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Signal processing techniques for on-line partial discharge detection and classification

机译:在线局部放电检测和分类的信号处理技术

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Partial discharge (PD) detection plays a fundamental role in monitoring the health of medium voltage (MV) systems. This paper presents a method for PD detection and source recognition in MV sub-stations based on a combination of signal processing techniques. Firstly, PD detection and signal conditioning is carried out. Then, PDs of different sources are separated and finally classified by means of the extension set theory. The obtained results show a classification effectiveness of 100% on single source PDs and an effectiveness of 72.5% in multisource PDs, where PDs from many sources are captured in the same data set.
机译:局部放电(PD)检测在监视中压(MV)系统的运行状况中起着基本作用。本文提出了一种基于信号处理技术的中压变电站局部放电检测和源识别方法。首先,进行PD检测和信号调节。然后,利用扩展集理论对不同来源的局部放电进行分离,最后进行分类。获得的结果表明,对单源PD的分类有效性为100%,而对多源PD的分类有效性为72.5%,其中来自多个源的PD捕获在同一数据集中。

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