A fault diagnosis method of bearing using energy spread spectrum and genetic algorithm

Considering the shortcomings of the traditional energy spectrum algorithm applied to the rolling bearing fault diagnosis, which can only represent the tendency of fault feature transformation with a certain scale, but not adjacent scales contained. In this paper, we propose a fault diagnosis method...

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Main Authors: Feng Ding, Manyi Qiu, Xuejiao Chen
Format: Article
Language:English
Published: JVE International 2019-09-01
Series:Journal of Vibroengineering
Subjects:
Online Access:https://www.jvejournals.com/article/19961
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spelling doaj-e60bbe96e91c48dbb1fe4abf8a8b16c22020-11-25T01:34:57ZengJVE InternationalJournal of Vibroengineering1392-87162538-84602019-09-012161613162110.21595/jve.2018.1996119961A fault diagnosis method of bearing using energy spread spectrum and genetic algorithmFeng Ding0Manyi Qiu1Xuejiao Chen2Department of Mechanical and Electronic Engineering, Xi’an Technological University, Xi’an, ChinaDepartment of Mechanical and Electronic Engineering, Xi’an Technological University, Xi’an, ChinaDepartment of Mechanical and Electronic Engineering, Xi’an Technological University, Xi’an, ChinaConsidering the shortcomings of the traditional energy spectrum algorithm applied to the rolling bearing fault diagnosis, which can only represent the tendency of fault feature transformation with a certain scale, but not adjacent scales contained. In this paper, we propose a fault diagnosis method of rolling bearing based on Support Vector Machine, combining energy spread spectrum and genetic optimization. The extracted signal is denoised and decomposed using wavelet packets, the energy spectrums and energy spread spectrums are calculated based on the decomposed different frequency signal components. The genetic algorithm is used to select the important parameters of the Support Vector Machine and bring the determined parameter values into the Support Vector Machine to generate the GA-SVM model. Then, energy spectrums and energy spread spectrums are inputted into GA-SVM as the characteristic parameters for identification. The experimental results show the two new points of energy spread spectrums and GA-SVM improve the diagnostic rate by up to 28.5 %, it can effectively improve the fault recognition rate of the rolling bearing.https://www.jvejournals.com/article/19961energy spread spectrumGA-SVMrolling bearingfault diagnosis
collection DOAJ
language English
format Article
sources DOAJ
author Feng Ding
Manyi Qiu
Xuejiao Chen
spellingShingle Feng Ding
Manyi Qiu
Xuejiao Chen
A fault diagnosis method of bearing using energy spread spectrum and genetic algorithm
Journal of Vibroengineering
energy spread spectrum
GA-SVM
rolling bearing
fault diagnosis
author_facet Feng Ding
Manyi Qiu
Xuejiao Chen
author_sort Feng Ding
title A fault diagnosis method of bearing using energy spread spectrum and genetic algorithm
title_short A fault diagnosis method of bearing using energy spread spectrum and genetic algorithm
title_full A fault diagnosis method of bearing using energy spread spectrum and genetic algorithm
title_fullStr A fault diagnosis method of bearing using energy spread spectrum and genetic algorithm
title_full_unstemmed A fault diagnosis method of bearing using energy spread spectrum and genetic algorithm
title_sort fault diagnosis method of bearing using energy spread spectrum and genetic algorithm
publisher JVE International
series Journal of Vibroengineering
issn 1392-8716
2538-8460
publishDate 2019-09-01
description Considering the shortcomings of the traditional energy spectrum algorithm applied to the rolling bearing fault diagnosis, which can only represent the tendency of fault feature transformation with a certain scale, but not adjacent scales contained. In this paper, we propose a fault diagnosis method of rolling bearing based on Support Vector Machine, combining energy spread spectrum and genetic optimization. The extracted signal is denoised and decomposed using wavelet packets, the energy spectrums and energy spread spectrums are calculated based on the decomposed different frequency signal components. The genetic algorithm is used to select the important parameters of the Support Vector Machine and bring the determined parameter values into the Support Vector Machine to generate the GA-SVM model. Then, energy spectrums and energy spread spectrums are inputted into GA-SVM as the characteristic parameters for identification. The experimental results show the two new points of energy spread spectrums and GA-SVM improve the diagnostic rate by up to 28.5 %, it can effectively improve the fault recognition rate of the rolling bearing.
topic energy spread spectrum
GA-SVM
rolling bearing
fault diagnosis
url https://www.jvejournals.com/article/19961
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