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Deep Reinforcement Learning for Long Term Hydropower Production Scheduling

机译:深度强化学习,用于长期水电生产调度

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We explore the use of deep reinforcement learning to provide strategies for long term scheduling of hydropower production. We consider a use-case where the aim is to optimise the yearly revenue given week-by-week inflows to the reservoir and electricity prices. The challenge is to decide between immediate water release at the spot price of electricity and storing the water for later power production at an unknown price, given constraints on the system. We successfully train a soft actor-critic algorithm on a simplified scenario with historical data from the Nordic power market. The presented model is not ready to substitute traditional optimisation tools but demonstrates the complementary potential of reinforcement learning in the data-rich field of hydropower scheduling.
机译:我们探索使用深度强化学习为水电生产的长期调度提供策略。我们考虑一个用例,其目标是根据水库的每周流量和电价来优化年收入。面临的挑战是,在给定系统限制的情况下,要在以现货电价立即释放水和以未知价格存储水以用于以后的发电之间做出决定。我们利用来自北欧电力市场的历史数据,在简化的场景中成功地训练了一个软参与者评论算法。提出的模型尚未准备好替代传统的优化工具,但展示了在水电调度的数据丰富的领域中强化学习的补充潜力。

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