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Data-Adaptive Robust Optimization Method for the Economic Dispatch of Active Distribution Networks

机译:主动配电网经济调度的数据自适应鲁棒优化方法

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Due to the restricted mathematical description of the uncertainty set, the current two-stage robust optimization is usually over-conservative which has drawn concerns from power system operators. This paper proposes a novel data-adaptive robust optimization method for the economic dispatch of active distribution network with renewables. The scenario-generation method and two-stage robust optimization arc combined into the proposed method. To reduce the conservativeness, a few extreme scenarios selected from historical data are used to replace the conventional uncertainty set. The proposed extreme-scenario selection algorithm takes advantage of considering the correlations and can be adaptive to different historical data sets. A theoretical proof is given that the constraints will be satisfied under all possible scenarios if they hold in the selected extreme scenarios, which guarantees the robustness of the decision. Numerical results demonstrate that the proposed data-adaptive robust optimization algorithm with the selected uncertainty set is less conservative but equally as robust as the existing two-stage robust optimization approaches. This leads to the improved economy of the decision with uncompromised security.
机译:由于不确定性集的数学描述受到限制,当前的两阶段鲁棒性优化通常过于保守,这引起了电力系统运营商的关注。提出了一种针对可再生能源的主动配电网经济调度的数据自适应鲁棒优化方法。方案生成方法和两阶段鲁棒优化方法相结合。为了降低保守性,从历史数据中选择了一些极端情况来代替常规不确定性集。所提出的极端场景选择算法利用了考虑相关性的优势,并且可以适应不同的历史数据集。给出了理论上的证明,即如果约束处于选定的极端情况下,则在所有可能的情况下都将满足约束条件,从而保证了决策的鲁棒性。数值结果表明,所提出的具有所选不确定性集的数据自适应鲁棒优化算法较不保守,但与现有的两阶段鲁棒优化方法一样鲁棒。这样可以在不降低安全性的情况下提高决策的经济性。

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