In this paper, we develop a distributionally robust chance-constrained formulation of the Optimal Power Flow problem (OPF) whereby the system operator can leverage contextual information. For this purpose, we exploit an ambiguity set based on probability trimmings and optimal transport through which the dispatch solution is protected against the incomplete knowledge of the relationship between the OPF uncertainties and the context that is conveyed by a sample of their joint probability distribution. We provide an exact reformulation of the proposed distributionally robust chance-constrained OPF problem under the popular conditional-value-at-risk approximation. By way of numerical experiments run on a modified IEEE-118 bus network with wind uncertainty, we show how the power system can substantially benefit from taking into account the well-known statistical dependence between the point forecast of wind power outputs and its associated prediction error. Furthermore, the experiments conducted also reveal that the distributional robustness conferred on the OPF solution by our probability-trimmings-based approach is superior to that bestowed by alternative approaches in terms of expected cost and system reliability.
翻译:在本文中,我们为最佳电力流通问题(OPF)制定了一种分配上稳健且受机会限制的配方,使系统操作员能够利用背景信息。为此,我们利用基于概率计数和最佳运输的模糊性,保护发货解决方案,防止对OPF不确定因素之间的关系及其共同概率分布样本所传达的背景的不完全了解。我们精确地重拟了在广受欢迎的有条件价值风险近似下拟议的分配上稳健且受机会限制的 OPF问题。通过在经过修改的IEEE-118型公共汽车网络上进行有风能不确定性的数字实验,我们展示了电力系统如何从考虑到风能输出点预测及其相关预测误差之间众所周知的统计依赖性中获益。此外,所进行的实验还表明,我们基于概率三重的方法赋予OPF的配方解决办法的分布上的稳性强性优于在预期成本和系统可靠性方面由替代方法带来的优势。