电压降
强化学习
控制理论(社会学)
李雅普诺夫函数
计算机科学
自动频率控制
控制器(灌溉)
控制工程
杠杆(统计)
人工神经网络
逆变器
网格
非线性系统
工程类
控制(管理)
人工智能
电压调节器
电信
数学
物理
量子力学
农学
几何学
电气工程
电压
生物
作者
Wenqi Cui,Jianhu Yan,Baosen Zhang
标识
DOI:10.1109/tpwrs.2022.3176525
摘要
As more inverter-connected renewable resources are integrated into the grid, frequency stability may degrade because of the reduction in mechanical inertia and damping. A common approach to mitigate this degradation in performance is to use the power electronic interfaces of the renewable resources for primary frequency control. Since inverter-connected resources can realize almost arbitrary responses to frequency changes, they are not limited to reproducing the linear droop behaviors. To fully leverage their capabilities, reinforcement learning (RL) has emerged as a popular method to design nonlinear controllers to optimize a host of objective functions. Because both inverter-connected resources and synchronous generators would be a significant part of the grid in the near and intermediate future, the learned controller of the former should be stabilizing with respect to the nonlinear dynamics of the latter. To overcome this challenge, we explicitly engineer the structure of neural network-based controllers such that they guarantee system stability by construction, through the use of a Lyapunov function. A recurrent neural network architecture is used to efficiently train the controllers. The resulting controllers only use local information and outperform optimal linear droop as well as other state-of-the-art learning approaches.
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