An Efficient Neural-Network and Finite-Difference Hybrid Method for Elliptic Interface Problems with Applications

Communications in Computational Physics
Vol. 33 No. 4 (2023), pp. 1090-1105
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Author(s)
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1 Natl Cent Univ, Dept Math, Taoyuan 32001, Taiwan
2 Natl Taiwan Univ, Natl Ctr Theoret Sci, Taipei 10617, Taiwan
3 Natl Yang Ming Chiao Tung Univ, Dept Appl Math, Hsinchu 30010, Taiwan
4 Natl Univ Kaohsiung, Dept Appl Math, Kaohsiung 81148, Taiwan
Received
November 6, 2022
Accepted
March 4, 2023
Abstract

A new and efficient neural-network and finite-difference hybrid method is developed for solving Poisson equation in a regular domain with jump discontinuities on embedded irregular interfaces. Since the solution has low regularity across the interface, when applying finite difference discretization to this problem, an additional treatment accounting for the jump discontinuities must be employed. Here, we aim to elevate such an extra effort to ease our implementation by machine learning methodology. The key idea is to decompose the solution into singular and regular parts. The neural network learning machinery incorporating the given jump conditions finds the singular solution, while the standard five-point Laplacian discretization is used to obtain the regular solution with associated boundary conditions. Regardless of the interface geometry, these two tasks only require supervised learning for function approximation and a fast direct solver for Poisson equation, making the hybrid method easy to implement and efficient. The two- and three-dimensional numerical results show that the present hybrid method preserves second-order accuracy for the solution and its derivatives, and it is comparable with the traditional immersed interface method in the literature. As an application, we solve the Stokes equations with singular forces to demonstrate the robustness of the present method.

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