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A novel solution for seepage problems using physics-informed neural networks

Authors :
Luo, Tianfu
Feng, Yelin
Huang, Qingfu
Zhang, Zongliang
Yan, Mingjiao
Yang, Zaihong
Zheng, Dawei
Yang, Yang
Publication Year :
2023

Abstract

A Physics-Informed Neural Network (PINN) provides a distinct advantage by synergizing neural networks' capabilities with the problem's governing physical laws. In this study, we introduce an innovative approach for solving seepage problems by utilizing the PINN, harnessing the capabilities of Deep Neural Networks (DNNs) to approximate hydraulic head distributions in seepage analysis. To effectively train the PINN model, we introduce a comprehensive loss function comprising three components: one for evaluating differential operators, another for assessing boundary conditions, and a third for appraising initial conditions. The validation of the PINN involves solving four benchmark seepage problems. The results unequivocally demonstrate the exceptional accuracy of the PINN in solving seepage problems, surpassing the accuracy of FEM in addressing both steady-state and free-surface seepage problems. Hence, the presented approach highlights the robustness of the PINN and underscores its precision in effectively addressing a spectrum of seepage challenges. This amalgamation enables the derivation of accurate solutions, overcoming limitations inherent in conventional methods such as mesh generation and adaptability to complex geometries.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2310.17331
Document Type :
Working Paper