2024
DOI: 10.1017/jfm.2024.471
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Filtered partial differential equations: a robust surrogate constraint in physics-informed deep learning framework

Dashan Zhang,
Yuntian Chen,
Shiyi Chen

Abstract: Embedding physical knowledge into neural network (NN) training has been a hot topic. However, when facing the complex real world, most of the existing methods still strongly rely on the quantity and quality of observation data. Furthermore, the NNs often struggle to converge when the solution to the real equation is very complex. Inspired by large eddy simulation in computational fluid dynamics, we propose an improved method based on filtering. We analysed the causes of the difficulties in physics-informed mac… Show more

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