AMI数据分析;客户特征和大数据管理中自组织地图功能的研究

Mohsen Kojury-Naftchali, A. Fereidunian, H. Lesani
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引用次数: 6

摘要

本文的目的是研究自组织映射(SOM)能力在客户表征他们的电力消费行为。表征是基于智能电网中先进计量基础设施(AMI)记录的数据。本研究涉及两个方面:第一,SOM在模式识别应用中的能力;第二,SOM在大数据管理中的能力。这两种能力都有助于当前重构的电力市场。一方面,市场对负荷分析的需求使能源管理方案和其他政策的决策更加可靠。另一方面,在AMI存在的情况下,网格中信息交换的增加使数据分析变得复杂。将该算法应用于上述两个方面,取得了令人信服的结果。与爱尔兰电力消耗相关的真实数据集用于评估拟议程序的性能。
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AMI data analytics; an investigation of the self-organizing maps capabilities in customers characterization and big data management
This paper is aimed at investigating self-organizing map (SOM) capabilities in customers characterization in their electricity consumption behavior. Characterization is based on the recorded data by Advanced Metering Infrastructure (AMI) in smart grid. This investigation regards two aspects of SOM: First, capabilities of SOM in pattern recognition applications and second, capabilities of SOM in big data management. Both of these capabilities are instrumental in the current restructured electricity market. From one aspect, requirements of the market for load profiling by which decision making in energy management programs and other policies is more reliable. From another aspect, the increase in information exchanging in the grid in the presence of AMI which complicates the analysis of data. Applying this algorithm in both two aforementioned aspects has shown persuasive results. A real dataset related to Irish electricity consumption is used to evaluate performance of the proposed procedures.
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