A Neural Network with Plane Wave Activation for Helmholtz Equation
Ziming Wang, Tao Cui, and Xueshuang Xiang

TL;DR
This paper introduces a neural network with plane wave activation functions to solve the Helmholtz equation, demonstrating improved representation and learning of wave solutions over traditional methods.
Contribution
It proposes a novel PWNN that generalizes PWPUM by learning basis functions, enhancing solution accuracy and adaptability for Helmholtz problems.
Findings
PWNN outperforms TANN and SIREN in accuracy and robustness.
PWNN achieves comparable convergence to PWPUM with less error.
PWNN effectively learns unknown wave directions, surpassing fixed basis methods.
Abstract
This paper proposes a plane wave activation based neural network (PWNN) for solving Helmholtz equation, the basic partial differential equation to represent wave propagation, e.g. acoustic wave, electromagnetic wave, and seismic wave. Unlike using traditional activation based neural network (TANN) or activation based neural network (SIREN) for solving general partial differential equations, we instead introduce a complex activation function , the plane wave which is the basic component of the solution of Helmholtz equation. By a simple derivation, we further find that PWNN is actually a generalization of the plane wave partition of unity method (PWPUM) by additionally imposing a learned basis with both amplitude and direction to better characterize the potential solution. We firstly investigate our performance on a problem with the solution is an integral of the…
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Taxonomy
TopicsModel Reduction and Neural Networks · Seismic Imaging and Inversion Techniques · Seismic Waves and Analysis
