配电网分布不可知随机最优潮流

K. Baker, E. Dall’Anese, T. Summers
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引用次数: 33

摘要

本文概述了一种数据驱动的分布鲁棒性方法来解决配电网中机会约束的交流最优潮流问题。在满足潮流和电压调节约束的前提下,考虑光伏发电系统负荷和发电量的不确定性预测。利用数据驱动的方法开发了机会约束的分布鲁棒保守凸近似;特别地,在线更新预测误差的均值和协方差矩阵,并利用切比舍夫边界实现以预定概率的电压调节。通过将交流潮流方程的精确线性逼近与分布鲁棒机会约束重新表述相结合,使优化问题变得凸化且易于计算。
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Distribution-agnostic stochastic optimal power flow for distribution grids
This paper outlines a data-driven, distributionally robust approach to solve chance-constrained AC optimal power flow problems in distribution networks. Uncertain forecasts for loads and power generated by photovoltaic (PV) systems are considered, with the goal of minimizing PV curtailment while meeting power flow and voltage regulation constraints. A data-driven approach is utilized to develop a distributionally robust conservative convex approximation of the chance-constraints; particularly, the mean and covariance matrix of the forecast errors are updated online, and leveraged to enforce voltage regulation with predetermined probability via Chebyshev-based bounds. By combining an accurate linear approximation of the AC power flow equations with the distributionally robust chance constraint reformulation, the resulting optimization problem becomes convex and computationally tractable.
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