Skip to main content
Scientific Reports logoLink to Scientific Reports
. 2021 Jan 28;11:2528. doi: 10.1038/s41598-021-82112-8

On the physical mechanisms underlying single molecule dynamics in simple liquids

Russell G Keanini 1,, Jerry Dahlberg 1,#, Peter T Tkacik 1,#
PMCID: PMC7843658  PMID: 33510369

Abstract

Physical arguments and comparisons with published experimental data suggest that in simple liquids: (i) single-molecule-scale viscous forces are produced by temperature-dependent London dispersion forces, (ii) viscosity decay with increasing temperature reflects electron cloud compression and attendant suppression of electron screening, produced by increased nuclear agitation, and (iii) temperature-dependent self-diffusion is driven by a narrow band of phonon frequencies lying at the low-frequency end of the solid-state-like phonon spectrum. The results suggest that collision-induced electron cloud distortion plays a decisive role in single molecule dynamics: (i) electron cloud compression produces short-lived repulsive states and single molecule, self-diffusive hops, while (ii) shear-induced distortion generates viscosity and single-molecule-scale viscous drag. The results provide new insight into nonequilibrium molecular dynamics in nonpolar, nonmetallic liquids.

Subject terms: Engineering, Physics

Introduction

Gaining a deeper understanding of single molecule dynamics in liquids bears on fundamental problems in chemical reaction kinetics1,2, sub-cellular water transport3,4 and biomass transfer5,6, detection of cosmic particles and radiation7, dark matter detection810, detection of collision products in high energy physics7, corrosion11, and weathering of terrestrial and extra-terrestrial surface rock12. The problem has attracted the attention of luminaries like Einstein13,14, Perrin15, Laundau16, Prigogine17, and Feynman18. Nevertheless, the physical mechanisms that determine single molecule motion in liquids remain poorly understood.

A variety of experimental and theoretical approaches have been developed for studying molecular dynamics in liquids. Experimental techniques include light and particle scattering1923 which probes dynamic responses over single- to multiple-molecule length scales, and sub-collision and longer tO10-14s time scales. Photonic techniques2428 are capable of exposing intramolecular dynamics on femtosecond time scales t=O10-15s. Molecular dynamics simulations provide a computational approach for probing each of these scales2931.

Theoretical modeling drives and allows interpretation of typically complicated experimental observations. Over multi-molecule length scales and multiple-collision time scales, molecular hydrodynamics2022,3134 successfully connects observed spectral responses of dense fluids to the continuum Navier-Stokes (NS) equations. However, on single-molecule length scales and collision- and sub-collision time scales, mapping molecular-scale response into generalized NS models requires time- and space-dependent transport coefficients20,22,3335, revealing our poor understanding of single-molecule liquid-state dynamics.

For atomic, and small polyatomic, nominally spherical, nonpolar liquids, Langevin (LE) models22,33,34 provide a powerful, particle-based framework for tackling molecular dynamics problems, both under classical conditions—where the dynamical processes of interest take place on time scales exceeding the ’dispersion time scale’, τd=O10-16s, see below—and under conditions where quantum smearing of the dynamics becomes important33,36. Generally speaking, LE models are suitable for particle dynamics problems characterized by short-time scale random forcing and longer-time scale non-random dynamical dissipation, as well as by possible external forcing.

This paper presents three results, which together, provide new insight into the dynamics of single molecules in nonpolar, nonmetallic liquids:

(a) A simple physical model is proposed which suggests that: (i) liquid-state viscosity is produced by temperature-dependent London dispersion forces, and (ii) viscosity decay with increasing temperature reflects decreased electron screening of nuclear charge. Comparison of predicted and experimentally observed viscosities22,37 for liquid Ne, Ar, Kr, Xe, N2, O2, and CH4, support the proposed physical picture.

(b) A Langevin model of sub-collision time scale, single molecule dynamics, which explicitly accounts for solid-state-like phonon modes, leads to a physically consistent explanation for self- diffusion coefficients measured in liquid Ar, Kr, and Xe38. The model suggests that on time scales ranging from the Frenkel scale, τF=O10-14s, down to the fast dispersion scale, τd=O10-16s, molecular dynamics in simple liquids is solid-like, and thus dominated by phonon modes, consistent with the equilibrium statistical mechanics picture presented by39,40. In addition, the model indicates that the random diffusional hopping of individual molecules is produced by a narrow band of phonon modes lying near the low-frequency end of the phonon spectrum, ωcωF=2π/τF.

[Note, for context, τF is approximately an order of magnitude shorter than the characteristic intermolecular collision time scale, τc=O10-13s. In order to provide a physical feel for the important time scales in this problem, we will often use those associated with liquid Ar. In addition, the term ’molecular’ will refer to monatomic as well as small, polyatomic liquids.]

(c) A set of time scale-dependent Langevin equations are proposed for describing single molecule dynamics in simple, non-polar liquids. The equations apply over the poorly characterized sub-collision time scale, τdtτc, incorporate the above results, and represent best-guess extrapolations of well-established dynamics on longer time scales.

As a consequence of the modeling, experimental comparisons, and consistency checks that are presented, we arrive at a preliminary picture of the decisive role apparently played by collision-induced electron cloud distortion in single molecule dynamics. Specifically, arguments and evidence are presented suggesting that phonon-induced electron cloud compression forces colliding molecular pairs into short-lived repulsive states, producing, in turn, single molecule, self-diffusive hops. In addition, we propose that nonequilibrium, shear-induced, ’tangential’ electron cloud distortion generates viscosity and single molecule scale, resistive viscous forces. In order to support the hypothesis that viscosity arises on single molecule scales (SMS), the paper first derives SMS Navier–Stokes equations, describing the ensemble average, field-based dynamics of (Newtonian) SMS fluid systems. Given these, a scaling estimate of SMS viscosity, based on the Green-Kubo viscosity relation35, then leads to a parametrically correct solution for SMS viscosity, obtained in terms of the SMS shear stress (i.e., the ensemble average, SMS transverse current correlation22,34).

Results, methods and discussion

Dispersion forces and electron screening determine temperature-dependent dynamic viscosity

As a measurable property determined by molecular-scale processes, viscosity provides a window into molecular dynamics. Here, we study temperature-dependent viscosities observed in liquid Ne, Ar, Kr, Xe, N2, O2, and CH4, at fixed pressures, over the temperature ranges on which each specie exists as a liquid22,37.

The corresponding states principle22,41,42 provides the basis for our argument. The simplest form of the principle postulates that viscosity is determined by a characteristic intermolecular potential energy, ϵ, a characteristic intermolecular length scale, σ, the molecular mass, M,  and a specie-dependent temperature-scale, ϵ/kB:

μ=fT,Mϵ,σ,kB 1

where, on dimensional grounds, M can be grouped with ϵ. Dimensional analysis allows restatement of (1) in nondimensional form:

μ~=f~T~ 2

where μ~=μ/Mϵ/σ2, T~=T/ϵ/kB, kB is Boltzmann’s constant, and f~ represents the experimentally determined correlation. The principle holds nominally well22,41 in nonpolar atomic and diatomic liquids that are well-modeled by the Lennard–Jones potential22,41. More comprehensive correlations incorporating quantum (low temperature and small mass) effects and information on the shape of the intermolecular potential have been proposed42.

In order to derive what turns out to be a simple physical model for predicting viscosity in nonpolar liquids, we proceed in three steps. First, a scaling argument is used to place the corresponding states principle on a physical basis, leading to an approximate relationship for μ:

μϵMσ2 3

Focusing on nonpolar liquids subject to London dispersion forces, we then follow41 and state the intermolecular energy, ϵ, in terms of specie polarizability, α, and the separation, rab, between colliding molecular pairs. Finally, collision-induced, and temperature-dependent polarization is stated in terms a mean, temperature-dependent electron cloud distortion, δσT. Importantly, in order to obtain a viscosity model consistent with available measurements22, we propose that electron cloud distortion, δσT, decreases linearly with temperature.

Confine attention to classical conditions, assume pair-wise intermolecular collisions—see Note (i) in the final section below, neglect non-spherical shape effects42 on the (pair-wise) intermolecular potential, and focus on simple, nonmetallic liquids, i.e., those composed of nonpolar molecules having nominally spherical, localized electron distributions43. Under these conditions, the attractive potential between colliding molecular pairs is wholly determined by London dispersion41,44.

On time scales longer than the dispersion time scale, τd=O10-16s - the scale on which electron distributions oscillate45 - but shorter than the intermolecular collision time scale, τc=O10-13s, two-body interactions dominate three- and higher-order interactions; again, see Note i) in the final section. Due to high-frequency phonon modes, ω>2πτF-1=O1014s-1, we assume that viscosity emerges on an intermediate time scale, τv, where τd<<τv<<τc. As shown by46, a modified Stokes-Einstein relation,

D=2kBTnπμσf 4

connects diffusion of small and medium sized molecules (in water and carbon tetrachloride46) to the viscosity of the solvent liquids. Here, D is the diffusion coefficient, μ is the dynamic viscosity, f is a molecular-shape-dependent factor, and n is a correction factor, ranging from approximately 2 to 6, and accounting for a mix of slip- and no-slip flow conditions on a molecule’s surface.

Importantly, (4) implies that single molecule dynamics can be modeled using the simple, memory free Langevin equation:

Mdvtdt=-3πσmμv+FRt 5

where σm=nfσ/6 is the effective molecular diameter; see, e.g.,47. Here, vt is the instantaneous velocity of the molecule and FRt is the instantaneous random force on the molecule. Thus, on time scales of order τv=O10-15s, and longer, we argue that the rate of work done on an individual molecule by the dispersion force is dissipated by viscous dissipation:

ϵσ·δrnuc·τv-1μunucσ·σ2·δrnuc·τv-1 6

where spatial derivatives are approximated as 1/σ, the characteristic speed of the nucleus is given by unucϵ/M, the characteristic nuclear displacement over τv is represented as δrnuc, and the nominal surface area of the molecule is on the order of σ2. Solving (6) for the viscosity then leads to (3).

