基于层次分析法的油纸绝缘局部放电识别

Sheng-qiang Ji, Haisheng Ji, Yongfen Luo, Yan-ming Li
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引用次数: 0

摘要

油纸绝缘是电力变压器中常见的绝缘结构,局部放电是造成绝缘劣化的主要原因。局部放电信号包含了足够的绝缘状态信息,因此局部放电测量对于早期发现甚至预防绝缘故障变得非常重要。PD的类型可以提供更多关于PD缺陷的信息,对它们的分析可以为进一步的测量提供有效的指导。不同类型缺陷的局部放电涉及不同的放电机制,这可以通过相分解局部放电(PRPD)模式和参数的差异来反映。这些差异为模式识别的研究提供了依据。为了识别局部放电,本文建立了五种典型缺陷模型来模拟油浸变压器的典型实际缺陷。通过K-W检验,从PRPD模式的统计算子中选出11个分类能力最强的特征。在选择特征的基础上,在小样本训练的情况下,应用层次分析法(AHP)对这些典型PD进行识别,并将AHP识别的结果与相同条件下人工神经网络(ANN)识别的结果进行比较。结果表明,AHP的识别准确率均在85%以上,优于人工神经网络的识别准确率,为小样本条件下典型的部分放电识别奠定了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recognition of Partial Discharge in oil-paper insulation based on Analytic Hierarchy Process
Partial Discharge (PD) is the main cause of insulation deterioration in oil-paper insulation which is the common structure in power transformers. PD signals contain sufficient information of insulation status and thus PD measurement becomes very important to early detection or even prevention of insulation failure. The type of PD can provide even more information about the PD defects and the analysis of them can provide effective guidance for taking further measurements. PD in different kinds of defects involves different discharge mechanism, which can be reflected by the difference of Phase Resolved Partial Discharges (PRPD) pattern and parameters. The differences provide the basis for the research of pattern recognition. In order to recognize PD, five kinds of typical defect models were prepared to simulate the typical actual defects of oil immersed transformer in the thesis. Through K-W test, 11 features with the strongest ability of classification are chosen from statistical operators of PRPD pattern. Based on the chosen features, in the case of being trained by small sample, Analytic Hierarchy Process (AHP) is applied to recognize these typical PD, and the results recognized by AHP are compared to those which are recognized by Artificial Neural Network (ANN) in the same condition. The results shows that the recognition accuracy rates gotten by AHP are all above 85%, are better than which is gotten by ANN, this lays a foundation for the typical Partial Discharges recognition under the premise of small sample.
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