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首页> 外文期刊>IEEE Transactions on Dielectrics and Electrical Insulation >GIS partial discharge pattern recognition based on the chaos theory
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GIS partial discharge pattern recognition based on the chaos theory

机译:基于混沌理论的GIS局部放电模式识别

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摘要

Partial discharge (PD) is a key parameter which describes insulation condition of gas-insulated switchgear GIS, GIS internal defects can be discovered in time with the interferences such as corona discharge from the power system using Ultra-high frequency (UHF) method. Traditional method based on statistical characteristics is limited to the analysis of image features that describe the PD pattern plot, causing low recognition rate of some kinds of PD. In this paper, the acquisition of the PD characteristics caused by four typical insulation defects forms =5;-v-n 3D PRPD pattern plots sample matrix. The largest Lyapunov exponent of each column of matrix is calculated. A 36-dimension vector is then obtained as the chaotic characteristics of the PD in different voltage phases. The experimental results show that the recognition method based on the chaotic characteristics performs well on all four kinds of insulation defects and can satisfy the recognition order. The method based on the chaotic characteristics has a strong recognition ability for the discharge physical models of gas gap, which is an advantage over the traditional method. The two recognition methods have a good complementary property. Combining the complementary chaotic and statistical characteristics in a decision-making level by using the Dempster-Shafer evidence theory results in an accuracy of above 98%.
机译:局部放电(PD)是描述气体绝缘开关设备GIS绝缘状况的关键参数,通过使用超高频(UHF)方法,可以及时发现GIS内部缺陷以及电力系统中电晕放电等干扰。传统的基于统计特征的方法仅限于描述PD模式图的图像特征分析,导致某些PD的识别​​率较低。在本文中,由四个典型的绝缘缺陷形式= 5; -v-n 3D PRPD模式绘制的样本矩阵引起的局部放电特性的获取。计算矩阵的每一列的最大Lyapunov指数。然后获得36维矢量作为不同电压相位下PD的混沌特性。实验结果表明,基于混沌特性的识别方法在四种绝缘缺陷上均表现良好,能够满足识别顺序。基于混沌特征的方法对气隙的放电物理模型具有很强的识别能力,是传统方法的一个优点。两种识别方法具有很好的互补性。通过使用Dempster-Shafer证据理论在决策水平上组合互补的混沌和统计特性,可以达到98%以上的准确性。

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