Dispersion forces determine viscosity and increased nuclear agitation with temperature compress electron clouds, suppressing viscosity

In simple liquids subject to London interactions, the energy scale, ϵ, is approximately determined by41,44

ϵd=34hνoα2rab6 7

where hνo is the ground state energy of an isotropic quantum oscillator, α is the polarizability, and rab is again the separation between the molecular pair’s nuclei. This expression follows from assuming that pair-wise molecular collisions correspond to weak interactions between isotropic quantum oscillators41,44. As an initial consistency check, Supplement 4 compares estimated and experimental kinematic viscosities, ν=μ/ρ, for a set of simple liquids, where ν estimates use London’s rigorous second order quantum perturbation model41,44, ϵ=C/rAB6 in (3), and where C is the attractive constant.

Since (7) allows intuitive derivation and interpretation of the viscosity estimate presented here, as well as exposing the apparent central role of electron cloud distortion in viscosity generation, we use (7) to estimate ϵ. Polarizability is given approximately by41

α=49aoi=1nri2¯2 8

where the sum is taken over the principle quantum energy levels of a given molecule, ri2¯ is the average squared displacement of the electrons in ith shell (induced by an external electric field), and ao is the Bohr radius. In detail, ri2¯, follows from introduction of Slater orbitals41,48:

ri2¯=ni2Z-Si22ni+12ni+2ao2 9

where Z-Si is the effective nuclear charge of the ith shell, Z is the nuclear charge, Si is the associated screening constant, and ni the effective principle quantum number.

Focusing on Ne, Ar, Kr, Xe, O2, and N2, we label the sum of mean squared electron displacements as

1ni=1nri2¯2=δσ4T 10

where

δσT=n-1i=1nri2¯21/4 11

represents the average collision-induced distortion of all the electrons in a molecule, and where we assume that δσT is temperature-dependent.

Over the narrow temperature ranges on which each of these species exist as a liquid, and based on the observation that liquid viscosities decrease with increasing temperature22, we introduce an ansatz that the mean electron distortion decreases linearly with temperature:

δσT=δσv1-ϵT=δσv1-Tv-TTv 12

where δσv=δσTv, is the mean displacement at characteristic temperature, Tv=ϵ/kB, and ϵT=Tv-T/Tv.

Physically, and in light of (9) and the results below, this guess suggests that electron screening decreases with increasing temperature, consistent with behavior observed in deuterated metals49. Since kinetic energy of both nuclei and electrons increase with rising temperature, where the latter presumably enhances screening, the suppression of screening apparently reflects increased nuclear agitation; intensifying agitation, under spatially packed conditions effectively thins surrounding electron clouds. A similar mechanism has recently been proposed in metallic glasses50, and may underlie atomization of vapor phase molecular clusters as TTv=ϵ/kB, where atomization reflects nuclear kinetic energy overtaking intermolecular dispersion forces.

Next, approximate δσT=δσv1-ϵT as δσT=δσvexp-ϵT=δσve1exp-T, where T=T/Tv=T/ϵ/kB, is the dimensionless temperature defined in the corresponding states correlation. Since the maximum magnitude of ϵT is on the order of 0.3 for the set of liquids considered, save oxygen, the maximum error introduced by replacing 1-ϵT with exp-ϵT is on the order of 10 %.

Using ϵd in (7) for ϵ in (3), the definition in (11) for the mean electron distortion, and the exponential approximation above for the assumed linear temperature variation in δσT, leads to an approximate expression for the temperature-dependent viscosity for simple liquids:

μTCoexp-4T 13

where Co=243hνoe8δσv/σo8M/16/σo2, and where ao is approximated as σo/2, and σo corresponds, e.g., to the molecular diameter at the specie melting point.

Comparison of theoretical and observed viscosities

In order to allow comparison of theoretical, temperature-dependent viscosities, as given by (13), with experimentally measured viscosities, we define the dimensionless viscosity for liquid κ, μκT=μκT/μm,κ, yielding

μαT=cκexp-4T 14

where cκ=μκTmin,κexp4Tmin,κ, and where μκTmin,κ is the measured dimensionless viscosity for fluid κ at the minimum dimensionless temperature, Tmin,κ at which μκ is measured. Note, due to the approximations used to obtain the constant Co above, plotted viscosity estimates obtained using (13) exhibit the appropriate decay with temperature, but are displaced by a (nominally) fixed magnitude from measured viscosities.

Theoretical and experimental, temperature dependent dimensionless viscosities for the six simple liquids considered here are compared in Figs. 1 and 2. The comparisons lend significant support to our central argument: Decaying liquid viscosity in simple liquids reflects decreased electron screening of the positive nucleus. A similar mechanism may underlie temperature-dependent decay in surface tension coefficients in simple liquids, and may also play a role in viscosity and surface tension variations in, e.g., polar and ionic liquids.

Figure 1.

Figure 1

Temperature-dependent viscosity for noble liquids. The proposed model assumes: (i) dominant pairwise, dispersive, intermolecular interactions—see the scaling argument (i) in the final section, and (ii) that the average collision-induced distortion of the molecule’s electrons, δσT=i=1nri2¯21/4, decays linearly with temperature. The second assumption suggests that electron screening decreases with increasing temperature—consistent with49,50—and, in turn, that thermally-driven nuclear motion dominates presumed enhanced electron shrouding of the nucleus. For an explanation of experimental conditions and definitions of dimensionless variables, see the caption to Fig. 2. Sources for the experimental viscosity data shown are as follows: Ne51; Ar52; Kr53; Xe54. For a discussion of estimated experimental uncertainties, please see the text.

Figure 2.

Figure 2

Temperature-dependent liquid viscosities for liquid N2, O2, and CH4. Notes (a) Experimental viscosity for specie κ is nondimensionalized using the viscosity scale μscale,κ=Mκϵmin,κσmin,κ2, where ϵmin,κ, is the minimum Lennard-Jones potential, σmin,κ, is the molecular separation at which the potential is minimized, and Mκ is the molecular mass. Likewise, nondimensional experimental temperatures are scaled using Tscale,κ=ϵmin,κ/kB, where kB is Boltzmann’s constant. (b) The minimum temperature, Tmin,κ, at which each specie viscosity was measured corresponds approximately to the melting temperature (at atmospheric pressure) for that specie. c) The maximum measurement temperature for each specie, Tmax,κ, in all six cases, exceeds the specie’s atmospheric boiling point. Thus, the viscosities shown exceed the range of temperatures over which each specie is in the liquid state. Sources for the experimental viscosity data shown are as follows: N255; O255. For a discussion of estimated experimental uncertainties, please see the text.

In closing this section, we cite the sources of the experimental viscosity data presented in Figs. 1 and 2, as well as estimated uncertainties, where available. Regarding the latter56, reviews and correlates the data available through 2004, for liquid Ar, N2, and O2. Using their temperature and pressure-dependent correlations for each specie, they define the average absolute deviation, AAD, of any given data set from the correlation, by the (schematic) relationship: AAD=|Xdata-Xcalc|/Xcalc. Thus, their estimated AAD’s provide reasonable estimates for the uncertainty in any given experiment. References and estimated uncertainties for the seven sets of viscosity data shown in Figs. 1 and 2 are as folows: Ne51; uncertainty not reported; Ar52, AAD = 0.92 %; Kr53, uncertainty not reported; Xe54, uncertainty = 0.5 %; N255, AAD = 8.48 %; O255, AAD = 10.2 % ; CH457, uncertainty not reported.

Phonons and self-diffusion

In pursuing our objective of developing a picture of single molecule dynamics, within the framework of Langevin’s equation (5), we confront two additional, connected questions: a) What is the physical origin of the random force. FRt? Typically, FRt is treated as a statistical entity, endowed with physically reasonable statistical properties35,36. In liquid-state dynamics problems, this mathematical approach reflects our poor physical understanding of FRt. b) What is the origin of self-diffusion, i.e., the random, thermally-driven motion of individual molecules though a liquid? Since FRt drives self-diffusion, answering either question offers insight into both.

There are two significant experimental clues: a) A series of experiments, carried out in the 1970’s38, measured the self-diffusion coefficient, Ds=DsT,P, in liquid Ar, Kr, and Xe, over a range of temperatures and a series of fixed pressures, and lead to a (dimensionless) correlation of the following form:

DsT,P=1.1exp0.16Pexp-2.39+0.23PT 15

where Ds=Ds/ϵσ2/M, T=T/ϵ/kB, and P=P/ϵ/σ3. b) More recently, Bolmatov, Brazhkin and Trachenko39,40 presented strong evidence that temperature-dependent specific heats, in a large family of liquids, reflect existence of dominant, solid-state-like, equilibrium phonon modes.

Consider the solid-like dynamics of N-molecule liquid-state systems, over time scales ranging from the Frenkel to the dispersion scales, τF=2π/ωF=O10-14s to τd=2π/ωd=O10-16s. Using a normal mode analysis - as in solid-state systems - under the assumption that individual molecular oscillations remain small enough to approximate intermolecular potentials as quadratic in the oscillation amplitude, 3N independent, vibrational, i.e., phonon modes are determined. The principal limitation of this model centers on ignoring the random hops of individual molecules. However, based on two separate arguments and results presented below, it appears that molecular hopping, over the spectral range ωF<ω<ωd, is limited to a narrow, low-frequency band of frequencies near the solid state limit: ωωF.

