DocumentCode :
1718104
Title :
Bearing defects decision making using higher order spectra features and support vector machines
Author :
Saidi, L. ; Fnaiech, F.
Author_Institution :
Lab. of Signal, Image & Energy Mastery, Univ. of Tunis, Tunis, Tunisia
fYear :
2013
Firstpage :
419
Lastpage :
424
Abstract :
This paper presents a novel pattern classification approach for bearing defects diagnostics, which combine the higher order spectra (HOS) analysis features and support vector machine classifier (SVM). The use of non-linear features motivated by the higher order spectra has been reported to be a promising approach to analyze the non-linear and non-Gaussian characteristics of the bearing mechanical vibration signals. The vibration bi-spectrum patterns are extracted as the feature vectors presenting different faults of the bearings. The extracted bi-spectrum features are subjected to principal component analysis (PCA) for dimensionality reduction. These principal components were fed to support vector machine to distinguish four kinds of bearing conditions namely: normal, inner race fault, outer race fault and ball fault, which were measured in the experimental test bench running under different working conditions. The results indicated that the proposed method can reliably identify different fault patterns of rolling element bearings based on mechanical vibration signals.
Keywords :
decision making; fault diagnosis; feature extraction; mechanical engineering computing; pattern classification; principal component analysis; rolling bearings; support vector machines; vibrations; PCA; SVM; ball fault; bearing defects decision making; bearing defects diagnostics; bearing mechanical vibration signals; bi-spectrum feature extraction; dimensionality reduction; experimental test bench; fault pattern identification; higher order spectra analysis features; inner race fault; nonGaussian characteristic analysis; nonlinear characteristic analysis; normal fault; novel pattern classification approach; outer race fault; principal component analysis; rolling element bearings; support vector machine classifier; support vector machines; Accuracy; Fault diagnosis; Feature extraction; Principal component analysis; Support vector machines; Training; Vibrations; Bi-spectrum; Fault diagnosis; Principal component analysis; Rolling element bearing; Support vector machines; Vibration;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Sciences and Techniques of Automatic Control and Computer Engineering (STA), 2013 14th International Conference on
Conference_Location :
Sousse
Print_ISBN :
978-1-4799-2953-5
Type :
conf
DOI :
10.1109/STA.2013.6783165
Filename :
6783165
Link To Document :
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