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Fault diagnosis of power transformer based on multi-layer SVM classifier

机译:基于多层支持向量机分类器的电力变压器故障诊断

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摘要

Support vector machine (SVM) is a novel machine learning method based on statistical learning theory (SLT). SVM is powerful for the problem with small sampling, nonlinear and high dimension. A multi-layer SVM classifier is applied to fault diagnosis of power transformer for the first time in this paper. Content of five diagnostic gases dissolved in oil obtained by dissolved gas analysis (DGA) is preprocessed through a special data processing, and six features are extracted for SVMs. Then, the multi-layer SVM classifier is trained with the training samples, which are extracted by the above data processing. Finally, the four fault types of transformer are identified by the trained classifier. The test results show that the classifier has an excellent performance on training speed and reliability.
机译:支持向量机(SVM)是一种基于统计学习理论(SLT)的新型机器学习方法。支持向量机在小样本,非线性和高维方面具有强大的功能。本文将多层支持向量机分类器首次应用于电力变压器的故障诊断。通过特殊数据处理对通过溶解气体分析(DGA)获得的溶解在油中的五种诊断气体的含量进行预处理,并为SVM提取六个特征。然后,利用训练样本对多层SVM分类器进行训练,这些训练样本是通过上述数据处理提取的。最后,由训练有素的分类器确定变压器的四种故障类型。测试结果表明,该分类器在训练速度和可靠性上具有优良的表现。

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