On time scales on the order of, and shorter than τF, and in the absence of single-molecule-scale external perturbations - like those produced by short wavelength neutron scattering beams - individual nuclei undergo small displacements, on the order of a small fraction of σ. Under these conditions, and in terms of the Langevin model—see Table 2—the friction force can be neglected and the dynamics of individual molecules modeled using:

Mdvdt=-Mi=1ωi20tv~it,τdτ 16

This equation states that on these time scales, individual molecules are subject to the summed effect of all phonon modes extant over the spectrum, ωFωωd. Specifically, the phonon mode having frequency ωi, induces an instantaneous nuclear velocity v~iτ,ωi, which, in turn, produces a nuclear displacement - over the small time interval 0,t - of Δxiτ,ωi=0tv~iτ,ωidτ. Since phonon modes are independent, the small displacements, Δxiτ,ωi, are likewise. Thus, since Mωi2Δxit corresponds to the ith instantaneous spring force on the molecule, the sum of the random phonon-induced forces corresponds to the right side of (16).

Table 2.

Situation- and time-scale-dependent force terms can be inserted into the generic Langevin equation, (46).

Single molecule dynamics models
Time scale [Collective dynamics] Dominant physics [Example] External force Friction force (deterministic) Random force
τdtτF Phonons; low dissipation
[Elastic] [Continuum flow] N/A -3πσmμvt0 -Mi=1ωi20tv~it,τdτ
τdtτF Phonons; dissipation
[Viscoelastic] [Particle scattering] Ft -0tκt-tvtdt -Mi=1ωi20tv~it,τdτ
τFtτc Phonons; low dissipation
[Transition] [Continuum flow] N/A -3πσmμvt0 See remark d)
τFtτc Phonons; dissipation
[Viscoelastic] [Particle scattering] Ft -0tκt-tvtdt See remark d)
tτc Brownian force; dissipation
[Fluid] [Continuum flow] N/A -3πσmμvt η˙t
tτc Brownian force; dissipation
[Viscoelastic] [Particle scattering] Ft -0tκt-tvtdt η˙t

Explanatory notes regarding each force term are given above as points (a) through (i).

Derivation of the self-diffusion coefficient, Ds

From Note f) in the final section, on the solid-state-like time scale, τdtτF, the equation describing nuclear motion, driven by the jth phonon mode, is given by:

dv~jt;ωjdt=-ωj20tv~jt;ωjdt-ωj2v~jt;ωjt 17

Solving this leads to

v~jt;ωj=v~j0;ωjexp-ωj2t22 18

Thus, the instantaneous velocity of the nucleus corresponds to the superposition of phonon-induced velocity contributions:

vt=jv~jt,ωj 19

so that the dot product, vt·v0, is given by:

vt·v0=jv~jt,ωj·iv~i0,ωi 20

Due to the independence of phonon modes, and in light of (18),

vt·v0=jv~j20;ωjexp-ωj2t22 21

where v~j20;ωj=v~j0,ωj·v~j0,ωj.

The self-diffusion coefficient, Ds, is given by the integrated velocity autocorrelation function:

Ds=0vt·v0dt 22

or

Ds=0jv~j20;ωjexp-ωj2t22dt 23

Integrating then gives:

Ds=π2j1ωjv~j20;ωj 24

In order to evaluate the equilibrium average: (i) recall that within a given volume, V,  the average number of phonons having frequency ω is given by58,59

nω=1expβω-1 25

(ii) at any location in V,  assume that the wave vector associated with each mode, over the ensemble, is isotropically oriented, and (iii) due to the nominally continuous distribution of modes, move to a continuum representation of the average in (24):

Ds=13π2ωFωdgωexpβω-1v~20;ωωdω 26

where gω is the density of modes driving self-diffusion. Finally, in order to arrive at a theoretical Ds having the same generic structure as the empirical Ds in (15), we assume that the density of modes driving self-diffusion is clustered around a critical frequency, ωc:

gω=δω-ωc 27

As described below, this assumption leads to a detailed, physically consistent explanation of phonon-driven self-diffusion in simple, nonpolar, nonmetallic liquids.

Using (27) in (26), approximating expβω-1 as expβω, and nondimensionalizing using Ds=Ds/ϵσ2/M, T=T/ϵ/kB, and P=P/ϵ/σ3, finally leads to:

Ds,αT,P=v~c,α2π/2ωc,αϵασα2Mα1/2exp-ωc,α/ϵαTα 28

where α denotes either Ar, Kr, or Xe, and where two undetermined, pressure-dependent parameters, v~20,ωc and ωc,α, appear. The first,

v~c,α2=v~20,ωc;P 29

is the phonon-induced, ensemble averaged, pressure-dependent, squared velocity of the molecule, evaluated at the critical phonon frequency,

ωc,α=ωc,αP 30

where ωc is the frequency that induces significant, single-atom-scale, random jumps, i.e., self-diffusion. The physical meaning of these parameters is explored in the next section. Note, approximating expβω-1 as expβω, - again, introduced in order to arrive at a theoretical Ds having the same form as (15) - is based on the fact that, in liquid Ar, Kr, and Xe, expβω=O10.

Phonon-induced hopping speeds and critical frequencies; comparisons with experimental self-diffusion coefficients

In order to determine v~c,α2 and ωc,α, we use the experimental correlation38 (15), leading to

ωc,αP=2.39+0.23Pϵα/ 31

and

v~c,α2P=1.1·ωc,αϵασα2Mα1/22/πexp0.16·P 32

Comparisons of temperature- and pressure-dependent self-diffusion coefficients, DsT,P, predicted by the phonon-based model, (28), with experimental measurements38 in liquid Ar, Kr, and Xe, are shown in Figs. 3, 4, and 5. Pressure-dependent magnitudes of the critical phonon frequency, ωc,α, driving self-diffusion, and the root mean square atomic speed, v~c,α2P, induced by these critical phonons, are listed in Table 1. Note that the slight apparent offset between the theoretical correlations and measured self-diffusion coefficients, observed at P=0.86, in Figs. 4 and 5, reflects nondimenisonalization of PT,  and Ds, by the same set of experimental ϵs and σs41 used to nondimensionalize temperatures and viscosities in Figs. 1 and 2. See38 for references to the sources of the ϵs and σs used in their study, and note that ca. 1962, variations in experimentally observed magnitudes of these parameters was on the order of 3 %38.

Figure 3.

Figure 3

Temperature-dependent self-diffusion coefficient of liquid argon. Over the spectrum of frequencies available to a liquid state system, 0ωωd, the phonon self-diffusion model: (i) idealizes the band from the Frenkel frequency, ωF=O1014s-1, to the dispersion frequency, ωd=O1016s-1, as corresponding to solid-state-like dynamics, (ii) assumes that on ωFωωd, individual molecules undergo small amplitude, harmonic vibrations about fixed positions, and (iii) thus allows a normal mode analysis of the solid-like dynamics. In order to capture the observed temperature dependence of Ds38, it is necessary to assume that the band of phonon frequencies driving self-diffusive, single molecule random hops is concentrated near the low end of the solid state spectrum, ωωF, idealized as a delta function in (27). The nondimensional definition of Ds is given following (15). The experimental self-diffusion data was reported in38; experimental uncertainty was estimated to be less than 5 %38,61.

Figure 4.

Figure 4

Temperature-dependent self-diffusion coefficient of liquid krypton. See the caption to Fig. 3 for a description of the phonon model of self-diffusion. The experimental self-diffusion data was reported in38; experimental uncertainty was estimated to be less than 5 %38,61.

Figure 5.

Figure 5

Self-diffusion coefficient for liquid Xenon. See the caption to Fig. 3 for a description of the phonon model of self-diffusion. The experimental self-diffusion data was reported in38; experimental uncertainty was estimated to be less than 5 %38,61.

Table 1.

According to the proposed model of phonon-driven self-diffusion, over the portion of the frequency spectrum where liquid dynamics are solid-like, ωFωωd, the instantaneous velocity of any given nucleus is determined by superposition of 3N independent, phonon-induced velocity contributions: vt=jv~jt,ωj.

Phonon Induced Hopping Speed and Critical Frequency
Reduced Pressure P*=0.18 P*=0.86 P*=2.4 P*=3.15
Specie vc2 ωc×1013 vc2 ωc×1013 vc2 ωc×1013 vc2 ωc×1013
(m/s) s-1 (m/s) s-1 (m/s) s-1 (m/s) s-1
Ar 1340 3.70 1470 3.94 1780 4.48 1950 4.74
Kr 1660 6.06 1813 6.45 NM NM
Xe 1814 7.30 1980 7.77 NM NM

Based on this correspondence and the assumption, (27), that self-diffusive hops are produced by a narrow band of phonon modes centered near a critical frequency, ωc, we identify vc2 as the hopping speed. NM = not measured.

In the next section, we present an alternative derivation of the self-diffusion coefficient which again assumes that phonons underlie self-diffusion, but which models the high frequency liquid state, ωFωωd, as a bond-free Einstein solid in which all nuclei vibrate - in cages of surrounding molecules—at or near a fixed (Einstein) frequency, Ωo. This argument leads to a Ds, (40), having the same generic form as (28), but derived from a significantly different physical viewpoint.

As a preliminary consistency check on the general picture of phonon-driven self-diffusion, leading to the semi-empirical expressions for the characteristic hopping frequency, ωc,α, and speed of hopping molecules in v~c,α2, (31) and (32), respectively, we highlight the following points:

(a) For small to moderate reduced pressures, P=O1, (32) leads to the following approximate equality:

v~c,α2ωc,αϵασα2Mα1/2=Dso,α 33

where Dso,α is the scale of the self-diffusion coefficient. By contrast, as a check on the steps leading from insertion of the integrated single molecule dynamics equation, (16), to the expression for Ds, written in the form:

Ds=0ωcωDgωexpβω-1fωdωdt 34

the left side of (33) can be obtained by starting with the definition, Ds,α=0vt·v0dt, and replacing the upper limit with the characteristic time scale for single-molecule hops, τhop,α=ωc,α-1, where the latter captures the assumed delta-function density of hop-inducing phonons near ωc,α, (27). This leads to Ds,α=v0·v0·ωc,α-1=v~c,α2·ωc,α-1.

