The Research on Breaker Fault Status Parameter Classification of Improved Particle Swarm Optimization

Yi-hang SUN, Jian GAO, Feng TIAN

Abstract


In order to improve the mechanical structure of the type of fault resolution precision high voltage circuit breaker spring mechanism, the paper analyzes the characteristics of the circuit breaker and the combination of mechanical vibration signal PSO algorithm (PSO) SVM parameter optimization method proposed collaborative dynamic acceleration constant inertia weight particle swarm optimization (WCPSO) optimization support vector machine (SVM) analysis breaker fault classification parameters and kernel function parameters. The vibration signal circuit breaker empirical mode decomposition, the total intrinsic mode components through energy analysis to obtain the required fault feature vectors and support vector machine as input, the use of dynamic acceleration constant synergy inertia weight PSO support vector machines penalty factor C and radial basis kernel function parametersï³ optimize the fault feature vector signal input test samples after SVM training sample trained optimized for fault classification, fault status classification.

Keywords


Circuit breaker, SVM, Vibration signal, PSO, Energy method, Fault diagnosis


DOI
10.12783/dtcse/iece2018/26635

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