4.8 Article

Machine Learning-Based Upscaling of Finite-Size Molecular Dynamics Diffusion Simulations for Binary Fluids

Journal

JOURNAL OF PHYSICAL CHEMISTRY LETTERS
Volume 11, Issue 24, Pages 10375-10381

Publisher

AMER CHEMICAL SOC
DOI: 10.1021/acs.jpclett.0c03108

Keywords

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Funding

  1. U.S. Department of Energy's National Nuclear Security Administration [DE-NA0003525]
  2. Laboratory Directed Research and Development (LDRD) program of Sandia National Laboratories

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Molecular diffusion coefficients calculated using molecular dynamics (MD) simulations suffer from finite-size (i.e., finite box size and finite particle number) effects. Results from finite-sized MD simulations can be upscaled to infinite simulation size by applying a correction factor. For self-diffusion of single-component fluids, this correction has been well-studied by many researchers including Yeh and Hummer (YH); for binary fluid mixtures, a modified YH correction was recently proposed for correcting MD-predicted Maxwell-Stephan (MS) diffusion rates. Here we use both empirical and machine learning methods to identify improvements to the finite-size correction factors for both self-diffusion and MS diffusion of binary Lennard-Jones (LJ) fluid mixtures. Using artificial neural networks (ANNs), the error in the corrected LJ fluid diffusion is reduced by an order of magnitude versus existing YH corrections, and the ANN models perform well for mixtures with large dissimilarities in size and interaction energies where the YH correction proves insufficient.

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