Application of KTA-KELM in Fault Diagnosis of Rolling Bearing

In the process of data-driven rolling bearing state identification model construction,the improper selection of the radial width parameter σ of the Gaussian kernel function in the Kernel Extreme Learning Machine(KELM)algorithm is very easy to cause poor classification accuracy. A method for identify...

Full description

Bibliographic Details
Main Authors: Zhuo Wang, Wenjun Zhao, Tao Ma, Zhijun Li, Bo Qin
Format: Article
Language:zho
Published: Editorial Office of Journal of Mechanical Transmission 2019-06-01
Series:Jixie chuandong
Subjects:
Online Access:http://www.jxcd.net.cn/thesisDetails#10.16578/j.issn.1004.2539.2019.06.030
_version_ 1826882628825907200
author Zhuo Wang
Wenjun Zhao
Tao Ma
Zhijun Li
Bo Qin
author_facet Zhuo Wang
Wenjun Zhao
Tao Ma
Zhijun Li
Bo Qin
author_sort Zhuo Wang
collection DOAJ
description In the process of data-driven rolling bearing state identification model construction,the improper selection of the radial width parameter σ of the Gaussian kernel function in the Kernel Extreme Learning Machine(KELM)algorithm is very easy to cause poor classification accuracy. A method for identifying the state of rolling bearings based on the kernel arrangement preferred kernel parameter σ is proposed. Firstly,the rolling bearing vibration signal is decomposed by Ensemble Local Mean Decomposition(ELMD)and its energy entropy and permutation entropy are calculated to construct a high-dimensional eigenvector set. Then,the Kernel Target Alignment(KTA) parameters of maximum KTA value Ai and the kernel parameter σi are initialized, and the different kernel parameter values are adjusted by judging the distance between the kernel matrix and the ideal target matrix,so as to obtain the minimum corresponding maximum kernel arrangement value when the kernel matrix distance is obtained,and the kernel parameter at this time is optimal. Finally,the high-dimensional feature vector set of the above rolling bearing is used as input to learn the KTA-KELM algorithm, the state recognition model of rolling bearing is built based on KTA-KELM algorithm. The simulation results show that compared with KELM and ELM,the KTA-KELM algorithm improves the accuracy of rolling bearing state recognition from 92.5% and 90% to 98.75%, which is increase 6.25% and 8.75%.
first_indexed 2024-03-13T09:16:46Z
format Article
id doaj.art-009f348eb4294383a30aaa4fe2672b6d
institution Directory Open Access Journal
issn 1004-2539
language zho
last_indexed 2025-02-17T03:14:33Z
publishDate 2019-06-01
publisher Editorial Office of Journal of Mechanical Transmission
record_format Article
series Jixie chuandong
spelling doaj.art-009f348eb4294383a30aaa4fe2672b6d2025-01-10T14:00:29ZzhoEditorial Office of Journal of Mechanical TransmissionJixie chuandong1004-25392019-06-014316517130641665Application of KTA-KELM in Fault Diagnosis of Rolling BearingZhuo WangWenjun ZhaoTao MaZhijun LiBo QinIn the process of data-driven rolling bearing state identification model construction,the improper selection of the radial width parameter σ of the Gaussian kernel function in the Kernel Extreme Learning Machine(KELM)algorithm is very easy to cause poor classification accuracy. A method for identifying the state of rolling bearings based on the kernel arrangement preferred kernel parameter σ is proposed. Firstly,the rolling bearing vibration signal is decomposed by Ensemble Local Mean Decomposition(ELMD)and its energy entropy and permutation entropy are calculated to construct a high-dimensional eigenvector set. Then,the Kernel Target Alignment(KTA) parameters of maximum KTA value Ai and the kernel parameter σi are initialized, and the different kernel parameter values are adjusted by judging the distance between the kernel matrix and the ideal target matrix,so as to obtain the minimum corresponding maximum kernel arrangement value when the kernel matrix distance is obtained,and the kernel parameter at this time is optimal. Finally,the high-dimensional feature vector set of the above rolling bearing is used as input to learn the KTA-KELM algorithm, the state recognition model of rolling bearing is built based on KTA-KELM algorithm. The simulation results show that compared with KELM and ELM,the KTA-KELM algorithm improves the accuracy of rolling bearing state recognition from 92.5% and 90% to 98.75%, which is increase 6.25% and 8.75%.http://www.jxcd.net.cn/thesisDetails#10.16578/j.issn.1004.2539.2019.06.030Rolling bearingKernel parameter optimizationState identificationClassification precision
spellingShingle Zhuo Wang
Wenjun Zhao
Tao Ma
Zhijun Li
Bo Qin
Application of KTA-KELM in Fault Diagnosis of Rolling Bearing
Jixie chuandong
Rolling bearing
Kernel parameter optimization
State identification
Classification precision
title Application of KTA-KELM in Fault Diagnosis of Rolling Bearing
title_full Application of KTA-KELM in Fault Diagnosis of Rolling Bearing
title_fullStr Application of KTA-KELM in Fault Diagnosis of Rolling Bearing
title_full_unstemmed Application of KTA-KELM in Fault Diagnosis of Rolling Bearing
title_short Application of KTA-KELM in Fault Diagnosis of Rolling Bearing
title_sort application of kta kelm in fault diagnosis of rolling bearing
topic Rolling bearing
Kernel parameter optimization
State identification
Classification precision
url http://www.jxcd.net.cn/thesisDetails#10.16578/j.issn.1004.2539.2019.06.030
work_keys_str_mv AT zhuowang applicationofktakelminfaultdiagnosisofrollingbearing
AT wenjunzhao applicationofktakelminfaultdiagnosisofrollingbearing
AT taoma applicationofktakelminfaultdiagnosisofrollingbearing
AT zhijunli applicationofktakelminfaultdiagnosisofrollingbearing
AT boqin applicationofktakelminfaultdiagnosisofrollingbearing