(b) For all three liquids, Ar, Kr and Xe, estimated critical phonon frequencies, ωc,α—which we interpret as the characteristic hopping frequency—lie well within the range of frequencies, ωd,α>ωc,α>ωF,α, where these liquids maintain solid-like properties40. Estimated ωc,αs are approximately six times higher than estimated Frenkel frequencies39,40, ωc,α6ωF,α=12πG,α/μα, and approximately two orders of magnitude smaller than characteristic dispersion frequencies, ωd,α, where G,α and να are, respectively, the high-frequency shear modulus22,39,40 and dynamic viscosity of specie α, and where magnitudes of G,α are obtained from39, and magnitudes of να are given in Supplement 4.

(c) Magnitudes of molecular hopping speeds, v~c,α2, exceed, by roughly a factor of two, both the longitudinal liquid-state sound speed60, aliq=K/ρ, and the slightly faster longitudinal solid-state sound speed, asolid=aL2+4/3aS, where K is the bulk modulus and aS=G/ρ is the shear (transverse) wave speed. Thus, average atomic hopping speeds are well in excess of characteristic liquid- and solid-state sound speeds. Equivalently, from (31), the hop-inducing phonon energy, ωc,αP, is approximately twice the intermolecular energy scale, ϵα, and increases (linearly) with pressure.

A second picture of self-diffusion: the high-frequency liquid state corresponds to a bond-free Einstein solid

The argument in the two previous sections leads to semi-empirical expressions for a characteristic hopping frequency, ωc,α, and the speed of hopping molecules in v~c,α2, (31) and (32). In order to reinforce and broaden this argument, we outline a second derivation of Ds that again assumes that self-diffusion is driven by liquid-state phonon modes. The second argument leads to an alternative, but not inconsistent picture of self-diffusion: (i) High frequency molecular dynamics in nonpolar liquids, over ωFωωd, can be modeled as those in a bond-free Einstein solid, in which each molecule vibrates as an independent oscillator, trapped in a cage of surrounding, nominally fixed molecules62. (ii) As described below, self-diffusive hops of individual, initially trapped molecules takes place when the molecule is pushed sufficiently far into a short-lived repulsive state with one of its neighbors.

Four observations provide the basis for this second picture. First, the velocity autocorrelation function (VACF) in Lennard-Jones liquids, e.g., noble liquids, is largely determined by the repulsive part of the LJ potential63. Second, consistent with the fact that repulsive states are short-lived, the short time scale normalized VACF for liquid argon, 0tτc, is well-captured by a quadratic short-time expansion22,64:

ψt=1-Ωo2t22!+Ot4 35

where

Ωo2=v˙0·v˙0v0·v0 36

is the liquid-state Einstein frequency, and where ψt=vt·v0v0·v0-1. Third, over the liquid-state frequency spectrum, 0ωωF, Ωo can be interpreted as the characteristic oscillation frequency of individual liquid state molecules, trapped in a cage of surrounding molecules, all held in their equilibrium positions34. Importantly, while characteristic Ωos have been calculated in Lennard-Jones liquids30, these assume Maxwell-Boltzmann (MB) (kinetic) energy distributions, appropriate to the liquid state portion of the frequency spectrum. Apparently, similar calculations have not been reported over the solid state end of the spectrum, ωdωωF, where Bose-Einstein statistics apply. Significantly, as shown immediately below, use of the liquid-appropriate MB distribution in evaluating the averages in (36) leads to incorrect temperature scaling in Ds, whereas the solid-appropriate Bose-Einstein (BE) distribution provides the correct scaling. Fourth, assuming that wave speeds, vi=ωi/ki,i=1,2,,3N, of the 3N independent phonon modes are of the order of the longitudinal liquid-state or solid-state sound speed, aliq or asolid, respectively (where again, aliqasolid ), we find that over the spectrum of available solid-state-like phonon frequencies, ωFωiωd, phonon wavelengths, λi, are all shorter than approximately 2σ/3. Thus, in contrast to, e.g., crystalline solids, collective, multi-molecule oscillations are nonexistent.

To begin the second derivation, truncate the expansion in (35) at the quadratic term, and approximate the quadratic as an exponential, 1-Ωop2t22!=exp-Ωop2t2/2, where Ωop denotes the Einstein frequency determined by use of the BE distribution in (36). In order to estimate the error in this approximation, first inspect approximate mean frequency-dependent phonon occupation numbers, nω=eω/kBT-1-1: Doing so, we find that at a characteristic temperature of order 102K, nωF10-5, n10ωF10-44, and nωdn102ωFe-10000. Thus, consistent with the first argument leading to (28) above, where it is assumed that the portion of the phonon spectrum driving self-diffusion lies in the neighborhood of ωF, we assume that the solid state-like Einstein frequency, Ωop, is on the order of ωF. In turn, over phonon time scales, τdtτF, the relative error, 2Ωop2t2/4!, in replacing the quadratic in (35) with an exponential is, at most, on the order of 10 %.

Given the exponential approximation for the short-time VACF in (35), Ds can now be expressed as

Ds=v0·v00exp-Ωop2t22dt=π21Ωopv0·v0 37

Importantly, if we assume that liquid-state dynamics determines self-diffusion, then v0·v0=3kbT/M, and, as noted in22 ,ΩopT1/4; in this case, DsT3/4, which is clearly inconsistent with the experimentally observed38 exponential dependence, Dsexp-A2/T, shown, for example, in (28) (where A2 is a positive real number). By contrast, as shown in the first argument leading to (28) above, solid-like phonon dynamics do provide the appropriate scaling. Thus, repeating the analysis from (17) to (21), and setting t=0, we obtain

v0·v0=jv~j20;ωj 38

The fourth observation above, combined with the fact that βω is large over ωFωωd, suggests that the Einstein model of solid state phonons58,62 - which captures incoherent solid state atomic dynamics - is an appropriate model for liquid state phonons. Thus, in order to evaluate v0·v0, we repeat the integral in (26):

v0·v0=ωFωdgωexpβω-1v~20;ωdω 39

where now, the density of (short wavelength, non-collective) phonon states, gω, has the same mathematical definition, gω=δω-Ωop, but a qualitatively distinct interpretation: Over the spectrum of exclusively short wavelength, non-collective phonon modes available to an N-molecule liquid state system, gω captures an assumed, nominally fixed density of phonon modes driving self-diffusive hops of individual molecules. Assuming that the density of all phonon states - which encompasses the narrow band driving self-diffusion - is reasonably well modeled by the Debye model58, or more generally, by any other solid state phonon density model, then both interpretations of gω, here and above, are completely equivalent.

Again, since βω>>1, we can drop the negative one in the denominator in (39), carry out the integral, insert the result in (37), highlight, based on the measurements in38, the temperature and pressure-dependence of Ds, and nondimenisionalize as in the first derivation, to obtain a second (dimensionless) version of Ds:

Ds,αT,P=13v~c,α2π/2Ωop,αϵασα2Mα1/2exp-Ωop,α/ϵαTα 40

where the ’critical phonon frequency’, ωc, of phonon-driven molecular hopping, is now interpreted as the solid state (as opposed to liquid state) Einstein frequency, and where all other terms have the same definitions as before.

Importantly, using two physically distinct arguments, we have derived the same expression for the diffusion coefficient, which, in both cases, has the appropriate exp-A2/T temperature scaling, and which - as described above and below - provides a physically consistent picture of the molecular scale mechanisms driving self-diffusion.

Electron cloud compression, single molecule hopping, and shear-induced viscosity generation

The argument leading to the theoretical expression for dynamic viscosity, (14), is built on the idea that, in non-metallic, nonpolar liquids, polarizability - the susceptibility of a molecule’s electron cloud to distort under the action of an external electric field - plays a dominant role in determining the friction force acting on the molecule. Although not apparent in the arguments leading to theoretical self-diffusion coefficients in (28) and (40), the notion that electron cloud distortion also plays a dominant role here emerges from three observations. First, configuration-averaged instantaneous normal mode (INM) spectra in solid- and liquid-state systems show that, at any instant, a significant fraction of interacting molecular pairs in liquids are in a state of mutual repulsion; in corresponding solids, only a small fraction of pairs are in such states65. Second, as noted above, the VACF in Lennard-Jones, e.g., noble liquids, is largely determined by the repulsive part of the LJ potential63. Third, the argument leading to (40) exposes the notion that self-diffusive hops of single molecules are somehow connected to pre-hop vibration of the molecule, vibrating (at the solid-state Einstein frequency) within a cage of surrounding molecules. Together, these observations suggest that self-diffusive hops result from repulsion-inducing compression of both the trapped molecule’s electron cloud, as well as that of one or more of its neighbors. [Again, Note (i) in the final section indicates that pair-wise interactions are dominant.]

More generally, London dispersion forces comprise the only intermolecular force extant in non-metallic, nonpolar liquids, and these, in turn, are wholly determined by variations in polarizability41. Thus, building qualitative understanding of the essential connection between electron cloud distortion and single molecule viscous and self-diffusion forces represents an important task. Computational chemistry and biology66 offer a number of techniques for visualizing distortion and modification of electron distributions that accompany various intermolecular interactions67,68. Unfortunately, while dispersive interactions are ubiquitous and must be accommodated to accurately capture, e.g., solvation-induced changes in polyatomic molecular structure68, development of predictive dispersion interaction models remains an open problem68.

