
1
τ2
4
2
3 -1 1000/T / K
4
5
5
τ1
τ2
1
0.1
(c) 3 -1 1000/T / K
(b)
OH bond
10
0.1
2
τ2
1
z axis
1
1
5
τ / ps
τ / ps
100
3 -1 1000/T / K
τ1
0.1
(a) 2
10
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1
y axis
RI PT
10
τ / ps
x axis
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τ / ps
100
1
2
(d) 3 -1 1000/T / K
4
5
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Figure 8: Pressure and temperature dependence of the reorientational correlation times τ1 and τ2 for the inertia axes and the OH-bond vector at 1 bar (green thin continuous line), 400 bar (magenta dotted line with circles), 1000 bar (blue dashed line), and 3000 bar (red thick continuous line) for the SPC/E model. Panel (a): x axis; panel (b): y axis; panel (c): z axis;
D
panel (d): OH-bond vector.
PT E
Though we did not explore sufficiently high pressures to locate the minimum in the curves of correlation times vs. pressure (or the maximum for rotational diffusion coefficient vs. pressure), at 277 K and 6000 bar the system is close
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to the broad minimum that Bagchi et al. have found. Defining the amplitude of the pressure effect by the ratio between a correlation time at 1 bar and the correlation time at 6000 bar, one obtains an amplitude of 1.33 (using τ1 ) or
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1.34-1.37 (using τ2 ) at 277 K. At 300 K, as the pressure has been limited to
3000 bar, one can just say that the amplitude is larger than 1.16-1.18 from τ2 , for example. Examining the amplitude of the pressure effect by the ratio
between the maximum rotational diffusion coefficient and the value at 1 bar, one gets quantitatively different results: ≈1.15 at 277 K and >1.09 at 300 K. From experiments, defining the amplitude by ratio of τ2 correlation times 29
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or inverse ratio of longitudinal relaxation times, values of 1.29 [75], 1.26 [91], 1.16 [92] at 272-273 K, and 1.12 [93], 1.10 [94], 1.26 [91] at 283 K have been published. The pressure corresponding to the extremum for rotational diffusion is generally found experimentally around 2000 bar at these temperatures. The SPC/E model reproduces the amplitude of this pressure effect for rotational
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diffusion reasonably well.
Wakai and Nakahara[95] have investigated the NMR quadrupolar relaxation of deuterium in liquid D 2 O from 283 K to 323 K up to a pressure of 3000 bar. At each pressure, they observe an obvious decrease of the correlation time τ2
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of the OD-bond vector when the temperature increases. At each temperature, they obtained a monotonous decrease of the correlation time when the pres-
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sure increases. The SPC/E model agrees with the experimental observation. Correcting our values for isotopic effects, one can conclude that in these temperature and pressure ranges the SPC/E model predicts correlation times about
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10% smaller than experiment. This too fast rotational diffusion can be correlated with the observation that this model also overestimates the translational diffusion, compared to the experiment. The too fast dynamics of this model
D
had already been pointed out[19, 20].
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5.3. Test of the Debye model
Within the small-step rotational diffusion model (Debye model), the correlation function for the reorientation of a vector bound to a molecule Cl (t) =
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hPl (u(0).u(t))i decreases exponentially and τl =
1 . l(l + 1)Drot
(11)
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Though this model is known not to be quantitative, because large-angle reorientation can occur and inertial effects have to be taken into account, this simple model is often used to analyze experimental or simulation results. In order to test this model, Figure 9 presents plots of the ratio of the rotational coefficient Drot (Debye) = 1/(6τ2,axis ) and the ’exact’ rotational diffusion
30
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coefficient obtained from our simulations. As it is well-known, this clearly illustrates that the model is not satisfactory, even under ambient conditions. As expected, at low temperature, the importance of large-jump reorientation increases and the applicability of the model deteriorates. At high temperature, inertial effects are important and not taken into account by the model. In addi-
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tion, an increase of pressure plays a role opposite to an increase of temperature. This Figure shows that the error on Drot resulting from the application of the Debye model would be at least 25-30 % (using the y axis reorientation) and
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50-55 % (using the OH-bond vector) in the range 300-400 K.
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1.4
Debye model valid
1
y axis
0.8
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1/(6 τ2,axis Drot)
1.2
0.6
OH axis
0.4
300
400
500
600
700
T/K
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200
D
0.2
Figure 9: Test of the Debye model for the reorientation of OH-bond vector and the y axis perpendicular to the molecular plane. If the Debye model is valid, Drot (Debye) = 1/(6τ2,axis ).
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lab at different pressures: 1 bar (green thin conTemperature dependence of Drot (Debye)/Drot
tinuous line), 400 bar (magenta dotted line), 1000 bar (blue dashed line), and 3000 bar (red thick continuous line).
