Power system state monitoring big data query based on multilevel index

Zeyuan Zhou, Junrong Liu, Linyan Zhou
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引用次数: 0

Abstract

The continuous operation of the power system generates a large amount of state data. By querying this data, the operation status of the power system can be judged, which is beneficial for improving the stability of the power system operation. Therefore, a multilevel index based big data query method for power system state monitoring is proposed. Firstly, density clustering algorithm is used to cluster the big data of power system status monitoring. Secondly, based on the clustering results, a distance sensitive hash algorithm is used to represent the mapping relationship of data points, and a multilevel index structure is constructed to complete the query of big data for power system status monitoring. The experimental results show that the proposed method reduces the response time of big data queries for power system status monitoring, improves query throughput and accuracy, and achieves a maximum query accuracy of 94.24%.
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基于多级指标的电力系统状态监测大数据查询
电力系统的连续运行会产生大量的状态数据。通过查询这些数据,可以判断电力系统的运行状态,有利于提高电力系统运行的稳定性。为此,提出了一种基于多级指标的电力系统状态监测大数据查询方法。首先,采用密度聚类算法对电力系统状态监测大数据进行聚类。其次,基于聚类结果,采用距离敏感哈希算法表示数据点之间的映射关系,构建多级索引结构,完成电力系统状态监测大数据的查询;实验结果表明,该方法减少了电力系统状态监测大数据查询的响应时间,提高了查询吞吐量和查询准确率,查询准确率最高可达94.24%。
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来源期刊
International Journal of Energy Technology and Policy
International Journal of Energy Technology and Policy Social Sciences-Geography, Planning and Development
CiteScore
1.50
自引率
0.00%
发文量
16
期刊介绍: The IJETP is a vehicle to provide a refereed and authoritative source of information in the field of energy technology and policy.
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