DocumentCode :
3603958
Title :
Time-Varying and Multiresolution Envelope Analysis and Discriminative Feature Analysis for Bearing Fault Diagnosis
Author :
Myeongsu Kang ; JaeYoung Kim ; Wills, Linda M. ; Jong-Myon Kim
Author_Institution :
Sch. of Electr., Electron., & Comput. Eng., Univ. of Ulsan, Ulsan, South Korea
Volume :
62
Issue :
12
fYear :
2015
Firstpage :
7749
Lastpage :
7761
Abstract :
This paper presents a reliable fault diagnosis methodology for various single and multiple combined defects of low-speed rolling element bearings. This method temporally partitions an acoustic emission (AE) signal and selects a portion of the signal, which contains intrinsic information about the bearing failures. This paper then performs frequency analysis for the selected time-domain AE signal by using multilevel finite-impulse response filter banks to obtain the most informative subband signals involving abnormal symptoms of the bearing defects. It does this by using a 2-D visualization tool that represents the percentage of the Gaussian-mixture-model-based residual component-to-defect component ratios via time-varying and multiresolution envelope analysis (TVMREA). Then, fault signatures in the time and frequency domains are extracted in the informative subband signals. Since all the extracted fault features may not be equally useful for diagnosis, the proposed genetic algorithm (GA)-based discriminative feature analysis (GADFA) selects the most discriminative subset of fault signatures. In experiments, single and multiple combined bearing defects under various conditions are used to validate the effectiveness of this fault diagnosis scheme using TVMREA and GADFA. Experimental results indicate that this reliable fault diagnosis methodology accurately identifies bearing failure type across a variety of conditions. In addition, GADFA outperforms other state-of-the-art feature analysis techniques, yielding 7.3%-46.6% performance improvements in average classification accuracy.
Keywords :
FIR filters; Gaussian processes; acoustic emission; acoustic signal processing; channel bank filters; failure (mechanical); fault diagnosis; feature extraction; genetic algorithms; machine bearings; mechanical engineering computing; mixture models; 2D visualization tool; GA-based discriminative feature analysis; GADFA; Gaussian-mixture-model-based residual component-to-defect component ratios; TVMREA; abnormal symptoms; acoustic emission signal; average classification accuracy; bearing defects; bearing failures; bearing fault diagnosis; discriminative feature analysis; fault feature extraction; fault signatures; frequency analysis; frequency domains; genetic algorithm; informative subband signals; intrinsic information; low-speed rolling element bearings; multilevel finite-impulse response filter banks; performance improvements; signal selection; single-and-multiple combined bearing defects; temporal partitioning; time domains; time-domain AE signal; time-varying-and-multiresolution envelope analysis; Fault diagnosis; Feature extraction; Frequency modulation; Harmonic analysis; Resonant frequency; Shafts; Acoustic emission; Acoustic emission (AE); fault diagnosis; genetic algorithm; genetic algorithm (GA); single and multiple combined bearing defects; single and multiple-combined bearing defects; time-varying and multi-resolution envelope analysis; time-varying and multiresolution envelope analysis (TVMREA);
fLanguage :
English
Journal_Title :
Industrial Electronics, IEEE Transactions on
Publisher :
ieee
ISSN :
0278-0046
Type :
jour
DOI :
10.1109/TIE.2015.2460242
Filename :
7165608
Link To Document :
بازگشت