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DGA-based Diagnosis of Power Transformers — IEC Standard versus k-Nearest Neighbours

机译:基于DGA的电力变压器诊断 - IEC标准与k最近邻居

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The purpose of this paper is to present the comparison of application results of IEC-based classifier and the k-NN classic method to chromatographic data obtained by measurements on power transformers. To a large extent, the data reflect the state of power transformer and allow one to reason about the presence of possible faults. The distribution of real learning data is not even approximately uniform and makes- the partitioning of decision space difficult.
机译:本文的目的是介绍IEC基分类器的应用结果和K-NN经典方法对电力变压器测量获得的色谱数据的比较。在很大程度上,数据反映了电力变压器的状态,并允许一个人推理可能的故障。实际学习数据的分布甚至甚至均匀均匀,使得决策空间的分区困难。

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