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k-nearest neighbor algorithm based classification and localization of seven different types of disc-to-disc impulse insulation failures in power transformer

机译:基于K-最近邻的邻算法的七种不同类型的盘到盘脉冲绝缘故障的分类和本地化在电力变压器中的脉冲绝缘故障

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Identification and localization of seven different types of disc-to-disc insulation failure in power transformer using K - Nearest Neighbor classifier (kNN) has been proposed. Proper identification of insulation failure in power transformer is vital to take appropriate corrective measure. In the present work, seven types of series insulation failures are simulated in EMTP based digital model of 33 kV winding of 3 MVA power transformer. Resultant winding currents of each insulation failures are acquired following the tank current method for the time span of 0–500 µs. By correlating healthy and faulty winding currents of 3 MVA transformer, significant time-frequency domain features are extracted by employing cross-wavelet transform. Using extracted features, the k - Nearest Neighbor classifier has successfully identified and localized all seven different types of disc-to-disc insulation failures within ± 9% winding length with acceptable accuracy. Simulation of insulation failures, feature extraction and fault identification are explained.
机译:已经提出了使用K - 最近邻分类器(KNN)在电力变压器中识别和定位七种不同类型的盘路绝缘故障。电力变压器中绝缘失效的正确识别对于采取适当的纠正措施至关重要。在本作工作中,七种类型的系列绝缘故障在基于EMTP的33 kV绕组绕组的33 kV绕组中模拟。在罐电流方法中获取所得到的每个绝缘故障的绕组电流,以便0-500μs的时间跨度。通过将3个MVA变压器的健康和故障绕组电流相关,通过采用跨小波变换来提取显着的时频域特征。使用提取的功能,K - 最近邻分类器已成功识别和本地化所有七种不同类型的磁盘 - 盘绝缘故障,以可接受的精度为±9%的绕组长度。解释了绝缘故障的仿真,特征提取和故障识别。

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