Machine Learning Changes the Rules for Flux Limiters
Nga Nguyen-Fotiadis, Michael McKerns, Andrew Sornborger

TL;DR
This paper introduces a machine learning approach to develop optimized flux limiters for shock capturing in fluid simulations, outperforming traditional limiters across various coarse-grainings and parameters.
Contribution
It presents a novel theory and machine learning method to design flux limiters that surpass standard ones in accuracy and general applicability.
Findings
Machine-learned limiters outperform standard limiters in error reduction.
The approach generalizes across different coarse-grainings and parameters.
New features of learned limiters suggest improved design rules.
Abstract
Learning to integrate non-linear equations from highly resolved direct numerical simulations (DNSs) has seen recent interest for reducing the computational load for fluid simulations. Here, we focus on determining a flux-limiter for shock capturing methods. Focusing on flux limiters provides a specific plug-and-play component for existing numerical methods. Since their introduction, an array of flux limiters has been designed. Using the coarse-grained Burgers' equation, we show that flux-limiters may be rank-ordered in terms of their log-error relative to high-resolution data. We then develop theory to find an optimal flux-limiter and present flux-limiters that outperform others tested for integrating Burgers' equation on lattices with , , , and coarse-grainings. We train a continuous piecewise linear limiter by minimizing the mean-squared misfit to…
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Taxonomy
TopicsSeismic Imaging and Inversion Techniques · Hydraulic Fracturing and Reservoir Analysis · Computational Physics and Python Applications
