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Classification of Transformer Winding Deformation Fault Types by FRA Polar Plot and Multiple SVM Classifiers

机译:FRA极性绘图和多个SVM分类器的变压器绕组变形故障类型的分类

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Power transformers are important assets in power grid. Winding deformation is one of main fault types of transformer internal failures. The accurate diagnosis of transformer winding deformation is significant and meaningful. In this study, an improved method of classifying winding deformation types is proposed. The polar plot is first plotted by using the amplitude and phase information of the measured frequency response analysis (FRA) traces, then the digital image processing technology is used to extract three image texture features from polar plot, and three support vector machines (SVMs) are independently trained by using the extracted texture features. As a result, a strong classifier is eventually obtained by combining the three trained SVMs, for fault type classification and recognition. The proposed method is verified on the experimental FRA data obtained from an actual model transformer, which demonstrates that the proposed method has more excellent performance compared with the traditional method based on the FRA trace and single SVM.
机译:电力变压器是电网中的重要资产。绕组变形是变压器内部故障的主要故障类型之一。变压器绕组变形的准确诊断显着且有意义。在该研究中,提出了一种改进的分类绕组变形类型的方法。首先通过使用测量的频率响应分析(FRA)迹线的幅度和相位信息来绘制极性图,然后使用数字图像处理技术从极绘图中提取三个图像纹理特征,以及三个支持向量机(SVM)通过使用提取的纹理特征独立培训。结果,通过组合三个训练的SVM来实现强分类器,用于故障类型分类和识别。所提出的方法在实际模型变压器获得的实验FRA数据上验证,这表明该方法与基于FRA迹线和单个SVM的传统方法相比具有更优异的性能。

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