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Downloaded from http://rspa.royalsocietypublishing.org/ on June 18, 2017 Proc. R. Soc. A (2008) 464, 2015–2035 doi:10.1098/rspa.2008.0071 Published online 8 April 2008 Velocity profile in the Knudsen layer according to the Boltzmann equation B Y C HARLES R. L ILLEY AND J OHN E. S ADER * Department of Mathematics and Statistics, The University of Melbourne, Parkville, Vic. 3010, Australia Flow of a dilute gas near a solid surface exhibits non-continuum effects that are manifested in the Knudsen layer. The non-Newtonian nature of the flow in this region has been the subject of a number of recent studies suggesting that the so-called ‘effective viscosity’ at a solid surface is half that of the standard dynamic viscosity. Using the Boltzmann equation with a diffusely reflecting surface and hard sphere molecules, Lilley & Sader discovered that the flow exhibits a striking power-law dependence on distance from the solid surface where the velocity gradient is singular. Importantly, these findings (i) contradict these recent claims and (ii) are not predicted by existing highorder hydrodynamic flow models. Here, we examine the applicability of these findings to surfaces with arbitrary thermal accommodation and molecules that are more realistic than hard spheres. This study demonstrates that the velocity gradient singularity and power-law dependence arise naturally from the Boltzmann equation, regardless of the degree of thermal accommodation. These results are expected to be of particular value in the development of hydrodynamic models beyond the Boltzmann equation and in the design and characterization of nanoscale flows. Keywords: Knudsen layer; Boltzmann equation; rarefied gas dynamics 1. Introduction Micro- and nanoscale systems are currently the subject of intense research and development. Gas flows in such systems often exhibit rarefied flow effects, which arise when the mean free path of gas molecules becomes significant relative to some dimension that characterizes the system. Examples include gas flows in microchannels, which are the basis for numerous micro-electro-mechanical systems flow sensing and control applications (Ho & Tai 1998), thermal force effects on microcantilevers (Gotsmann & Durig 2005) and the thermal transpiration principle upon which the solid-state Knudsen compressor (Sone 2002; McNamara & Gianchandani 2005) is based. Accurate simulations of such rarefied flow effects are vital for the efficient design, optimization and future development of micro- and nanodevices. Conventional Navier–Stokes solutions of rarefied flows are inaccurate because rarefied flows are characterized by non-equilibrium distributions of molecular * Author for correspondence ( [email protected]). Received 18 February 2008 Accepted 14 March 2008 2015 This journal is q 2008 The Royal Society Downloaded from http://rspa.royalsocietypublishing.org/ on June 18, 2017 2016 C. R. Lilley and J. E. Sader velocities, thus violating the near-equilibrium assumption that is the underlying basis of the Navier–Stokes description. Accurate rarefied flow modelling requires solutions of the more fundamental Boltzmann equation. For rarefied flows of ‘real world’ interest, the Boltzmann equation is usually solved numerically with Bird’s direct simulation Monte Carlo (DSMC) method (Bird 1994). However, for many applications of current interest, DSMC calculations can impose prohibitive computational demands. This is exemplified by the work of Reese et al. (2003), who report that a two-dimensional DSMC calculation of rarefied air flow around a moving microcantilever required 24 hours on a parallel supercomputer with 3000 processors. Such intensive computational demands have motivated recent interest in the application of high-order hydrodynamic models to simulate rarefied flows (Reese et al. 2003; Guo et al. 2006; Gu & Emerson 2007; Mizzi et al. 2007; Struchtrup & Torrilhon 2007; Torrilhon & Struchtrup 2008), with the expectation that such models may be employed in computational fluid dynamics solvers to accurately capture rarefaction effects with much less computational effort than comparable DSMC calculations. An important consideration in studying gas flows in micro- and nanoscale systems is the Knudsen layer, which is a rarefaction effect that extends to a distance the order of one mean free path from a solid surface. Within the Knudsen layer, molecules collide with the surface more frequently than they collide with each other (Gallis et al. 2006). This produces a distribution of molecular velocities that is perturbed significantly from the equilibrium Maxwellian state, and results in two important rarefaction phenomena: first, the gas at the surface has a finite velocity relative to the surface, known as the slip velocity. Second, the gas near the surface exhibits non-Newtonian behaviour. For micro- and nanoscale flows, which have characteristic dimensions of the order of several mean free paths, the Knudsen layer occupies a large portion of the flow and can therefore dominate the flow behaviour. A detailed knowledge of the Knudsen layer structure is thus essential for modelling rarefied flows in micro - and nanoscale systems. The structure of the Knudsen layer has been studied extensively (Bardos et al. 1986; Cercignani 2000; Sone 2002; Gu & Emerson 2007; Mizzi et al. 2007; Struchtrup & Torrilhon 2007; Torrilhon & Struchtrup 2008). Recently, Lilley & Sader (2007) used existing solutions of the linearized Boltzmann equation (LBE) and precise DSMC calculations to examine the structure of the Knudsen layer in detail for shear flow past a solid