基于相关向量机的配电线路雷电过电压识别

Wen Qingfeng, W. Xiaoguang, Yue Xiangying, Liang Zehui, L. Longji, Xi Xiaoguang, Ma Yuyan, Zhang Chi
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引用次数: 0

摘要

实现雷电过电压在线识别,对提高雷电在线监测装置在故障分析中的实用性具有重要意义。因此,尝试将基于相关向量机的方法应用于雷电过电压识别。引入Hilbert-Huang变换方法分析了感应雷击、屏蔽失效和反闪络的波形特征。生成特征量并输入到RVM中,构成智能雷电过电压识别机。该方法综合雷电过电压的特征信息,输出各种雷电过电压的概率。PSCAD仿真结果表明,该方法训练时间短,识别率高。所提出的识别方法可以很好地应用于雷电过电压的识别。
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Lightning Overvoltage Identification in Distribution Line based on Relevance Vector Machine
Realizing lightning overvoltage online identification is of great significance to improving the practical of the lightning online monitoring device in the failure analysis. Therefore, a method based on relevance vector machine (RVM) is attempted to be applied to lightning overvoltage identification. The Hilbert-Huang transform method was introduced to analyze the waveform characters of induced lightning, shield failure and back flashover. Characteristic quantity was generated and input into the RVM to construct the intelligent lightning overvoltage identification machine. The method integrated the feature information of lightning overvoltage, and outputted the probabilities of various lightning overvoltage. The PSCAD simulation results demonstrate that, the training time is low and the recognition rate is high. The identification method proposed can be well applied in identification of lightning overvoltage.
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