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Research on online diagnosis method of transformer winding deformation based on correlation mining of operating voltage and current

机译:基于相关电压和电流相关挖掘的变压器绕组变形在线诊断方法研究

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Transformer is one of the main equipment of power system, winding deformation will lay a hidden danger for the operation of transformer. Most of the existing winding deformation diagnosis methods belong to off-line diagnosis, which has the disadvantages of power cut and long interval period. In this paper, an on-line diagnosis method of transformer winding deformation based on the correlation mining of operating voltage and current is proposed. Through collecting practical cases, the monitoring data before and after transformer winding deformation are compared longitudinally by using the logic regression method, and it is found that only the monitoring data of voltage and current are significantly related to the deformation among the four monitoring indexes of current, voltage, power and oil temperature. Combined with the algorithm of permutation entropy, the data before and after transformer deformation are compared crosswise, it is found that the permutation entropy of many indexes of transformer with winding deformation before and after short circuit is obviously different, while the permutation entropy of each index of transformer without winding deformation is basically the same before and after short circuit. And the on-line diagnosis of winding deformation can be realized by analyzing the actual state of permutation entropy of key indexes of transformer. In this study, a total of 29 transformer winding deformation diagnosis was completed, 27 transformers were correctly identified, and the diagnostic accuracy rate was 93.10%, which verified the effectiveness of the method and its popularization among different types of transformers.
机译:变压器是电力系统的主要设备之一,绕组变形将为变压器运行奠定隐藏的危险。大多数现有的绕组变形诊断方法属于离线诊断,具有电力切割和长间隔时间的缺点。本文提出了一种基于工作电压和电流相关挖掘的变压器绕组变形的在线诊断方法。通过收集实际情况,通过使用逻辑回归方法纵向比较变压器绕组变形之前和之后的监测数据,发现电压和电流的监测数据只与电流的四个监测指标之间的变形显着相关。电压,电源和油温。结合置换熵算法,在横向比较变压器变形之前和之后的数据,发现短路前后变形的变压器的许多指标的置换熵显然是不同的,而每个索引的置换熵在没有绕组变形的变压器的情况下基本相同,短路前后。通过分析变压器关键索引的实际置换熵的实际状态,可以实现绕组变形的在线诊断。在这项研究中,共完成了29个变压器绕组变形诊断,正确识别了27个变压器,诊断准确率为93.10%,验证了该方法的有效性及其在不同类型的变压器中的普及。

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