A Damage Detection Method Using Neural Network Optimized by Multiple Particle Collision Algorithm

A critical task of structural health monitoring is damage detection and localization. Lamb wave propagation methods have been successfully applied for damage identification in plate-like structures. However, Lamb wave processing is still a challenging task due to its multimodal and dispersive charac...

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Main Authors: Sergio V. Farias, Osamu Saotome, Haroldo F. Campos Velho, Elcio H. Shiguemori
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Journal of Sensors
Online Access:http://dx.doi.org/10.1155/2021/9998187
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spelling doaj-c1cd412889b04e408c5b1806e7a9ce492021-08-16T00:00:23ZengHindawi LimitedJournal of Sensors1687-72682021-01-01202110.1155/2021/9998187A Damage Detection Method Using Neural Network Optimized by Multiple Particle Collision AlgorithmSergio V. Farias0Osamu Saotome1Haroldo F. Campos Velho2Elcio H. Shiguemori3Aeronautics Institute of Technology (ITA)Aeronautics Institute of Technology (ITA)National Institute for Space Research (INPE)Institute of Advanced Studies (IEAv)A critical task of structural health monitoring is damage detection and localization. Lamb wave propagation methods have been successfully applied for damage identification in plate-like structures. However, Lamb wave processing is still a challenging task due to its multimodal and dispersive characteristics. To address this issue, data-driven machine learning approaches as artificial neural network (ANN) have been proposed. However, the effectiveness of ANN can be improved based on its architecture and the learning strategy employed to train it. The present paper proposes a Multiple Particle Collision Algorithm (MPCA) to design an optimum ANN architecture to detect and locate damages in plate-like structures. For the first time in the literature, the MPCA is applied to find damages in plate-like structures. The present work uses one piezoelectric transducer to generate Lamb wave signals on an aluminum plate structure and a linear array of four transducers to capture the scattered signals. The continuous wavelet transform (CWT) processes the captured signals to estimate the time-of-flight (ToF) that is the ANN inputs. The ANN output is the damage spatial coordinates. In addition to MPCA optimization, this paper uses a quantitative entropy-based criterion to find the best mother wavelet and the scale values. The presented experimental results show that MPCA is capable of finding a simple ANN architecture with good generalization performance in the proposed damage localization application. The proposed method is compared with the 1-dimensional convolutional neural network (1D-CNN). A discussion about the advantages and limitations of the proposed method is presented.http://dx.doi.org/10.1155/2021/9998187
collection DOAJ
language English
format Article
sources DOAJ
author Sergio V. Farias
Osamu Saotome
Haroldo F. Campos Velho
Elcio H. Shiguemori
spellingShingle Sergio V. Farias
Osamu Saotome
Haroldo F. Campos Velho
Elcio H. Shiguemori
A Damage Detection Method Using Neural Network Optimized by Multiple Particle Collision Algorithm
Journal of Sensors
author_facet Sergio V. Farias
Osamu Saotome
Haroldo F. Campos Velho
Elcio H. Shiguemori
author_sort Sergio V. Farias
title A Damage Detection Method Using Neural Network Optimized by Multiple Particle Collision Algorithm
title_short A Damage Detection Method Using Neural Network Optimized by Multiple Particle Collision Algorithm
title_full A Damage Detection Method Using Neural Network Optimized by Multiple Particle Collision Algorithm
title_fullStr A Damage Detection Method Using Neural Network Optimized by Multiple Particle Collision Algorithm
title_full_unstemmed A Damage Detection Method Using Neural Network Optimized by Multiple Particle Collision Algorithm
title_sort damage detection method using neural network optimized by multiple particle collision algorithm
publisher Hindawi Limited
series Journal of Sensors
issn 1687-7268
publishDate 2021-01-01
description A critical task of structural health monitoring is damage detection and localization. Lamb wave propagation methods have been successfully applied for damage identification in plate-like structures. However, Lamb wave processing is still a challenging task due to its multimodal and dispersive characteristics. To address this issue, data-driven machine learning approaches as artificial neural network (ANN) have been proposed. However, the effectiveness of ANN can be improved based on its architecture and the learning strategy employed to train it. The present paper proposes a Multiple Particle Collision Algorithm (MPCA) to design an optimum ANN architecture to detect and locate damages in plate-like structures. For the first time in the literature, the MPCA is applied to find damages in plate-like structures. The present work uses one piezoelectric transducer to generate Lamb wave signals on an aluminum plate structure and a linear array of four transducers to capture the scattered signals. The continuous wavelet transform (CWT) processes the captured signals to estimate the time-of-flight (ToF) that is the ANN inputs. The ANN output is the damage spatial coordinates. In addition to MPCA optimization, this paper uses a quantitative entropy-based criterion to find the best mother wavelet and the scale values. The presented experimental results show that MPCA is capable of finding a simple ANN architecture with good generalization performance in the proposed damage localization application. The proposed method is compared with the 1-dimensional convolutional neural network (1D-CNN). A discussion about the advantages and limitations of the proposed method is presented.
url http://dx.doi.org/10.1155/2021/9998187
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