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Study on PD Pattern Recognition of Power Transformer Considering External Corona Interference Signal

机译:考虑外部电晕干扰信号的电力变压器PD图案识别研究

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Transformer plays an important role in the stable operation of the power system. In the process of on-site monitoring, partial discharge often occurs, but all kinds of electromagnetic interference and vibration interference are very serious. In order to check and identify the discharge fault of transformer more efficiently, it is necessary to carry out the research on the discharge identification and classification under the interference in the partial discharge detection of transformer. In this experiment, the partial discharge pattern recognition of power transformer considering corona interference signal was studied. The partial discharge experiment model of transformer was set up, and six discharge types were set up in the transformer. The external corona interference signal was set, and six kinds of discharge signals under corona interference were collected. Based on the BP(Back Propagation) neural network pattern recognition classifier, six kinds of discharge characteristic parameters were classified. The results showed that the accuracy of training confusion matrix was 87.1%, verifying confusion matrix was 86.7%, testing confusion matrix was 91.1%, and overall confusion matrix was 87.7%. In the overall ROC(Receiver Operating Characteristic) curve, the overall classification accuracy was high, and the network output error was gradually close to the best output, which can meet the requirements of pattern recognition accuracy. The results could provide theoretical basis and technical support for online monitoring and fault diagnosis of primary equipment in substation.
机译:变压器在电力系统的稳定运行中起着重要作用。在现场监测的过程中,通常发生局部放电,但各种电磁干扰和振动干扰非常严重。为了更有效地检查和识别变压器的放电故障,有必要在变压器的局部放电检测的干扰下进行对放电识别和分类的研究。在该实验中,研究了考虑电晕干扰信号的电力变压器的局部放电模式识别。建立了变压器的局部放电实验模型,在变压器中设置了六种放电类型。设定外部电晕干扰信号,收集了电晕干扰下的六种放电信号。基于BP(反向传播)神经网络模式识别分类器,分类了六种放电特征参数。结果表明,训练混淆矩阵的准确性为87.1%,验证混淆基质为86.7%,测试混淆矩阵为91.1%,总混淆基质为87.7%。在整体ROC(接收器操作特性)曲线中,整体分类准确度高,网络输出误差逐渐接近最佳输出,这可以满足模式识别精度的要求。结果可以为变电站中主要设备的在线监测和故障诊断提供理论基础和技术支持。

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