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Application of Empirical Mode Decomposition and Support Vector Machine for the Classification of Arc Fault in Distribution Line

机译:经验模式分解和支持向量机在配电线中电弧故障分类的应用

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This paper presents a signal processing and machine learning-based approach to classify different types of arcs due to the interaction of a medium voltage distribution line and different surfaces. Different kind of arcing surfaces, i.e., concrete, wet-sand, grass, and leaning tree, are considered in a real-time environment to create different arcs. The similarity found in various arcing events is the low (in mA) current flowing during the arc. The voltage signals are taken as the basis of the whole analysis. The signal processing technique used in this study is empirical mode decomposition (EMD). The results obtained by the application of EMD along with different support vector machine (SVM) techniques on voltage signals successfully classifies various high impedance arc faults (HIAFs) for various arcing surfaces based on their harmonic footprints.
机译:本文提出了一种基于信号处理和基于机器学习的方法,以分类不同类型的电弧由于中压分配线和不同表面的相互作用。 在实时环境中考虑不同种类的电弧表面,即混凝土,湿砂,草和倾斜树,以创造不同的弧。 在各种电弧事件中发现的相似性是在弧期间流动的低(MA)电流。 电压信号作为整体分析的基础。 本研究中使用的信号处理技术是经验模式分解(EMD)。 通过在电压信号上应用EMD以及不同支撑向量机(SVM)技术获得的结果成功地基于其谐波占地面积对各种电弧表面的各种高阻抗电弧故障(HIAF)进行分类。

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