Title of article
Application of the Teager–Kaiser energy operator in bearing fault diagnosis
Author/Authors
Henrيquez Rodrيguez، نويسنده , , Patricia and Alonso، نويسنده , , Jesْs B. and Ferrer، نويسنده , , Miguel A. and Travieso، نويسنده , , Carlos M.، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2013
Pages
7
From page
278
To page
284
Abstract
Condition monitoring of rotating machines is important in the prevention of failures. As most machine malfunctions are related to bearing failures, several bearing diagnosis techniques have been developed. Some of them feature the bearing vibration signal with statistical measures and others extract the bearing fault characteristic frequency from the AM component of the vibration signal. In this paper, we propose to transform the vibration signal to the Teager–Kaiser domain and feature it with statistical and energy-based measures. A bearing database with normal and faulty bearings is used. The diagnosis is performed with two classifiers: a neural network classifier and a LS-SVM classifier. Experiments show that the Teager domain features outperform those based on the temporal or AM signal.
Keywords
Vibration fault diagnosis , Teager–Kaiser energy operator , feature selection , NEURAL NETWORKS , LS-SVM
Journal title
ISA TRANSACTIONS
Serial Year
2013
Journal title
ISA TRANSACTIONS
Record number
2383258
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