Title :
An effort on the fault diagnosis for the final drive assembly with the characteristics in course and spectrum
Author :
Bai, Zhijin ; Ding, Jiexiong ; Yao, Lijuan ; Xiao, Qiang ; Li, Yongfang
Author_Institution :
Sch. of Mechatron. Eng., Univ. of Electron. Sci. & Technol. of China, Chengdu
Abstract :
It has been acting as the standard process on evaluation of the final drive assembly in automotive that the operator gives the results from noise based on their experience. Obviously the clues about to faults also depend on the vibration of the final drive. There are great advantages to get the noise vibration signal in the fitting shop. A method for fault diagnosis of the quality of automotive final drive assembly based on wavelet- neural network with mixing characteristics of vibration signal is presented in this paper. The vibration signals of final drive acquisition system are preprocessed to extract the properties in time domain and wavelet transform is used to decompose the signal into eight vectors in different frequency bands. The energy vectors of eight features extracted from the wavelet transform and other from course are used as inputs to the artificial neural network (ANN) in the diagnosis system. The ANN is trained according to back-propagation (BP) algorithm with a subset of the experimental data from known assembly conditions. The ANN is tested with the other set of unknown assembly conditions data. The results obtained indicate the effectiveness of the extracted features from course and spectrum and the effective classification of ANN in diagnosis of the quality of final drive assembly.
Keywords :
automobiles; drives; fault diagnosis; mechanical engineering computing; neural nets; vibrations; wavelet transforms; artificial neural network; backpropagation algorithm; course characteristics; diagnosis system; fault diagnosis; final drive acquisition system; final drive assembly; fitting shop; mixing characteristics; noise vibration signal; spectrum characteristics; time domain; wavelet neural network; wavelet transform; Artificial neural networks; Assembly; Automotive engineering; Data mining; Fault diagnosis; Feature extraction; Fitting; Neural networks; Wavelet domain; Wavelet transforms;
Conference_Titel :
Mechatronics and Automation, 2008. ICMA 2008. IEEE International Conference on
Conference_Location :
Takamatsu
Print_ISBN :
978-1-4244-2631-7
Electronic_ISBN :
978-1-4244-2632-4
DOI :
10.1109/ICMA.2008.4798832