This paper proposes a method for the identification of different partial discharges (PDs) sources through the analysis of a collection of PD signals acquired with a PD measurement system. This method, robust and sensitive enough to cope with noisy data and external interferences, combines the characterization of each signal from the collection, with a clustering procedure, the CLARA algorithm.ududSeveral features are proposed for the characterization of the signals, being the wavelet variances, the frequency estimated with the Prony method, and the energy, the most relevant for the performance of the clustering procedure.ududThe result of the unsupervised classification is a set of clusters each containing those signals which are more similar to each other than to those in other clusters. The analysis of the classification results permits both the identification of different PD sources and the discrimination between original PD signals, reflections, noise and external interferences.ududThe methods and graphical tools detailed in this paper have been coded and published as a contributed package of the R environment under a GNU/GPL license.
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机译:本文提出了一种通过分析PD测量系统采集的PD信号的集合来识别不同局部放电(PD)源的方法。这种方法既健壮又灵敏,足以应付嘈杂的数据和外部干扰,将来自集合的每个信号的特征与聚类程序CLARA算法结合在一起。 ud ud针对信号的特征提出了几个特征小波方差,使用Prony方法估计的频率以及与聚类过程的性能最相关的能量。 ud ud无监督分类的结果是一组聚类,每个聚类包含与彼此之间,而不是其他集群中的彼此。通过对分类结果进行分析,可以识别出不同的局放源,并且可以区分出局放局放信号,反射,噪声和外部干扰。 GNU / GPL许可下的R环境。
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