Machine learning of partial differential equations from noise data

Wenbo Cao, Weiwei Zhang

Research output: Contribution to journalArticlepeer-review

3 Scopus citations

Abstract

Machine learning of partial differential equations from data is a potential breakthrough to solve the lack of physical equations in complex dynamic systems, and sparse regression is an attractive approach recently emerged. Noise is the biggest challenge for sparse regression to identify equations because sparse regression relies on local derivative evaluation of noisy data. This study proposes a simple and general approach which greatly improves the noise robustness by projecting the evaluated time derivative and partial differential term into a subspace with less noise. This approach allows accurate reconstruction of PDEs (partial differential equations) involving high-order derivatives from data with a considerable amount of noise. In addition, we discuss and compare the effects of the proposed method based on Fourier subspace and POD (proper orthogonal decomposition) subspace, and the latter usually have better results since it preserves the maximum amount of information.

Original languageEnglish
Article number100480
JournalTheoretical and Applied Mechanics Letters
Volume13
Issue number6
DOIs
StatePublished - Nov 2023

Keywords

  • Machine learning
  • Noise data
  • Partial differential equation
  • Sparse regression

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