Motorbike engine faults diagnosing system using Entropy and Functional Link Neural Network in wavelet domain
Date
2009-10-11Author
Paulraj, M.P.
Sazali, Yaacob
Mohd Zubir, Md Zin
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The sound of working vehicle provides an important clue for engine faults diagnosis. Endless efforts have been put into the research of fault diagnosis based on sound. It offers concrete economic benefits, which can lead to high system reliability and save maintenance cost. A number of diagnostic
systems for vehicle repair have been developing in recent years. Artificial Neural Network is a very demanding application and popularly implemented in many industries including condition
monitoring via fault diagnosis. This paper presents a feature extraction algorithm using total entropy of 5 level decomposition
of wavelet transform. The engine noise signal is decomposed into 5 levels (A5, D5, A4, D4, A3, D3, A2, D2, A1, D1) using
Daubechies “db4” wavelet family. From the decomposed signals, the entropy is applied for each levels and the feature are
extracted and used to develop a functional link neural network.
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