智能电网中计量数据的消息拼接可伸缩收集

B. Karimi, V. Namboodiri, Murtuza Jadliwala
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引用次数: 32

摘要

高级计量基础设施(AMI)计划是一种流行的工具,用于整合电网现代化、减少峰值负荷和满足能源效率目标的变化。如何沟通和处理电力公司收集的消费者数据,以及如何管理有限的通信网络资源,这是一个迫在眉睫的问题。需要几个数据中继点来分散地收集数据并通过通信回程发送数据。本文研究了智能电表消息串联(SMMC)问题,即如何将到达数据集中器单元(dcu)的多个小智能电表消息串联起来,以减少协议开销和网络利用率。此问题需要处理附加的约束,即来自其源的每个原始消息可能有自己规定的截止日期,必须在连接过程中加以考虑。提出并评估了六种启发式算法,以更好地理解可应用于智能电网数据集中器的最佳数据量减少策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the scalable collection of metering data in smart grids through message concatenation
Advanced Metering Infrastructure (AMI) initiatives are a popular tool to incorporate changes for modernizing the electricity grid, reduce peak loads, and meet energy-efficiency targets. There is the looming issue of how to communicate and handle consumer data collected by electric utilities and manage limited communication network resources. Several data relay points are required to collect data distributedly and send them through a communication backhaul. This work studies the smart meter message concatenation (SMMC) problem of how to concatenate multiple small smart metering messages arriving at data concentrator units (DCUs) in order to reduce protocol overhead and thus network utilization. This problem needs to deal with the added constraint that each originating message from its source may have its own stated deadline that must be taken into account during the concatenation process. Six heuristic algorithms are proposed and evaluated to gain a better understanding of the best data volume reduction policies that can be applied at data concentrators of smart grids.
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