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首页> 外文期刊>Journal of Dynamic Systems, Measurement, and Control >Demand Management of Distributed Energy Loads Based on Genetic Algorithm Optimization
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Demand Management of Distributed Energy Loads Based on Genetic Algorithm Optimization

机译:基于遗传算法优化的分布式能源负荷需求管理

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摘要

Management of a very large number of distributed energy resources, energy loads, and generators, is a hot research topic. Such energy demand management techniques enable appliances to control and defer their electricity consumption when price soars and can be used to cope with the unpredictability of the energy market or provide response when supply is strained by demand. We consider a multi-agent system comprising multiple energy loads, each with a dedicated controller. This paper introduces our latest research in self-organization of coordinated behavior of multiple agents. Energy resource agents (RAs) coordinate with each other to achieve a balance between the overall consumption by the multi-agent collective and the stress on the community. In order to reduce the overall communication load while permitting efficient coordinated responses, information exchange is through indirect communications between RAs and a broker agent (BA). This gives a decentralized coordination approach that does not rely on intensive computation by a central processor. The algorithm presented here can coordinate different types of loads by controlling their set-points. The coordination strategy is optimized by a genetic algorithm (GA) and a fast coordination convergence has been achieved.
机译:管理大量分布式能源,能源负载和发电机是一个热门的研究主题。这种能源需求管理技术使电器能够在价格飞涨时控制和推迟其用电量,并可以用来应对能源市场的不可预测性,或者在需求紧张时提供响应。我们考虑一个包含多个能量负荷的多主体系统,每个负荷都有一个专用的控制器。本文介绍了我们在多个代理的协调行为的自组织方面的最新研究。能源代理(RA)相互协调,以在多代理集体的总体消耗与社区压力之间取得平衡。为了减少总体通信负载,同时允许有效的协调响应,信息交换是通过RA与代理(BA)之间的间接通信进行的。这提供了不依赖中央处理器的密集计算的分散式协调方法。此处介绍的算法可以通过控制它们的设定点来协调不同类型的负载。通过遗传算法(GA)优化了协调策略,并实现了快速的协调收敛。

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