Analysis of Partial Discharge Measurement Data Using a Support Vector Machine

N. F. A. Aziz, L. Hao, Paul Lewin
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引用次数: 22

Abstract

This paper investigates the recognition of partial discharge sources by using a statistical learning theory, support vector machine (SVM). SVM provides a new approach to pattern classification and has been proven to be successful in fields such as image identification and face recognition. To apply SVM learning in partial discharge classification, data input is very important. The input should be able to fully represent different patterns in an effective way. The determination of features that describe the characteristics of partial discharge signals and the extraction of reliable information from the raw data are the key to acquiring valuable patterns of partial discharge signals. In this paper, data obtained from experiment is carried out in both time and frequency domain. By using appropriate combination of kernel functions and parameters, it is concluded that the frequency domain approach gives a better classification rate.
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基于支持向量机的局部放电测量数据分析
本文利用统计学习理论支持向量机(SVM)对局部放电源的识别进行了研究。支持向量机提供了一种新的模式分类方法,在图像识别和人脸识别等领域已被证明是成功的。为了将支持向量机学习应用于局部放电分类,数据输入是非常重要的。输入应该能够以一种有效的方式完整地表示不同的模式。确定描述局部放电信号特征的特征和从原始数据中提取可靠信息是获取局部放电信号有价值模式的关键。本文对实验得到的数据进行了时域和频域分析。通过适当地结合核函数和参数,得出频域方法具有较好的分类率。
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