A Novel Condition Assessment Method Based on Dissolved Gas in Transformer Oil

Chunlei Ma, Rongbin Xie, Lijuan Zhang, Hang Liu, Youyuan Wang, Xuanhong Liang
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引用次数: 4

Abstract

In this paper, a condition assessment method based on data driven for power transformer is proposed. Collecting the historical data of dissolved gas content from the same type transformers, the probability density function and cumulative distribution function based on two-parameter Weibull model is established to acquire the distribution law for each gas. The distribution probability between different condition levels is counted to calculate condition threshold by inverse cumulative distribution function, and the condition membership functions based on condition threshold are established. According to the historical data, important weight of each gas is quantified by entropy weight method. Finally, the weighted method is applied to calculate the confidence probability of all the condition levels after obtaining the monitoring data of gas content, and the condition of transformers is determined. The application example shows that the method is data driven without any subjective factor, which assures the accuracy of the results.
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基于变压器油中溶解气体的状态评估新方法
提出了一种基于数据驱动的电力变压器状态评估方法。收集同类型变压器溶解气体含量的历史数据,建立基于双参数威布尔模型的概率密度函数和累积分布函数,得到各气体的分布规律。计算不同条件层次之间的分布概率,利用逆累积分布函数计算条件阈值,建立基于条件阈值的条件隶属函数。根据历史数据,采用熵权法对各气体的重要权重进行量化。最后,在获得含气量监测数据后,应用加权法计算各工况水平的置信概率,确定变压器的工况。应用实例表明,该方法是数据驱动的,不受任何主观因素的影响,保证了结果的准确性。
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