Visualization of electron cloud distortion accompanying self-diffusion and viscosity emergence in liquids, including that in nonmetallic, nonpolar liquids, apparently has not been undertaken. In order to build qualitative understanding of the essential connection between cloud distortion and these fundamental dynamical processes, we introduce two parameters, xdisp and xdiff, that respectively serve as rough indicators of the specie-dependent electron cloud distortions that accompany self-diffusion and emergence of viscosity.

Considering first electron cloud distortion associated with self-diffusion, we imagine a trapped molecule, vibrating at or near the solid-state Einstein frequency, Ωop=ωc, in a cage of surrounding molecules. Again, as argued in the final section, Note i), on all time scales exceeding Oτd, pair-wise intermolecular collisions dominate 3-body and higher-order collisions. Writing Shrodinger’s equation for the trapped molecule, iψ,t+22/2M=Vψ, estimating the scales of the two terms on the left side, where the time scale is determined by the Einstein (= the critical hopping) frequency, tΩop-1=ωc-1, we find that the length scale on which quantum uncertainty effects are important, xQ=xDeBroglie/2Mω, is small relative to the molecular diameter: σ: xQ/σ10-2. Thus, at least in the vicinity of ωΩop=ωc, nuclear motion is classical.

The apparent mechanism driving molecular hops is sketched in Fig. 6. Since nuclear motion on the τF time scale is classical, we can apply the classical version of conservation of energy to the interaction between a fixed target (cage) molecule, A, and a colliding (trapped, vibrating) molecule, B. On approach toward A, B is assumed to have sufficient (relative) kinetic energy and (relative) momentum to allow A and B to enter a repulsive state. Applying conservation of energy to B, from the instant when maximum electron cloud compression occurs - and the relative velocity of B is 0 - to the instant when the intermolecular separation, rAB, equals the LJ potential minimizing separation, σ~=21/6σ, we obtain:

M2vc2-vi2-ϵrcσ~rσ~r12dr 41

where the intermolecular potential is dominated by repulsion, and where the equation represents the ensemble average dynamics of A and B for a single collision. Using vi2=0, as well as the relationship δσdiff,1=σ~-rc/2, then leads to an estimate for the fractional electron cloud compression, xdiff,1, that produces single molecule hops:

xdiff,1=δσdiffσ~=σ~-rcσ~121-1+Mvc22ϵ-1/12 42

Resolving the relative motion of A and B into normal and tangential directions, the minimum nuclear separation between A and B corresponds to rc, and δσdiff represents the maximum inward displacement, in the normal direction, of each colliding nucleus. See Fig. 6, D. Note, that while the LJ model is well-suited to noble liquids, other pair-wise potentials are available;69 highlights other possibilities, as well as limitations of the LJ model. Note too, in order to avoid over-estimates of vc2 (by a factor of 3), one-dimensional diffusion coefficients are used throughout. For simple isotropic liquids, these can be measured, for example, by measuring displacements of isotopes in a given direction70.

Figure 6.

Figure 6

Two observations63,65 provide important clues concerning the mechanism driving self-diffusion in liquids: (i)65 shows that at any instant, a significant fraction of interacting molecular pairs in liquid Ar exist in a state of mutual repulsion, while in the corresponding solid, only a small fraction of pairs are in such states. (ii) The velocity autocorrelation function (VACF) in Lennard–Jones liquids, e.g., noble liquids, is largely determined by the repulsive part of the potential63. Viewed in terms of the proposed phonon models of self-diffusion, and given the dominance of pair-wise collisions, these observations suggest that the relatively large single-molecule kinetic energies required for hopping are supplied by collisional compression of adjacent electron clouds. Here, xdiff,1,2=δσdiff,1,2/σ~, are estimated relative compressions of individual clouds, and σ~=21/6σ is the intermolecular separation minimizing the LJ potential. See the text for derivations of xdiff,1 and xdiff,2, as well as a short discussion of the gap between compression estimates observed for Ar. In order to contrast liquid state phonon modes, whose wavelengths are all smaller than or approximately equal to 2σ/3, with collective, hydrodynamic modes that emerge on time scales exceeding τc=O10-13s [ where solid-like dynamics take place on τd=O10-16stτF=O10-14s ], (B) depicts a (short-wavelength, standing) sound wave (blue double arrow). Panel (C) depicts the jitter-like phonon oscillations that are superposed on slower hydrodynamic modes. Panel (D) depicts the electron cloud compression driving self-diffusion.

Assuming the validity of the simple energy conservation argument leading to (42), a second estimate of δσdiff, representing a direct connection between self-diffusion and electron cloud compression, can be derived. First, as described above, evaluation of (34), leads to Ds,α=v0·v0·ωc,α-1=v~c,α2·ωc,α-1. Since again, Ds scales as ϵσ2/M, , then vc2ϵσ2/M,ωs. Using this approximation in (42), defining the characteristic frequency of collective, thermally-driven nuclear oscillations as ωth=ϵ/Mσ2, using the fact that, in liquid Ar, Kr, and Xe, ωth=O1011s-1, while ωc=O1013-1014s-1, and Taylor expanding the ·-1/12 term in (42) for small ωth/ωc, we obtain a second estimate for, xdiff,1, which we label as xdiff,2:

xdiff,2121-2ωthωc1/12·1+1122ωthωc-1 43

Estimated, pressure-dependent magnitudes of xdiff,1 and xdiff,2 for Liquid Ar, Kr and Xe, are plotted in Fig. 6. Both estimates assume fast, repulsion-driven, collisionless acceleration of a single hopping molecule, initially trapped and oscillating in a cage of surrounding molecules. However, while both estimates also connect vc2 to the characteristic Ds scale Dsϵσ2/M, the second estimate alone incorporates the critical hopping frequency, ωc. Thus, the consistency of both estimates lends support to the proposed picture of cloud-compression-driven molecular hopping, as well as further support for the proposed general picture of phonon-driven self-diffusion. Note that the approximate 10 % gap between compression estimates observed for Ar (for P0.86) apparently reflects use of differing magnitudes of ϵ, σ, and M,  in this article41 and in38. For example, depending on the technique used, empirical values of ϵ vary by approximately 7 %41 .

Tangential electron cloud distortion and single- molecule-scale viscosity emergence

In liquid state physics, the single-molecule-scale mechanisms that trigger emergence of viscosity and viscous/frictional forces on individual molecules remains an open question. In this section and in the Supplement, focusing on nonpolar, nonmetallic liquids, we present evidence and arguments supporting the following hypotheses, each of which address this question.

  1. Under the nonrestrictive condition where nonequilibrium microscale momentum currents are produced by continuum scale velocity gradients, viscosity emerges on single-molecule length scales.

  2. Under the same conditions, viscosity appears due to sustained tangential distortion of interacting electron clouds.

  3. Viscosity emerges on time scales intermediate between the dispersion time scale, τd=O10-16s, and the Frenkel scale, τF=O10-14s.

Considering hypothesis (a), we first show (Supplement 1) that the Navier–Stokes equations, describing the collective, ensemble average dynamics of N-molecule (Newtonian) fluid systems can be adapted to single-molecule-scale (SMS) systems. This step provides the necessary theoretical framework for defining an SMS viscosity. Once this step is completed, we then show (Supplement 2)—here in preliminary fashion—that the Green–Kubo viscosity relation22,33,35, applied to single-molecule-scale (ensemble average) variations in the transverse momentum current leads to a parametrically correct relationship between the transverse momentum current correlation function, Pxy0Pxyt, and the dynamic viscosity:

0Pxy0Pxytdtμ2δy2u12δy,00e-γtdt=μ2δy2u02γ=μ3πσo3co2β 44

where the meaning of all terms is given in Supplement 2. Together, these steps provide strong evidence that dynamic viscosity, at least in nonpolar liquids satisfying Newtonian constitutive relationships33,71, emerges, and can be defined on single molecule length scales.

The argument supporting hypothesis (b), proceeds as follows. Again, in nonpolar, non-metallic liquids, London dispersion constitutes the only intermolecular force extant. While dispersion arises as a quantum mechanical perturbation to initially independent ground state wave functions41,44, as described above, London’s model can also be couched in terms of molecular polarizabilities, i.e., electron cloud distortions41,44. Importantly, this picture underlies the simple model used to derive theoretical viscosities, (14), above. Thus, in light of the estimates of electron cloud compression, xdiff,1 and xdiff,2 - which provide physically distinct, but self-consistent evidence of cloud-compression-induced self-diffusion—we hypothesize that tangential electron cloud distortion underlies the emergence of viscosity. A schematic representation of this hypothesis is shown in Fig. 7B–D.

Figure 7.

Figure 7

Distortion of electron clouds appears to play a dominant role in both emergence of single-molecule-scale viscosity and resistive viscous forces, as well as in repulsion-driven single molecule hopping. Intuitively, we anticipate that the magnitudes of cloud distortion associated with each process, δσdisp and δσdiff, respectively, should be roughly of the same magnitude. In order to test this idea, and as a consistency check on the proposed models of dispersion-induced viscosity generation and phonon-induced self-diffusion, we estimate viscosity-generating cloud distortion, δσdisp, using an expression equivalent to (8) for the polarization41: α=4nr122/9ao, where n is the number of electrons in the molecule, and r12/ is the mean squared collision-induced displacement of any of the (indistinguishable) electrons occupying the first shell of the molecule. Labeling the quartic root of the latter as δσdisp, and identifying this as the characteristic tangential cloud distortion, we calculate the relative tangential distortion as: xdisp=δσdisp/σ. As shown in (A), outside of He and H2 - which, due to small masses, are apparently dominated by quantum collision dynamics - estimated tangential cloud distortions are approximately of the same magnitiude as those producing self-diffusion, Fig. 6. Thus, while cloud distortions are of comparable magnitude, the type of distortion, compressive versus shearing, engages repulsive versus attractive intermolecular forces. Plate (B) highlights the essential role of microscale (long-time-averaged) shear stresses in driving tangential cloud distortion and resulting viscosity generation. Plate (C) depicts liquid state molecules under local equilibrium conditions (sans phonon jitter). Nonequilibrium, shear-driven, tangential cloud distortion appears as small white areas at the edge of each molecule in Plate (D).

