Transport-preserving neural ab initio scattering kernels for rarefied binary gas mixtures

Abstract

Neural surrogates for molecular scattering provide a route to continuously evaluable and differentiable direct simulation Monte Carlo (DSMC) collision kernels, but a small pointwise deflection-angle error is not sufficient evidence that a learned map is kinetically reliable. Diffusion, viscosity, representative collision rates, angular redistribution, and mixture relaxation are nonlinear functionals of the same scattering measure. We therefore develop a multiscale validation framework for neural ab initio scattering kernels that combines angular regression, transport cross sections, Ohr-style representative quantities, cumulative angular measures, Fourier spectral content, impact-grid and angular-noise robustness, loss-ablation diagnostics, and three solver-level DSMC mixture tests. The framework is demonstrated on a refined argon--argon Jäger table and on helium--argon ab initio EPAPS data of Sharipov and Benites represented by a neural equal-area scattering surrogate. For He--Ar over /10~K, the surrogate preserves , , /, , and within 0.75\%, 1.37\%, 0.84\%, 1.21\%, and 1.46\%, respectively. The cumulative angular measure agrees within 1.43\%, the median relative L2 error of χ(q) is 3.4×10-3, and the high-mode spectral-energy ratio is essentially unbiased. The same neural He--Ar kernel is then embedded in periodic DSMC mixture problems that separately probe mass diffusion, momentum diffusion, and two-dimensional field-level mixing. A sinusoidal composition mode is reproduced over three independent realizations with a mean normalized-history error of 1.280.22\% and D/D=1.0150.013. A transverse shear wave is reproduced with a 1.58\% history error and ν/ν=0.989.

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