Power Transformer Abnormal State Recognition Model Based on Improved K-Means Clustering

Xuanhong Liang, Youyuan Wang, Houying Li, Yigang He, Yushun Zhao
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引用次数: 6

Abstract

At present, most of the data of the running transformers are normal state data. In order to utilize the historical normal state data to identify efficiently whether the new data are abnormal, a power transformer abnormal state quick recognition model based on improved K-means clustering, is proposed in this paper. To solve the problems of traditional K-means clustering, an improvement about choosing K value and initial cluster center based on data density and distance is proposed. The improvement can make K-means clustering get stable cluster centers and K value to greatly decrease the times of iterations and make the process of clustering quicker, more stable and efficient. Most of the power transformer data are normal state data. And the normal state data gradually change according to a certain trend while the abnormal state data change rapidly. Based on the historical normal data and improved K-means clustering, a quick recognition model for power transformer is established. According to the clustering results of normal data, thresholds can be calculated to identify new data. The example analysis shows that the improved algorithm can effectively identify the abnormal state of the power transformer quickly and accurately.
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基于改进k均值聚类的电力变压器异常状态识别模型
目前,变压器运行数据大多为正常状态数据。为了利用历史正常状态数据有效识别新数据是否异常,本文提出了一种基于改进k均值聚类的电力变压器异常状态快速识别模型。针对传统K均值聚类存在的问题,提出了一种基于数据密度和距离选择K值和初始聚类中心的改进方法。这种改进可以使K-means聚类得到稳定的聚类中心和K值,从而大大减少了迭代次数,使聚类过程更快、更稳定、更高效。大多数电力变压器的数据都是正常状态数据。正常状态数据按一定趋势逐渐变化,异常状态数据变化迅速。基于历史正态数据和改进的k均值聚类,建立了电力变压器的快速识别模型。根据正常数据的聚类结果,计算阈值来识别新数据。算例分析表明,改进后的算法能够快速准确地有效识别电力变压器的异常状态。
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