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Main Authors: Yokota, Kazuya, Ogura, Masataka, Abe, Masajiro
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2406.11119
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author Yokota, Kazuya
Ogura, Masataka
Abe, Masajiro
author_facet Yokota, Kazuya
Ogura, Masataka
Abe, Masajiro
contents Physics-informed Neural Networks (PINNs) is a method for numerical simulation that incorporates a loss function corresponding to the governing equations into a neural network. While PINNs have been explored for their utility in inverse analysis, their application in acoustic analysis remains limited. This study presents a method to identify loss parameters in acoustic tubes using PINNs. We categorized the loss parameters into two groups: one dependent on the tube's diameter and another constant, independent of it. The latter were set as the trainable parameters of the neural network. The problem of identifying the loss parameter was formulated as an optimization problem, with the physical properties being determined through this process. The neural network architecture employed was based on our previously proposed ResoNet, which is designed for analyzing acoustic resonance. The efficacy of the proposed method is assessed through both forward and inverse analysis, specifically through the identification of loss parameters. The findings demonstrate that it is feasible to accurately identify parameters that significantly impact the sound field under analysis. By merely altering the governing equations in the loss function, this method could be adapted to various sound fields, suggesting its potential for broad application.
format Preprint
id arxiv_https___arxiv_org_abs_2406_11119
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Identification of Physical Properties in Acoustic Tubes Using Physics-Informed Neural Networks
Yokota, Kazuya
Ogura, Masataka
Abe, Masajiro
Sound
Audio and Speech Processing
Physics-informed Neural Networks (PINNs) is a method for numerical simulation that incorporates a loss function corresponding to the governing equations into a neural network. While PINNs have been explored for their utility in inverse analysis, their application in acoustic analysis remains limited. This study presents a method to identify loss parameters in acoustic tubes using PINNs. We categorized the loss parameters into two groups: one dependent on the tube's diameter and another constant, independent of it. The latter were set as the trainable parameters of the neural network. The problem of identifying the loss parameter was formulated as an optimization problem, with the physical properties being determined through this process. The neural network architecture employed was based on our previously proposed ResoNet, which is designed for analyzing acoustic resonance. The efficacy of the proposed method is assessed through both forward and inverse analysis, specifically through the identification of loss parameters. The findings demonstrate that it is feasible to accurately identify parameters that significantly impact the sound field under analysis. By merely altering the governing equations in the loss function, this method could be adapted to various sound fields, suggesting its potential for broad application.
title Identification of Physical Properties in Acoustic Tubes Using Physics-Informed Neural Networks
topic Sound
Audio and Speech Processing
url https://arxiv.org/abs/2406.11119