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Enforced Interface Constraints for Domain Decomposition Method of Discrete Physics-Informed Neural Networks

Enforced Interface Constraints for Domain Decomposition Method of Discrete Physics-Informed Neural Networks

来源:Arxiv_logoArxiv
英文摘要

This study presents a discrete physics-informed neural network (dPINN) framework, enhanced with enforced interface constraints (EIC), for modeling physical systems using the domain decomposition method (DDM). Built upon finite element-style mesh discretization, the dPINN accurately evaluates system energy through Gaussian quadrature-based element-wise integration. To ensure physical field continuity across subdomain interfaces, the EIC mechanism enforces interfacial displacement constraints without requiring auxiliary sampling or loss penalties.This formulation supports independent meshing in each subdomain, simplifying preprocessing and improving computational flexibility. Additionally, by eliminating the influence of weak spatial constraints (WSC) commonly observed in traditional PINNs, the EIC-dPINN delivers more stable and physically consistent predictions.Extensive two- and three-dimensional numerical experiments validate the proposed framework's accuracy and demonstrate the computational efficiency gains achieved through parallel training. The results highlight the framework's scalability, robustness, and potential for solving large-scale, geometrically complex problems.

Jichao Yin、Mingxuan Li、Jianguang Fang、Hu Wang

物理学计算技术、计算机技术

Jichao Yin,Mingxuan Li,Jianguang Fang,Hu Wang.Enforced Interface Constraints for Domain Decomposition Method of Discrete Physics-Informed Neural Networks[EB/OL].(2025-05-16)[2025-06-30].https://arxiv.org/abs/2505.10925.点此复制

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