As a rough quantitative test of this picture, we estimate relative electron cloud distortions, xdisp, induced by persistent nonequilibrium shear stress. Given that surrounding (bath) molecules exist in a state of near-equilibrium, at temperature T and mean kinetic energy, 3kBT/2, we anticipate that relative tangential cloud distortions should be of the same order of magnitude as normal distortions, xdiff,1 and xdiff,2, estimated above. Thus, combining (8) and (11), we arrive at:

xdisp=δσσ94αaon1/4σ-1 45

As shown in Fig. 7, estimated relative, shear-induced electron cloud distortion, for a number of noble and diatomic liquids, are approximately of the same magnitude as xdiff,1 and xdiff,2. Dynamically, due to the cohesive nature of viscosity, shear-induced separation of interacting nuclear pairs, rAB, exceeds the potential-minimizing separation, 21/6σ. Finally, note that use of the definition of δσ, given by (11), means that we are approximating the set of level-dependent mean squared electron displacements, ri2¯, as r12¯41; thus, plotted magnitudes of xdisp represent slight underestimates.

The argument supporting hypothesis c) is presented as Note b) in the final section. We note that derivation71 of the single-molecule-scale Stokes (viscous) drag force, D,  that appears in the modified Stoke’s–Einstein relation46, (4), requires use of the SMS Navier-Stokes equations derived in Supplement 1.

In closing this section, we remark that while computational techniques66,68,72,73 can be used to test the proposed connections between normal and tangential electron cloud distortion and self-diffusion and viscosity emergence, we argue that simple, approximate models like those proposed here, are valuable in providing physical insight into the mechanisms that drive self-diffusion and viscosity emergence.

Time scale-dependent models of single molecule dynamics

For nonpolar, spherical atomic liquids like Ar, Kr, and Xe, as well as nonspherical, nonpolar liquids like those examined in46, we propose that single molecule dynamics can be modeled on three distinct time scales: (a) over τdtτF, dynamics are solid-state-like and either dissipative or not—see below; (b) over τFtτc, dynamics are a mixture of solid- and fluid-like and again, either dissipative or not; and c) for t>τc, dynamics are dissipative and fluid-like. We denote these time scales, respectively, as the solid-like, transitional, and fluid-like regimes.

For clarity, we tabulate in Table 2 the various forms that the single molecule dynamics equation can take. The following general points are highlighted:

(a) Equation structure: The proposed equations are physically explicit versions of the memory-free and generalized Langevin equation22,33,35:

Mdvtdt=Fet+Fft+FRt 46

where the instantaneous molecular force is decomposed into a time-dependent external force, Fet, necessary for modeling, e.g., particle scattering problems, a deterministic friction force, Fft, either -0tκt-tvtdt or -3πσmμvt, and a random force, FRt, either determined by the phonon field, Mi=1ωi20tv~it,τdτ, or by the thermal motion of surrounding molecules, η˙t.

(b) Friction force: The set of equations contrasts the qualitatively distinct dynamics that exist under quiescent conditions, when the continuum-scale liquid flows or is stationary, versus the highly dynamic state extant when the target molecule interacts directly with, or lies near an externally introduced particle. In the first case, based on the observation that small molecules follow a slightly modified version of the Stokes-Einstein drag force law46, we assume that the friction force can be expressed as -3πσmμvt, where again, σm is an effective, shape-dependent molecular diameter. This assumption, in turn, assumes that the dynamic viscosity, μ, emerges on time scales that are long relative to the fast disperion time scale, τd, but short relative to the solid-liquid cross-over time scale, τF. Based on the observation that temperature-dependent viscosities are well-predicted by the above model incorporating fast-acting dispersion forces, this appears to be a reasonable assumption. Under conditions where, e.g., scattering particles interact with or near the target molecule, numerous experimental observations show that the friction force is history dependent2022,33.

(c) Connecting the phonon-induced force to the Brownian force: Kubo’s analysis35 can be adapted to show explicitly how the phonon-induced force on τdtτF can be represented as a Brownian force on tτc: i) Express the instantaneous phonon-induced force (in any of three orthogonal directions) as Fphonont=Mi=1nωi2Δxi, where Δxit=0tv~it,τdτ, is the nuclear displacement produced by phonon mode i,  and ωi the ith normal mode frequency; ii) recognize, by (normal mode) construction, that on τdtτF, all Δxis are zero-mean, independent random displacements; iii) define the sum of displacement variances as sn2=i=1nσi2, where σi2=Δxi2 is the ith variance; iv) focusing on time scales on the order of τc and longer, define a random variable Ynt=Fphonont/sn, where t=Oτc; v) allow n to become large, which corresponds to binning all of the random phonon-induced forces acting on τdtτF; vi) by the central limit theorem, the probability density for Ynt approaches a Gaussian density, pYt12πexp-Y22; and vii) on t=Oτc, argue that phonon-induced force components (in each of three orthogonal directions) are delta-correlated, FphonontFphonont=Fo2δt-t, where Fo2 is the force intensity. In Table 2, this guassian, delta-correlated remnant of the phonon-induced force is labeled as η˙t.

(d) The random force, FRt: For the solid-like regime, the arguments from the previous section provide, we believe, substantial support for expressing the random force as FRt=-Mi=1ωi20tv~it,τdτ. For the fluid-like regime, the fact that the modified Stokes-Einstein relation, (4) holds for a large family of molecules46, where again (4) is derivable from the memory-free Langevin equation (5)47, suggests that FRt=η˙t. Proposing a reasonable form of FRt over the transition regime, τFtτc, remains problematic at this point, however. A mathematically simple assumption, which may not be physically valid, would model FRt as a linear superposition of -i=1ωi20tv~it,τdτ and η˙t. This is an open question, however.

(e) The external force: An external force term only appears for problems in which the spatial scale of the external agent, e.g., a scattering particle or a high-energy photon source (having wavelength on the order of σ or smaller), is on the order of the molecular diameter, σ. To account for such forces, a quantum mechanical model of the interaction is typically required; see, e.g.,20,21.

(f) Physical meaning of the phonon-induced force: Over the solid-state-like time scale, τdtτF, under conditions where molecule-scale external forcing is absent, the phonon field determines: (i) each molecule’s instantaneous velocity, vt=iv~jt,ωj, as well as ii) the instantaneous random force, FRt=-Mjωj2Δx~jt=-Mjωj20tv~jt,ωjdt. Thus, the dynamics of individual nuclei: i) can be decomposed into individual contributions produced by each phonon mode: Mv~j˙=-Mωj20tv~jt,ωjdt, or ii) taken as the resultant of these modes: Mv˙=-Mjωj20tv~jt,ωjdt, where time derivatives, denoted by dots, are taken with respect t,  on the solid state time scale.

(g) On the weak coupling between continuum scale flow and microscale dynamics: A scaling argument shows that only under extreme circumstances can continuum flow fields produce non-negligible microscale nonequilibrium mass, momentum and energy currents. Consider, for example, turbulent flow over a mirror-smooth surface (having asperities on the order of, say, 10-9m). Taking the ratio of the maximum continuum-scale viscous shear stress, evaluated at the surface, τcont0.02ρU2Reδ-1/474, to the characteristic molecular-scale shear stress, τmolec10μa/σ, leads to τcont/τmolec0.002UMaσ, where Reδ=ρUδ/μ1 is the Reynolds number associated with a turbulent boundary layer of thickness, δ, U is the speed of the flow external to the boundary layer, and Ma=U/a, is the associated Mach number. Here, τmolec, which is determined by the transverse momentum current22,35, is most easily estimated using the Stoke’s drag law, Fdrag3πσμa71, where the molecular speed is approximated as the sound speed, a. Using the Mach number magnitude, Ma0.3, separating nominally incompressible and compressible flow, leads to the condition: τcontτmolec when Uσ/nu103. Due the small magnitude of σ for small molecular species, it is found, for Ar, Kr, and Xe, that U must be on the order of 106m/s, or higher for continuum-scale dynamics to manifest itself in microscale dynamics.

(h) Development of short time scale collective dynamics models: Under the assumption that fast-acting dispersion forces mediate collective dynamics over the elastic, transition, and fluid-like regimes, sum rules20,22,33,35 provide a powerful tool for developing hydrodynamic models appropriate to each time scale. Supplement 5 illustrates using a simplified, i.e., non-viscoelastic Navier Stokes model of transition regime collective dynamics. The strategy consists of two steps: (1) propose a model of short-time scale (ensemble average) molecular hydrodynamics, and (2) constrain the model by satisfying sum rules.

(i) Dominance of pairwise interactions: In many single molecule dynamics problems, as well as in derivation of field-based continuum dynamics models31,33, it is important to have solid understanding of the relative importance of simultaneous multi-molecule collisions. At any instant, on any time scale exceeding τd, consider a target (nonpolar, liquid-state) molecule, A, surrounded by a set of neighboring molecules, B1,B2,,Bm. Since the weak dispersive potential, ϕ(ABi), that appears during collision of A and Bi, is small relative to the ground state energy, EA(0)+EBi(0), of adjacent, but unperturbed A and Bi, the London collision model41,44 is linear and can be readily modified by superposition to account for n-body interactions in which A simultaneously experiences dispersive interactions with n neighboring molecules. Generalizing Hirschfelder41 by assuming a perturbed wave function that is the product of the n unperturbed, isolated wave functions for n colliding molecules, it is readily shown that the approximate, second-order, dispersive potential has the form,

ϕ(n)rA,r2,,rn-1=-3/2EIα2rA1-6+rA2-6++rAm-6 47

where EI, an empirical constant, is on the order of the ionization energy, α is the polarizability, rAi is the internuclear distance between molecules A and Bi, and m=n-1.

