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Demand-side Energy Management Method for Building Clusters Based on Reinforcement Learning

机译:基于钢筋学习的建筑集群需求侧能量管理方法

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Aiming at the problems that the feasibility of reinforcement learning in demand-side energy management needs further exploration, this paper proposes a demand-side energy management method for building clusters based on reinforcement learning. Firstly, taking the building cluster as the terminal energy load carrier, the demand-side energy management framework is constructed. Secondly, based on the virtual energy storage characteristics of intelligent buildings, a novel heat resistance-capacity (R-C) balance model and user flexibility load model of intelligent buildings are constructed, and a demand-side energy management model based on reinforcement learning is constructed by combining Q-learning algorithm. Finally, through an actual simulation case, the results of demand-side energy management and the performance of the algorithm are compared and analyzed, which verifies the effectiveness and practicability of the theoretical method proposed in this paper.
机译:旨在解决加强学习在需求侧能源管理方面的可行性需要进一步探索的问题,提出了基于加固学习的建设集群的需求侧能量管理方法。首先,将建筑物集群作为终端能量负载载体,构建需求侧能量管理框架。其次,基于智能建筑的虚拟能量存储特性,构建了一种新颖的耐热容量(RC)平衡模型和用户灵活性负荷模型,并构建了基于强化学习的需求侧能量管理模型结合Q学习算法。最后,通过实际模拟案例,比较和分析了需求侧能量管理的结果和算法的性能,验证了本文提出的理论方法的有效性和实用性。

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