Machine Learning model for gas-liquid interface reconstruction in CFD numerical simulations
Abstract
The volume of fluid (VoF) method is widely used in multi-phase flow simulations to track and locate the interface between two immiscible fluids. A major bottleneck of the VoF method is the interface reconstruction step due to its high computational cost and low accuracy on unstructured grids. We propose a machine learning enhanced VoF method based on Graph Neural Networks (GNN) to accelerate the interface reconstruction on general unstructured meshes. We first develop a methodology to generate a synthetic dataset based on paraboloid surfaces discretized on unstructured meshes. We then train a GNN based model and perform generalization tests. Our results demonstrate the efficiency of a GNN based approach for interface reconstruction in multi-phase flow simulations in the industrial context.
Cite
@article{arxiv.2207.05684,
title = {Machine Learning model for gas-liquid interface reconstruction in CFD numerical simulations},
author = {Tamon Nakano and Alessandro Michele Bucci and Jean-Marc Gratien and Thibault Faney and Guillaume Charpiat},
journal= {arXiv preprint arXiv:2207.05684},
year = {2022}
}
Comments
12 pages, fullpaper of ECCOMAS2022