A Radar Fault Prediction Based on LM-BP Neural Network

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Abstract:

In order to overcome the difficulty of modern radar fault prediction,which induced by the complexity of system compose,fuzziness of configuration connection and incompletely and uncertainty of character parameters,a LM-BP neural networ model is studied based on BP neural networ model and LM optimized algorithm to optimize the network error function and increase the prediction precision of this model. The simulation and analysis are finished using a radar fault prediction example and show validity the of this model.

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293-297

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December 2012

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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