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Operation and Maintenance Management and Decision Analysis in Distribution Network Based on Big Data Mining

机译:基于大数据挖掘的配电网运维管理与决策分析

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The operation and maintenance management of the distribution network (DN) mainly includes fault analysis, active early-warning and differentiated operation and maintenance. In the context of multi-time-scale and multi-spatial-temporal data in DN, this paper deals with the application of data mining for distribution network operation and maintenance management. In the paper, the one-dimensional fault feature is extracted from fault information by K-means clustering algorithm. Then, we employed Apriori algorithm to mine association rules of different failure modes and establish key performance matrix. The spatial-temporal characteristics are analyzed based on high-dimensional random matrix theory (RMT). Afterwards, one-dimensional and multi-dimensional fault features are combined based on D-S evidence theory so that the fault diagnosis criteria of DN is obtained. At the same time, comprehensively considering the DN operating state and the variation for power users, health index and importance index of equipment are established, which could help to significantly reduce the decision-making risk of DN operation and maintenance. The result of simulation proves the effectiveness of the proposed method.
机译:配电网的运维管理主要包括故障分析,主动预警和差异化运维。在DN中多时标,多时空的数据环境下,本文探讨了数据挖掘在配电网运维管理中的应用。本文利用K-means聚类算法从故障信息中提取一维故障特征。然后,我们采用Apriori算法来挖掘不同失效模式的关联规则,并建立关键性能矩阵。基于高维随机矩阵理论(RMT)分析了时空特征。然后,基于D-S证据理论将一维和多维故障特征进行组合,从而得出DN的故障诊断标准。同时,综合考虑DN的运行状态和用电方的变化,建立了设备的健康指标和重要度指标,可以大大降低DN运营和维护的决策风险。仿真结果证明了该方法的有效性。

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