TL;DR
This paper introduces a neural network-based method to improve the accuracy and efficiency of curvature computation in the level-set method, especially in under-resolved regions, outperforming traditional numerical approaches.
Contribution
A novel hybrid neural solver that leverages machine learning to correct numerical curvature estimates in the level-set method, enhancing accuracy and computational efficiency.
Findings
Outperforms numerical baseline with fewer redistancing steps
Achieves higher accuracy in curvature approximation
Requires less computational cost
Abstract
We present an error-neural-modeling-based strategy for approximating two-dimensional curvature in the level-set method. Our main contribution is a redesigned hybrid solver [Larios-C\'ardenas and Gibou, J. Comput. Phys. (May 2022), 10.1016/j.jcp.2022.111291] that relies on numerical schemes to enable machine-learning operations on demand. In particular, our routine features double predicting to harness curvature symmetry invariance in favor of precision and stability. The core of this solver is a multilayer perceptron trained on circular- and sinusoidal-interface samples. Its role is to quantify the error in numerical curvature approximations and emit corrected estimates for select grid vertices along the free boundary. These corrections arise in response to preprocessed context level-set, curvature, and gradient data. To promote neural capacity, we have adopted sample negative-curvature…
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