wall. They discovered that the bulk gas velocity u parallel to the surface is accurately described by the remarkably simple powerlaw behaviour uKuð0Þf ya ; ð1:1Þ where y is the normal distance from the surface and az0.8. This result applies for hard sphere molecules near a diffusely reflecting surface, which corresponds to full thermal accommodation. This power-law behaviour prevails to a distance of about one mean free path from the surface, and thus describes the inner portion of the Knudsen layer. Importantly, equation (1.1) establishes the existence of a velocity gradient singularity at the surface. This prediction of a singularity is consistent with the work of Willis (1962) and Sone (2002), who rigorously examined the linearized (approximate) Bhatnagar–Gross–Krook (BGK) model equation Proc. R. Soc. A (2008) Downloaded from http://rspa.royalsocietypublishing.org/ on June 18, 2017 Velocity profile in the Knudsen layer 2017 true velocity profile Figure 1. Schematic of Kramers’ problem. Here, y is the normal distance from the stationary solid surface at yZ0 and u(y) is the bulk gas velocity in the direction parallel to the surface. The so-called macroscopic slip velocity a x is extrapolated from the linear velocity profile outside the Knudsen layer where y/N, and differs from the true slip velocity u(0). x is called the slip length. (Bhatnagar et al. 1954) and discovered a singularity of logarithmic form du/ dy fln y at the surface. The work of Lilley & Sader (2007) establishes that a singularity also exists in the full Boltzmann equation for hard spheres. This singularity is not captured by existing hydrodynamic models and contradicts recent work (Fichman & Hetsroni 2005; Lockerby et al. 2005a) that predicts a finite velocity gradient at the surface. In this paper, we first examine the structure of the Knudsen layer for a hard sphere gas near a surface with partial thermal accommodation using the existing LBE solutions supported by precise DSMC calculations. These investigations establish that both the above power-law description and velocity gradient singularity are present in the Knudsen layer under these more general conditions. We then harness the versatility of the DSMC method to investigate the Knudsen layer for a more realistic gas model with partial thermal accommodation, and again show that the power-law description is accurate and that the singularity exists. These results corroborate and extend the applicability of the power-law description (Lilley & Sader 2007) of the Knudsen layer. 2. Background In this paper, we study the Knudsen layer for Kramers’ problem (Kramers 1949), which is illustrated in figure 1. This problem considers the unidirectional isothermal motion of a gas filling a half-space bounded by a stationary planar solid surface. The Kramers’ problem is often considered in fundamental studies of the Knudsen layer, and has been researched extensively (e.g. Cercignani (2000) and Sone (2002) and references therein). The only bulk flow gradient in the Kramers’ problem is du/dy, where u is the velocity component parallel to the surface and y is the normal distance from the surface. As y/N, du/dy tends to the constant value a. Consistent with Proc. R. Soc. A (2008) Downloaded from http://rspa.royalsocietypublishing.org/ on June 18, 2017 2018 C. R. Lilley and J. E. Sader existing work on the shear-thinning nature of gases (Montanero et al. 2000; Garzó & Santos 2003), we adopt the notion of an ‘effective viscosity’ to describe the non-Newtonian behaviour inherent in the Kramers’ problem. This effective viscosity m is defined by t ; mðyÞ Z du=dy where the shear stress t is constant in the Kramers’ problem. We emphasize that the effective viscosity is a mathematical construct with no connection to real gas properties, and its value will change with flow geometry (Hadjiconstantinou 2006). It is adopted here for convenience, ease of discussion and consistency with previous works. We normalize the flow speed u according to u~ Z u=ðalnom Þ: The nominal mean free path lnom is given by m½1 p 1=2 ; lnom Z n 2mkT where n and m are the molecular number density and mass; k is Boltzmann’s constant; and T is the temperature. Here, m[1] is the first viscosity approximation from the Chapman–Enskog solution of the Boltzmann equation (Chapman & Cowling 1970), which depends upon the molecular model. For hard spheres pffiffiffi lnom Z ð5p=16Þ=ð 2nAÞ, where A is the hard sphere cross section. We normalize y according to y~ Z y=lnom ; and define the non-dimensional slip coefficient x~ by x~ Z x=lnom : Solutions of the Kramers’ problem must consider the non-equilibrium distribution of molecular velocities in the Knudsen layer and hence must solve the Boltzmann equation, as noted in §1. The Boltzmann equation provides a rigorous description of a dilute gas and describes the gas behaviour in terms of the temporal evolution and spatial variation of a general molecular velocity distribution function f. For a steady flow in the absence of body forces, the Boltzmann equation for a monatomic gas is vf vf v$ : Z vx vt coll Here, f(x, v) is the distribution of molecular velocities v that depends upon the position vector x. The collision term [vf/vt]coll is a nonlinear integral expression that describes the change in f due to intermolecular collisions. The nonlinear integro-differential form of the Boltzmann equation poses formidable challenges to solution by analytical methods. Indeed, complete closed-form solutions have not been found, even for the simple flows like Proc. R. Soc. A (2008) Downloaded from http://rspa.royalsocietypublishing.org/ on June 18, 2017 Velocity profile in the