A ’simultaneous n-body collision’ takes place when the internuclear distances between A and n-1 immediately adjacent molecules are all approximately equal to the minimum of these distances, rA1rA2...rAimin. Writing rAj=rAimin+ΔrAj, forming the ratio rAj/rAimin, and Taylor expanding rAj, we see that for an n-body collision to occur - corresponding to n non-negligible contributions to ϕ(n)rA,r2,,rn-1- all n-1 molecules must remain within approximately 16% of the minimum separation, rAimin. Thus, while three-body collisions certainly take place, for example, due to this restrictive condition, pair-wise collisions dominate. Predicted dynamic viscosities above, which assume dominant pairwise collisions, are consistent with this simple argument.

Conclusions

Unraveling the dynamics of individual atoms and small molecules in liquids represents a centuries-old physics problem. While neutron and light-scattering experiments, as well as molecular dynamics simulations, instantaneous normal mode analyses, and molecular hydrodynamics expose and explain single-particle-scale and collective liquid-state dynamics, the descriptions are largely couched in terms of dynamical correlation functions. In an attempt to expose the essential dynamical elements that determine single molecule motion, at least in nonpolar, nonmetallic liquids, this paper presents physical arguments that suggest: (i) intermolecular dispersion forces and temperature-dependent electron screening determine viscosity, i.e., temperature-dependent intermolecular friction forces, and (ii) a narrow band of phonons, lying near the liquid-solid (Frenkel) transition frequency, drives the random molecular jumps constituting self-diffusion.

In mechanistic terms, we present preliminary evidence that, in simple liquids, both viscosity and single molecule viscous drag emerge due to small, collision-induced tangential distortions of individual electron clouds. By contrast, self-diffusional, single-molecule hops are produced by collision-induced compression of interacting molecular clouds; the latter mechanism pushes interacting molecular pairs into short-lived repulsive energy states.

We are hopeful that the preliminary picture of single molecule, liquid state dynamics proposed here promotes further progress in understanding this complex problem.

Supplementary Information

Acknowledgements

This material is based upon research supported by, or in part by, a grant from the US Office of Naval Research under award number N00014-18-1-2754.

Author contributions

R.G.K. conceived the models and wrote the paper. J.D. and P.T. located and analyzed previous related work, checked model arguments and calculations, prepared plots, and edited the final manuscript. All authors reviewed the manuscript.

Competing interests

The authors declare no competing interests.

Footnotes

Publisher's note

Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.

These authors contributed equally: Jerry Dahlberg and Peter T. Tkacik.

Supplementary Information

The online version contains supplementary material available at 10.1038/s41598-021-82112-8.

