Title :
Automotive signal diagnostics using wavelets and machine learning
Author :
Guo, Hong ; Crossman, Jacob A. ; Murphey, Yi Lu ; Coleman, Mark
Author_Institution :
Dept. of Electr. & Comput. Eng., Michigan Univ., Dearborn, MI, USA
fDate :
9/1/2000 12:00:00 AM
Abstract :
In this paper, we describe an intelligent signal analysis system employing the wavelet transformation in the solution of vehicle engine diagnosis problems. Vehicle engine diagnosis often involves multiple signal analysis. The developed system first partitions a leading signal into small segments representing physical events or states based on wavelet multi-resolution analysis. Second, by applying the segmentation result of the leading signal to the other signals, the detailed properties of each segment, including inter-signal relationships, are extracted to form a feature vector. Finally, a fuzzy intelligent system is used to learn diagnostic features from a training set containing feature vectors extracted from signal segments at various vehicle states. The fuzzy system applies its diagnostic knowledge to classify signals as abnormal or normal. The implementation of the system is described and experiment results are presented
Keywords :
automotive electronics; fuzzy systems; internal combustion engines; learning (artificial intelligence); signal processing; wavelet transforms; automotive signal diagnostics; diagnostic features; feature extraction; feature vectors; fuzzy intelligent system; intelligent signal analysis system; inter-signal relationships; machine learning; multiple signal analysis; signal fault diagnosis; signal segments; signals classification; training set; vehicle engine diagnosis problems; vehicle states; wavelet transformation; wavelets; Automotive engineering; Engines; Fuzzy sets; Fuzzy systems; Intelligent systems; Intelligent vehicles; Learning systems; Machine learning; Signal analysis; Wavelet analysis;
Journal_Title :
Vehicular Technology, IEEE Transactions on