Analysis of Multi Index Association of Power Grid Work Order based on Data Mining

Lin Huo, Yan Zhang, Jianwen Zhang, Fei Liu, Jing Liang, Yao Wang
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引用次数: 1

Abstract

Distribution network work order is one of the important indicators to reflect the operation and management level of distribution network, which has important information value for providing auxiliary production decision-making of distribution network. In the face of massive distribution network work order data, need to solve the problem of how to transform the data into auxiliary decision-making information. In this paper, through machine learning, big data and other artificial intelligence technology and data mining technology, the distribution network operation index correlation analysis and intelligent prediction, found the inherent law between the operation index, realized accurate operation and maintenance and scientific decision-making. Firstly, the distribution network work order data was preprocessed to clean the error and abnormal data, and the fuzzy algorithm was used to match the corresponding station area according to the lack of station area. Secondly, the type and characteristics of each type of work order were analyzed, and the distribution network work order index mining was carried out through PrefixSpan algorithm. Finally, the effectiveness of the proposed algorithm was verified through the actual data, and the operation and maintenance of the distribution network were analyzed The paper put forward the preventive measures for the weak links in the service.
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基于数据挖掘的电网工作单多指标关联分析
配电网工作指令是反映配电网运行管理水平的重要指标之一,对辅助配电网生产决策具有重要的信息价值。面对海量的配电网工单数据,需要解决如何将这些数据转化为辅助决策信息的问题。本文通过机器学习、大数据等人工智能技术和数据挖掘技术,对配电网运行指标进行相关性分析和智能预测,发现运行指标之间的内在规律,实现准确运维和科学决策。首先,对配电网工单数据进行预处理,清除错误和异常数据,并根据缺少的站区,采用模糊算法匹配相应的站区;其次,分析了各类工单的类型和特点,并通过PrefixSpan算法进行配电网工单指标挖掘;最后,通过实际数据验证了所提算法的有效性,并对配电网的运维进行了分析,针对服务中的薄弱环节提出了预防措施。
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