Title :
Heterogeneous Feature Models and Feature Selection Applied to Bearing Fault Diagnosis
Author :
Rauber, Thomas W. ; de Assis Boldt, Francisco ; Varejao, Flavio M.
Author_Institution :
Comput. Sci. Dept., Univ. Fed. do Espirito Santo, Vitoria, Brazil
Abstract :
Distinct feature extraction methods are simultaneously used to describe bearing faults. This approach produces a large number of heterogeneous features that augment discriminative information but, at the same time, create irrelevant and redundant information. A subsequent feature selection phase filters out the most discriminative features. The feature models are based on the complex envelope spectrum, statistical time- and frequency-domain parameters, and wavelet packet analysis. Feature selection is achieved by conventional search of the feature space by greedy methods. For the final fault diagnosis, the k-nearest neighbor classifier, feedforward net, and support vector machine are used. Performance criteria are the estimated error rate and the area under the receiver operating characteristic curve (AUC-ROC). Experimental results are shown for the Case Western Reserve University Bearing Data. The main contribution of this paper is the strategy to use several different feature models in a single pool, together with feature selection to optimize the fault diagnosis system. Moreover, robust performance estimation techniques usually not encountered in the context of engineering are employed.
Keywords :
fault diagnosis; feature extraction; feedforward neural nets; frequency-domain analysis; machine bearings; mechanical engineering computing; signal classification; statistical analysis; support vector machines; time-domain analysis; wavelet transforms; Case Western Reserve University Bearing Data; area under the receiver operating characteristic curve; bearing fault diagnosis; complex envelope spectrum; discriminative features; discriminative information augmentation; error rate; feature extraction method; feature selection phase filters; feature space; feedforward net; greedy methods; heterogeneous features; k-nearest neighbor classifier; performance criteria; robust performance estimation techniques; statistical frequency-domain parameters; statistical time- frequency-domain parameters; support vector machine; wavelet packet analysis; Fault diagnosis; Feature extraction; Frequency-domain analysis; Iron; Time-domain analysis; Vibrations; Wavelet packets; Case Western Reserve University (CWRU) Bearing Fault Database; fault diagnosis; feature extraction; feature selection;
Journal_Title :
Industrial Electronics, IEEE Transactions on
DOI :
10.1109/TIE.2014.2327589