Application of machine learning-base k-means clustering for feature recognition of fibre bragg grating acoustic signal from different delamination sizes

Continuous monitoring of composite structures is crucial to preserve their integrity over their entire service life, particularly when it comes to detecting subtle interior degradation like delamination. Extensive research has been dedicated to examining the utilisation of conventional electrical se...

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Autori principali: Ihsan Naiman, Ibrahim, Mohd Hafizi, Zohari, Mohd Fadhlan, Mohd Yusof
Natura: Conference or Workshop Item
Lingua:English
English
Pubblicazione: IEEE 2024
Soggetti:
Accesso online:http://umpir.ump.edu.my/id/eprint/42621/1/Application_of_Machine_Learning-Base_K-Means_Clustering_for_Feature_Recognition_of_Fibre_Bragg_Grating_Acoustic_Signal.pdf
http://umpir.ump.edu.my/id/eprint/42621/2/Application_of_Machine_Learning-Base_K-Means_Clustering_for_Feature_Recognition_of_Fibre_Bragg_Grating_Acoustic_Signal_from_Different_Delamination_Sizes.pdf
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author Ihsan Naiman, Ibrahim
Mohd Hafizi, Zohari
Mohd Fadhlan, Mohd Yusof
author_facet Ihsan Naiman, Ibrahim
Mohd Hafizi, Zohari
Mohd Fadhlan, Mohd Yusof
author_sort Ihsan Naiman, Ibrahim
collection UMP
description Continuous monitoring of composite structures is crucial to preserve their integrity over their entire service life, particularly when it comes to detecting subtle interior degradation like delamination. Extensive research has been dedicated to examining the utilisation of conventional electrical sensors for the purpose of collecting acoustic waves to quantify delamination. However, electrical sensors are well known to have several drawbacks. In this work, fibre Bragg grating (FBG) sensor is used to assess delamination, as the alternative to conventional electrical based sensors. In this study, composite plates were fabricated with varying sizes of delamination. The composite specimen has been equipped with a sensor network consisting of two multiplexed FBGs to acquire acoustic signals from an impact at the centre of the specimens. The use of a classification model derived from the analysis of sound signals from the FBGs has demonstrated significant success in identifying and characterising the result from different delamination sizes. The root-mean-square and peak value of the signals were extracted, and classification models were developed using these data sets. The results reveal that the overall percentage of accuracy is 91.7% for various delamination sizes. The findings offer compelling proof that employing an FBG sensor network for detecting delamination could be a practical choice for monitoring the health of plate-like composite structures.
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spelling UMPir426212024-09-20T03:43:26Z http://umpir.ump.edu.my/id/eprint/42621/ Application of machine learning-base k-means clustering for feature recognition of fibre bragg grating acoustic signal from different delamination sizes Ihsan Naiman, Ibrahim Mohd Hafizi, Zohari Mohd Fadhlan, Mohd Yusof T Technology (General) TJ Mechanical engineering and machinery Continuous monitoring of composite structures is crucial to preserve their integrity over their entire service life, particularly when it comes to detecting subtle interior degradation like delamination. Extensive research has been dedicated to examining the utilisation of conventional electrical sensors for the purpose of collecting acoustic waves to quantify delamination. However, electrical sensors are well known to have several drawbacks. In this work, fibre Bragg grating (FBG) sensor is used to assess delamination, as the alternative to conventional electrical based sensors. In this study, composite plates were fabricated with varying sizes of delamination. The composite specimen has been equipped with a sensor network consisting of two multiplexed FBGs to acquire acoustic signals from an impact at the centre of the specimens. The use of a classification model derived from the analysis of sound signals from the FBGs has demonstrated significant success in identifying and characterising the result from different delamination sizes. The root-mean-square and peak value of the signals were extracted, and classification models were developed using these data sets. The results reveal that the overall percentage of accuracy is 91.7% for various delamination sizes. The findings offer compelling proof that employing an FBG sensor network for detecting delamination could be a practical choice for monitoring the health of plate-like composite structures. IEEE 2024 Conference or Workshop Item PeerReviewed pdf en http://umpir.ump.edu.my/id/eprint/42621/1/Application_of_Machine_Learning-Base_K-Means_Clustering_for_Feature_Recognition_of_Fibre_Bragg_Grating_Acoustic_Signal.pdf pdf en http://umpir.ump.edu.my/id/eprint/42621/2/Application_of_Machine_Learning-Base_K-Means_Clustering_for_Feature_Recognition_of_Fibre_Bragg_Grating_Acoustic_Signal_from_Different_Delamination_Sizes.pdf Ihsan Naiman, Ibrahim and Mohd Hafizi, Zohari and Mohd Fadhlan, Mohd Yusof (2024) Application of machine learning-base k-means clustering for feature recognition of fibre bragg grating acoustic signal from different delamination sizes. In: 2024 IEEE Symposium on Industrial Electronics and Applications, ISIEA 2024. 2024 IEEE Symposium on Industrial Electronics and Applications, ISIEA 2024 , 6 - 7 July 2024 , Kuala Lumpur. pp. 1-6.. ISBN 979-8-3503-8686-8 (Published) https://doi.org/10.1109/ISIEA61920.2024.10607325
spellingShingle T Technology (General)
TJ Mechanical engineering and machinery
Ihsan Naiman, Ibrahim
Mohd Hafizi, Zohari
Mohd Fadhlan, Mohd Yusof
Application of machine learning-base k-means clustering for feature recognition of fibre bragg grating acoustic signal from different delamination sizes
title Application of machine learning-base k-means clustering for feature recognition of fibre bragg grating acoustic signal from different delamination sizes
title_full Application of machine learning-base k-means clustering for feature recognition of fibre bragg grating acoustic signal from different delamination sizes
title_fullStr Application of machine learning-base k-means clustering for feature recognition of fibre bragg grating acoustic signal from different delamination sizes
title_full_unstemmed Application of machine learning-base k-means clustering for feature recognition of fibre bragg grating acoustic signal from different delamination sizes
title_short Application of machine learning-base k-means clustering for feature recognition of fibre bragg grating acoustic signal from different delamination sizes
title_sort application of machine learning base k means clustering for feature recognition of fibre bragg grating acoustic signal from different delamination sizes
topic T Technology (General)
TJ Mechanical engineering and machinery
url http://umpir.ump.edu.my/id/eprint/42621/1/Application_of_Machine_Learning-Base_K-Means_Clustering_for_Feature_Recognition_of_Fibre_Bragg_Grating_Acoustic_Signal.pdf
http://umpir.ump.edu.my/id/eprint/42621/2/Application_of_Machine_Learning-Base_K-Means_Clustering_for_Feature_Recognition_of_Fibre_Bragg_Grating_Acoustic_Signal_from_Different_Delamination_Sizes.pdf
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