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Application of higher order spectral features and support vector machines for bearing faults classification.
Saidi, Lotfi; Ben Ali, Jaouher; Fnaiech, Farhat.
Afiliação
  • Saidi L; University of Tunis, Tunis National Higher School of Engineering (ENSIT), Laboratory of Signal Image and Energy Mastery (SIME), 5 Avenue Taha Hussein, P.O. Box 56, 1008 Tunis, Tunisia. Electronic address: lotfi.saidi@esstt.rnu.tn.
  • Ben Ali J; University of Tunis, Tunis National Higher School of Engineering (ENSIT), Laboratory of Signal Image and Energy Mastery (SIME), 5 Avenue Taha Hussein, P.O. Box 56, 1008 Tunis, Tunisia. Electronic address: benalijaouher@yahoo.fr.
  • Fnaiech F; University of Tunis, Tunis National Higher School of Engineering (ENSIT), Laboratory of Signal Image and Energy Mastery (SIME), 5 Avenue Taha Hussein, P.O. Box 56, 1008 Tunis, Tunisia. Electronic address: fnaiech@ieee.org.
ISA Trans ; 54: 193-206, 2015 Jan.
Article em En | MEDLINE | ID: mdl-25282095
ABSTRACT
Condition monitoring and fault diagnosis of rolling element bearings timely and accurately are very important to ensure the reliability of rotating machinery. This paper presents a novel pattern classification approach for bearings diagnostics, which combines the higher order spectra analysis features and support vector machine classifier. 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 mechanical vibration signals. The vibration bi-spectrum (third order spectrum) patterns are extracted as the feature vectors presenting different bearing faults. The extracted bi-spectrum features are subjected to principal component analysis for dimensionality reduction. These principal components were fed to support vector machine to distinguish four kinds of bearing faults covering different levels of severity for each fault type, which were measured in the experimental test bench running under different working conditions. In order to find the optimal parameters for the multi-class support vector machine model, a grid-search method in combination with 10-fold cross-validation has been used. Based on the correct classification of bearing patterns in the test set, in each fold the performance measures are computed. The average of these performance measures is computed to report the overall performance of the support vector machine classifier. In addition, in fault detection problems, the performance of a detection algorithm usually depends on the trade-off between robustness and sensitivity. The sensitivity and robustness of the proposed method are explored by running a series of experiments. A receiver operating characteristic (ROC) curve made the results more convincing. The results indicated that the proposed method can reliably identify different fault patterns of rolling element bearings based on vibration signals.
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Texto completo: 1 Base de dados: MEDLINE Tipo de estudo: Prognostic_studies Idioma: En Ano de publicação: 2015 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Tipo de estudo: Prognostic_studies Idioma: En Ano de publicação: 2015 Tipo de documento: Article