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Another possible test of the model is the ratio τ1 /τ2 (not shown here), which
should be equal to 3 if Debye model is valid. From our simulation data, for any axis, this ratio takes a maximum value of about 2.55 around 350 K and its evolution with temperature and pressure follows a trend similar to the plots of Figure 10. At the lowest temperatures, the ratio reaches values around 2.252.30. At 700 K, τ1 /τ2 for y axis decreases to '2.1 at 400 bar and '2.25 at 3000 31
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bar. For the OH-bond vector, this ratio is '2.3 at 400 bar and '2.35 at 3000 bar. These results confirm if necessary that the Debye model is not accurate to determine rotational diffusion coefficients from correlation times. This is important to remind when comparing experimental results obtained with this
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model and simulation results, for instance. Beyond the value of the rotational diffusion coefficient itself, it could lead to wrong tendencies vs. temperature or pressure.
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5.4. Anisotropy of reorientational motions
This property is illustrated in Figure 10 presenting the ratios τl,x /τl,z and
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τl,y /τl,z for l = 1 and 2. A feature worth noticing is that τl,x and τl,z remain markedly larger than τl,y at any temperature and pressure. In addition to Figure mol mol mol mol 6e (showing the ratio Drot,xx /Drot,zz and Drot,yy /Drot,zz ), these plots illustrate
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the importance of anisotropy in rotational diffusion of water, well known from experiment [90]. The anisotropic diffusion model[96, 97] taking into account the
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PT E
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correlated motions of the three inertia axes would tackle these features.
32
1
(a)
τ1,x / τ1,z
0.8
τ1,y / τ1,z 0.6 200
300
400
500
600
T/K
700
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1.4
(b)
τ2,x / τ2,z
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1.2 1
τ2,y / τ2,z
0.8 0.6 200
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anisotropy of reorientational motion
1.6
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anisotropy of reorientational motion
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300
400
500
600
700
T/K
Figure 10: Anisotropy of reorientational motion of the SPC/E model represented by the
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ratios τl,x /τl,z and τl,y /τl,z . Temperature dependence at different pressures: 1 bar (green
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thin continuous line), 400 bar (magenta dotted line), 1000 bar (blue dashed line), and 3000 bar (red thick continuous line). Panel (a): l = 1; panel (b): l = 2.
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6. Translation-rotation coupling As already mentioned, for water with our choice of molecular axes, the only non-zero components of the translation-rotation diffusion tensor (expressed
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in the molecular system of axes) are the translation-x / rotation-y and the
translation-y / rotation-x ones, if the C2 symmetry axis is the z-axis. We will label trans, x − rot, y and trans, y − rot, x these translation-rotation cou-
plings. Such components are sensitive to the choice of molecular system of axes. Chevrot et al.[5] put the molecule in the (y, z)-plane and the correspondence with our choice requires to make the substitution (x → y, y → −x, z → z). 33
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Kusalik and coworkers[4, 29] put the molecule in the (x, z)-plane with the z-axis having a direction opposite to our choice. The correspondence with our choice requires the substitution (x → x, y → −y, z → −z). Consequently, our values are all negative when Chevrot et al. and Kusalik et al. obtain positive values and our trans, x − rot, y and trans, y − rot, x values are exchanged with respect
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to Chevrot et al.’s results. In Figure S4 of the Supplementary Material, the translation-rotation cross-correlation functions at ambient temperature and 1 bar and 3000 bar are presented.
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6.1. Results at 1 bar
mol mol At 298 K, our values for Dtrans,x−rot,y and Dtrans,y−rot,x are −0.0126 and
−0.0719 ˚ A.rad.ps−1 . Chevrot et al. obtain (with our axis definition) −0.0104
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and −0.0630 ˚ A.rad.ps−1 , respectively. Figure 11a shows the evolution of these
mol coefficients with the temperature. Dtrans,y−rot,x has the largest value and a
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stronger temperature dependence. The coupling diminishes when the temperature decreases and tends to vanish around 200 K. This is consistent with the results of the ratio Drot /Dtrans . The behavior at low temperature is consistent
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with the decoupling of translation and rotation. mol The cross-correlation translation-rotation diffusion coefficients Dtrans,α−rot,β
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have been fitted as a function of the temperature using Eq. (9) and the results are given in Table 1. Note that for the these transport coefficients D(T ) which are negative, the strategy described in subsection 3.1 had to be modified and
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the fitted function was −20D(T ) + ln (−D(T )). The comparison with the TIP4P-2005 model shows very similar numerical mol mol values for Dtrans,y−rot,x (T ), but values of Dtrans,x−rot,y (T ) about 40-60 % larger
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for the SPC/E model. 6.2. Pressure effect The effect of pressure on the translation-rotation coupling is illustrated in Figures 11b and 11c. This effect is moderate. At 300 K or at lower temperatures, there is nearly no pressure effects up to a few thousands of bar. The isotherm
34
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at 277 K, where pressures up to 6000 bar have been investigated, confirms this trend. Up to 550 K, a pressure increase of 3000 bar diminishes (in absolute mol value) the effect of the coupling by 5-10 % for Dtrans,y−rot,x (T ) and by 20-30 % mol for Dtrans,x−rot,y (T ). This observation, linked to the alteration of the hygrogen
[93, 94].
