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Detection of Winding Faults Using Image Features and Binary Tree Support Vector Machine for Autotransformer

机译:使用图像特征和二叉树支持自动转向器的绕组故障检测绕组故障

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摘要

Autotransformer (AT) is the most core power supply equipment, and overvoltage and short circuit (SC) fault may lead to winding deformation, which will have a negative impact on its insulation and even affect the operation of a train. The frequency response analysis (FRA) is widely used for detecting winding faults in a transformer. However, the direct measure of FRA for each split winding fails because the split windings are adopted to satisfy the impedance requirement of a high-speed railway, where the windings are connected inside the tank. A novel fault interpretation method based on image features and binary tree support vector machine (SVM) is proposed, which can get the condition of three windings in one measurement. Winding faults caused by different windings are simulated, including SC defect, axial deformation, and series capacitance variation, and the FRA curves are measured under various faults. Then, the features of the gray-level gradient co-occurrence matrix and the gray-level difference statistics are got from the polar plot of FRA. Finally, the image features are used as the inputs to the binary tree SVM for fault type and faulty winding classification. The results show that the proposed method has high accuracy for identifying fault type and faulty winding in AT.
机译:自动转移器(AT)是最具核心电源设备,过电压和短路(SC)故障可能导致绕组变形,这将对其绝缘产生负面影响,甚至影响火车的操作。频率响应分析(FRA)广泛用于检测变压器中的绕组故障。然而,对于每个拆分绕组的FRA的直接测量失效,因为采用分开绕组来满足高速铁路的阻抗要求,其中绕组在罐内连接。提出了一种基于图像特征和二叉树支持向量机(SVM)的新型故障解释方法,可以在一次测量中获得三个绕组的条件。模拟由不同绕组引起的绕组故障,包括SC缺陷,轴向变形和串联电容变化,并且在各种故障下测量FRA曲线。然后,从FRA的极性图中获得灰度级渐变共发生矩阵和灰度级差异统计的特征。最后,将图像特征用作故障类型和故障绕组分类的二叉树SVM的输入。结果表明,该方法具有高精度,可识别故障类型和故障绕组。

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