APPLICATION OF IMPROVED GWO-SVM IN WIND TURBINE GEARBOX FAULT DIAGNOSIS

Aiming at the shortcomings of Grey Wolf Optimizer(GWO), such as it’s easy to fall into local optimum and insufficient mining capacity, the paper improve the convergence accuracy and stability of GWO based on the improvement of control factors. The wind turbine gearbox vibration signal collected by t...

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Main Authors: HU Xuan, LI Chun, YE KeHua, ZHANG WanFu
Format: Article
Language:zho
Published: Editorial Office of Journal of Mechanical Strength 2021-01-01
Series:Jixie qiangdu
Subjects:
Online Access:http://www.jxqd.net.cn/thesisDetails#10.16579/j.issn.1001.9669.2021.06.003
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author HU Xuan
LI Chun
YE KeHua
ZHANG WanFu
author_facet HU Xuan
LI Chun
YE KeHua
ZHANG WanFu
author_sort HU Xuan
collection DOAJ
description Aiming at the shortcomings of Grey Wolf Optimizer(GWO), such as it’s easy to fall into local optimum and insufficient mining capacity, the paper improve the convergence accuracy and stability of GWO based on the improvement of control factors. The wind turbine gearbox vibration signal collected by the "Gearbox Reliability Collaborative(GRC)" project of the National Renewable Energy Laboratory(NREL)in the United States was used as the analysis object. After the collection of Ensemble Empirical Mode Decomposition(EEMD), the fuzzy entropy of each eigenmode function component was calculated and the high dimensionality was constructed. Then feature vectors are used to reduce dimensionality using isometric mapping. The improved gray wolf algorithm is used to optimize the support vector machine to diagnose the gearbox fault feature set after dimensionality reduction. The results show that compared with GWO and PSO and GA, IGWO can effectively avoid falling into local optimum and improve the accuracy and stability of SVM diagnosis. It has the highest accuracy under different test samples, and the average accuracy rate can up to 93.17%.
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institution Kabale University
issn 1001-9669
language zho
publishDate 2021-01-01
publisher Editorial Office of Journal of Mechanical Strength
record_format Article
series Jixie qiangdu
spelling doaj-art-7b6040e0934846159b635dbcfff984412025-01-15T02:25:00ZzhoEditorial Office of Journal of Mechanical StrengthJixie qiangdu1001-96692021-01-01431289129630612139APPLICATION OF IMPROVED GWO-SVM IN WIND TURBINE GEARBOX FAULT DIAGNOSISHU XuanLI ChunYE KeHuaZHANG WanFuAiming at the shortcomings of Grey Wolf Optimizer(GWO), such as it’s easy to fall into local optimum and insufficient mining capacity, the paper improve the convergence accuracy and stability of GWO based on the improvement of control factors. The wind turbine gearbox vibration signal collected by the "Gearbox Reliability Collaborative(GRC)" project of the National Renewable Energy Laboratory(NREL)in the United States was used as the analysis object. After the collection of Ensemble Empirical Mode Decomposition(EEMD), the fuzzy entropy of each eigenmode function component was calculated and the high dimensionality was constructed. Then feature vectors are used to reduce dimensionality using isometric mapping. The improved gray wolf algorithm is used to optimize the support vector machine to diagnose the gearbox fault feature set after dimensionality reduction. The results show that compared with GWO and PSO and GA, IGWO can effectively avoid falling into local optimum and improve the accuracy and stability of SVM diagnosis. It has the highest accuracy under different test samples, and the average accuracy rate can up to 93.17%.http://www.jxqd.net.cn/thesisDetails#10.16579/j.issn.1001.9669.2021.06.003Wind turbine gearboxFault diagnosisImproved grey wolf optimizerIsometric mappingSupport vector machine
spellingShingle HU Xuan
LI Chun
YE KeHua
ZHANG WanFu
APPLICATION OF IMPROVED GWO-SVM IN WIND TURBINE GEARBOX FAULT DIAGNOSIS
Jixie qiangdu
Wind turbine gearbox
Fault diagnosis
Improved grey wolf optimizer
Isometric mapping
Support vector machine
title APPLICATION OF IMPROVED GWO-SVM IN WIND TURBINE GEARBOX FAULT DIAGNOSIS
title_full APPLICATION OF IMPROVED GWO-SVM IN WIND TURBINE GEARBOX FAULT DIAGNOSIS
title_fullStr APPLICATION OF IMPROVED GWO-SVM IN WIND TURBINE GEARBOX FAULT DIAGNOSIS
title_full_unstemmed APPLICATION OF IMPROVED GWO-SVM IN WIND TURBINE GEARBOX FAULT DIAGNOSIS
title_short APPLICATION OF IMPROVED GWO-SVM IN WIND TURBINE GEARBOX FAULT DIAGNOSIS
title_sort application of improved gwo svm in wind turbine gearbox fault diagnosis
topic Wind turbine gearbox
Fault diagnosis
Improved grey wolf optimizer
Isometric mapping
Support vector machine
url http://www.jxqd.net.cn/thesisDetails#10.16579/j.issn.1001.9669.2021.06.003
work_keys_str_mv AT huxuan applicationofimprovedgwosvminwindturbinegearboxfaultdiagnosis
AT lichun applicationofimprovedgwosvminwindturbinegearboxfaultdiagnosis
AT yekehua applicationofimprovedgwosvminwindturbinegearboxfaultdiagnosis
AT zhangwanfu applicationofimprovedgwosvminwindturbinegearboxfaultdiagnosis