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Energy Management for isolated renewable-powered microgrids using reinforcement learning and game theory

机译:使用强化学习和博弈论的孤立可再生能源微电网能源管理

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This paper presents a decentralized energy management system (EMS) solving for optimal load-response strategy applying reinforcement learning (RL) and game theory for islanded renewable-powered microgrids. The EMS enables the consumers in a microgrid to independently evaluate the tradeoff between satisfying load demand and maintaining sufficient stored energy to make load-response decisions correspondingly. The evaluation and decision-making process consists of two parts: an instant virtual two-player load-response game and a long-term linear-reward inaction (LR-I) learning process adjusting consumer power/load models. The virtual two-game solving process is an instantaneous decision-making system so that the consumers could make real-time decisions, while the LR-I process gradually improves the consumer payoff based on the system feedback during the operation. Simulation of a microgrid powered by PV cells and battery banks is conducted to evaluate the EMS performance. It is shown that the game-learning EMS has a better performance compared to both the direct virtual two-player game and the naïve LR-I approach. Additionally, compared to the naïve LR-I approach, the proposed game-learning algorithm has a faster converging-speed.
机译:本文提出了一种分散式能源管理系统(EMS),用于求解孤岛可再生能源微电网的强化学习(RL)和博弈论,以优化负荷响应策略。 EMS使微电网中的用户能够独立评估满足负载需求与保持足够的存储能量之间的权衡,从而做出相应的负载响应决策。评估和决策过程包括两个部分:即时虚拟两人负载响应游戏和调整消费者功率/负载模型的长期线性奖励不作为(LR-I)学习过程。虚拟的两人博弈求解过程是一个即时决策系统,以便消费者可以做出实时决策,而LR-I过程则根据操作过程中的系统反馈逐步提高了消费者的收益。对由PV电池和电池组供电的微电网进行了仿真,以评估EMS的性能。结果表明,与直接虚拟两人游戏和幼稚的LR-I方法相比,具有游戏学习能力的EMS具有更好的性能。此外,与单纯的LR-1方法相比,所提出的游戏学习算法具有更快的收敛速度。

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