RESEARCH ON FAULT DIAGNOSIS METHOD BASED ON NEIGHBORHOOD ADAPTIVE LLTSA FOR DIMENSION REDUTION

In order to solve interference of the neighborhood size of the linear local tangent space alignment( LLTSA) when used in fault feature reduction,in this paper,a fault diagnosis method based on linear local tangent space alignment( NALLTSA) for dimension reduction is proposed. Firstly,the high-dimens...

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Main Authors: XU QiongYan, WU YinHua
Format: Article
Language:zho
Published: Editorial Office of Journal of Mechanical Strength 2018-01-01
Series:Jixie qiangdu
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Online Access:http://www.jxqd.net.cn/thesisDetails#10.16579/j.issn.1001.9669.2018.01.005
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author XU QiongYan
WU YinHua
author_facet XU QiongYan
WU YinHua
author_sort XU QiongYan
collection DOAJ
description In order to solve interference of the neighborhood size of the linear local tangent space alignment( LLTSA) when used in fault feature reduction,in this paper,a fault diagnosis method based on linear local tangent space alignment( NALLTSA) for dimension reduction is proposed. Firstly,the high-dimensional fault feature of mechanical vibration signal are extracted. And then,the neighborhood adaptive linear local tangent space alignment with Parzen window density estimation is used to reduce the high-dimensional set to the low-dimensional compressed sensitive feature subset. Finally,the corresponding relationship between low-dimensional feature and fault classes are established by using support vector machine( SVM).Dimension reduction with NA-LLTSA can effectively increase the discrimination of fault feature,and furthermore,SVM can further improve fault diagnosis accuracy with its excellent pattern recognition capacity. Finally,the effectiveness of the proposed method was verified through the fault diagnosis experiment of rolling bearing.
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institution Kabale University
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publisher Editorial Office of Journal of Mechanical Strength
record_format Article
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spelling doaj-art-a723d6425f2a493aabe6f3a6bacaace42025-01-15T02:32:40ZzhoEditorial Office of Journal of Mechanical StrengthJixie qiangdu1001-96692018-01-0140273230600542RESEARCH ON FAULT DIAGNOSIS METHOD BASED ON NEIGHBORHOOD ADAPTIVE LLTSA FOR DIMENSION REDUTIONXU QiongYanWU YinHuaIn order to solve interference of the neighborhood size of the linear local tangent space alignment( LLTSA) when used in fault feature reduction,in this paper,a fault diagnosis method based on linear local tangent space alignment( NALLTSA) for dimension reduction is proposed. Firstly,the high-dimensional fault feature of mechanical vibration signal are extracted. And then,the neighborhood adaptive linear local tangent space alignment with Parzen window density estimation is used to reduce the high-dimensional set to the low-dimensional compressed sensitive feature subset. Finally,the corresponding relationship between low-dimensional feature and fault classes are established by using support vector machine( SVM).Dimension reduction with NA-LLTSA can effectively increase the discrimination of fault feature,and furthermore,SVM can further improve fault diagnosis accuracy with its excellent pattern recognition capacity. Finally,the effectiveness of the proposed method was verified through the fault diagnosis experiment of rolling bearing.http://www.jxqd.net.cn/thesisDetails#10.16579/j.issn.1001.9669.2018.01.005Fault diagnosisDimension reductionNeighborhood Adaptive linear local tangent space alignment(NA-LLTSA)Support vector machine(SVM)
spellingShingle XU QiongYan
WU YinHua
RESEARCH ON FAULT DIAGNOSIS METHOD BASED ON NEIGHBORHOOD ADAPTIVE LLTSA FOR DIMENSION REDUTION
Jixie qiangdu
Fault diagnosis
Dimension reduction
Neighborhood Adaptive linear local tangent space alignment(NA-LLTSA)
Support vector machine(SVM)
title RESEARCH ON FAULT DIAGNOSIS METHOD BASED ON NEIGHBORHOOD ADAPTIVE LLTSA FOR DIMENSION REDUTION
title_full RESEARCH ON FAULT DIAGNOSIS METHOD BASED ON NEIGHBORHOOD ADAPTIVE LLTSA FOR DIMENSION REDUTION
title_fullStr RESEARCH ON FAULT DIAGNOSIS METHOD BASED ON NEIGHBORHOOD ADAPTIVE LLTSA FOR DIMENSION REDUTION
title_full_unstemmed RESEARCH ON FAULT DIAGNOSIS METHOD BASED ON NEIGHBORHOOD ADAPTIVE LLTSA FOR DIMENSION REDUTION
title_short RESEARCH ON FAULT DIAGNOSIS METHOD BASED ON NEIGHBORHOOD ADAPTIVE LLTSA FOR DIMENSION REDUTION
title_sort research on fault diagnosis method based on neighborhood adaptive lltsa for dimension redution
topic Fault diagnosis
Dimension reduction
Neighborhood Adaptive linear local tangent space alignment(NA-LLTSA)
Support vector machine(SVM)
url http://www.jxqd.net.cn/thesisDetails#10.16579/j.issn.1001.9669.2018.01.005
work_keys_str_mv AT xuqiongyan researchonfaultdiagnosismethodbasedonneighborhoodadaptivelltsafordimensionredution
AT wuyinhua researchonfaultdiagnosismethodbasedonneighborhoodadaptivelltsafordimensionredution