Knudsen layer 2019 Kramers’ problem. The major difficulties arise from the collision term. For weakly non-equilibrium flows like Kramers’ problem, the collision term can be linearized, yielding the LBE. The LBE retains the most important physical characteristics of the full Boltzmann equation, yet is tractable for many problems (Cercignani 1988). Computational tools offer the only practical means of solving the full nonlinear Boltzmann equation (see Cercignani 2000, p. 114), the most common being Bird’s DSMC method (Bird 1994). The DSMC method captures macroscopic gas behaviour by modelling a set of simulator particles, which represent the real gas molecules, as they undergo simulated intermolecular collisions, interact with solid surfaces and move through physical space. Proofs that the DSMC method solves the Boltzmann equation have been provided by Wagner (1992) and Pulvirenti et al. (1994). Here, we consider the existing LBE solutions of the Kramers’ problem in §3, and precise DSMC solutions in §4. An important aspect of the Kramers’ problem is the interaction between gas molecules and the surface. Because the physical details of such gas–surface interactions are complex, Maxwell’s simple boundary condition (Maxwell 1879) is often used. Under this condition, a fraction s of molecules are reflected diffusely from the surface, meaning that the reflected molecules have velocities distributed according to the equilibrium distribution at the surface temperature Twall. The remaining fraction 1Ks of molecules is reflected specularly, meaning that their velocity components normal to the surface are simply reversed upon reflection. Here, the parameter s is called the thermal accommodation coefficient and ‘full’ and ‘partial’ thermal accommodation refer to cases with sZ1 and s!1, respectively. 3. LBE solutions for hard sphere molecules The LBE for Kramers’ problem can be written (Cercignani 1988) as 2avy ðvx KayÞ C vy vy h Z Lh; where L denotes the linearized collision operator. The molecular velocity vZ ðvx ; vy ; vz Þ has components vx parallel to u, vy oriented in the y-direction, and vz orthogonal to vx and vy. The perturbation function h is given by hðx; vÞ Z f K1; f ðjhj/ 1Þ; where f is the absolute Maxwellian distribution. Numerical solutions of the LBE for Kramers’ problem with hard sphere molecules have been published by Loyalka & Hickey (1989, 1990), Ohwada et al. (1989) and Siewert (2003). These solutions all consider full thermal accommodation (sZ1). Loyalka & Hickey (1990) and Siewert (2003) also provided solutions for partial accommodation (s!1). Lilley & Sader (2007) examined the LBE velocity solutions for sZ1. Specifically, they studied these solutions in the asymptotic limit as y~/ 0, by analysing the behaviour of y~ versus u~ K u~ð0Þ on a double logarithmic scale. This Proc. R. Soc. A (2008) Downloaded from http://rspa.royalsocietypublishing.org/ on June 18, 2017 2020 C. R. Lilley and J. E. Sader 10 1 external flow Knudsen layer 0.1 0.01 0.1 1 10 Figure 2. Published LBE solutions of Kramers’ problem for sZ1 compared with the power-law description of equation (3.1). This power-law description is fitted to the LBE solution of Ohwada et al. (1989), and is indistinguishable from fits to the other three LBE solutions shown here. Circles, Ohwada et al. data; solid line, power-law fit to Ohwada et al. data; triangles, Loyalka & Hickey (1989) data; squares, Loyalka & Hickey (1990) data; asterisks, Siewert data. plotting scheme reveals striking linearity, as shown in figure 2, and immediately leads to the power-law velocity description of equation (1.1). In terms of the normalized quantities u~ and y~, this power law can be written as u~ Z u~ð0Þ C C y~a : ð3:1Þ The corresponding effective viscosity is then m Z mN y~1Ka ; aC where mN is the standard dynamic viscosity. We emphasize that the Knudsen layer extends beyond y~Z 1, and there does not exist a strict demarcation between the Knudsen layer and the outer (external) flow region. Indeed, the Knudsen layer decays asymptotically into the outer flow region. As such, the regions marked as ‘Knudsen layer’ and ‘external flow’ around y~Z 1 in figures 2, 6 and 7 are given as a guide to the eye only. Importantly, the power-law description is only valid in the region y~! 1, as is clear from figure 2, which coincides with the inner part of the Knudsen layer. For the hard sphere LBE solutions with sZ1, Lilley & Sader (2007) calculated the fit parameters C and a by linear regression analysis of the log data for y~! 1. These parameters are shown in table 1, together with u~ð0Þ, the slip coefficients x~ and the sample correlation coefficients r. In every case, r is very close to unity, Proc. R. Soc. A (2008) Downloaded from http://rspa.royalsocietypublishing.org/ on June 18, 2017 2021 Velocity profile in the Knudsen layer Table 1. Power-law parameters and slip coefficients for the LBE solutions. (Data for sZ1 differ slightly from those of Lilley & Sader (2007) due to the different mean free paths used in data reduction. Here r is the sample correlation coefficient for the linear regression analysis of the log y~ versus log ½~ u K u~ð0Þ data. Solutions: O, Ohwada et al. (1989); LH1, Loyalka & Hickey (1989); LH2, Loyalka & Hickey (1990); S, Siewert (2003).) solution s x~ u~ð0Þ C a r O LH1 LH2 1 1 0.2 0.4 0.6 0.8 1 0.1 0.3 0.5 0.7 0.9 1 1.1320 1.1109 9.2140 4.1913 2.4987 1.6395 1.1144 19.2364 5.8739 3.1793 2.0096 1.3489 1.1141 0.8204 0.8147 8.6052 3.6636 2.0482 1.2625 0.8075 18.5867 5.3070 2.6913 1.5967 1.0076 0.8074 1.2423 1.2513 1.4920 1.4207 1.3537 1.2901 1.2320 1.5334 1.4624 1.3948 1.3311 1.2709 1.2421 0.8027 0.7978 0.7015 0.7229 