论文标题
通过深入的增强学习,使用可限制的可再生能源对混合能源存储系统的最佳计划
Optimal Planning of Hybrid Energy Storage Systems using Curtailed Renewable Energy through Deep Reinforcement Learning
论文作者
论文摘要
为了利用不断增长的可再生能源,能源管理系统(EMS)变得越来越重要。应采用有希望的能源存储系统(ESS),例如电池和绿色氢,以最大程度地提高能源利益相关者的效率。但是,最佳决策,即计划不同策略之间的利用,面临着大规模问题的复杂性和不确定性。在这里,我们提出了一种具有基于政策的算法的复杂深度强化学习(DRL)方法,以实现可限制的可再生能源不确定性下的实时最佳ESS计划。定量性能比较证明,即使具有广泛的动作和观察空间,DRL代理也优于基于方案的随机优化(SO)算法。由于DRL的不确定性拒绝能力,我们可以在最大程度地减少可再生能源的不确定性下确认出色的性能,并具有最大的净利润和稳定的系统。进行动作映射是为了视觉评估DRL代理所采取的动作。相应的结果证实,DRL代理人学习了人类专家的工作方式,这表明对拟议方法的可靠应用。
Energy management systems (EMS) are becoming increasingly important in order to utilize the continuously growing curtailed renewable energy. Promising energy storage systems (ESS), such as batteries and green hydrogen should be employed to maximize the efficiency of energy stakeholders. However, optimal decision-making, i.e., planning the leveraging between different strategies, is confronted with the complexity and uncertainties of large-scale problems. Here, we propose a sophisticated deep reinforcement learning (DRL) methodology with a policy-based algorithm to realize the real-time optimal ESS planning under the curtailed renewable energy uncertainty. A quantitative performance comparison proved that the DRL agent outperforms the scenario-based stochastic optimization (SO) algorithm, even with a wide action and observation space. Owing to the uncertainty rejection capability of the DRL, we could confirm a robust performance, under a large uncertainty of the curtailed renewable energy, with a maximizing net profit and stable system. Action-mapping was performed for visually assessing the action taken by the DRL agent according to the state. The corresponding results confirmed that the DRL agent learns the way like what a human expert would do, suggesting reliable application of the proposed methodology.