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A Deep Reinforcement Learning Based Energy Storage System Control Method for Wind farm Integrating Prediction and Decision

机译:基于深度强化学习的风电场集成预测与决策的储能系统控制方法

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In electricity market, the wind power producers face the challenge that how to maximize their income with the uncertainty of wind power. This paper proposes an integrated scheduling mode that integrates the wind power prediction and the energy storage system (ESS) decision making, avoiding the loss of decision-making information in the wind power prediction. Secondly, deep Q network, a deep reinforcement learning (DRL) algorithm, is introduced to construct the end-to-end ESS controller. The uncertainty of wind power is automatically considered during the DRL-based optimization, without any assumption. Finally, the superiority of the proposed method is verified through the analysis of the case wind farm located in Jiangsu Province.
机译:在电力市场中,风电生产商面临的挑战是如何在风电不确定性的情况下最大化其收入。本文提出了一种将风电预测与储能系统决策相结合的集成调度模式,避免了风电预测中决策信息的丢失。其次,引入了深度Q网络,即深度强化学习(DRL)算法,以构建端到端ESS控制器。在基于DRL的优化过程中会自动考虑风电的不确定性,而无需任何假设。最后,通过对江苏省案例风电场的分析,验证了该方法的优越性。

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