Review of Regional Power Grid Fault Information Screening

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Abstract:

This paper introduces the complexity of fault information and summarizes some main methods in the field of fault diagnosis,including Expert system,Artificial neural network,Fuzzy inference,Rough set theory,Petri network,Bias network,etc.Analyse basic concepts,method principles and their advantages and disadvantages of various methods.Put forward methods of combining multiple methods to synthetically handle the fault information of power network

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147-152

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September 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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