0.7460 0.7707 0.7992 0.6946 0.7166 0.7397 0.7646 0.7918 0.8062 1–1.2!10K5 1–3.3!10K5 1–3.0!10K6 1–1.8!10K7 1–4.4!10K7 1–3.6!10K6 1–4.9!10K6 1–2.3!10K5 1–2.9!10K5 1–3.8!10K5 1–4.5!10K5 1–4.8!10K5 1–4.9!10K5 S demonstrating the accuracy of the power-law description within the Knudsen layer. Importantly, all LBE solutions have a distinctly less than unity. Since l is the only natural length scale in a dilute gas flow, this power law establishes that the velocity gradient is singular at the wall ð~ y Z 0Þ where the corresponding effective viscosity of zero. We repeated this analysis for the LBE solutions with partial thermal accommodation (0.1%s%0.9) by Loyalka & Hickey (1990) and Siewert (2003), and observed a similar power-law velocity behaviour in all cases. For these solutions, values of u~ð0Þ, C, a, x~ and r are included in table 1. Again, the correlation coefficients are small, demonstrating the accuracy of the power-law description in the Knudsen layer. In all the cases, the power-law parameter a is distinctly less than unity, as for the solutions with sZ1. Therefore, for these LBE solutions with s!1, the power law also establishes the existence of a velocity gradient singularity at the surface where the effective viscosity is zero. Figure 3 shows all the LBE solutions, plotted together with their corresponding power-law velocity profiles, which further demonstrates the accuracy of the power-law description within the Knudsen layer. To explore the dependence of u~ð0Þ, C, a and x~ on the accommodation coefficient s, these parameters are plotted versus s in figure 4. We discuss these figures in §5. 4. DSMC solutions for hard sphere and variable soft sphere molecules We have two aims in simulating the Knudsen layer with the DSMC method. First, we use precise DSMC calculations to confirm the accuracy of the hard sphere LBE solutions and the ensuing power-law velocity description established Proc. R. Soc. A (2008) Downloaded from http://rspa.royalsocietypublishing.org/ on June 18, 2017 2022 1 C. R. Lilley and J. E. Sader 0.9 0.7 = 1.0 0.8 0.6 0.5 0.4 0 5 0.3 0.2 10 0.1 15 20 Figure 3. LBE solutions of Kramers’ problem for hard spheres at various s, published by Loyalka & Hickey (1989, 1990), Ohwada et al. (1989) and Siewert (2003). All solutions include velocity profiles at sZ1. Only Loyalka & Hickey (1990) and Siewert (2003) give profiles for s!1. Triangles, Ohwada et al.; crosses, Loyalka & Hickey (1989); circles, Loyalka & Hickey (1990); squares, Siewert; solid lines, power-law fits. in §3. Since LBE is an approximation to the full nonlinear Boltzmann equation, the resulting solutions must be validated against those of the full Boltzmann equation, as afforded by precise DSMC calculations. Second, we use DSMC calculations to probe the Knudsen layer structure for a molecular model that is more realistic than the simple hard sphere, and has not been studied with LBE. We use a major advantage of the DSMC method, in that it can, in principle, incorporate the molecular models with any level of complexity. Importantly, this provides a means of solving the Boltzmann equation for realistic gas models that cannot be studied with LBE. Here, we investigate the Knudsen layer structure for the variable soft sphere (VSS) model (Koura & Matsumoto 1991). The VSS model approximates the molecules that interact according to an intermolecular force that is inversely proportional to a power of the molecular separation distance. Details of our hard sphere and VSS models appear in appendix A. A number of reports have studied the Knudsen layer with DSMC calculations (Bird 1977; Lockerby et al. 2005b), with several appearing in the past year (Gu & Emerson 2007; Lilley & Sader 2007; Mizzi et al. 2007; Struchtrup & Torrilhon 2007; Torrilhon & Struchtrup 2008). These studies employed Couette flow solutions to capture Kramers’ problem, and we have followed suit using the geometry illustrated in figure 5. Our DSMC code solved the full Couette flow domain, and provided the mean flow velocities calculated by u c ðy c ÞZ 1=2½u c ðyc ÞK u c ðKyc Þ. These mean velocities were transformed into the reference frame of the Kramers’ problem for subsequent analysis (see appendix A). While Bird (1977), Lockerby et al. (2005b), Gu & Emerson (2007), Mizzi et al. (2007), Struchtrup & Torrilhon (2007) and Torrilhon & Struchtrup (2008) do not report the power-law velocity structure of the Knudsen layer, the DSMC solution of Lockerby et al. (2005b) does exhibit the power-law dependence with az0.8 for Proc. R. Soc. A (2008) Downloaded from http://rspa.royalsocietypublishing.org/ on June 18, 2017 Velocity profile in the Knudsen layer (a) 2023 (b) 50 1.6 20 1.5 10 5 1.4 2 1.3 1 1.2 (c) 0.85 (d) 50 0.80 20 10 0.75 5 0.70 2 0 0.2 0.4 0.6 0.8 accommodation coefficient, 1.0 1 0 0.2 0.4 0.6 0.8 accommodation coefficient, 1.0 ~ Figure 4. Comparison of power-law parameters (a) u~ð0Þ, (b) C and (c) a, and (d ) slip coefficient x. Error bars for C and a are shown for the DSMC solutions. These error bars represent 99% CIs from the nonlinear regression analysis. Errors in u~ð0Þ and x~ are not visible on these axes. Curve fits ~ Open circles, Loyalka & Hickey; squares, described in equation (5.3) of §5 are shown for u~ð0Þ and x. Siewert; filled circles, DSMC (hard spheres); diamonds, DSMC (VSS); dot-dashed line, DSMC curve fit; solid line, curve fit. velocity profile Figure 5. Geometry of DSMC calculations of Couette flow. u c is the bulk flow velocity parallel to the wall and yc is the displacement from the midplane where ycZ0. The walls are at ycZGH/2. VSS molecules with diffusely reflecting walls (Lilley & Sader 2007). In Bird’s