Spectrally Adapted Physics-Informed Neural Networks for Solving Unbounded Domain Problems
Mingtao Xia, Lucas B\"ottcher, Tom Chou

TL;DR
This paper introduces spectrally adapted physics-informed neural networks (PINNs) that combine adaptive spectral methods with PINNs to efficiently solve unbounded domain PDEs, outperforming standard PINNs.
Contribution
The paper develops a novel method integrating adaptive spectral techniques with PINNs to improve solutions of unbounded domain PDEs, enabling better accuracy and parameter estimation.
Findings
Spectrally adapted PINNs effectively solve PDEs on unbounded domains.
The method outperforms standard PINNs in accuracy and efficiency.
Applications include solving PDEs and estimating parameters from noisy data.
Abstract
Solving analytically intractable partial differential equations (PDEs) that involve at least one variable defined on an unbounded domain arises in numerous physical applications. Accurately solving unbounded domain PDEs requires efficient numerical methods that can resolve the dependence of the PDE on the unbounded variable over at least several orders of magnitude. We propose a solution to such problems by combining two classes of numerical methods: (i) adaptive spectral methods and (ii) physics-informed neural networks (PINNs). The numerical approach that we develop takes advantage of the ability of physics-informed neural networks to easily implement high-order numerical schemes to efficiently solve PDEs and extrapolate numerical solutions at any point in space and time. We then show how recently introduced adaptive techniques for spectral methods can be integrated into PINN-based…
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