Nonparametric Kernel Density Estimation Model of Transformer Health Based on Dissolved Gases in Oil

Houying Li, Youyuan Wang, Xuanhong Liang, Yigang He, Yushun Zhao
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引用次数: 2

Abstract

In this paper, a health status calculation method based on nonparametric kernel density estimation of dissolved gas in oil and association rules for transformer is proposed. Firstly, the online monitoring data of dissolved gas content which collected from multiple identical transformers are analyzed by nonparametric density estimation to obtain the health probability distribution function of various gases. Then, by mining the correlation between various gases and transformer fault conditions, an association rule method to calculate the weight coefficient of each gas is introduced. Finally, the weighted method is applied to calculate the health probability of transformer when the health probability and weight of each gas are obtained. The method introduced in this paper is validated by the state parameter data of transformer in a substation. The example shows that the health status of the transformer can be obtained in real time and this method is completely based on data driven, which is important to ensure the safety of grid.
基于油中溶解气体的变压器健康非参数核密度估计模型
提出了一种基于油中溶解气体非参数核密度估计和关联规则的变压器健康状态计算方法。首先,采用非参数密度估计方法对多台相同变压器的溶解气体含量在线监测数据进行分析,得到各种气体的健康概率分布函数;然后,通过挖掘各种气体与变压器故障状态之间的相关性,提出了一种计算各气体权重系数的关联规则方法。最后,在得到各气体的健康概率和重量的情况下,应用加权法计算变压器的健康概率。通过某变电站变压器状态参数数据验证了本文方法的有效性。算例表明,该方法完全基于数据驱动,能够实时获取变压器的健康状态,对保证电网的安全运行具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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