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Fault diagnosis model for power transformer based on statistical learning theory and dissolved gas analysis

机译:基于统计学习理论和溶解气体分析的电力变压器故障诊断模型

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After thoroughly analyzing the relationships between indications and faults, it has been found that there are no explicit mapping functions between the faults of oil-immersed power transformer. To handle this problem, a multilevel decision-making model for power transformer fault diagnosis based on statistical learning theory is presented. Based on the concentration distribution of some typical fault gases, the proposed approach is to determine the optimal solution with a few training samples. The output of this model is improved by approaching exactly with K-nearest neighbor search classification for the SVM classification results, which is adjacent to optimal separating hyperplan. So the dependability of this model is enhanced greatly, and its effectiveness and usefulness is proved.
机译:在彻底分析指示与故障之间的关系之后,发现油浸式电力变压器的故障之间没有明确的映射功能。针对这一问题,提出了一种基于统计学习理论的电力变压器故障诊断多层次决策模型。基于一些典型故障气体的浓度分布,提出的方法是用少量训练样本确定最佳解决方案。该模型的输出通过对SVM分类结果进行精确的K最近邻搜索分类来改进,该分类与最优分离超计划相邻。从而大大提高了该模型的可靠性,并证明了其有效性和实用性。

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