Title :
Detection of Localized Bearing Faults in Induction Machines by Spectral Kurtosis and Envelope Analysis of Stator Current
Author :
Leite, Valeria C. M. N. ; Borges da Silva, Jonas Guedes ; Cintra Veloso, Giscard Francimeire ; Borges da Silva, Luiz Eduardo ; Lambert-Torres, Germano ; Bonaldi, Erik Leandro ; De Lacerda de Oliveira, Levy Ely
Author_Institution :
Dept. of Aerosp. Sci. & Technol., Inst. of Aeronaut. & Space, Sao Jose dos Campos, Brazil
Abstract :
Early detection of faults in electrical machines, particularly in induction motors, has become necessary and critical in reducing costs by avoiding unexpected and unnecessary maintenance and outages in industrial applications. Additionally, most of these faults are due to problems in bearings. Thus, in this paper, experimental bearing fault detection of a three-phase induction motor is performed by analyzing the squared envelope spectrum of the stator current. Spectral kurtosis-based algorithms, namely, the fast kurtogram and the wavelet kurtogram, are also applied to improve the envelope analysis. Experimental tests are performed, considering outer bearing faults at different stages, and the results are promising.
Keywords :
fault diagnosis; induction motors; machine bearings; spectral analysis; stators; costs reducing; electrical machine; fast kurtogram; in- dustrial applications; induction machine; localized bearing fault detection; outage avoidance; squared envelope spectrum; stator current envelope analysis; stator current spectral kurtosis; three-phase induction motor; wavelet kurtogram; Algorithm design and analysis; Fault detection; Induction motors; Monitoring; Rolling bearings; Stators; Vibrations; Ball bearings; condition monitoring; fault detection; fault diagnosis; induction motors; kurtosis; signal processing; spectral analysis;
Journal_Title :
Industrial Electronics, IEEE Transactions on
DOI :
10.1109/TIE.2014.2345330