MC-Nonlocal-PINNs: Handling Nonlocal Operators in PINNs via Monte Carlo Sampling

Authors

  • Xiaodong Feng
  • Yue Qian
  • Wanfang Shen

DOI:

https://doi.org/10.4208/nmtma.OA-2022-0201

Keywords:

Nonlocal models, PINNs, Monte Carlo sampling, deep neural networks.

Abstract

We propose Monte Carlo Nonlocal physics-informed neural networks (MC-Nonlocal-PINNs), which are a generalization of MC-fPINNs in L. Guo et al. (Comput. Methods Appl. Mech. Eng. 400 (2022), 115523) for solving general nonlocal models such as integral equations and nonlocal PDEs. Similar to MC-fPINNs, our MC-Nonlocal-PINNs handle nonlocal operators in a Monte Carlo way, resulting in a very stable approach for high dimensional problems. We present a variety of test problems, including high dimensional Volterra type integral equations, hypersingular integral equations and nonlocal PDEs, to demonstrate the effectiveness of our approach.

Published

2023-08-29

Issue

Section

Articles