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首页> 外文期刊>Procedia Computer Science >Distributed Optimization of Solar Micro-grid Using Multi Agent Reinforcement Learning
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Distributed Optimization of Solar Micro-grid Using Multi Agent Reinforcement Learning

机译:基于多主体强化学习的太阳能微网分布式优化

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In the distributed optimization of micro-grid, we consider grid connected solar micro-grid system which contains a local consumer, a solar photovoltaic system and a battery. The consumer as an agent continuously interacts with the environment and learns to take optimal actions. Each agent uses a model-free reinforcement learning algorithm, namely Q Learning, to optimize the battery scheduling in dynamic environment of load and available solar power. Multiple agents sense the states of the environment components and make collective decisions about how to respond to randomness in load, intermittent solar power using a Multi-Agent Reinforcement Learning algorithm, called Coordinated Q Learning (CQL). The goals of each agent are to increase the utility of the battery and solar power in order to achieve the long term objective of reducing the power consumption from grid.
机译:在微电网的分布式优化中,我们考虑并网的太阳能微电网系统,该系统包含本地用户,太阳能光伏系统和电池。消费者作为代理不断与环境互动,并学会采取最佳行动。每个代理都使用无模型的强化学习算法,即Q学习,以在负载和可用太阳能的动态环境中优化电池调度。多个代理可以感知环境组件的状态,并使用称为协调Q学习(CQL)的多智能体强化学习算法,对如何应对负载,间歇性太阳能的随机性做出集体决策。每个代理的目标是增加电池和太阳能的利用率,以实现减少电网功耗的长期目标。

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