Identification of physical properties in acoustic tubes using physics-informed neural networks

被引:0
|
作者
Yokota, Kazuya [1 ]
Ogura, Masataka [2 ]
Abe, Masajiro [3 ]
机构
[1] Nagaoka Univ Technol, Dept Mech Engn, 1603-1 Kamitomioka, Nagaoka, Niigata 9402188, Japan
[2] Nagaoka Univ Technol, Ctr Integrated Technol Support, 1603-1 Kamitomioka, Nagaoka, Niigata 9402188, Japan
[3] Nagaoka Univ Technol, Dept Syst Safety Engn, 1603 1 Kamitomioka, Nagaoka, Niigata 9402188, Japan
来源
MECHANICAL ENGINEERING JOURNAL | 2024年 / 11卷 / 05期
关键词
Physics-Informed Neural Networks (PINNs); Acoustic analysis; Acoustic tube; Inverse analysis; Wave equation; MODEL;
D O I
10.1299/mej.24-00228
中图分类号
TH [机械、仪表工业];
学科分类号
0802 ;
摘要
Physics-informed Neural Networks (PINNs) is a method for numerical simulation by introducing a loss function with respect to the governing equations into a neural network. Although PINNs has been studied for its usefulness in the field of inverse analysis, but there are few examples of PINNs applied to acoustic analysis. In this study, we report a method for identifying loss parameters in acoustic tubes using PINNs. We set the energy loss parameters within the acoustic tube as trainable parameters of the neural network. The problem of identifying the loss parameters was then formulated as an optimization problem for the neural network, and the physical properties were identified. The neural network structure used in this process was based on our previously proposed ResoNet, which is a PINNs to analyze acoustic resonance. The validity of the proposed method is evaluated by forward and inverse analysis (identification of loss parameters). The results showed that when the parameters to be identified have multiple local solutions, the parameters converge to one of these solutions, and not necessarily to the true value. However, in problem settings where there are no local solutions, the parameters can be identified with high accuracy. This method can be applied to various sound fields by simply changing the governing equations in the loss function, and is expected to have a wide range of applications.
引用
收藏
页数:12
相关论文
共 50 条
  • [41] Referenceless characterization of complex media using physics-informed neural networks
    Goel, Suraj
    Conti, Claudio
    Leedumrongwatthanakun, Saroch
    Malik, Mehul
    OPTICS EXPRESS, 2023, 31 (20) : 32824 - 32839
  • [42] Bayesian Physics-Informed Neural Networks for Robust System Identification of Power Systems
    Stock, Simon
    Stiasny, Jochen
    Babazadeh, Davood
    Becker, Christian
    Chatzivasileiadis, Spyros
    2023 IEEE BELGRADE POWERTECH, 2023,
  • [43] Quantification of gradient energy coefficients using physics-informed neural networks
    Shang, Lan
    Zhao, Yunhong
    Zheng, Sizheng
    Wang, Jin
    Zhang, Tongyi
    Wang, Jie
    INTERNATIONAL JOURNAL OF MECHANICAL SCIENCES, 2024, 273
  • [44] Numerical Simulation of Streamer Discharge Using Physics-Informed Neural Networks
    Peng, Changzhi
    Sabariego, Ruth V.
    Dong, Xuzhu
    Ruan, Jiangjun
    IEEE TRANSACTIONS ON MAGNETICS, 2024, 60 (03) : 1 - 4
  • [45] Combined analysis of thermofluids and electromagnetism using physics-informed neural networks
    Jeong, Yeonhwi
    Jo, Junhyoung
    Lee, Tonghun
    Yoo, Jihyung
    ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2024, 133
  • [46] FIELD PREDICTIONS OF HYPERSONIC CONES USING PHYSICS-INFORMED NEURAL NETWORKS
    Villanueva, Daniel
    Paez, Brandon
    Rodriguez, Arturo
    Chattopadhyay, Ashesh
    Kotteda, V. M. Krushnarao
    Baez, Rafael
    Perez, Jose
    Terrazas, Jose
    Kumar, Vinod
    PROCEEDINGS OF ASME 2022 FLUIDS ENGINEERING DIVISION SUMMER MEETING, FEDSM2022, VOL 2, 2022,
  • [47] System Identification of OSWEC Response Using Physics-Informed Neural Network
    Ayyad, Mahmoud
    Ahmed, Alaa
    Yang, Lisheng
    Hajj, Muhammad R.
    Datla, Raju
    Zuo, Lei
    OCEANS 2023 - LIMERICK, 2023,
  • [48] Quasinormal modes in modified gravity using physics-informed neural networks
    Luna, Raimon
    Doneva, Daniela D.
    Font, Jose A.
    Lien, Jr-Hua
    Yazadjiev, Stoytcho S.
    PHYSICAL REVIEW D, 2024, 109 (12)
  • [49] Multiphysics generalization in a polymerization reactor using physics-informed neural networks
    Ryu, Yubin
    Shin, Sunkyu
    Lee, Won Bo
    Na, Jonggeol
    CHEMICAL ENGINEERING SCIENCE, 2024, 298
  • [50] Solving groundwater flow equation using physics-informed neural networks
    Cuomo, Salvatore
    De Rosa, Mariapia
    Giampaolo, Fabio
    Izzo, Stefano
    Di Cola, Vincenzo Schiano
    COMPUTERS & MATHEMATICS WITH APPLICATIONS, 2023, 145 : 106 - 123