Research of the Rolling Bearing Fault Feature Extraction Technology based on the Wavelet Noise Reduction and RSSD

The rolling bearing fault vibration signals are nonlinear and non- stationary and have strong noise background,in order to extract the fault feature effectively,a feature extraction technology which combines wavelet denoising and resonance- based sparse signal decomposition( RSSD) is proposed. The r...

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Main Authors: Chen Baojia, Yan Wenchao, Wu Zhiping, Zhu Chenxi
Format: Article
Language:zho
Published: Editorial Office of Journal of Mechanical Transmission 2016-01-01
Series:Jixie chuandong
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Online Access:http://www.jxcd.net.cn/thesisDetails#10.16578/j.issn.1004.2539.2016.05.003
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author Chen Baojia
Yan Wenchao
Wu Zhiping
Zhu Chenxi
author_facet Chen Baojia
Yan Wenchao
Wu Zhiping
Zhu Chenxi
author_sort Chen Baojia
collection DOAJ
description The rolling bearing fault vibration signals are nonlinear and non- stationary and have strong noise background,in order to extract the fault feature effectively,a feature extraction technology which combines wavelet denoising and resonance- based sparse signal decomposition( RSSD) is proposed. The resonance sparse decomposition is a new method for frequency division based on the tunable quality factor wavelet transform and morphological component analysis,it is different from conventional signal decomposition method based on frequency band partition,it is based on different oscillation forms of the signal components. Firstly,the signal is processed by wavelet threshold denoising,then,the signal is decomposed into two parts with different resonance characteristics by the resonance- based sparse signal decomposition method,The one is high- resonance component which has sustained oscillation characteristics,and the other is low- resonance component which has instantaneous impact characteristics. Finally,the impact fault feature is extracted from the low- resonance component by Hilbert envelope demodulation method. This method is applied to simulation signal and failure examples of impact on bearing test bench,the effectiveness of the proposed method is verified.
format Article
id doaj-art-e9c8bfaff12245ed932b3e85cb917ed9
institution Kabale University
issn 1004-2539
language zho
publishDate 2016-01-01
publisher Editorial Office of Journal of Mechanical Transmission
record_format Article
series Jixie chuandong
spelling doaj-art-e9c8bfaff12245ed932b3e85cb917ed92025-01-10T14:17:48ZzhoEditorial Office of Journal of Mechanical TransmissionJixie chuandong1004-25392016-01-014091329923988Research of the Rolling Bearing Fault Feature Extraction Technology based on the Wavelet Noise Reduction and RSSDChen BaojiaYan WenchaoWu ZhipingZhu ChenxiThe rolling bearing fault vibration signals are nonlinear and non- stationary and have strong noise background,in order to extract the fault feature effectively,a feature extraction technology which combines wavelet denoising and resonance- based sparse signal decomposition( RSSD) is proposed. The resonance sparse decomposition is a new method for frequency division based on the tunable quality factor wavelet transform and morphological component analysis,it is different from conventional signal decomposition method based on frequency band partition,it is based on different oscillation forms of the signal components. Firstly,the signal is processed by wavelet threshold denoising,then,the signal is decomposed into two parts with different resonance characteristics by the resonance- based sparse signal decomposition method,The one is high- resonance component which has sustained oscillation characteristics,and the other is low- resonance component which has instantaneous impact characteristics. Finally,the impact fault feature is extracted from the low- resonance component by Hilbert envelope demodulation method. This method is applied to simulation signal and failure examples of impact on bearing test bench,the effectiveness of the proposed method is verified.http://www.jxcd.net.cn/thesisDetails#10.16578/j.issn.1004.2539.2016.05.003Rolling bearingFault diagnosisQuality factorRSSD
spellingShingle Chen Baojia
Yan Wenchao
Wu Zhiping
Zhu Chenxi
Research of the Rolling Bearing Fault Feature Extraction Technology based on the Wavelet Noise Reduction and RSSD
Jixie chuandong
Rolling bearing
Fault diagnosis
Quality factor
RSSD
title Research of the Rolling Bearing Fault Feature Extraction Technology based on the Wavelet Noise Reduction and RSSD
title_full Research of the Rolling Bearing Fault Feature Extraction Technology based on the Wavelet Noise Reduction and RSSD
title_fullStr Research of the Rolling Bearing Fault Feature Extraction Technology based on the Wavelet Noise Reduction and RSSD
title_full_unstemmed Research of the Rolling Bearing Fault Feature Extraction Technology based on the Wavelet Noise Reduction and RSSD
title_short Research of the Rolling Bearing Fault Feature Extraction Technology based on the Wavelet Noise Reduction and RSSD
title_sort research of the rolling bearing fault feature extraction technology based on the wavelet noise reduction and rssd
topic Rolling bearing
Fault diagnosis
Quality factor
RSSD
url http://www.jxcd.net.cn/thesisDetails#10.16578/j.issn.1004.2539.2016.05.003
work_keys_str_mv AT chenbaojia researchoftherollingbearingfaultfeatureextractiontechnologybasedonthewaveletnoisereductionandrssd
AT yanwenchao researchoftherollingbearingfaultfeatureextractiontechnologybasedonthewaveletnoisereductionandrssd
AT wuzhiping researchoftherollingbearingfaultfeatureextractiontechnologybasedonthewaveletnoisereductionandrssd
AT zhuchenxi researchoftherollingbearingfaultfeatureextractiontechnologybasedonthewaveletnoisereductionandrssd