A kind of semi-supervised classifying method research for power transformer fault diagnosis

Siping Chen
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引用次数: 2

Abstract

Dissolved gas analysis is one of the most common techniques to detect the faults in the power transformers. Most of existing diagnosis method will need large amount of labeled data sets to construct classifier, while normally ignoring without unlabeled data sets. This paper presents a power transformer fault diagnosis method which based on semi-supervised classifying. In Its learning process, the semi-supervised classifying method can simultaneously use labeled data sets and unlabeled data sets to acquire more information so that make better learning effect. A semi-supervised classifying (SSC) method adopting fuzzy nearest neighborhood label propagation (FNNLP-SSC)is adopted to diagnose the fault of power transformer, in the meantime, the proposed method, based on the similarity connections between a sample and its K nearest data, classifies the unlabeled data by making the labels propagate from the labeled data to unlabeled data. The experiments indicate that method of this paper has been proposed has higher fault diagnosis accuracy compared with C-means (FCM) algorithm and the three ratio method IEC. Also, it verifies the effectiveness and feasibility of the proposed method in the transformer fault diagnosis.
一种用于电力变压器故障诊断的半监督分类方法研究
溶解气体分析是电力变压器故障检测中最常用的技术之一。现有的诊断方法大多需要大量的标记数据集来构建分类器,而通常忽略未标记的数据集。提出了一种基于半监督分类的电力变压器故障诊断方法。在其学习过程中,半监督分类方法可以同时使用标记数据集和未标记数据集来获取更多的信息,从而获得更好的学习效果。采用模糊最近邻标签传播(FNNLP-SSC)半监督分类(SSC)方法对电力变压器故障进行诊断,同时,该方法根据样本与其K个最近邻数据之间的相似关系,通过标签从有标签的数据传播到无标签的数据,对未标记的数据进行分类。实验表明,与c均值(FCM)算法和三比值法(IEC)相比,本文提出的方法具有更高的故障诊断精度。验证了该方法在变压器故障诊断中的有效性和可行性。
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