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Journal article · Preprint article

Physics-informed neural networks for solving nonlinear diffusivity and Biot’s equations

Edited by Tian, Fang-Bao

From

Department of Applied Mathematics and Computer Science, Technical University of Denmark1

Centre for oil and gas – DTU, Technical University of Denmark2

Statistics and Data Analysis, Department of Applied Mathematics and Computer Science, Technical University of Denmark3

This paper presents the potential of applying physics-informed neural networks for solving nonlinear multiphysics problems, which are essential to many fields such as biomedical engineering, earthquake prediction, and underground energy harvesting. Specifically, we investigate how to extend the methodology of physics-informed neural networks to solve both the forward and inverse problems in relation to the nonlinear diffusivity and Biot’s equations.

We explore the accuracy of the physics-informed neural networks with different training example sizes and choices of hyperparameters. The impacts of the stochastic variations between various training realizations are also investigated. In the inverse case, we also study the effects of noisy measurements.

Furthermore, we address the challenge of selecting the hyperparameters of the inverse model and illustrate how this challenge is linked to the hyperparameters selection performed for the forward one.

Language: English
Publisher: Public Library of Science
Year: 2020
Pages: e0232683
ISSN: 19326203
Types: Journal article and Preprint article
DOI: 10.1371/journal.pone.0232683
ORCIDs: Kadeethum, Teeratorn , Jørgensen, Thomas Martini and Nick, Hamid

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