基于排列熵特征的局部放电电磁干扰条件分类

I. Mitiche, G. Morison, A. Nesbitt, P. Boreham, B. Stewart
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引用次数: 7

摘要

本文研究了特征提取和机器学习技术在电力系统故障识别中的应用。具体来说,我们实现了基于排列熵的加权排列熵和色散熵测量的新应用,用于场电磁干扰(EMI)信号的放电源分类,也称为条件,如局部放电,电弧和电晕,这些放电源来自不同电力站点的各种资产。这项工作介绍了两个主要贡献:熵测度在状态监测中的应用和实际现场电磁干扰捕获信号的分类。将两个简单的低维特征输入到多类支持向量机中,用于对电磁干扰信号中包含的不同放电源进行分类。进行分类以区分每个位点和所有位点之间观察到的情况。结果表明,该方法能够成功地分离和识别排放源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of partial discharge EMI conditions using permutation entropy-based features
In this paper we investigate the application of feature extraction and machine learning techniques to fault identification in power systems. Specifically we implement the novel application of Permutation Entropy-based measures known as Weighted Permutation and Dispersion Entropy to field Electro-Magnetic Interference (EMI) signals for classification of discharge sources, also called conditions, such as partial discharge, arcing and corona which arise from various assets of different power sites. This work introduces two main contributions: the application of entropy measures in condition monitoring and the classification of real field EMI captured signals. The two simple and low dimension features are fed to a Multi-Class Support Vector Machine for the classification of different discharge sources contained in the EMI signals. Classification was performed to distinguish between the conditions observed within each site and between all sites. Results demonstrate that the proposed approach separated and identified the discharge sources successfully.
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