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Comparative Analysis of Continuous Wavelet Transforms on Vibration signal in Bearing Fault Diagnosis of Induction Motor

Author Affiliations
University of Ulsan, BRAC University
Published In2021 International Conference on Electronics, Communications and Information Technology (ICECIT)
Year2021
Citations12

Abstract

Bearing failure is considered as one of the major problems in induction motor, which can result a huge mechanical damage if is not monitored from the initial stage. A complete fault classification method is presented in this paper by combining wavelet-based signal processing technique and deep learning method for fault classification. Vibration signal for eight different bearing conditions has been considered and initially, Hillbert Transform, and envelope spectrum are applied to extract the fault frequency information. With the fault frequency band, three different continuous wavelet transforms (Morse, Morlet, and Bump) are employed to generate the 2-D image of each bearing conditions. Each RGB image for different faulty conditions reflects the distinguishable pattern. Finally, a convolution neural network (CNN) is applied…
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