study, the walls of the Couette flow simulation were close together, resulting in interference between the Knudsen layers at each wall so that the Kramers’ problem was not captured accurately. This highlights the fact that the wall separation H is a critical consideration in using Couette flow simulations to Proc. R. Soc. A (2008) Downloaded from http://rspa.royalsocietypublishing.org/ on June 18, 2017 2024 C. R. Lilley and J. E. Sader total Table 2. Summary of DSMC simulation parameters. (Ncolls is the total number of intermolecular collisions simulated during the entire calculation.) no. of cells initial number density relative wall speed wall temperature Mach number mean particles/cell sample interval velocity samples/cell total particle moves hard spheres VSS molecules NcellsZ1000 n 0Z1.507!1025 mK3 u wallZ30 m sK1 TwallZ273 K 0.097 w100 Dt w109 1012 KnZ0.0589 DtZtnom/9.817 total Z 5:01 !1010 Ncolls KnZ0.06 DtZtnom/10 total Z 6:31 !1010 Ncolls capture the Kramers’ problem. The wall separation must be sufficiently large such that the Knudsen layers near each wall do not interfere with each other. Here, we specify H in terms of the Knudsen number Kn, using H Z lnom =Kn: Owing to the computational expense of the DSMC method in the nearcontinuum regime where Kn is small, H cannot be arbitrarily large. A suitable H value must therefore be sufficiently large to avoid interference between the Knudsen layers, and yet still small enough to permit solution with DSMC calculations within a practical time period. To determine a suitable H, we first performed a series of DSMC calculations at various Kn, using hard spheres and sZ1. This analysis, presented in appendix B, shows that Knz0.06 is sufficiently small to capture the Knudsen layers at each wall without interference. As for any numerical technique, it is essential to test the numerical convergence of DSMC solutions. Accordingly, we performed a detailed convergence analysis using hard spheres with KnZ0.0589. This analysis is presented in appendix C and demonstrates that our solution is converged. Our DSMC simulation parameters are summarized in table 2. Appendix A also contains details on the simulation time step Dt and the flow sampling interval used. An important note on the pseudo-random number generator used in our DSMC calculations appears in appendix D. Using both the hard sphere and VSS models, we performed DSMC calculations of Couette flow with 0.05%s%1. Samples of the resulting velocity profiles for sZ0.1, 0.6 and 1 are shown in figure 6. We used nonlinear regression to calculate u~ð0Þ, C and a for our DSMC solutions, according to the power-law description of equation (3.1). Our method for calculating x~ is given in appendix B. These parameters are plotted versus s in figure 4. The close agreement between the LBE and hard sphere DSMC solutions is immediately apparent in figures 4 and 6, verifying that LBE accurately approximates the full Boltzmann equation for the Kramers’ problem with Proc. R. Soc. A (2008) Downloaded from http://rspa.royalsocietypublishing.org/ on June 18, 2017 2025 Velocity profile in the Knudsen layer (a) (b) 10 external flow Knudsen layer external flow Knudsen layer 1 0.1 0.01 0.1 1 (c) 10 0.1 1 10 10 external flow Knudsen layer 1 0.1 0.01 0.1 1 10 Figure 6. DSMC solutions of Kramers’ problem compared with the published LBE solutions. ((a) sZ0.1, (b) sZ0.6, and (c) sZ1). In the reference frame of Kramers’ problem, the DSMC solutions each contained 500 points. For clarity, some of these were removed for y~T 1:4. The LBE solutions of Loyalka & Hickey (1989, 1990), Ohwada et al. (1989) and Siewert (2003) are shown in (c). On this plot, power-law fits to these different LBE solutions are indistinguishable so only one is shown. Squares, Siewert solution; solid line, power-law fit to LBE solution and Siewert and Loyalka & Hickey LBE solutions; filled circles, DSMC (hard spheres); crosses, DSMC ( VSS); open circles, Loyalka & Hickey (1990) solution; diamonds, published LBE solutions. hard spheres and s!1. Additionally, the distinct linear behaviour of the DSMC velocity profiles in figure 6 demonstrates the accuracy of the power-law velocity profile in the Knudsen layer for VSS molecules at various s. We again emphasize that l is the only natural length scale in this dilute gas flow. Importantly, the DSMC solutions all have a distinctly less than unity, which in turn confirms the existence of a velocity gradient singularity at the surface where the effective viscosity is zero. We note that our result of aZ0.83 for the VSS model with sZ1 is consistent with the value of 0.8 estimated by Lilley & Sader (2007) from the DSMC solution published by Lockerby et al. (2005b) using VSS molecules. Proc. R. Soc. A (2008) Downloaded from http://rspa.royalsocietypublishing.org/ on June 18, 2017 2026 C. R. Lilley and J. E. Sader 5. Discussion As noted in §1, two recent studies by Lockerby et al. (2005a) and Fichman & Hetsroni (2005) predicted mzmN/2 at the surface in the Knudsen layer. This result contrasts with the above analysis that establishes mZ0 at the surface. It is therefore important to compare these previous models to the above power-law description and investigate how well these models approximate a solution of the Boltzmann equation. In the first study by Lockerby et al. (2005a), the velocity profile within the Knudsen layer was modelled with a so-called ‘wall function’. This wall function, given by 2 7 1 ~ ~ ~ u ð~ y Þ Z y C xK ; 20 1 C y~ was based on a curve-fit approximation to an earlier LBE solution. The wall function gives the velocity gradient ½d~ u =d~ yZ 17=10 at the surface, with the corresponding