Classification of Partial Discharge Sources in XLPE Cables by Artificial Neural Networks and Support Vector Machine

Joseph Jineeth, R. Mallepally, T. Sindhu
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引用次数: 9

Abstract

Classification of partial discharge (PD) patterns is a significant tool in identifying the type of defects in cables. Development of reliable classifiers to identify various defects in the cable insulation is of vital importance in assessing the condition of cables in service. This paper proposes the development of Artificial Neural Network (ANN) based classifiers and Support Vector Machine (SVM) classifier for identification of cable defects such as voids, metal particle in the insulation, high potential metal tip, semiconductor layer tip, metals in the insulation and insulation incision. PD measurements are done on 11 kV XLPE cables with defects and wavelet based de-noising method is applied to abstract the PD pulses. Various PRPD features are extracted and used for training the ANN and SVM based models in MATLAB environment. The performance of SVM classifier and ANN based back propagation neural network classifier are analyzed for various types of defects. Classification accuracy of each models are analyzed and feasibility of optimum models for classification of cable defects is presented.
基于人工神经网络和支持向量机的交联聚乙烯电缆局部放电源分类
局部放电模式的分类是识别电缆缺陷类型的重要工具。开发可靠的分类器来识别电缆绝缘中的各种缺陷,对于评估在役电缆的状况至关重要。本文提出了基于人工神经网络(ANN)的分类器和支持向量机(SVM)分类器的发展,用于电缆缺陷的识别,如空洞、绝缘中的金属颗粒、高电位金属尖端、半导体层尖端、绝缘中的金属和绝缘切口。对含缺陷的11kv交联聚乙烯电缆进行了局部放电测量,采用小波降噪方法提取了局部放电脉冲。提取各种PRPD特征,并在MATLAB环境下对基于ANN和SVM的模型进行训练。分析了支持向量机分类器和基于人工神经网络的反向传播神经网络分类器在不同缺陷类型下的性能。对各模型的分类精度进行了分析,提出了优化模型用于电缆缺陷分类的可行性。
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