基于强化学习的智能电网电价控制器

Yi-Hsin Lin, Wei-Yu Chiu
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引用次数: 0

摘要

实现电力供需平衡是任何电网系统最迫切的目标。为了解决现代电网中可再生能源的可变性,需要一种鲁棒性和弹性的平衡方案。考虑到可再生能源带来的不确定性,传统的基于模型的方法会导致性能下降。因此,本研究通过提出一种基于强化学习的定价方案来平衡电力供需,探索了一种无模型的方法。价格信号被认为是平衡管理的控制信号。案例研究涉及不同的市场参数和不同的时间决议进行了显示所提出的方法的有效性。
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Reinforcement Learning Based Electricity Price Controller in Smart Grids
Striking a balance between power supply and demand is the most imperative target for any electricity grid system. In order to address variability of renewable energy in the modern grid, a robust and elastic balancing scheme is required. Conventional model-based approaches can suffer from great performance degradation given the uncertainty induced by the renewable energy. As such, this study explores a model-free approach by proposing a reinforcement learning based pricing scheme that balances the power supply and demand. A price signal is considered as the control signal for the balance management. Case studies involving different market parameters and different time resolutions were conducted to show the effectiveness of the proposed methodology.
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