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Robust unit commitment with security criteria

机译:具有安全标准的强大单位承诺

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The short-term unit commitment and reserve scheduling decisions are made in the face of increasing supply-side uncertainty in power systems. This has mainly been caused by a higher penetration of renewable energy generation that is encouraged and enforced by the market and policy makers. In this paper, we propose a two-stage stochastic and distributionally robust modeling framework for the unit commitment problem with supply uncertainty. Based on the availability of the information on the distribution of the random supply, we consider two specific models: (a) a moment model where the mean values of the random supply variables are known, and (b) a mixture distribution model where the true probability distribution lies within the convex hull of a finite set of known distributions. In each case, we reformulate these models through Lagrange dualization as a semi-infinite program in the former case and a one-stage stochastic program in the latter case. We solve the reformulated models using sampling method and sample average approximation, respectively. We also establish exponential rate of convergence of the optimal value when the randomization scheme is applied to discretize the semi-infinite constraints. The proposed robust unit commitment models are applied to an illustrative case study, and numerical test results are reported in comparison with the two-stage non-robust stochastic programming model.
机译:面对电力系统中供应侧不确定性不断增加的情况,可以做出短期机组承诺和备用计划的决策。这主要是由于市场和政策制定者的鼓励和实施而使可再生能源发电的普及率更高。在本文中,我们为具有供应不确定性的单位承诺问题提出了一个两阶段的随机分布鲁棒建模框架。根据有关随机供给分布的信息的可用性,我们考虑两个特定模型:(a)已知随机供给变量均值的矩模型,以及(b)真实供给为真的混合分布模型概率分布位于一组已知分布的凸包内。在每种情况下,我们都通过拉格朗日对偶将这些模型重新构造为前一种情况的半无限程序和后一种情况的一阶段随机程序。我们分别使用抽样方法和样本平均逼近法来求解重构后的模型。当随机化方案离散化半无限约束时,我们还建立了最优值的指数收敛速度。所提出的鲁棒单元承诺模型被应用于一个示例性案例研究,并且与两阶段非鲁棒随机规划模型进行了比较,并报告了数值测试结果。

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