Aerocraft fault diagnosis based on wavelet neural network

Based on the strong learning ability and generalization characteristics of wavelet neural network, the familiar failure of aerocraft is detected seperately on line by normal wavelet neural network and BP neural network. The simulation result shows this method of aerocraft fault diagnosis with wavelet neural network is feasible, effective and preferable.

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