Extension theory based partial discharge pattern recognition using statistical operators

V. Divyashree, S. Sumathi
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引用次数: 1

Abstract

Partial discharges are very small, local dielectric breakdowns in an insulation system. They cause damage to the insulation and leads to the failure of dielectric much before the expected lifetime. PD can be used as diagnostic tool for identifying the defects in power equipment. Two challenging issues are investigated in this work. The first issue is the feature extraction using statistical operator approach for obtaining representative attributes from the original PD measurement data. The second issue is to use the Extension Theory Pattern Recognition Algorithm for identifying various types of PD sources. The proposed method does not include any process learning or tuning of parameters, and it is easily implemented using MATLAB software in this paper.
基于可拓理论的统计算子局部放电模式识别
局部放电是绝缘系统中非常小的局部电介质击穿。它们会对绝缘造成破坏,并导致电介质在预期寿命之前失效。PD可作为电力设备缺陷的诊断工具。在这项工作中研究了两个具有挑战性的问题。第一个问题是利用统计算子的方法从原始PD测量数据中提取具有代表性的属性。第二个问题是使用可拓理论模式识别算法来识别各种类型的PD源。本文提出的方法不包括任何过程学习和参数整定,并且易于使用MATLAB软件实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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