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Feature Selection in Power Transformer Fault Diagnosis based on Dissolved Gas Analysis

机译:基于溶解气体分析的电力变压器故障诊断功能选择

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Dissolved gas analysis is an important test to diagnose the condition of a power transformer. Based on key gases, various features are recommended for the purpose of fault classification. A feature selection method can be used to reduce the number of features by excluding less useful or irrelevant features. Selecting useful features not only reduces the computational complexity, but also enhances the classification performance. The novelty of this paper is to use various techniques of feature selection, including Student's t-test, Kolmogorov-Smirnov test and Kullback Leibler Divergence test, to rank features' order based on discriminative power of different features. The ordered features are tested with the K-Nearest Neighbour classification algorithm to evaluate their importance based on fault classification accuracy.
机译:溶解气体分析是诊断电力变压器条件的重要测试。基于键气体,建议使用各种功能以故障分类。特征选择方法可用于通过排除不太有用或无关的功能来减少特征的数量。选择有用的功能不仅可以降低计算复杂性,而且还提高了分类性能。本文的新颖性是使用各种特征选择技术,包括学生的T-Test,Kolmogorov-Smirnov测试和Kullback Leibler分歧测试,基于不同特征的辨别力量等级的排序功能。通过K-Collect邻分类算法测试有序功能,以根据故障分类精度评估它们的重要性。

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