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首页> 外文期刊>IEEE Transactions on Power Systems >Data-Based Distributionally Robust Stochastic Optimal Power Flow—Part II: Case Studies
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Data-Based Distributionally Robust Stochastic Optimal Power Flow—Part II: Case Studies

机译:基于数据的分布式稳健随机最优潮流—第二部分:案例研究

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We propose a data-based method to solve a multi-stage stochastic optimal power flow (OPF) problem based on limited information about forecast error distributions. The framework explicitly combines multi-stage feedback policies with any forecasting method and historical forecast error data. The objective is to determine power scheduling policies for controllable devices in a power network to balance operational cost and conditional value-at-risk of device and network constraint violations. These decisions include both nominal power schedules and reserve policies, which specify planned reactions to forecast errors in order to accommodate fluctuating renewable energy sources. Instead of assuming that the uncertainties across the networks follow prescribed probability distributions, we consider ambiguity sets of distributions centered around a finite training dataset. By utilizing the Wasserstein metric to quantify differences between the empirical data-based distribution and the real unknown data-generating distribution, we formulate a multi-stage distributionally robust OPF problem to compute control policies that are robust to both forecast errors and sampling errors inherent in the dataset. Two specific data-based distributionally robust stochastic OPF problems are proposed for distribution networks and transmission systems.
机译:我们提出了一种基于数据的方法来解决基于预测误差分布的有限信息的多阶段随机最优潮流(OPF)问题。该框架明确地将多阶段反馈策略与任何预测方法和历史预测误差数据结合在一起。目的是确定电力网络中可控设备的功率调度策略,以平衡运营成本以及设备和网络约束违规的条件风险值。这些决定包括名义功率计划和储备政策,后者规定了对预测误差的计划反应,以适应波动的可再生能源。与其假设网络中的不确定性遵循规定的概率分布,不如考虑围绕有限训练数据集分布的歧义集。通过使用Wasserstein度量来量化基于经验数据的分布与实际未知数据生成分布之间的差异,我们制定了一个多阶段分布鲁棒的OPF问题,以计算对预测误差和采样固有误差具有鲁棒性的控制策略。数据集。针对配电网络和传输系统,提出了两个基于数据的分布式鲁棒随机OPF问题。

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