Improved Particle Swarm Optimization-based Support Vector Machine for Fault Diagnostic of Arrester

T. T. Hoang, Nguyen Anh Vu Le
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Abstract

Arrester plays an important role in protecting equipment used in power system against overvoltage phenomena. Thus, diagnosic of arrester condition is attracting considerable attention from the researchers to ensure the safety and effectiveness of electric power distribution systems. In this paper, a newly perturbed particle swarm optimization (P-PSO) is proposed to classify the fault of surge arrester by adjusting the parameters of the support vector machine (SVM). The proposed method is employed on an actual dataset which consists of 1600 patterns with three features each (the total leakage current its resistive component and the third harmonic of resistive leakage current). The experimential ressults show that the proposed P-PSO is ability to not only accurate diagnostic arrester's faults, but also avoid the local minima. To demonstrate the superiority of the proposed method in identifying the conditions of the arrester, the obtained results are compared to those used by the other variants of PSO such as classical PSO (CPSO), time-varying acceleration coefficients PSO (TPSO) and constriction factor PSO (KPSO).
基于改进粒子群优化的避雷器故障诊断支持向量机
避雷器在保护电力系统中使用的设备免受过电压现象的影响方面起着重要的作用。因此,为保证配电系统的安全有效运行,避雷器状态的诊断已成为研究人员十分关注的问题。本文提出了一种新的扰动粒子群算法,通过调整支持向量机(SVM)的参数对避雷器故障进行分类。该方法应用于一个实际数据集,该数据集包含1600个模式,每个模式具有三个特征(总泄漏电流、电阻分量和电阻泄漏电流的三次谐波)。实验结果表明,该算法不仅能够准确诊断避雷器故障,而且能够避免局部极小值。为了证明该方法在识别避雷器状态方面的优越性,将所得结果与经典PSO (CPSO)、时变加速度系数PSO (TPSO)和收缩因子PSO (KPSO)等其他PSO方法的结果进行了比较。
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