JOURNAL ARTICLE

Physics-informed neural networks for solving the Helmholtz equation

Johannes D. Schmid

Year: 2023 Journal:   NOISE-CON proceedings Vol: 267 (1)Pages: 265-268

Abstract

Discretization-based methods like the finite element method have proven to be effective for solving the Helmholtz equation in computational acoustics. However, it is very challenging to incorporate measured data into the model or infer model input parameters based on observed response data. Machine learning approaches have shown promising potential in data-driven modeling. In practical applications, purely supervised approaches suffer from poor generalization and physical interpretability. Physics-informed neural networks (PINNs) incorporate prior knowledge of the underlying partial differential equation by including the residual into the loss function of an artificial neural network. Training the neural network minimizes the residual of both the differential equation and the boundary conditions and learns a solution that satisfies the corresponding boundary value problem. In this contribution, PINNs are applied to solve the Helmholtz equation within a two-dimensional acoustic duct and mixed boundary conditions are considered. The results show that PINNs are able to solve the Helmholtz equation very accurately and provide a promising data-driven method for physics-based surrogate modeling.

Keywords:
Helmholtz equation Interpretability Artificial neural network Partial differential equation Discretization Helmholtz free energy Residual Boundary value problem Applied mathematics Boundary element method Computer science Finite element method Artificial intelligence Algorithm Physics Mathematics Mathematical analysis

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Citation History

Topics

Model Reduction and Neural Networks
Physical Sciences →  Physics and Astronomy →  Statistical and Nonlinear Physics
Acoustic Wave Phenomena Research
Physical Sciences →  Engineering →  Biomedical Engineering
Magnetic Properties and Applications
Physical Sciences →  Materials Science →  Electronic, Optical and Magnetic Materials

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