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Sparse Wide-Area Control of Power Systems using Data-driven Reinforcement Learning

机译:使用数据驱动的强化学习的电力系统稀疏广域控制

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In this paper we present an online wide-area oscillation damping control (WAC) design for uncertain models of power systems using ideas from reinforcement learning. We assume that the exact small-signal model of the power system at the onset of a contingency is not known to the operator and use the nominal model and online measurements of the generator states and control inputs to rapidly converge to a state-feedback controller that minimizes a given quadratic energy cost. However, unlike conventional linear quadratic regulators (LQR), we intend our controller to be sparse, so its implementation reduces the communication costs. We, therefore, employ the gradient support pursuit (GraSP) optimization algorithm to impose sparsity constraints on the control gain matrix during learning. The sparse controller is then implemented using distributed communication. The proposed method is validated using the IEEE 39-bus power system model with 1149 unknown parameters.
机译:在本文中,我们使用强化学习的思想,提出了一种用于不确定电力系统模型的在线广域振荡阻尼控制(WAC)设计。我们假设,在意外事故发生时,电力系统的确切小信号模型对于操作员来说是未知的,并且使用标称模型以及发电机状态和控制输入的在线测量值来快速收敛到状态反馈控制器,从而最小化给定的二次能源成本。但是,与传统的线性二次调节器(LQR)不同,我们希望控制器是稀疏的,因此其实现可降低通信成本。因此,我们采用梯度支持追踪(GraSP)优化算法在学习过程中对控制增益矩阵施加稀疏约束。然后使用分布式通信实现稀疏控制器。该方法通过IEEE 39总线电力系统模型和1149个未知参数进行了验证。

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