LGFeb 6, 2024

An invariance constrained deep learning network for PDE discovery

arXiv:2402.03747v12 citationsh-index: 10
Originality Incremental advance
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This work addresses the challenge of PDE discovery from noisy, sparse data for researchers in computational physics and fluid dynamics, representing an incremental improvement with physical constraints.

The authors tackled the problem of discovering partial differential equations (PDEs) from sparse, noisy data by proposing an invariance constrained deep learning network (ICNet) that incorporates Galilean invariance constraints to filter candidate terms and improve robustness. The method demonstrated excellent performance on fluid mechanics examples like the 2D Burgers equation and extended to wave equations with Lorentz invariance.

The discovery of partial differential equations (PDEs) from datasets has attracted increased attention. However, the discovery of governing equations from sparse data with high noise is still very challenging due to the difficulty of derivatives computation and the disturbance of noise. Moreover, the selection principles for the candidate library to meet physical laws need to be further studied. The invariance is one of the fundamental laws for governing equations. In this study, we propose an invariance constrained deep learning network (ICNet) for the discovery of PDEs. Considering that temporal and spatial translation invariance (Galilean invariance) is a fundamental property of physical laws, we filter the candidates that cannot meet the requirement of the Galilean transformations. Subsequently, we embedded the fixed and possible terms into the loss function of neural network, significantly countering the effect of sparse data with high noise. Then, by filtering out redundant terms without fixing learnable parameters during the training process, the governing equations discovered by the ICNet method can effectively approximate the real governing equations. We select the 2D Burgers equation, the equation of 2D channel flow over an obstacle, and the equation of 3D intracranial aneurysm as examples to verify the superiority of the ICNet for fluid mechanics. Furthermore, we extend similar invariance methods to the discovery of wave equation (Lorentz Invariance) and verify it through Single and Coupled Klein-Gordon equation. The results show that the ICNet method with physical constraints exhibits excellent performance in governing equations discovery from sparse and noisy data.

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