Fault Diagnosis Method Based on Principal Component Analysis and Broad Learning System

Traditional feature extraction methods are used to extract the features of signal to construct the fault feature matrix, which exists the complex structure, higher correlation, and redundancy. This will increase the complex fault classification and seriously affect the accuracy and efficiency of fau...

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Main Authors: Huimin Zhao, Jianjie Zheng, Junjie Xu, Wu Deng
Format: Article
Language:English
Published: IEEE 2019-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8764347/
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spelling doaj-03bb8bdd575d4d3ba9be9ddfdd17eb5d2021-04-05T17:26:27ZengIEEEIEEE Access2169-35362019-01-017992639927210.1109/ACCESS.2019.29290948764347Fault Diagnosis Method Based on Principal Component Analysis and Broad Learning SystemHuimin Zhao0Jianjie Zheng1Junjie Xu2https://orcid.org/0000-0002-1549-693XWu Deng3https://orcid.org/0000-0002-6524-6760College of Electronic Information and Automation, Civil Aviation University of China, Tianjin, ChinaSoftware Institute, Dalian Jiaotong University, Dalian, ChinaCollege of Electronic Information and Automation, Civil Aviation University of China, Tianjin, ChinaCollege of Electronic Information and Automation, Civil Aviation University of China, Tianjin, ChinaTraditional feature extraction methods are used to extract the features of signal to construct the fault feature matrix, which exists the complex structure, higher correlation, and redundancy. This will increase the complex fault classification and seriously affect the accuracy and efficiency of fault identification. In order to solve these problems, a new fault diagnosis (PABSFD) method based on the principal component analysis (PCA) and the broad learning system (BLS) is proposed for rotor system in this paper. In the proposed PABSFD method, the PCA with revealing the signal essence is used to reduce the dimension of the constructed feature matrix and decrease the linear feature correlation between data and eliminate the redundant attributes in order to obtain the low-dimensional feature matrix with retaining the essential features for the classification model. Then, the BLS with low time complexity and high classification accuracy is regarded as a classification model to realize the fault identification; it can efficiently accomplish the fault classification of rotor system. Finally, the actual vibration data of rotor system are selected to test and verify the effectiveness of the PABSFD method. The experimental results show that the PCA method can effectively eliminate the feature correlation and realize the dimension reduction of the feature matrix, the BLS can take on better adaptability, faster computation speed, and higher classification accuracy, and the PABSFD method can efficiently and accurately obtain the fault diagnosis results.https://ieeexplore.ieee.org/document/8764347/Rotor systemfault diagnosisprincipal component analysis (PCA)broad learning system (BLS)dimension reduction
collection DOAJ
language English
format Article
sources DOAJ
author Huimin Zhao
Jianjie Zheng
Junjie Xu
Wu Deng
spellingShingle Huimin Zhao
Jianjie Zheng
Junjie Xu
Wu Deng
Fault Diagnosis Method Based on Principal Component Analysis and Broad Learning System
IEEE Access
Rotor system
fault diagnosis
principal component analysis (PCA)
broad learning system (BLS)
dimension reduction
author_facet Huimin Zhao
Jianjie Zheng
Junjie Xu
Wu Deng
author_sort Huimin Zhao
title Fault Diagnosis Method Based on Principal Component Analysis and Broad Learning System
title_short Fault Diagnosis Method Based on Principal Component Analysis and Broad Learning System
title_full Fault Diagnosis Method Based on Principal Component Analysis and Broad Learning System
title_fullStr Fault Diagnosis Method Based on Principal Component Analysis and Broad Learning System
title_full_unstemmed Fault Diagnosis Method Based on Principal Component Analysis and Broad Learning System
title_sort fault diagnosis method based on principal component analysis and broad learning system
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2019-01-01
description Traditional feature extraction methods are used to extract the features of signal to construct the fault feature matrix, which exists the complex structure, higher correlation, and redundancy. This will increase the complex fault classification and seriously affect the accuracy and efficiency of fault identification. In order to solve these problems, a new fault diagnosis (PABSFD) method based on the principal component analysis (PCA) and the broad learning system (BLS) is proposed for rotor system in this paper. In the proposed PABSFD method, the PCA with revealing the signal essence is used to reduce the dimension of the constructed feature matrix and decrease the linear feature correlation between data and eliminate the redundant attributes in order to obtain the low-dimensional feature matrix with retaining the essential features for the classification model. Then, the BLS with low time complexity and high classification accuracy is regarded as a classification model to realize the fault identification; it can efficiently accomplish the fault classification of rotor system. Finally, the actual vibration data of rotor system are selected to test and verify the effectiveness of the PABSFD method. The experimental results show that the PCA method can effectively eliminate the feature correlation and realize the dimension reduction of the feature matrix, the BLS can take on better adaptability, faster computation speed, and higher classification accuracy, and the PABSFD method can efficiently and accurately obtain the fault diagnosis results.
topic Rotor system
fault diagnosis
principal component analysis (PCA)
broad learning system (BLS)
dimension reduction
url https://ieeexplore.ieee.org/document/8764347/
work_keys_str_mv AT huiminzhao faultdiagnosismethodbasedonprincipalcomponentanalysisandbroadlearningsystem
AT jianjiezheng faultdiagnosismethodbasedonprincipalcomponentanalysisandbroadlearningsystem
AT junjiexu faultdiagnosismethodbasedonprincipalcomponentanalysisandbroadlearningsystem
AT wudeng faultdiagnosismethodbasedonprincipalcomponentanalysisandbroadlearningsystem
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