Abstract

In mechanical fault diagnosis of the high voltage circuit breakers (HVCBs), it is often expected that the fault type should be confirmed in time to avoid delaying the best time for mechanical fault diagnosis. The traditional diagnosis method of HVBC is not so profound for the identification of slight faults and does not consider the impact of the recall rate of fault samples on the fault diagnosis results. In this paper, we propose a method for HVCBs mechanical fault diagnosis utilizing variational mode decomposition (VMD) based on improved time segment energy entropy (ITSEE) and a new hybrid classifier. Firstly, the signal is decomposed into $K$ intrinsic mode functions (IMFs) via VMD to establish a component matrix. Secondly, the ITSEE method is used to calculate the energy entropy of the matrix in time domain and frequency domain, so as to better extract the features of slight fault types. Finally, an optimal hybrid classifier model combined of one-class support vector machine (OCSVM) and probabilistic neural network (PNN) is used to identify four types of vibration signals of HVCBs. The experimental results show that the accuracy of unknown samples is 98.75%, and the recall of fault type is 100%. The experimental results show the effectiveness of the method and have important application value for the diagnosis of HVBCs.

Highlights

  • High voltage circuit breaker is an important switch device which has the dual functions of protecting the power system

  • Fault III are shown in Fig.10 (a) and (b)

  • This paper presents a new method for mechanical fault diagnosis of high voltage circuit breakers (HVCBs)

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Summary

Introduction

High voltage circuit breaker is an important switch device which has the dual functions of protecting the power system. The faults of HVCBs occurred constantly, which in economic losses [1]–[3]. An inquiry about HVCB faults by the International Council on Large Electric Systems (CIGRE) showed that the operating mechanism fault accounts for 61% [4]. 39% of minor faults and 44% of major faults are caused by a decrease in mechanical performance [5], [6]. Such as mechanism jam, loose screws, insufficient lubrication causes time delay and insufficient spring energy storage, etc., [5], [7]–[11]. It is of great significance to study the fault diagnosis of

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