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首页> 外文期刊>International Journal Of Modelling & Simulation >Reinforcement learning control approach for autonomous microgrids
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Reinforcement learning control approach for autonomous microgrids

机译:自主微电网的加固学习控制方法

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The increasing penetration of the renewable energy systems into the main power grids has raised concerns about robustness of the existing control mechanisms. An adaptive learning approach is proposed to regulate the output voltage of an autonomous distributed generation source. This controller solves the optimal control problem for that generation source by finding a recursive solution for the underlying Bellman optimality equation. A value iteration algorithm is introduced in order to find the optimal control strategy in a dynamic learning environment. Means of adaptive critics are employed to implement the solution without knowing the drift dynamics of the microgrid. The developed controller is shown to be robust against different power system disturbances and exhibited competitive behavior when compared to a standard Riccati control approach subject to uncertain dynamical environment.
机译:可再生能源系统进入主要电网的普遍普及提出了对现有控制机制的鲁棒性的担忧。提出了一种自适应学习方法来调节自主分布式生成源的输出电压。该控制器通过为底层Bellman Optimaly方程找到递归解决来解决该生成源的最佳控制问题。介绍了一个值迭代算法,以便在动态学习环境中找到最佳控制策略。使用自适应批评方法来实现解决方案而不知道微电网的漂移动态。与标准的Riccati控制方法相比,显影的控制器对不同的电力系统扰动具有稳健性,并表现出具有不确定动力环境的标准Riccati控制方法。

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