effective viscosity mz0.59mN. An implicit assumption in formulating the wall function was that the velocity field for Kramers’ problem is analytic at yZ0. Indeed, such analytic behaviour is predicted by several high-order hydrodynamic models of the Knudsen layer, which have the general form (Lockerby et al. 2005b) uðyÞ Z k 1 C ay C k 2 expðGk 3 yÞ ð5:1Þ for Kramers’ problem, where the constants k 1,2,3 depend upon the model and a is the velocity gradient as y/N (figure 1). Lockerby et al. (2005b) used the velocity gradient from the wall function at y~Z 0 as a boundary condition in equation (5.1) and obtained 7 u~ Z u~ð0Þ C y~ C ½1KexpðKK y~Þ; ð5:2Þ 10K to describe the velocity profile in the Knudsen layer and external flow. Here, the constant Kpdepends upon the hydrodynamic model for: the BGK–Burnett ffiffiffiffiffiffiffiffi pffiffiffiffiffiffiffiffiffiffiffiffiffi equations K Z p=2, the regularized Burnett equations K Z 5p=54 ,pZhong’s ffiffiffiffiffiffiffiffiffiffiffiffiffi pffiffiffiffiffiffi augmented Burnett equations K Z 3p and the R13 equations K Z 5p=18. Figure 7 shows the results obtained from equation (5.2) for the regularized Burnett and Zhong’s augmented equations. These two solutions form an envelope within which the BGK–Burnett solution, the R13 solution and the wall function are all contained. In the second recent study, Fichman & Hetsroni (2005) proposed the effective viscosity ( s=2 C ð1KsÞ~ y; y~! 1; mð~ y; sÞ Z mN 1; y~O 1; giving the velocity gradient d~ u =d~ y Z 2=s at the surface which is finite for sO0. The velocity profile obtained from this effective viscosity is also shown in figure 7. Importantly, figure 7 clearly shows that the wall function, the various hydrodynamic models and the Fichman & Hetsroni model do not capture the asymptotic form of the velocity profile in the Knudsen layer near the surface. Proc. R. Soc. A (2008) Downloaded from http://rspa.royalsocietypublishing.org/ on June 18, 2017 2027 Velocity profile in the Knudsen layer 10 external flow Knudsen layer 1 0.1 0.01 0.1 1 10 Figure 7. Hard sphere LBE solutions (Loyalka & Hickey 1989; Ohwada et al. 1989; Siewert 2003) at sZ1 compared with the hydrodynamicpmodels ffiffiffiffiffiffiffiffiffiffiffiffiffi described by equation (5.2). The solutions of thepregularized Burnett equations ðK Z 5p=54Þ and Zhong’s augmented Burnett equations ffiffiffiffiffiffi ðK Z 3pÞ form an envelope containing the BGK–Burnett solution, the R13 solution and the wall function. Circles, LBE solutions; solid line, power-law fit to LBE data; dashed line, regularized Burnett; dot-dashed line, Zhong’s augmented Burnett; dotted line, Fichman & Hetsroni. On a log–log scale, the true velocity distribution follows a distinct line with a slope significantly less than unity, whereas the hydrodynamic models give straight lines with slopes of unity. This failure of high-order hydrodynamic models and the wall function to correctly predict the power-law structure may explain why they cannot accurately capture the Knudsen layer, as concluded by Lockerby et al. (2005b). Nonetheless, it is important to emphasize that the power-law model predicts an effective viscosity m!mN/2 at distances less than 0.03 mean free paths away from the wall, which represents a small region of the Knudsen layer. The effect of using such approximate hydrodynamic models as opposed to the true velocity distribution in the Knudsen layer (possessing a velocity gradient singularity at the wall) in full flow modelling (Zhang et al. 2006) is unclear and requires further investigation. Our analysis of the existing LBE solutions for Kramers’ problem, together with our new DSMC calculations, clearly demonstrate that the power-law description of the Knudsen layer given in equation (3.1) accurately describes the velocity profile for both hard sphere and VSS molecules with full and partial thermal accommodation, even at a distance of only wlnom/100 from the surface. Since the power-law description is obtained from the LBE and DSMC solutions of the Boltzmann equation, regardless of the degree of thermal accommodation at the surface, this finding indicates that the velocity gradient singularity arises naturally from the Boltzmann equation. This is supported by Willis (1962) and Sone (2002), who proved the existence of the logarithmic singularity du/dy fln y in the linearized (approx.) BGK equation. Proc. R. Soc. A (2008) Downloaded from http://rspa.royalsocietypublishing.org/ on June 18, 2017 2028 C. R. Lilley and J. E. Sader The discussion above clearly shows that the various high-order hydrodynamic models considered by Lockerby et al. (2005b) do not accurately capture the velocity structure of the Knudsen layer as predicted by the LBE solutions. Importantly, these models do not provide a proper treatment of the boundary conditions at the wall (Gu & Emerson 2007; Mizzi et al. 2007; Struchtrup & Torrilhon 2007; Torrilhon & Struchtrup 2008), and indeed can only be formally valid in the outer part of the Knudsen layer since they are derived from high-order hydrodynamic treatments of the Boltzmann equation (Hadjiconstantinou 2006). Thus, it is not surprising that deviations to predictions of the Boltzmann equation exist for the inner part of the Knudsen layer, as shown above. The power-law description, and the feature of a velocity gradient singularity at the surface, is expected to motivate further research into hydrodynamic models of rarefied flow. Our results show that the entire velocity profile for Kramers’ problem is accurately represented by ( u~ð0; sÞ C C ðsÞ~ y aðsÞ ; y~! 1; u~ð~ y ; sÞ Z ~ C y~; xðsÞ y~O 1: The corresponding effective viscosity for y~! 