A Cusp-Capturing Pinn for Elliptic Interface Problems

20 Pages Posted: 4 Nov 2022

See all articles by Yu-Hau Tseng

Yu-Hau Tseng

National University of Kaohsiung

TE-SHENG LIN

National Chiao Tung University

Wei-Fan Hu

National Central University

Ming-Chih Lai

National Chiao Tung University

Abstract

In this paper, we propose a cusp-capturing physics-informed neural network (PINN) to solve variable-coefficient elliptic interface problems whose solution is continuous but has discontinuous first derivatives on the interface. To find such a solution using neural network representation, we introduce a cusp-enforced level set function as an additional feature input to the network to retain the inherent solution properties, capturing the solution cusps (where the derivatives are discontinuous) sharply. In addition, the proposed neural network has the advantage of being mesh-free, so it can easily handle problems in irregular domains. We train the network using the physics-informed framework in which the loss function comprises the residual of the differential equation together with a certain interface and boundary conditions. We conduct a series of numerical experiments to demonstrate the effectiveness of the cusp-capturing technique and the accuracy of the present network model. Numerical results show that even a one-hidden-layer (shallow) network with a moderate number of neurons (40 − 60) and sufficient training data points, the present network model can achieve high prediction accuracy (relative L2 errors in the order of 10−5 − 10−6), which outperforms several existing neural network models and traditional grid-based methods in the literature.

Keywords: neural networks, cusp-capturing, cusp-enforced level set function, elliptic interface problems

Suggested Citation

Tseng, Yu-Hau and LIN, TE-SHENG and Hu, Wei-Fan and Lai, Ming-Chih, A Cusp-Capturing Pinn for Elliptic Interface Problems. Available at SSRN: https://ssrn.com/abstract=4268035 or http://dx.doi.org/10.2139/ssrn.4268035

Yu-Hau Tseng

National University of Kaohsiung ( email )

Kaohsiung, 803
Taiwan

TE-SHENG LIN (Contact Author)

National Chiao Tung University ( email )

1001 University Road
Hsinchu, 1001
Taiwan

Wei-Fan Hu

National Central University ( email )

Jhongli, Taoyuan 32001, Taiwan.
Jhongli, 32001
Taiwan

Ming-Chih Lai

National Chiao Tung University ( email )

1001 University Road
Hsinchu, 1001
Taiwan

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