English

A Multiscale Method for Two-Component, Two-Phase Flow with a Neural Network Surrogate

Numerical Analysis 2023-09-06 v1 Numerical Analysis Computational Physics Fluid Dynamics

Abstract

Understanding the dynamics of phase boundaries in fluids requires quantitative knowledge about the microscale processes at the interface. We consider the sharp-interface motion of compressible two-component flow, and propose a heterogeneous multiscale method (HMM) to describe the flow fields accurately. The multiscale approach combines a hyperbolic system of balance laws on the continuum scale with molecular-dynamics simulations on the microscale level. Notably, the multiscale approach is necessary to compute the interface dynamics because there is -- at present -- no closed continuum-scale model. The basic HMM relies on a moving-mesh finite-volume method, and has been introduced recently for compressible one-component flow with phase transitions in [Magiera and Rohde, JCP. 469 (2022)]. To overcome the numerical complexity of the molecular-dynamics microscale model a deep neural network is employed as an efficient surrogate model. The entire approach is finally applied to simulate droplet dynamics for argon-methane mixtures in several space-dimensions. Up to our knowledge such compressible two-phase dynamics accounting for microscale phase-change transfer rates have not yet been computed.

Keywords

Cite

@article{arxiv.2309.00876,
  title  = {A Multiscale Method for Two-Component, Two-Phase Flow with a Neural Network Surrogate},
  author = {Jim Magiera and Christian Rohde},
  journal= {arXiv preprint arXiv:2309.00876},
  year   = {2023}
}
R2 v1 2026-06-28T12:11:00.391Z