Multiple scattering simulation via physics-informed neural networks

被引:2
作者
Nair, Siddharth [1 ]
Walsh, Timothy F. [2 ]
Pickrell, Greg [2 ]
Semperlotti, Fabio [1 ]
机构
[1] Purdue Univ, Sch Mech Engn, Ray W Herrick Labs, W Lafayette, IN 47907 USA
[2] Sandia Natl Labs, Albuquerque, NM 87185 USA
关键词
Physics-informed neural network (PINN); Multiple scattering; Superposition principle; Wave propagation; DEEP LEARNING FRAMEWORK; INVERSE PROBLEMS; BRILLOUIN-SCATTERING; FIELDS;
D O I
10.1007/s00366-024-02038-3
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
This work presents a physics-driven machine learning framework for the simulation of acoustic scattering problems. The proposed framework relies on a physics-informed neural network (PINN) architecture that leverages prior knowledge based on the physics of the scattering problem as well as a tailored network structure that embodies the concept of the superposition principle of linear wave interaction. The framework can also simulate the scattered field due to rigid scatterers having arbitrary shape as well as high-frequency problems. Unlike conventional data-driven neural networks, the PINN is trained by directly enforcing the governing equations describing the underlying physics, hence without relying on any labeled training dataset. Remarkably, the network model has significantly lower discretization dependence and offers simulation capabilities akin to parallel computation. This feature is particularly beneficial to address computational challenges typically associated with conventional mesh-dependent simulation methods. The performance of the network is investigated via a comprehensive numerical study that explores different application scenarios based on acoustic scattering.
引用
收藏
页码:31 / 50
页数:20
相关论文
共 55 条
[31]   DeepXDE: A Deep Learning Library for Solving Differential Equations [J].
Lu, Lu ;
Meng, Xuhui ;
Mao, Zhiping ;
Karniadakis, George Em .
SIAM REVIEW, 2021, 63 (01) :208-228
[32]   SMOOTHED PARTICLE HYDRODYNAMICS [J].
MONAGHAN, JJ .
ANNUAL REVIEW OF ASTRONOMY AND ASTROPHYSICS, 1992, 30 :543-574
[33]  
Morgan MA., 2013, FINITE ELEMENT FINIT
[34]   GRIDS-Net: Inverse shape design and identification of scatterers via geometric regularization and physics-embedded deep learning [J].
Nair, Siddharth ;
Walsh, Timothy F. ;
Pickrell, Greg ;
Semperlotti, Fabio .
COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2023, 414
[35]   Meshless methods: A review and computer implementation aspects [J].
Nguyen, Vinh Phu ;
Rabczuk, Timon ;
Bordas, Stephane ;
Duflot, Marc .
MATHEMATICS AND COMPUTERS IN SIMULATION, 2008, 79 (03) :763-813
[36]   Inverse design of large-area metasurfaces [J].
Pestourie, Raphael ;
Perez-Arancibia, Carlos ;
Lin, Zin ;
Shin, Wonseok ;
Capasso, Federico ;
Johnson, Steven G. .
OPTICS EXPRESS, 2018, 26 (26) :33732-33747
[37]   Nanophotonic particle simulation and inverse design using artificial neural networks [J].
Peurifoy, John ;
Shen, Yichen ;
Jing, Li ;
Yang, Yi ;
Cano-Renteria, Fidel ;
DeLacy, Brendan G. ;
Joannopoulos, John D. ;
Tegmark, Max ;
Soljacic, Marin .
SCIENCE ADVANCES, 2018, 4 (06)
[38]  
Pierce A. D., 2019, ACOUSTICS INTRO ITS, P768, DOI DOI 10.1007/978-3-030-11214-1
[39]   Data driven governing equations approximation using deep neural networks [J].
Qin, Tong ;
Wu, Kailiang ;
Xiu, Dongbin .
JOURNAL OF COMPUTATIONAL PHYSICS, 2019, 395 :620-635
[40]   Physics-informed neural networks: A deep learning framework for solving forward and inverse problems involving nonlinear partial differential equations [J].
Raissi, M. ;
Perdikaris, P. ;
Karniadakis, G. E. .
JOURNAL OF COMPUTATIONAL PHYSICS, 2019, 378 :686-707