References

  • 1.Stillinger FH, Weber TA, LaViolette RA. Chemical reactions in liquids: molecular dynamics simulation for sulfur. J. Chem. Phys. 1986;85:6460–6469. doi: 10.1063/1.451426. [DOI] [Google Scholar]
  • 2.Xie XS, Dunn RC. Probing single molecule dynamics. Science. 1994;265:361–364. doi: 10.1126/science.265.5170.361. [DOI] [PubMed] [Google Scholar]
  • 3.Li X, et al. Single-molecule analysis of pip2;1 dynamics and partitioning reveals multiple modes of arabidopsis plasma membrane aquaporin regulation. Plant Cell. 2011;23:3780–3797. doi: 10.1105/tpc.111.091454. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 4.Cui Y, Bastien DA. Water transport in human aquaporin-4: molecular dynamics (md) simulations. Biochem. Biophys. Res. Commun. 2011;412:654–659. doi: 10.1016/j.bbrc.2011.08.019. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 5.Zhao Y, et al. Single-molecule dynamics of gating in a neurotransmitter transporter homologue. Nature. 2010;465:188–193. doi: 10.1038/nature09057. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 6.Vermaas JV, et al. Mechanism of lignin inhibition of enzymatic biomass deconstruction. Biothechnol. Biofuels. 2015 doi: 10.1186/s13068-015-0379-8. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 7.Aprile E, Bolotnikov AE, Bolozdynya AI, Doke T. Noble Gas Detectors. New Jersey: Wiley-VCH; 2006. [Google Scholar]
  • 8.Baudis L, et al. Darwin dark matter wimp search with noble liquids. J. Phys. Conf. Ser. 2012;375:012028. doi: 10.1088/1742-6596/375/1/012028. [DOI] [Google Scholar]
  • 9.Baudis L. Wimp dark matter direct-detection searches in noble gases. Phys. Dark Univ. 2014;4:50–59. doi: 10.1016/j.dark.2014.07.001. [DOI] [Google Scholar]
  • 10.Boulay MG, Hime A. Technique for direct detection of weakly interacting massive particles using scintillation time discrimination in liquid argon. Astropart. Phys. 2006;25:179–182. doi: 10.1016/j.astropartphys.2005.12.009. [DOI] [Google Scholar]
  • 11.Sastri VS, Perumareddi JR. Molecular orbital theoretical studies of some organic corrosion inhibitors. Corrosion. 1997;53:617–622. doi: 10.5006/1.3290294. [DOI] [Google Scholar]
  • 12.Eppes MC, Keanini RG. Mechanical weathering and rock erosion by climate-dependent subcritical cracking. Rev. Geophys. 2017;55:470–505. doi: 10.1002/2017RG000557. [DOI] [Google Scholar]
  • 13.Einstein A. Investigations on the Theory of the Brownian Movement. Dover: Courier Corporation; 1954. [Google Scholar]
  • 14.Einstein A. On the movement of small particles suspended in a stationary liquid demanded by the molecular-kinetic theory of heat. Annalen der Physik. 1905;17:549–560. doi: 10.1002/andp.19053220806. [DOI] [Google Scholar]
  • 15.Perrin J. Mouvement brownien et molécules. J. Phys. Theor. Appl. 1910;9:5–39. doi: 10.1051/jphystap:0191000900500f. [DOI] [Google Scholar]
  • 16.Landau L. Theory of the superfluidity of helium ii. Phys. Rev. 1941;60:356–358. doi: 10.1103/PhysRev.60.356. [DOI] [Google Scholar]
  • 17.Kondepudi D, Prigogine I. Modern Thermodynamics: From Heat Engines to Dissipative Structures. 2. New Jersey: Wiley; 2014. [Google Scholar]
  • 18.Feynman R. Atomic theory of the two-fluid model of liquid helium. Phys. Rev. 1954;94:262–277. doi: 10.1103/PhysRev.94.262. [DOI] [Google Scholar]
  • 19.Lovesey SW, Springer T. Dynamics of Solids and Liquids by Neutron Scattering. Berlin: Springer-Verlag; 1977. [Google Scholar]
  • 20.Lovesey SW. Theory of Neutron Scattering from Condensed Matter. Oxford: Clarendon Press; 1984. [Google Scholar]
  • 21.Berne BJ, Pecora R. Dynamic Light Scattering. New Jersey: Wiley; 1976. [Google Scholar]
  • 22.Boon JP, Yip S. Molecular Hydrodynamics. New York: McGraw Hill; 1980. [Google Scholar]
  • 23.Sköld K, Rowe JM, Ostrowski G, Randolph PD. Coherent- and incoherent-scattering laws of liquid argon. Phys. Rev. A. 1972;6:1107–1131. doi: 10.1103/PhysRevA.6.1107. [DOI] [Google Scholar]
  • 24.McMorrow D, Lotshaw WT, Kenney-Wallace GA. Femtosecond optical kerr studies on the origin of the nonlinear responses in simple liquids. IEEE J. Quantum Electron. 1988;24:443–454. doi: 10.1109/3.144. [DOI] [Google Scholar]
  • 25.Yan Y-X, Gamble EB, Nelson KA. Impulsive stimulated scattering: general importance in femtosecond laser pulse interactions with matter, and spectroscopic applications. J. Chem. Phys. 1985;83:5391–5399. doi: 10.1063/1.449708. [DOI] [Google Scholar]
  • 26.Rosspeintner A, Lang B, Vauthey E. Ultrafast photochemistry in liquids. Ann. Rev. Phys. Chem. 2013;64:247–271. doi: 10.1146/annurev-physchem-040412-110146. [DOI] [PubMed] [Google Scholar]
  • 27.Baskin JS, Chachisvilis M, Gupta M, Zewail AH. Femtosecond dynamics of solvation: microscopic friction and coherent motion in dense fluids. J. Phys. Chem. A. 1998;102:4158–4171. doi: 10.1021/jp9803384. [DOI] [Google Scholar]
  • 28.Greene BI, Fleury PA, Carter HL, Jr, Farrow RC. Microscopic dynamics in simple liquids by subpicosecond birefringences. Phys. Rev. A. 1984;29:271–274. doi: 10.1103/PhysRevA.29.271. [DOI] [Google Scholar]
  • 29.Rahman A. Correlations in the motion of atoms in liquid argon. Phys. Rev. 1964;136:A405–A411. doi: 10.1103/PhysRev.136.A405. [DOI] [Google Scholar]
  • 30.Levesque D, Verlet L. Computer, “experiments” on classical fluids, iii. time-dependent self correlation functions. Phys. Rev. A. 1970;2:2514–2528. doi: 10.1103/PhysRevA.2.2514. [DOI] [Google Scholar]
  • 31.Evans DJ, Morriss GP. Statistical Mechanics of Nonequilibrium Liquids. Cambridge: Cambridge University Press; 2008. [Google Scholar]
  • 32.Mountain RD. Spectral distribution of scattered light in a simple fluid. Rev. Mod. Phys. 1966;205:204–214. doi: 10.1103/RevModPhys.38.205. [DOI] [Google Scholar]
  • 33.Forster D. Hydrodynamic Fluctuations, Broken Symmetry, and Correlation Functions. Perseus: CRC Press; 1990. [Google Scholar]
  • 34.Hansen JP, McDonald IR. Theory of Simple Liquids with Applications to Soft Matter. 4. Amsterdam: Elsevier; 2013. [Google Scholar]
  • 35.Kubo R, Toda M, Hashitsume N. Statistical Physics II: Nonequilibrium Statistical Mechanics. Berlin: Springer-Verlag; 1991. [Google Scholar]
  • 36.Zwanzig R. Statistical Mechanics of Irreversibility. Lectures in Theoretical Physics. Geneva: Interscience; 1961. [Google Scholar]
  • 37.Rousch J, Boon J-P, Fleury PA. The principle of corresponding states and the dynamic properties of simple liquids. Phys. A. 1977;88A:347–361. doi: 10.1016/0378-4371(77)90009-7. [DOI] [Google Scholar]
  • 38.Naghizadeh J, Rice SA. Kinetic theory of dense fluids. x. measurement and interpretation of self-diffusion in liquid ar, kr, xe, and ch4. J. Chem. Phys. 1962;36:2710–2720. doi: 10.1063/1.1732357. [DOI] [Google Scholar]
  • 39.Bolmatov D, Brazhkin VV, Trachenko K. The phonon theory of liquid thermodynamics. Sci. Rep. 2012;2:421. doi: 10.1038/srep00421. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 40.Trachenko K, Brazhkin VV. Collective modes and thermodynamics of the liquid state. Rep. Prog. Phys. 2015;79:016502. doi: 10.1088/0034-4885/79/1/016502. [DOI] [PubMed] [Google Scholar]
  • 41.Hirschfelder JO, Curtiss CF, Bird BR. Molecular Theory of Gases and Liquids. New Jersey: Wiley; 1954. [Google Scholar]
  • 42.Najafi B, Mason EA, Kestin J. Improved corresponding states principle for the noble gases. Phys. A. 1983;119A:387–440. doi: 10.1016/0378-4371(83)90101-2. [DOI] [Google Scholar]
  • 43.Ingebrigtsen TS, Schrøder TB, Dyre JC. What constitutes a simple liquid? Phys. Rev. X. 2012;2:011011. doi: 10.1103/PhysRevX.2.011011. [DOI] [Google Scholar]
  • 44.London F. The general theory of molecular forces. Trans. Faraday Soc. 1937;33:8b–26. doi: 10.1039/TF937330008B. [DOI] [Google Scholar]
  • 45.French RH. Origins and applications of london dispersion forces and hamaker constants in ceramics. J. Am. Ceram. Soc. 2000;83:2117–2146. doi: 10.1111/j.1151-2916.2000.tb01527.x. [DOI] [Google Scholar]
  • 46.Edward JT. Molecular volumes and the Stokes–Einstein equation. J. Chem. Educ. 1970;47:261–270. doi: 10.1021/ed047p261. [DOI] [Google Scholar]
  • 47.Chandrasekhar S. Stochastic problems in physics and astronomy. Rev. Mod. Phys. 1943;15:1–89. doi: 10.1103/RevModPhys.15.1. [DOI] [Google Scholar]
  • 48.Slater JC. Note on Hartree’s method. Phys. Rev. 1930;35:210–211. doi: 10.1103/PhysRev.35.210.2. [DOI] [Google Scholar]
  • 49.Raiola F, et al. Electron screening in d(d, p)t for deuterated metals: temperature effects. J. Phys. G Nucl. Part. Phys. 2005;31:1141–1149. doi: 10.1088/0954-3899/31/11/002. [DOI] [Google Scholar]
  • 50.Krausser J, Samwer KH, Zaccone A. Interatomic repulsion softness directly controls the fragility of supercooled metallic melts. Proc. Natl. Acad. Sci. 2015;112:13762–13767. doi: 10.1073/pnas.1503741112. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 51.Herreman W, Grevendonk W. An experimental study on the shear viscosity of liquid neon. Cryogenics. 1974;14:395–398. doi: 10.1016/0011-2275(74)90081-2. [DOI] [Google Scholar]
  • 52.Haynes WM. Viscosity of gaseous and liquid argon. Physica. 1973;67:440–470. doi: 10.1016/0031-8914(73)90162-6. [DOI] [Google Scholar]
  • 53.Boon JP, Thomaes G. The viscosity of liquefied gases. Physica. 1963;29:208–214. doi: 10.1016/S0031-8914(63)80278-5. [DOI] [Google Scholar]
  • 54.Legros JC, Thomaes G. The viscosity of liquid xenon. Physica. 1965;31:703–705. doi: 10.1016/0031-8914(65)90008-X. [DOI] [Google Scholar]
  • 55.Hellemans J, Zink H, Van Paemel O. The viscosity of liquid nitrogen and liquid oxygen along isotherms as a function of pressure. Physica. 1970;47:45–57. doi: 10.1016/0031-8914(70)90098-4. [DOI] [Google Scholar]
  • 56.Lemmon EW, Jacobsen RT. Viscosity and thermal conductivity equations for nitrogen, oxygen, argon, and air. Int. J. Thermophys. 2004;25:21–69. doi: 10.1023/B:IJOT.0000022327.04529.f3. [DOI] [Google Scholar]
  • 57.Haynes WM. Viscosity of saturated liquid methane. Physica. 1973;70:410–412. doi: 10.1016/0031-8914(73)90257-7. [DOI] [Google Scholar]
  • 58.Pathria RK, Beale PD. Statistical Mechanics. 3. Amsterdam: Academic Press; 2011. [Google Scholar]
  • 59.Reif F. Fundamentals of Statistical and Thermal Physics. Long Grove: Waveland Press; 2009. [Google Scholar]
  • 60.Dyre JC. Colloquium: the glass transition and elastic models of glass-forming liquids. Rev. Mod. Phys. 2006;78:953–972. doi: 10.1103/RevModPhys.78.953. [DOI] [Google Scholar]
  • 61.Suárez-Iglesias O, Medina I, Sanz M, Pizarro C, Bueno JL. Self-diffusion in molecular fluids and noble gases: available data. J. Chem. Eng. Data. 2015;60:2757–2817. doi: 10.1021/acs.jced.5b00323. [DOI] [Google Scholar]
  • 62.Ashcroft NW, Mermin ND. Solid State Physics. Philadelphia: Holt-Saunders; 1976. [Google Scholar]
  • 63.Kushick J, Berne BJ. Role of attractive forces in self-diffusion in dense Lennard–Jones fluids. J. Chem. Phys. 1973;59:3732–3736. doi: 10.1063/1.1680543. [DOI] [Google Scholar]
  • 64.Nijboer BRA, Rahman A. Time expansion of correlation functions and the theory of slow neutron scattering. Physica. 1966;32:415–432. doi: 10.1016/0031-8914(66)90068-1. [DOI] [Google Scholar]
  • 65.Stratt RM. The instantaneous normal modes of liquids. Acc. Chem. Res. 1995;28:201–207. doi: 10.1021/ar00053a001. [DOI] [Google Scholar]
  • 66.Lewars EG. Computational Chemistry. Berlin: Springer; 2011. [Google Scholar]
  • 67.Kooi DP, Gori-Giorgi P. A variational approach to london dispersion interactions without density distortion. J. Phys. Chem. Lett. 2019;10:1537–1541. doi: 10.1021/acs.jpclett.9b00469. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 68.Wuttke A, Mata RA. Visualizing dispersion interactions through the use of local orbital spaces. J. Comput. Chem. 2017;38:15–23. doi: 10.1002/jcc.24508. [DOI] [PubMed] [Google Scholar]
  • 69.Wang X, Ramírez-Hinestrosa S, Dobnikar J, Frenkel D. The Lennard–Jones potential: when (not) to use it. Phys. Chem. Chem. Phys. 2020;22:10624–10633. doi: 10.1039/C9CP05445F. [DOI] [PubMed] [Google Scholar]
  • 70.Mischler E, Humbert F, Diter B, Canet D. Measurement of one-dimensional spatially resolved self-diffusion coefficients and longitudinal relaxation times with a single b1 gradient. J. Magn. Reson. Ser. B. 1995;106:32–39. doi: 10.1006/jmrb.1995.1005. [DOI] [Google Scholar]
  • 71.Panton RL. Incompressible Flow. New Jersey: Wiley; 2013. [Google Scholar]
  • 72.Kresse G, Hafner J. Ab initio molecular dynamics for liquid metals. Phys. Rev. B. 1993;47:558–561. doi: 10.1103/PhysRevB.47.558. [DOI] [PubMed] [Google Scholar]
  • 73.Iftimie R, Minary P, Tuckerman ME. Ab initio molecular dynamics: concepts, recent developments, and future trends. Proc. Natl. Acad. Sci. 2005;102:6654–6659. doi: 10.1073/pnas.0500193102. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 74.Schlichting H, Gersten K. Boundary-Layer Theory. Amsterdam: Elsevier; 2017. [Google Scholar]

Associated Data

This section collects any data citations, data availability statements, or supplementary materials included in this article.

Supplementary Materials


Articles from Scientific Reports are provided here courtesy of Nature Publishing Group

RESOURCES