A Green-Integral-Constrained Neural Solver with Stochastic Physics-Informed Regularization
Mohammad Mahdi Abedi, David Pardo, Tariq Alkhalifah

TL;DR
This paper introduces a Green-Integral neural solver for the Helmholtz equation that enforces wave physics through an integral representation, improving efficiency and accuracy over traditional PINNs in heterogeneous media.
Contribution
It proposes a novel Green-Integral formulation with FFT acceleration and a hybrid loss to enhance neural PDE solving for oscillatory wave problems.
Findings
Reduces training time by over ten times compared to PDE-based PINNs.
Enables convergence in heterogeneous media where classical methods diverge.
Hybrid loss improves local accuracy in strong scattering regions.
Abstract
Standard physics-informed neural networks (PINNs) struggle to simulate highly oscillatory Helmholtz solutions in heterogeneous media because pointwise minimization of second-order PDE residuals is computationally expensive, biased toward smooth solutions, and requires artificial absorbing boundary layers to restrict the solution. To overcome these challenges, we introduce a Green-Integral (GI) neural solver for the acoustic Helmholtz equation. It departs from the PDE-residual-based formulation by enforcing wave physics through an integral representation that imposes a nonlocal constraint. Oscillatory behavior and outgoing radiation are encoded directly through the integral kernel, eliminating second-order spatial derivatives and enforcing physical solutions without additional boundary layers. Theoretically, optimizing this GI loss via a neural network acts as a spectrally tuned…
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