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A fault cause identification methodology for transmission lines based on support vector machines

机译:基于支持向量机的输电线路故障原因识别方法

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This paper works on developing an algorithm based on support vector machines (SVM) which can automatically analyze, characterize, and classify a fault based on its root cause. Only single-phase grounding faults caused by external factors including lightning faults, wildfires faults, guano-caused flashovers, insulator contamination flashovers, object contacts and vehicle accidents are considered in this paper. From detailed analysis of the fault mechanisms and the waveforms of fault recorders, six influential factors are selected to characterize the six types of outages as follows: weather, season, time of day, DC component and high-frequency harmonic component in the zero sequence current and fault impedance magnitude. Discrete Fourier transform (DFT) is used for the analysis the frequency components of the fault phase voltage and current waveforms. The combination of these characteristics are used for training and testing the SVM architecture. In addition, genetic algorithm is applied to the SVM classifier to determine the optimal parametric settings which is proved that it can achieve higher classification accuracy. Successful testing of the proposed methodology proves its validity for identification of different fault reason types.
机译:本文致力于开发一种基于支持向量机(SVM)的算法,该算法可以根据故障的根本原因自动分析,表征和分类故障。本文仅考虑由雷电故障,野火故障,鸟粪引起的闪络,绝缘子污染闪络,物体接触和车辆事故等外部因素引起的单相接地故障。通过对故障机理和故障记录仪波形的详细分析,选择了六个影响因素来表征六种类型的断电:天气,季节,一天中的时间,零序电流中的直流分量和高频谐波分量和故障阻抗幅度。离散傅里叶变换(DFT)用于分析故障相电压和电流波形的频率分量。这些特征的组合用于训练和测试SVM体系结构。另外,将遗传算法应用于支持向量机分类器,确定最优参数设置,证明了该算法可以实现较高的分类精度。对所提出方法的成功测试证明了其对于识别不同故障原因类型的有效性。

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