Online monitoring and diagnosis of high voltage circuit breaker faults: feature extraction analysis of vibration signals

Author:

Li Long,Xiao Jianfeng,Wu Bin,Zhou Mengge,Wang Qian

Abstract

The development of power grid system not only increases voltage and capacity, but also increases power risk. This paper briefly introduces the feature extraction method of the vibration signal of high voltage circuit breaker and support vector machine (SVM) algorithm and then analyzed the high voltage circuit breaker in three states: normal operation, fixed screw loosening and falling of opening spring, using the SVM based on the above feature extraction method. The results showed that the accuracy and precision rates of fault identification of circuit breaker were the highest by using the wavelet packet energy entropy extraction features, the false alarm rate was the lowest, and the detection time was the shortest.

Publisher

EDP Sciences

Subject

Safety, Risk, Reliability and Quality

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