Physics-Informed Neural Networks with Architectural Physics Embedding for Large-Scale Wave Field Reconstruction
About
Large-scale wave field reconstruction requires precise solutions but faces challenges with computational efficiency and accuracy. The physics-based numerical methods like Finite Element Method (FEM) provide high accuracy but struggle with large-scale or high-frequency problems due to prohibitive computational costs. Pure data-driven approaches excel in speed but often lack sufficient labeled data for complex scenarios. Physics-informed neural networks (PINNs) integrate physical principles into machine learning models, offering a promising solution by bridging these gaps. However, standard PINNs embed physical principles only in loss functions, leading to slow convergence, optimization instability, and spectral bias, limiting their ability for large-scale wave field reconstruction. This work introduces architecture physics embedded (PE)-PINN, which integrates additional physical guidance directly into the neural network architecture beyond Helmholtz equations and boundary conditions in loss functions. Specifically, a new envelope transformation layer is designed to mitigate spectral bias with kernels parameterized by source properties, material interfaces, and wave physics. Experiments demonstrate that PE-PINN achieves more than 10 times speedup in convergence compared to standard PINNs and several orders of magnitude reduction in memory usage compared to FEM. This breakthrough enables high-fidelity modeling for large-scale 2D/3D electromagnetic wave reconstruction involving reflections, refractions, and diffractions in room-scale domains, readily applicable to wireless communications, sensing, room acoustics, and other fields requiring large-scale wave field analysis.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Wave field reconstruction | Scenario 1 2D Free Space | Lpde0.111 | 4 | |
| Wave field reconstruction | Scenario 7 Diffraction | Lpde0.07 | 1 | |
| Wave field reconstruction | Scenario 8 (Diffraction 3D) | Lpde0.0104 | 1 | |
| Wave field reconstruction | Scenario 9 | Lpde1.36 | 1 | |
| Wave field reconstruction | Scenario 10 Refraction 3D | Lpde0.155 | 1 |