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A machine learning and wavelet-based fault location method for hybrid transmission lines

机译:基于机器学习和小波的混合动力传输线故障定位方法

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This paper presents a single-ended traveling-wave based fault location method for a hybrid transmission line: an overhead line combined with an underground cable. Discrete Wavelet Transformation (DWT) is used to extract transient information from the measured voltages. Support vector machine (SVM) classifiers are utilized to identify the faulty section and faulty-half. Bewley diagrams are observed for the traveling wave patterns and the wavelet coefficients of the aerial mode voltage are used to locate the fault. The transient simulation for different fault types and locations are obtained by ATP using frequency-dependent line and cable models. MATLAB is used to process the simulated transients and apply the proposed method. The performance of the method is tested for different fault inception angles (FIA), different fault resistances, non-linear high impedance faults (NLHIF) and non-ideal faults with satisfactory results. The impact of cable aging on the proposed method accuracy is also investigated.
机译:本文提出了一种基于单端行波的混合传输线故障定位方法:架空线与地下电缆组合。离散小波变换(DWT)用于从测得的电压中提取瞬态信息。支持向量机(SVM)分类器用于识别故障部分和半故障。观察到Bewley图的行波模式,并使用空中模式电压的小波系数来定位故障。 ATP使用与频率有关的线路和电缆模型来获得不同故障类型和位置的瞬态仿真。 MATLAB用于处理模拟的瞬变并应用所提出的方法。针对不同的故障起始角度(FIA),不同的故障电阻,非线性高阻抗故障(NLHIF)和非理想故障,测试了该方法的性能,结果令人满意。还研究了电缆老化对建议的方法精度的影响。

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