0 0 -0.1
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-1
Dtran,α-rot,β / Å.rad.ps
-0.1
trans,y-rot,x
-0.2
(a) 300 T/K
250
0
(b)
300
trans,x-rot,y
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-0.02
350
400
450
500
550
T/K
(c)
-0.03
-0.04
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Dtrans,α-rot,β / Å.rad.ps
-1
-0.01
trans,y-rot,x
-0.5
-0.6
400
350
-0.3
-0.4
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200
trans,x-rot,y
-0.2
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Dtrans,α-rot, β / Å.rad.ps
-1
trans,x-rot,y
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bond network due to pressure, is consistent with previous experimental works
trans,y-rot,x
-0.05
0
1000
2000
3000 P /bar
4000
5000
6000
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Figure 11: Translation-rotation diffusion coefficient components of the SPC/E model in the molecular system of axes: translation-x / rotation-y (green lines) and translation-y / rotationx (blue lines) components. Panel (a): at 1 bar and 210 ≤ T ≤ 373 K. Panel (b): at 400 bar
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(thin red continuous lines), 1000 bar (medium blue dot-dashed lines) and 3000 bar (thick orange continuous lines) and 300 ≤ T ≤ 550 K) Panel (c): at T = 277 K and 1 ≤ P ≤ 6000
bar.
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7. Conclusion This work has presented an extensive study of the diffusional properties of the popular SPC/E model of water in the liquid phase at 1 bar (210-373 K), 400, 1000, 3000 bar (300-700 K), and from 1 to 6000 bar at 277 K. In spite
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of numerous studies already devoted to this water model, this work appears to give for the first time an extensive accurate estimation of the rotational diffusion coefficients and of the translation-rotation coupling over a relatively wide range of temperatures and pressures.
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When available, we compared our results to experimental data and TIP4P2005 model predictions. We observed that this last potential is more accurate at low temperature, but SPC/E remains competitive at higher ones.
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Our results analyzed in detail the anisotropy of translational and rotational dynamics in the molecular frame, what is especially interesting for the rotational
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diffusion because it can be obtained experimentally whereas no experiment can analyze the anisotropy of translational diffusion. We have analyzed the anomalous behaviour of increased diffusion induced by pressure, due to the weakening of hydrogen bonds, and found that the SPC/E
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model can describe this effect. The amplitude of this effect is larger for the
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rotational diffusion than for translational diffusion and thus is more accurately observable from simulation of the rotational diffusion coefficient than from the translational diffusion coefficient. With the SPC/E model, the anomalous behaviour disappears for the translational diffusion coefficient at a temperature
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between 300 and 350 K and around 340 K for the rotational diffusion coefficient. Our results also illustrate in a systematic manner that using the Debye model
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to determine the rotational diffusion coefficient from correlation times leads to wrong results and wrong tendencies as well. It has also been observed that earlier determination of the rotational diffusion coefficients of the literature are not absolutely reliable and the present values improve these former values. The translation-rotation coupling coefficients have also been computed for the first time with this model over a wide temperature and pressure range. Our
36
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results show a decoupling between rotational and translational diffusion as the temperature decreases. Such a behavior is also expected at very high pressures in plastic phases.
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Supplementary Material This work is accompained by a Supplementary Material file containing five Sections including four Figures (Figure S1 to S4) and two Tables (Table S1 and
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S2).
Acknowledgments
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We are grateful to the Universit´e de Lorraine and the CNRS for their support. We particularly thank the Institut Jean Barriol de Chimie et Physique Mol´eculaire et Biomol´eculaire (FR 2843) for a specific support through a gen-
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erous special funding. We also thank the Lorraine M´esocentre EXPLOR for providing us with computer time.
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SPC/E water model predicts increase of diffusion with pressure at low temperature Translation-rotation coupling in liquid water decreases as temperature decreases Translation-rotation coupling diminishes only slightly with pressure in kbar range Quantitative limitation of rotational diffusion Debye model is assessed
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