Generalized refined composite multiscale fuzzy entropy and multi-cluster feature selection based intelligent fault diagnosis of rolling bearing

Extracting the failure related information from vibration signals is a very important aspect of vibration-based fault detection for rolling bearing Multiscale entropy and its improvement, multiscale fuzzy entropy (MFE), are significant complexity measure tools of time series. They have been successf...

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Veröffentlicht in:ISA transactions 2022-04, Vol.123, p.136-151
Hauptverfasser: Zheng, Jinde, Pan, Haiyang, Tong, Jinyu, Liu, Qingyun
Format: Artikel
Sprache:eng
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Zusammenfassung:Extracting the failure related information from vibration signals is a very important aspect of vibration-based fault detection for rolling bearing Multiscale entropy and its improvement, multiscale fuzzy entropy (MFE), are significant complexity measure tools of time series. They have been successfully applied to extract vibration failure features for rolling bearing condition monitoring . However, MFE over different scales will fluctuate with increase of scale factor. A new nonlinear dynamic parameter termed generalized refined composite multiscale fuzzy entropy (GRCMFE) is firstly developed to enhance the performance of MSE and MFE in data complexity measurement. Then three algorithms are developed and compared with MSE and MFE, as well as two algorithms of generalized MFE to verify the availability and superiority by analyzing two kinds of noise signals. In addition, based on three algorithms of GRCMFE, a novel fault diagnosis approach for rolling bearing is proposed with linking multi-cluster feature selection for supervised learning and the gravitational search algorithm optimized support vector machine for failure pattern recognition. Last, the proposed fault diagnostic approach was utilized to analyze two kinds of bearing test data sets. Analysis results indicate that our proposed fault diagnosis approach could effectively extract nonlinear dynamic complexity information and gets the highest identifying rate and the best performance among the comparative approaches. •Generalized refined composite multiscale fuzzy entropy is proposed for complexity measure of time series.•Three algorithms of GRCMFE are developed and compared with MSE, MFE and GMFE.•A novel fault diagnosis method for rolling bearing was proposed by combining GRCMFE, MCFS and GSA-SVM.•The effectiveness of the proposed method is verified by bearing test data analysis.
ISSN:0019-0578
1879-2022
DOI:10.1016/j.isatra.2021.05.042