We are experiencing issues opening hdl.handle.net links on ANU campus. If you are experiencing issues, please contact the repository team repository.admin@anu.edu.au for assistance.
 

Finite element interpolated neural networks for solving forward and inverse problems

Date

2023

Authors

Badia, Santiago
Li, Wei
MARTIN, ALBERTO F.

Journal Title

Journal ISSN

Volume Title

Publisher

Elsevier

Abstract

We propose a general framework for solving forward and inverse problems constrained by partial differential equations, where we interpolate neural networks onto finite element spaces to represent the (partial) unknowns. The framework overcomes the challenges related to the imposition of boundary conditions, the choice of collocation points in physics-informed neural networks, and the integration of variational physics-informed neural networks. A numerical experiment set confirms the framework’s capability of handling various forward and inverse problems. In particular, the trained neural network generalises well for smooth problems, beating finite element solutions by some orders of magnitude. We finally propose an effective one-loop solver with an initial data fitting step (to obtain a cheap initialisation) to solve inverse problems.

Description

Keywords

Neural networks, PINNs, Finite elements, PDE approximation, Inverse problems

Citation

Source

Computer Methods in Applied Mechanics and Engineering

Type

Journal article

Book Title

Entity type

Access Statement

Open Access

License Rights

Creative Commons Attribution licence

Restricted until