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Robust day-ahead scheduling of smart distribution networks considering demand response programs

机译:考虑需求响应程序的智能配电网络的稳健提前调度

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Increasing penetration of variable loads and renewable resources in smart distribution networks brings about great challenges to the conventional scheduling and operation due to the uncertain nature. This paper presents a novel uncertainty handling framework, based on the underlying idea of robust optimization approach, to portray the uncertainties of load demands and wind power productions over uncertainty sets. Accordingly, a tractable min-max-min cost model is proposed to find a robust optimal day-ahead scheduling of smart distribution network immunizing against the worst-case realization of uncertain variables. In addition, considering demand response programs as one of the important resources in the smart distribution network, participation of customers in both energy and reserve scheduling is explicitly formulated. As the proposed min-max-min cost model cannot be solved directly by commercial optimization packages, a decomposition algorithm is presented based on dual cutting planes to decouple the problem into a master problem and a sub-problem. The master problem finds the day-ahead scheduling, while the sub-problem determines the worst-case realization of uncertain variables within uncertainty sets. Computational results for the modified version of IEEE 33-bus distribution test network demonstrate the effectiveness and efficiency of the proposed model. (C) 2016 Elsevier Ltd. All rights reserved.
机译:由于不确定性,不断增加的可变负荷和可再生资源在智能配电网络中的渗透率给常规调度和运行带来了巨大挑战。本文基于鲁棒优化方法的基本思想,提出了一个新颖的不确定性处理框架,以描述不确定性集合上的负荷需求和风力发电的不确定性。因此,提出了一种可处理的最小-最大-最小成本模型,以找到针对不确定变量的最坏情况实现而避免了智能配电网的鲁棒最优提前日调度。此外,将需求响应计划视为智能配电网络中的重要资源之一,明确制定了客户参与能源和储备计划的计划。由于所提出的最小-最大-最小成本模型不能通过商业优化软件包直接求解,因此提出了一种基于双剖切面的分解算法,将问题分解为一个主问题和一个子问题。主问题找到提前调度,而子问题确定不确定性集中不确定性变量的最坏情况实现。 IEEE 33总线配电测试网络的修改版本的计算结果证明了该模型的有效性和效率。 (C)2016 Elsevier Ltd.保留所有权利。

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