1 is mð~ y ; sÞ Z mN y~1KaðsÞ ; aðsÞC ðsÞ which is strongly non-Newtonian. The functional dependencies of u~ð0Þ, C, a and x~ on the accommodation coefficient s were determined empirically using several trial functions and nonlinear regression to yield 9 u~ð0; sÞ Z 2:01=sK1:39 C 0:19s; > > > > > = CðsÞ Z 1:58K0:33s; ð5:3Þ > aðsÞ Z 0:69 C 0:13s; > > > > ~ Z 2:01=sK0:73K0:16s: ; xðsÞ ~ The fits for u~ð0; sÞ and xðsÞ are included in figure 4. A striking feature of the data shown in figure 4, is that the power-law structure of the Knudsen layer appears to be preserved in the asymptotic limit as s/0. Indeed, the power-law exponent a(s) varies very little while going between the limits of fully diffuse (aZ1) and fully specular (aZ0) reflection at the surface. Furthermore, the product aC Z 1:090K0:022sK0:043s2 obtained from the above formulae, increases by only approximately 6% as s decreases from unity to zero. Given the scatter in the numerical data for both a and C (see figure 4), we then conclude that the product aCz1.05 is a sound approximation for all s. The reasons for this intriguing constant behaviour in aC, which appears directly in the expression for the effective viscosity (see above), and the limited variability in the power-law exponent, are unknown at present. Interestingly, our DSMC calculations show that the structure of the Knudsen layer for VSS molecules is very similar to that for hard spheres, indicating that the power-law description is only weakly dependent on the molecular model. This strongly suggests that the power-law description is a general physical Proc. R. Soc. A (2008) Downloaded from http://rspa.royalsocietypublishing.org/ on June 18, 2017 Velocity profile in the Knudsen layer 2029 phenomenon, within the framework of the Boltzmann equation, which applies for all pure monatomic gases. However, as noted by Lilley & Sader (2007), detailed solutions of the Boltzmann equation using realistic intermolecular potentials validated by accurate experimental measurements are necessary to make a definitive general statement about the accuracy of the power-law behaviour in real gases. Any such investigations must consider gas mixtures containing molecules with rotational energy such as air, which are important in most practical applications. Since the DSMC method offers the only practical means of solving the Boltzmann equation for such mixtures, DSMC calculations will be an essential component of future investigations into the power-law behaviour in real gases. 6. Summary and conclusions We have examined the structure of the velocity profile in the Knudsen layer using LBE solutions of Kramers’ problem for hard sphere molecules with partial thermal accommodation, according to Maxwell’s boundary condition (Maxwell 1879). Our study establishes that the velocity profile in the Knudsen layer, under these conditions, also follows the power-law description originally found by Lilley & Sader (2007) for hard spheres with full thermal accommodation. This in turn shows that the velocity gradient is singular at the surface, i.e. the effective viscosity is zero, under arbitrary thermal accommodation. These findings were verified using precise DSMC calculations. We also performed DSMC calculations to probe the structure of the Knudsen layer for a gas composed of VSS molecules, which are more realistic than simple hard spheres. These simulations also revealed the power-law velocity behaviour within the Knudsen layer over a full range of accommodation coefficients. The small difference we observed between the hard sphere and the VSS solutions indicates that the power-law behaviour is only weakly dependent on the molecular model, and suggests that it arises directly from the Boltzmann equation. These results are expected to motivate future work into understanding the origin of such behaviour by rigorous asymptotic analysis of the Boltzmann equation. Given the importance of rarefied gas dynamics in small-scale flows, our findings are thus expected to impact on the development and application of nanoscale devices. This research was supported by the Particulate Fluids Processing Centre, a special research centre of the Australian Research Council and by the Australian Research Council Grants Scheme. Appendix A. Details of DSMC calculations The collision cross section A for VSS molecules is given by A Z Ar ðgr =gÞ2y ; ðA 1Þ where g is the relative speed of the colliding molecules; and Ar, gr and y are constants that depend upon the gas properties. For VSS molecules, scattering is anisotropic in the centre-of-mass reference frame and depends upon the VSS scattering parameter k. For a pure gas composed of VSS molecules, the first Proc. R. Soc. A (2008) Downloaded from http://rspa.royalsocietypublishing.org/ on June 18, 2017 2030 C. R. Lilley and J. E. Sader Chapman–Enskog viscosity approximation is (Bird 1994) pffiffiffi 15 p m 1 4kT ð1=2ÞCy ½1 ; m Z 16Sm Gð4KyÞ Ar gr2y m ðA 2Þ where Sm Z 6k½ðk C 1Þðk C 2Þ K1 is a ‘softness coefficient’ for VSS molecules (Koura & Matsumoto 1991). Our gas model represented argon, for which mZ6.6335!10K26 kg. We used a reference viscosity mr of 21.068 mPa s at a reference temperature Tr of 273 K (Kestin et al. 1984) to obtain Ar gr2y and hence A using equations (A 1) and (A 2). Our VSS model used yZ0.31 and kZ1.4 (Bird 1994). Hard spheres are a special case of VSS molecules with yZ0 and kZ1, giving AZ41.57 Å2. We based our simulation time step Dt on the nominal mean time between intermolecular collisions tnom, given by 1=2 pm : tnom Z lnom 8kTwall The number of time steps between flow field samples was set to ½Dy=ðc DtÞC 1 where c Z ½pkTwall =ð2mÞ1=2 is