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Classification of pollution severity on insulator model using Recurrence Quantification Analysis

机译:使用复制量化分析对绝缘子模型污染严重程度的分类

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In this work, a novel approach is established in order to investigate and monitor the performance of high voltage insulators. Since leakage current (LC) waveforms are intimately linked to pollution severity, it is primordial to study and investigate leakage current characteristics during the entire contamination process. In this paper, performance of a plane model insulator is studied through a number of laboratory tests under various levels of pollution contamination. LC waveforms are investigated through a nonlinear method called “Recurrence Quantification Analysis” (RQA). This method revealed successfully the non-linear characteristics of LC for identifying the dynamic behaviors on the insulator surface. Moreover, RQA indicators are found to be directly linked to the contamination severity. Thus, mean values of these indicators are computed and used as an input to three different classification algorithms (k-nearest neighbors, Naïve Bayes, Support Vector Machines) in order to classify contamination severity.
机译:在这项工作中,建立了一种新的方法,以便研究和监控高压绝缘子的性能。由于漏电流(LC)波形与污染严重性密切相关,因此在整个污染过程中研究和研究漏电流特性是原始的。在本文中,通过各种水平的污染污染的实验室测试研究了平面模型绝缘体的性能。通过称为“复发量化分析”(RQA)的非线性方法研究了LC波形。该方法揭示了LC的非线性特性,用于识别绝缘体表面上的动态行为。此外,发现RQA指标与污染严重程度直接相关。因此,计算这些指示符的平均值并用作三种不同分类算法(K-Collect邻居,Naïve贝叶斯,支持向量机)的输入,以便对污染严重程度进行分类。

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