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An advanced real-time dispatching strategy for a distributed energy system based on the reinforcement learning algorithm

机译:基于钢筋学习算法的分布式能源系统的高级实时调度策略

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A desirable dispatching strategy is essentially important for securely and economically operating of wind-thermal hybrid distribution systems. Existing dispatch strategies usually assume that wind power has priority of injection. For real-time control, such strategies are simple and easy to realize, but they lack flexibility and incur higher operation and maintenance (O&M) costs. This study analyzed the power dispatching process as a dynamic sequential control problem and established a Markov decision process model to explore the optimal coordinated dispatch strategy for coping with wind and demand distur-bance. As a salient feature, the improved dispatch strategy minimizes the long-run expected operation and maintenance costs. To evaluate the model efficiently, a Monte Carlo method and the Q-learning algorithm were employed to the growing computational cost over the state space. Through a specified numerical case, we demonstrated the properties of the coordinated dispatch strategy and used it to address a 24-h real-time dispatching problem. The proposed algorithm shows high efficiency in solving real-time dispatching problems. (c) 2021 Elsevier Ltd. All rights reserved.
机译:理想的调度策略本质上是对风热混合分配系统安全和经济地操作的重要性。现有的派遣策略通常假设风力有优先注射。为了实时控制,这种策略简单易于实现,但它们缺乏灵活性和促使更高的操作和维护(O&M)成本。本研究分析了电力调度过程作为动态顺序控制问题,并建立了马尔可夫决策过程模型,以探索应对风和需求的最佳协调调度策略。作为突出特征,改善的调度策略最小化了长期预期的操作和维护成本。为了有效地评估模型,将蒙特卡罗方法和Q学习算法用于在状态空间上越来越多的计算成本。通过指定的数字案例,我们展示了协调调度策略的属性,并使用它来解决24-H实时调度问题。该算法在解决实时调度问题方面表现出高效率。 (c)2021 elestvier有限公司保留所有权利。

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