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Data-Based Distributionally Robust Stochastic Optimal Power Flow—Part I: Methodologies

机译:基于数据的分布式稳健随机最优潮流—第一部分:方法

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This is the second part of a two-part paper on data-based distributionally robust stochastic optimal power flow. The general problem formulation and methodology have been presented in Part I (Y. Guo, K. Baker, E. Dall'Anese, Z. Hu, and T.H. Summers, "Data-based distributionally robust stochastic optimal power flow-Part I: Methodologies,"IEEE Trans. Power Syst., 2018.). Here, we present extensive numerical experiments in both distribution and transmission networks to illustrate the effectiveness and flexibility of the proposed methodology for balancing efficiency, constraint violation risk, and out-of-sample performance. On the distribution side, the method mitigates overvoltages due to high photovoltaic penetration using local energy storage devices. On the transmission side, the method reduces N - 1 security line flow constraint risks due to high wind penetration using reserve policies for controllable generators. In both cases, the data-based distributionally robust model-predictive control algorithm explicitly utilizes forecast error training datasets, which can be updated online. The numerical results illustrate inherent tradeoffs between the operational costs, risks of constraints violations, and out-of-sample performance, offering systematic techniques for system operators to balance these objectives.
机译:这是关于基于数据的分布式鲁棒随机最优功率流的两部分论文的第二部分。第一部分(Y. Guo,K。Baker,E。Dall'Anese,Z。Hu和TH Summers,“基于数据的分布式鲁棒随机最优功率流-第一部分:方法,“ IEEE Trans.Power Syst。,2018。”。在这里,我们在配电网和传输网中都进行了广泛的数值实验,以说明所提出的方法在平衡效率,约束违规风险和样本外性能方面的有效性和灵活性。在配电方面,该方法可缓解由于使用本地储能设备而产生的高光伏渗透率引起的过电压。在传输方面,该方法使用可控发电机的备用策略,降低了由于高风速渗透而导致的N-1条安全线路流量约束风险。在这两种情况下,基于数据的分布式鲁棒模型预测控制算法都明确利用了预测误差训练数据集,该数据集可以在线更新。数值结果说明了运营成本,违反约束的风险和样本外性能之间的固有折衷,为系统操作员提供了平衡这些目标的系统技术。

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