Title of article :
Wavelet Decomposition for the Detection and Diagnosis of Faults in Rolling Element Bearings
Author/Authors :
Chebil, J. International Islamic Univ. Malaysia - Faculty of Engineering - ECE Dep, Malaysia , Noel, G. Ecole Nationale Supérieur des Télécommunications, France , Mesbah, M. University of Queensland - Signal Processing and Consultancy Group, Australia , Deriche, M. King Fahd University of Petroleum and Minerals - Dep of Electrical Eng, Saudi Arabia
From page :
260
To page :
267
Abstract :
Condition monitoring and fault diagnosis of equipment and processes are of great concern in industries. Early fault detection in machineries can save millions of dollars in emergency maintenance costs. This paper presents a wavelet-based analysis technique for the diagnosis of faults in rotating machinery from its mechanical vibrations. The choice between the discrete wavelet transform and the discrete wavelet packet transform is discussed, along with the choice of the mother wavelet and some of the common extracted features. It was found that the peak locations in spectrum of the vibration signal could also be efficiently used in the detection of a fault in ball bearings. For the identification of fault location and its size, best results were obtained with the root mean square extracted from the terminal nodes of a wavelet tree of Symlet basis fed to Bayesian classier.
Keywords :
Discrete Wavelets Transform , Discrete Wavelet Packet Transform , Ball Bearing Fault Detection.
Journal title :
Jordan Journal of Mechanical and Industrial Engineering
Journal title :
Jordan Journal of Mechanical and Industrial Engineering
Record number :
2586268
Link To Document :
بازگشت