Title :
Multi-channel vibro-acoustic fault analysis of ball bearing using wavelet based multi-scale principal component analysis
Author :
Mohanty, Satish ; Gupta, Karunesh Kumar ; Raju, Kota Solomon
Author_Institution :
Birla Inst. of Technol. & Sci., Pilani, India
fDate :
Feb. 27 2015-March 1 2015
Abstract :
Ball bearing fault segmentation at different time steps are important to avert failure. This paper studies the Vibro-acoustic characteristic of the ball bearing using Wavelet Based Multi Scale Principal Component Analysis (WMSPCA) and FFT. Firstly, the characteristic frequencies of the ball bearing for healthy and unhealthy states are verified using an impulse exciter hammer; and the generated frequencies are acquired using a Zigbee wireless accelerometer sensor. Secondly, the acoustic and vibration characteristics are acquired using three channel accelerometer sensor and a array microphone. Lastly, the actual characteristics of the ball bearing are extracted using WMSPCA. The main advantage of WMSPCA lies in the actual feature segmentation from different channels independent relative to the direction of propagation of faults. WMSPCA uses wavelet and PCA to auto-correlate and cross-correlate the signal simultaneously. The algorithm extracts the frequency range of operation of the ball bearing and assists in determining the precise frequency of vibration excluding its perplexed frequency components associated along tangential, axial and radial direction of the ball bearing. The paper also correlates the significance of acoustic-vibration in the fault finding of bearing.
Keywords :
Zigbee; accelerometers; acoustic noise; ball bearings; fault diagnosis; mechanical engineering computing; microphone arrays; principal component analysis; vibrations; wavelet transforms; FFT; WMSPCA; Zigbee wireless accelerometer sensor; acoustic-vibration; array microphone; ball bearing fault segmentation; healthy states; impulse exciter hammer; multichannel vibro-acoustic fault analysis; perplexed frequency components; three channel accelerometer sensor; unhealthy states; wavelet based multiscale principal component analysis; Accelerometers; Acoustics; Ball bearings; Principal component analysis; Vibrations; Wavelet analysis; Wavelet transforms; Accelerometer Sensor; Ball Bearing; FFT; PCA; WMSPCA; Wavelet; Windowing; ZigBee;
Conference_Titel :
Communications (NCC), 2015 Twenty First National Conference on
Conference_Location :
Mumbai
DOI :
10.1109/NCC.2015.7084916