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Integral Reinforcement Learning-Based Adaptive Optimal Automatic Generation Control

机译:基于整体强化学习的自适应最优自动生成控制

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The growing penetration of renewable energy sources highly increases uncertainties in power systems, posing great challenges to system frequency regulation. Automatic generation control (AGC) serves as an essential frequency regulation approach, which is important to maintain frequency security. In this paper, the AGC is improved by using a novel adaptive optimal control algorithm. The proposed adaptive optimal control method uses policy iteration (PI) algorithm with an actor-critic neural network scheme. Considering the timevarying power system operation state, integral reinforcement learning technique is embedded in the proposed control method, which could provide feasible approach for adaptive optimal control without accurate dynamic models of power systems. An excitation relaxed adaptive law is applied in the critic neural network design to guarantee the learning efficiency. Simulation results validate the effectiveness of the proposed method.
机译:可再生能源的日益增长的渗透率高度提高了电力系统的不确定性,对系统频率调节构成了巨大挑战。 自动生成控制(AGC)用作基本频率调节方法,这对于维持频率安全性很重要。 在本文中,通过使用新型自适应最优控制算法来改善AGC。 所提出的自适应最优控制方法使用具有演员 - 批评神经网络方案的政策迭代(PI)算法。 考虑到时光电力系统操作状态,嵌入了所提出的控制方法中的整体增强学习技术,可以提供适应性最佳控制的可行方法,而无需准确的动力系统的动态模型。 激励放宽的自适应定律应用于评论家神经网络设计,以保证学习效率。 仿真结果验证了所提出的方法的有效性。

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