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Principal Component and Hierarchical Cluster Analyses as Applied to Transformer Partial Discharge Data With Particular Reference to Transformer Condition Monitoring

机译:主成分和层次聚类分析在变压器局部放电数据中的应用,尤其是对变压器状态监测的参考

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This paper analyses partial discharges obtained by remote radiometric measurements from a power transformer with a known internal defect. Since fingerprints of remote radiometric measurements are not available, the formation of clusters with similar features obtained from captured partial discharge data is crucial. Hierarchical cluster analysis technique is used as a method for grouping different signals. Investigation based on Euclidean and Mahalanobis distance measures and Ward and Average linkage algorithms were performed on partial discharge data pre-processed by principal component analysis. As a result of the analysis, a clear separation of partial discharges emanating from the transformer and discharges emanating from its surrounding is achieved; this in turn should enhance the methodologies for condition monitoring of power transformers.
机译:本文分析了通过远程辐射测量从已知内部缺陷的电力变压器获得的局部放电。由于无法获得远程辐射测量的指纹,因此从捕获的局部放电数据中获得具有相似特征的簇的形成至关重要。层次聚类分析技术被用作对不同信号进行分组的方法。基于欧几里得距离和马哈拉诺比斯距离测度以及沃德和平均联系算法,对通过主成分分析预处理的局部放电数据进行了研究。分析的结果是,将变压器产生的局部放电与变压器周围产生的放电清晰地分开。反过来,这应该增强用于电力变压器状态监测的方法。

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