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Energy and reserve scheduling under ambiguity on renewable probability distribution

机译:模糊性下的能源和储备计划可再生概率分布

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This paper presents a novel methodology to devise a least-cost energy and reserve scheduling under uncertainty in renewable energy sources (RES) and equipment outages. The uncertainty in renewable production is accounted for by exogenously simulated scenarios, as customary in stochastic programming, whereas outages of generators and/or transmission lines are addressed via adjustable robust optimization. The precise characterization of the RES output by means of a unique probability distribution is a challenging task. Hence, we provide a general formulation that allows the consideration of a set of "credible" probability distributions. In this manner, the system operator's ambiguity aversion to uncertainty in renewable production is accounted for. Our proposed methodology determines the least-cost energy and reserve scheduling through a three-level model. Structurally, the upper level defines a least-cost scheduling and, under uncertainty in renewable production, the middle level identifies the worst contingency for the given operating point. The lower level then utilizes the scheduling provided by the upper-level to determine the best redispatch. In order to control the system equilibrium, we adapt risk constraint techniques to handle the system imbalance uncertainty and ensure a reliable operating level. To solve the multi-level problem, we propose an algorithm that combines Benders decomposition and column-and constraint generation techniques to approximate the risk measure while scheduling power and reserves. The effectiveness of the proposed model and the importance of considering ambiguity are demonstrated through a case study with real data from the Great Britain power system network. (C) 2018 Elsevier B.V. All rights reserved.
机译:本文提出了一种新颖的方法,可以在可再生能源(RES)和设备中断的不确定性下设计成本最低的能源和储备计划。可再生生产中的不确定性是由随机编程中常见的外生模拟方案解决的,而发电机和/或输电线路的故障则通过可调整的鲁棒优化来解决。通过独特的概率分布来精确表征RES输出是一项艰巨的任务。因此,我们提供了一种通用公式,可以考虑一组“可信”概率分布。以这种方式,考虑了系统操作员对可再生生产中的不确定性的模棱两可的厌恶。我们提出的方法通过三级模型确定了成本最低的能源和储备计划。从结构上讲,上层定义了最低成本的调度,并且在可再生生产的不确定性下,中层确定了给定工作点的最坏意外情况。然后,较低级别利用较高级别提供的调度来确定最佳重新分配。为了控制系统平衡,我们采用风险约束技术来处理系统不平衡不确定性并确保可靠的运行水平。为了解决多级问题,我们提出了一种结合Benders分解和列约束生成技术的算法,以在调度功率和储备时近似风险度量。通过对来自英国电力系统网络的真实数据进行的案例研究,证明了所提出模型的有效性和考虑歧义的重要性。 (C)2018 Elsevier B.V.保留所有权利。

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