Design and Study on the Intelligent Fault Diagnosis System of Diesel Engine

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Abstract:

Based on modern measure technology, wavelet transform and neural networks, the system of diesel fuel fault diagnosis is designed. Wavelet packet power and RBF networks are combined together to diagnose the fuel oil system. The master system is developed with Visual C++ and the slave system is designed based on 89C52. The two systems communicate via the RS-232 serial communication. The system is applied in practice and performs well.

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347-351

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August 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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