a characteristic molecular velocity and DyZ H =Ncells is the cell size. We transformed the Couette flow velocity profiles uc ðyc Þ into the reference frame of Kramers’ problem using 1 1 yc 1 1 uc K K y~ Z : and u~ Z Kn 2 H gKn 2 u wall Here g is a normalized midplane velocity gradient given by H duc : gZ u wall dyc ycZ0 We found g by performing linear regression on the velocity profile at distances exceeding 5lnom from the walls. For cases where 5lnom exceeded H/2, we performed linear regression on the velocity profile to a distance ycZGH/10 from the midplane. Appendix B. DSMC simulations to find suitable H To find a sufficiently large wall separation H for our DSMC Couette flow calculations, we ran a series of simulations at various Kn. These simulations all used NcellsZ1000, arranged in a regular grid with an average of 100 particles per cell and DtZtnom/9.817. We used u wallZ30 m sK1, giving a flow Mach number of 0.097. Despite its apparent simplicity, this problem is computationally demanding for the DSMC method because it involves small mean flow velocities relative to the thermal velocities, necessitating large sample sizes to reduce statistical scatter. Accordingly, we sampled the flow 107 times, so that the final Proc. R. Soc. A (2008) Downloaded from http://rspa.royalsocietypublishing.org/ on June 18, 2017 2031 Velocity profile in the Knudsen layer (a) 0.90 0.85 range of LBE solutions (b) 1.35 range of LBE solutions 1.30 1.25 0.80 1.20 0.75 1.15 0.70 1.10 0.65 1.05 (d ) 1.2 (c) 0.95 1.1 0.90 0.85 0.9 0.80 0.8 0.01 range of LBE solutions 1.0 range of LBE solutions 0.1 1 0.7 0.01 0.1 1 Figure 8. Power-law parameters (a) u~ð0Þ, (b) C and (c) a, and (d ) slip coefficients x~ for DSMC calculations at various Kn. Results shown are for hard sphere molecules with sZ1. In all cases DtZtnom/9.817 and NcellsZ1000. sample comprised approximately 109 velocities per cell. The absolute error in the DSMC velocity solutions was G0.14 m sK1, using a 99% CI. The power-law parameters u~ð0Þ, C and a for our Couette flow solutions at various Kn were calculated with nonlinear regression with the power law of equation (3.1). These are plotted in figure 8 together with slip coefficients x~ calculated using 1 1 ~ xZ K1 : 2Kn g The error ranges in figure 8 represent 99% CIs for the nonlinear regression calculations. Errors generally increase with decreasing Kn. This is because the number of cells used to fit the power law within the Knudsen layer, given by KnNcells, decreases with decreasing Kn, leading to more error in the regression calculation. Nevertheless, within the errors shown in figure 8, it appears that u~ð0Þ, C, a and x~ are constant for Kn(0.1. Hence, we conclude that Couette flow with Knz0.06 gives a sufficiently large H to capture the Kramers’ problem without interference between the Knudsen layers near each wall. As shown by Lilley & Sader (2007), these simulation parameters provide a DSMC solution in close agreement with the published LBE solutions (Loyalka & Hickey 1989, 1990; Ohwada et al. 1989; Siewert 2003) for hard sphere molecules and sZ1. We note Proc. R. Soc. A (2008) Downloaded from http://rspa.royalsocietypublishing.org/ on June 18, 2017 2032 C. R. Lilley and J. E. Sader parameter value (a) 1.4 1.3 (b) 1.2 1.1 1.0 0.9 0.8 0.7 1 10 100 1 10 100 (c) 1.4 parameter value 1.3 1.2 1.1 1.0 0.9 0.8 0.7 100 1000 Figure 9. Convergence analysis for DSMC solution of Couette flow at KnZ0.0589 using hard spheres and sZ1. Error bars represent 99% CIs from the nonlinear regression calculation. For clarity, errors are shown for u~ð0Þ data only. Similar errors apply for C, a and x~ data. (a) NcellsZ 1000 and DtZtnom/9.817, varying u wall; (b) NcellsZ1000 and u wallZ30 m sK1, varying Dt/tnom; and (c) u wallZ30 m sK1 and DtZtnom/9.817, varying Ncells. Crosses, u~ð0Þ; squares, C; down triangles, a; ~ pluses, x. that this Kn value is considerably lower than the values of approximately 0.2 and 0.13 used previously (Bird 1977; Lockerby et al. 2005b). Appendix C. Convergence analysis We tested the convergence of our hard sphere DSMC solution at KnZ0.0589, sZ1, u wallZ30 m sK1, DtZtnom/9.817 and NcellsZ1000 by systematically varying u wall, Dt and Ncells. The resulting power-law parameters and slip coefficient x~ are shown in figure 9. These plots show that the Couette flow simulation with Knz0.06 and u wallZ30 m sK1 using NcellsZ1000 and Dtztnom/ 10 provides a converged solution. The low subsonic Mach number of 0.097 in our Couette flow calculations ensured that the flow conditions were very nearly incompressible and isothermal, as necessary for Kramers’ problem. This is demonstrated in figure 10, which shows the number density and temperature profiles for a DSMC solution at KnZ 0.0589. Variations in these quantities were less than approximately 0.05%, Proc. R. Soc. A (2008) Downloaded from http://rspa.royalsocietypublishing.org/ on June 18, 2017 Velocity profile in the Knudsen layer 2033 0.5 0 – 0.5 – 0.0002 0 0.0002 0.0004 normalized quantity 0.0006 Figure 10. Profiles of normalized number density n/n 0K1 and normalized temperature T/TwallK1 for DSMC Couette flow solution at KnZ0.0589 with u wallZ30 m sK1, NcellsZ1000 and DtZtnom/9.817. confirming that the incompressible and isothermal flow conditions necessary to capture the Kramers’ problem were achieved with excellent accuracy. The temperature jump at the surface is only approximately 0.05 K. Appendix D. A note on the pseudo-random number generator Initially, we used the random( ) function, supplied with the Linux Fedora Core 4 operating system, to generate pseudo-random numbers. 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