Rolling bearing faults severity classification using a combined approach based on multi-scales principal component analysis and fuzzy technique

被引:1
作者
Mohamed Khemissi Babouri
Abderrazek Djebala
Nouredine Ouelaa
Brahim Oudjani
Ramdane Younes
机构
[1] May 8th 1945 University,Mechanics and Structures Laboratory (LMS)
[2] University of Sciences and Technology Houari Boumediene,Department of Mechanical Engineering and Productics (CMP), FGM & GP
[3] CRTI,Research Center in Industrial Technologies
[4] Badji Mokhtar University,Mechanical Engineering Department
来源
The International Journal of Advanced Manufacturing Technology | 2020年 / 107卷
关键词
Fault diagnosis; Wavelet multi-resolution analysis; Vibration signatures; Feature extraction; Fuzzy logic; Multi-scales PCA;
D O I
暂无
中图分类号
学科分类号
摘要
Safety and fault diagnosis of rotating machinery play an important role in industrial systems. The reliability of the diagnosis performances is mainly linked to the signal processing tools used in the analysis phase. In this paper, a new method is proposed for the classification of rolling defects combining the optimized wavelet multi-resolution analysis (OWMRA), principal component analysis (PCA), and neuro-fuzzy. The OWMRA is performed to decompose the measured vibration signals in different frequency bands and extract additional information about the defect. The decomposition levels obtained from optimized WMRA are then used as the input of the PCA method. The extraction of individual feature sets including time domain features is generated to disclose health conditions of the bearing. Hence, the proposed classification method of neuro-fuzzy based on multi-scale principal component analysis (MSPCA) applies to real signals to analyze several types of defects on the bearings’ ball, outer race and inner race with variable fault diameter; load; and motor speed. The obtained results prove the reliability of the proposed diagnosis method to classify three types of bearing faults, and to give a better classification with greater efficiency compared to the application of individual classifiers or the artificial neural networks (ANN) alone. Finally, The effectiveness of our approach has been proven in terms of the successful classification rate compared on the one hand with two classification algorithms and two sets of features and on the other hand with the time domain method based on different choices of features.
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页码:4301 / 4316
页数:15
相关论文
共 117 条
[1]  
Kumar H(2014)Wavelet transform for bearing condition monitoring and fault diagnosis: a review Int J COMADEM 17 9-23
[2]  
Pai SP(2002)Singularity analysis using continuous wavelet transform for bearing fault diagnosis Mech Syst Signal Process 16 1025-1041
[3]  
Vijay G(2001)Application of the envelope and wavelet transform analyses for the diagnosis of incipient faults in ball bearings Mech Syst Signal Process 15 287-302
[4]  
Rao RBKN(2009)Detection of signal transients based on wavelet and statistics for machine fault diagnosis Mech Syst Signal Process 23 1076-1097
[5]  
Sun Q(2018)Performance evaluation of empirical mode decomposition, discrete wavelet transform, and wavelet packed decomposition for automated epileptic seizure detection and prediction Biomed signal Process Control 39 94-102
[6]  
Tang Y(2015)Rolling bearing fault detection using a hybrid method based on empirical mode decomposition and optimized wavelet multi-resolution analysis Int J Adv Manuf Technol 79 2093-2105
[7]  
Rubini R(2016)Experimental study of tool life transition and wear monitoring in turning operation using a hybrid method based on wavelet multi-resolution analysis and empirical mode decomposition Int J Adv Manuf Technol 82 2017-2028
[8]  
Maneghetti U(2014)Temporal and frequential analysis of the tools wear evolution Mechanics 20 205-212
[9]  
Zhu ZK(2017)Prediction of tool wear in the turning process using the spectral center of gravity J Fail Anal Prev 17 905-913
[10]  
Yan R(2002)Rolling element bearing fault diagnosis using wavelet packets Ndt E International 35 197-205