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Graph Neural Regularizers for PDE Inverse Problems

Published: October 23, 2025 | arXiv ID: 2510.21012v1

By: William Lauga , James Rowbottom , Alexander Denker and more

Potential Business Impact:

Find hidden things from blurry pictures.

Business Areas:
Power Grid Energy

We present a framework for solving a broad class of ill-posed inverse problems governed by partial differential equations (PDEs), where the target coefficients of the forward operator are recovered through an iterative regularization scheme that alternates between FEM-based inversion and learned graph neural regularization. The forward problem is numerically solved using the finite element method (FEM), enabling applicability to a wide range of geometries and PDEs. By leveraging the graph structure inherent to FEM discretizations, we employ physics-inspired graph neural networks as learned regularizers, providing a robust, interpretable, and generalizable alternative to standard approaches. Numerical experiments demonstrate that our framework outperforms classical regularization techniques and achieves accurate reconstructions even in highly ill-posed scenarios.

Country of Origin
🇬🇧 United Kingdom

Page Count
10 pages

Category
Mathematics:
Numerical Analysis (Math)