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首页> 外文期刊>International Transactions on Electrical Energy Systems >Characterization and classification of high impedance arc fault in distribution system involving metallic and nonmetallic surfaces using empirical mode decomposition
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Characterization and classification of high impedance arc fault in distribution system involving metallic and nonmetallic surfaces using empirical mode decomposition

机译:基于经验模态分解的金属和非金属表面配电系统高阻抗电弧故障的表征与分类

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摘要

The high impedance arc fault (HIAF) poses a significant threat to the living being as it involves arcing. The enormous amount of heat generation during arc is a major concern in this regard. There are different types of arc that may occur depending on the arcing conditions and involved surfaces. The severity of the arc is determined by the involved arcing surface. In this study, arc in metallic (sphere gap, rod gap) and nonmetallic (leaning tree, concrete) surfaces on a distribution system is considered for the analysis. An empirical mode decomposition (EMD)-based approach is applied along with k-nearest neighbor (KNN) for the characterization and classification of the real-time arc of different arcing conditions. The results obtained using EMD and KNN algorithm on arc signals successfully characterize and classify different HIAF by their harmonic signature. Along with KNN, the cross-validation data-mining algorithm is also applied to check the robustness of the approach.
机译:高阻抗电弧故障(HIAF)涉及电弧,对生物构成重大威胁。在这方面,电弧期间产生的大量热量是一个主要问题。根据电弧放电条件和所涉及的表面,可能会出现不同类型的电弧。电弧的严重程度取决于所涉及的电弧表面。在这项研究中,考虑了配电系统中金属(球体间隙,杆间隙)和非金属(倾斜树,混凝土)表面的电弧进行分析。基于经验模态分解(EMD)的方法与k最近邻(KNN)一起用于表征和分类不同电弧放电条件下的实时电弧。使用EMD和KNN算法对电弧信号获得的结果通过其谐波特征成功地对不同的HIAF进行了表征和分类。与KNN一起,交叉验证数据挖掘算法也应用于检查该方法的鲁棒性。

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