Operational structural damage identification using de-noised modal feature in machine learning / Chen Shilei

Structural damage can severely affect the safety and functionality of the structure and lead to economic loss. Vibration-based structural damage detection has raised continuous interest over the decades, as a non-destructive way to provide warnings and predict certain faults at early stages. Comp...

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التفاصيل البيبلوغرافية
المؤلف الرئيسي: Chen , Shilei
التنسيق: أطروحة
منشور في: 2021
الموضوعات:
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author Chen , Shilei
author_facet Chen , Shilei
author_sort Chen , Shilei
description Structural damage can severely affect the safety and functionality of the structure and lead to economic loss. Vibration-based structural damage detection has raised continuous interest over the decades, as a non-destructive way to provide warnings and predict certain faults at early stages. Compared with conventional modal parameters such as the natural frequency and mode shape, the upstream modal data, namely the frequency response function (FRF), can be a better alternative, because it is rich in modal information and can be easily obtained. However, the FRF is usually measured through experimental modal analysis (EMA) when the test object is in shut-down mode, which is not practical for real-time application in the working environment. This limitation can be overcome by a novel technique named impact-synchronous modal analysis (ISMA) performed under the operational condition. Machine learning is also a focus in this work, which was employed to process and classify FRF data in terms of damage. By integrating ISMA, both supervised and unsupervised machine learning algorithms were investigated to develop real-time damage identification schemes. Specifically, the back-propagation (BP) network was employed in the supervised learning method, and the FRF changes in a selected frequency interval at several measurement points were used as the input of the network. The unsupervised learning method was developed by combining principal component analysis (PCA), waveform chain code (WCC) analysis and hierarchical cluster analysis. WCC analysis was carried out on the PCA-reduced FRF to extract damage-sensitive PCA-WCC features. The unsupervised hierarchical cluster analysis was then conducted on these features. The proposed schemes were tested on a rectangular Perspex plate. The results show that the similarity between the FRF obtained by ISMA and EMA exceeds 0.993, proving that the de-noising method of ISMA provides static comparable FRF data during the in-service condition. For the supervised learning method, the trained BP network can successfully identify the scenarios of high and moderate damage with an overall accuracy of 100% when all five measurement points are used. With the input features optimized by mode shape assessment, 100% accuracy can also be achieved with only two measurement points. For the unsupervised learning method, the hierarchical cluster analysis can correctly cluster the samples in terms of their damage states. In terms of damage severity and location identification, the proposed scheme is sensitive to detect damage severity with damage index as low as 0.05. In addition, the combination of PCA-reduced FRF and mode shapes shows a positive correlation between the magnitude of the resonant peak and the displacement of the impact point in identifying the damage location of the plate. In conclusion, the supervised learning method using FRF change is convenient and effective in identifying the damage state of the plate, and can be optimized through mode shape assessment. Meanwhile, the unsupervised learning method using PCA-WCC features is good at detecting unknown damage, and is sensitive to low-severity damage. With the help of PCA-reduced FRF, it is also feasible to estimate the severity and locate the damage of the test plate.
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spelling oai:studentsrepo.um.edu.my:131982022-04-13T19:15:40Z Operational structural damage identification using de-noised modal feature in machine learning / Chen Shilei Chen , Shilei TJ Mechanical engineering and machinery Structural damage can severely affect the safety and functionality of the structure and lead to economic loss. Vibration-based structural damage detection has raised continuous interest over the decades, as a non-destructive way to provide warnings and predict certain faults at early stages. Compared with conventional modal parameters such as the natural frequency and mode shape, the upstream modal data, namely the frequency response function (FRF), can be a better alternative, because it is rich in modal information and can be easily obtained. However, the FRF is usually measured through experimental modal analysis (EMA) when the test object is in shut-down mode, which is not practical for real-time application in the working environment. This limitation can be overcome by a novel technique named impact-synchronous modal analysis (ISMA) performed under the operational condition. Machine learning is also a focus in this work, which was employed to process and classify FRF data in terms of damage. By integrating ISMA, both supervised and unsupervised machine learning algorithms were investigated to develop real-time damage identification schemes. Specifically, the back-propagation (BP) network was employed in the supervised learning method, and the FRF changes in a selected frequency interval at several measurement points were used as the input of the network. The unsupervised learning method was developed by combining principal component analysis (PCA), waveform chain code (WCC) analysis and hierarchical cluster analysis. WCC analysis was carried out on the PCA-reduced FRF to extract damage-sensitive PCA-WCC features. The unsupervised hierarchical cluster analysis was then conducted on these features. The proposed schemes were tested on a rectangular Perspex plate. The results show that the similarity between the FRF obtained by ISMA and EMA exceeds 0.993, proving that the de-noising method of ISMA provides static comparable FRF data during the in-service condition. For the supervised learning method, the trained BP network can successfully identify the scenarios of high and moderate damage with an overall accuracy of 100% when all five measurement points are used. With the input features optimized by mode shape assessment, 100% accuracy can also be achieved with only two measurement points. For the unsupervised learning method, the hierarchical cluster analysis can correctly cluster the samples in terms of their damage states. In terms of damage severity and location identification, the proposed scheme is sensitive to detect damage severity with damage index as low as 0.05. In addition, the combination of PCA-reduced FRF and mode shapes shows a positive correlation between the magnitude of the resonant peak and the displacement of the impact point in identifying the damage location of the plate. In conclusion, the supervised learning method using FRF change is convenient and effective in identifying the damage state of the plate, and can be optimized through mode shape assessment. Meanwhile, the unsupervised learning method using PCA-WCC features is good at detecting unknown damage, and is sensitive to low-severity damage. With the help of PCA-reduced FRF, it is also feasible to estimate the severity and locate the damage of the test plate. 2021-02 Thesis NonPeerReviewed application/pdf http://studentsrepo.um.edu.my/13198/1/Chen_Shilei.jpg application/pdf http://studentsrepo.um.edu.my/13198/8/shilei.pdf Chen , Shilei (2021) Operational structural damage identification using de-noised modal feature in machine learning / Chen Shilei. Masters thesis, Universiti Malaya. http://studentsrepo.um.edu.my/13198/
spellingShingle TJ Mechanical engineering and machinery
Chen , Shilei
Operational structural damage identification using de-noised modal feature in machine learning / Chen Shilei
title Operational structural damage identification using de-noised modal feature in machine learning / Chen Shilei
title_full Operational structural damage identification using de-noised modal feature in machine learning / Chen Shilei
title_fullStr Operational structural damage identification using de-noised modal feature in machine learning / Chen Shilei
title_full_unstemmed Operational structural damage identification using de-noised modal feature in machine learning / Chen Shilei
title_short Operational structural damage identification using de-noised modal feature in machine learning / Chen Shilei
title_sort operational structural damage identification using de noised modal feature in machine learning chen shilei
topic TJ Mechanical engineering and machinery
url-record http://studentsrepo.um.edu.my/13198/
work_keys_str_mv AT chenshilei operationalstructuraldamageidentificationusingdenoisedmodalfeatureinmachinelearningchenshilei