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Reinforcement-Learning-Based Virtual Energy Storage System Operation Strategy for Wind Power Forecast Uncertainty Management

机译:基于强化的基于学习的虚拟能量存储系统运行策略,用于风电预测不确定性管理

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摘要

Uncertainties related to wind power generation (WPG) restrict its usage. Energy storage systems (ESSs) are key elements employed in managing this uncertainty. This study proposes a reinforcement learning (RL)-based virtual ESS (VESS) operation strategy for WPG forecast uncertainty management. The VESS logically shares a physical ESS to multiple units, while VESS operation reduces the cost barrier of the ESS. In this study, the VESS operation model is suggested considering not only its own operation but also the operation of other units, and the VESS operation problem is formulated as a decision-making problem. To solve this problem, a policy-learning strategy is proposed based on an expected state-action-reward-state-action (SARSA) approach that is robust to variations in uncertainty. Moreover, multi-dimensional clustering is performed according to the WPG forecast data of multiple units to enhance performance. Simulation results using real datasets recorded by the National Renewable Energy Laboratory project of U.S. demonstrate that the proposed strategy provides a near-optimal performance with a less than 2%-point gap with the optimal solution. In addition, the performance of the VESS operation is enhanced by multi-user diversity gain in comparison with individual ESS operation.
机译:与风力发电(WPG)相关的不确定性限制了其使用情况。能量存储系统(ESS)是管理这种不确定性的关键元素。本研究提出了基于WPG预测不确定性管理的加强学习(RL)的虚拟ESS(Dess)操作策略。 ves逻辑地分享了一个物质的ESES,而Dess操作会降低ESS的成本障碍。在这项研究中,建议vess操作模型不仅考虑其自己的操作,而且考虑到其他单位的操作,并且vess操作问题被制定为决策问题。为了解决这个问题,基于预期的国家行动奖励状态行动(SARSA)方法提出了一种政策学习策略,这是对不确定性的变化的强大。此外,根据多个单元的WPG预测数据执行多维聚类以增强性能。使用美国可再生能源实验室项目记录的实际数据集的仿真结果证明,拟议的策略提供了近最佳性能,具有不到2%的差距,与最佳解决方案。此外,与个体ESS操作相比,通过多用户分集增益增强了vess操作的性能。

著录项

  • 作者

    Eunsung Oh;

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  • 年度 2020
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  • 原文格式 PDF
  • 正文语种 eng
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