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Decentralized multi-agent based energy management of microgrid using reinforcement learning

机译:基于微电网的分散多智能体的能量管理使用加固学习

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摘要

This paper proposes a multi-agent based decentralized energy management approach in a grid-connected microgrid (MG). The MG comprises of wind and photovoltaic resources, diesel generator, electrical energy storage, and combined heat and power generations to serve electrical and thermal loads at the lower-level of energy management system (EMS). All distributed energy resources (DERs) and customers are modelled as self-interested agents who adopt reinforcement learning to optimize their behaviours and operation costs. Based on this algorithm, agents have the capability to interact with each other in a distributed manner and find the best strategy in competitive environment. At the upper-level of EMS, there is an energy management agent that gathers the information of agents of lower-level and clears the MG electrical and thermal energy market in line with predetermined goals. Utilizing energy availability from different DERs and variety of customers' consumption patterns, considering uncertainty of renewable generation and load consumption and taking into account technical constraint of DERs are the strengths of the presented framework. Performance of the proposed algorithm is investigated under different conditions of agents learning and using epsilon-greedy, soft-max and upper confidence bound methods. The simulation results verify efficacy of the proposed approach.
机译:本文提出了一种基于网格连接的微电网(MG)的多助剂的分散能量管理方法。 MG包括风和光伏资源,柴油发电机,电能存储,以及组合的热量和电力,以在能量管理系统(EMS)的较低级别处提供电气和热负荷。所有分布式能源资源(DERS)和客户都被建模为采用强化学习的自私代理,以优化其行为和运营成本。基于该算法,代理具有以分布式方式相互交互,并找到竞争环境中的最佳策略。在EMS的上层,有一个能源管理代理商会收集较低级别的代理信息,并以预定的目标符合预定的目标,清除MG电气和热能市场。利用不同DER和各种客户消费模式的能量可用性,考虑到可再生生成和负载消耗的不确定性,并考虑到DER的技术限制是所提出的框架的优势。在不同的代理条件下研究了所提出的算法的性能,并使用epsilon贪婪,软最多和上置信方法。仿真结果验证了所提出的方法的功效。

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