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An Adaptive Distributionally Robust Model for Three-Phase Distribution Network Reconfiguration

机译:三相分布网络重新配置的自适应分布鲁棒模型

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摘要

Distributed generator (DG) volatility has a great impact on system operation, which should be considered beforehand due to the slow time scale of distribution network reconfiguration (DNR). However, it is difficult to derive accurate probability distributions (PDs) for DG outputs and loads analytically. To remove the assumptions on accurate PD knowledge, a deep neural network is first devised to learn the reference joint PD from historical data in an adaptive way. The reference PD along with the forecast errors are enveloped by a distributional ambiguity set using Kullback-Leibler divergence. Then a distributionally robust model for three-phase unbalanced DNR is proposed to obtain the optimal configuration under the worst-case PD of DG outputs and loads within the ambiguity set. The result inherits the advantages of stochastic optimization and robust optimization. Finally, a modified column-and-constraint generation method with efficient scenario decomposition is investigated to solve this model. Numerical tests are carried out using an IEEE unbalanced benchmark and a practical-scale system in Shandong, China. Comparison with the deterministic, stochastic and robust DNR methods validates the effectiveness of the proposed method.
机译:分布式发电机(DG)波动对系统操作产生了很大的影响,由于分发网络重新配置(DNR)的慢速规模,因此应该预先考虑。但是,难以分析DG输出和加载的准确概率分布(PDS)。为了消除准确的PD知识的假设,首先设计深度神经网络,以以自适应方式从历史数据中学习参考关节PD。参考PD以及预测误差由使用Kullback-Leibler发散的分布模糊设定包围。然后,提出了一种用于三相不平衡DNR的分布鲁棒模型,以在DG输出的最坏情况下获得最佳配置,并在模糊集中的负载。结果继承了随机优化和鲁棒优化的优势。最后,研究了具有有效场景分解的修改的列和约束生成方法来解决该模型。使用IEEE不平衡基准和中国山东的实际规模系统进行了数值测试。与确定性,随机和强大的DNR方法的比较验证了所提出的方法的有效性。

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