Dendrogram based Clustering and Separation of Individual and Simultaneously Active Incipient Discharges in Transformer Insulation

Niyas K. Haneefa, B. M. A. Desai, R. Sarathi, Manivasakan Rathinam
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引用次数: 1

Abstract

Partial discharges in transformer insulation are of major concern to utilities which cause the catastrophic failure of insulation. One of the major challenges is the identification of discharges from multiple sources when it occurs concurrently. Hence it is imperative to devise methods for identifying and separating those signals for corrective measures. In this study, an unsupervised learning approach is proposed for clustering of individual partial discharge signals and then using that information for separating the multi-source signals. Our clustering approach works by constructing a dendrogram by measuring the cosine similarity between the feature vectors and then computing a threshold, to group the individual source signals into different clusters. The feature vectors include the relative energies from the wavelet packet decomposed tree and the Higuchi fractal dimension of the wavelet coefficients at the terminal nodes. The generated clusters are trained using a classifier model to separate the individual and multi-source signals. The proposed approach is a simple and robust technique for individual cluster groupings and individual to multiclass separations and could be used for multiclass cluster groupings.
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基于树形图的变压器绝缘初始放电的聚类与分离
变压器绝缘局部放电是引起绝缘灾难性失效的重要问题。其中一个主要挑战是确定同时发生的多源排放。因此,必须设计出识别和分离这些信号的方法,以便采取纠正措施。在本研究中,提出了一种无监督学习方法,用于对单个局部放电信号进行聚类,然后利用该信息对多源信号进行分离。我们的聚类方法是通过测量特征向量之间的余弦相似度来构建一个树状图,然后计算一个阈值,将单个源信号分组到不同的聚类中。特征向量包括小波包分解树的相对能量和终端节点处小波系数的Higuchi分形维数。生成的聚类使用分类器模型进行训练,以分离单个和多源信号。该方法对于单个簇分组和单个到多类的分离是一种简单而稳健的技术,可用于多类簇分组。
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