基于数据驱动的分布式鲁棒优化的可再生能源能源储备调度

Zhichao Shi, Hao Liang, V. Dinavahi
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引用次数: 0

摘要

随着风力发电等可再生能源在现代电力系统中的日益普及,对电力系统运行的可靠性和经济性提出了许多新的挑战。本文研究了一种具有不确定风电功率的两阶段数据驱动分布式鲁棒(DR)能源和储备调度问题。与一般基于矩的模糊集不同,我们设计了一种新的基于距离的模糊集来描述风电的不确定概率分布,该模糊集可以从历史数据中以数据驱动的方式构建。基于这个新的模糊集,将问题的第二阶段最坏情况期望重新表述为条件风险值(CVaR)和相对于参考分布的期望成本的组合。因此,所提出的两阶段DR模型成为一个易于求解的两阶段随机优化问题。以IEEE 6总线测试系统和改进的IEEE 118总线测试系统为例,验证了所提方法的有效性。仿真结果表明,数据在控制问题的保守性方面具有重要的作用,当数据量趋于无穷时,DR问题收敛为具有固定分布的随机问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Energy and Reserve Dispatch with Renewable Generation Using Data-Driven Distributionally Robust Optimization
With the increasing penetration of renewable generation such as wind power in modern power systems, there are many new challenges arising in power system operation with respect to reliability and economy. In this work, we study a two-stage data-driven distributionally robust (DR) energy and reserve dispatch problem with uncertain wind power. Different from the general moment-based ambiguity set, we design a new distance-based ambiguity set to describe the uncertain probability distribution of wind power, which can be constructed in a data-driven manner from historical data. Base on this new ambiguity set, the second-stage worst-case expectation of the problem is reformulated to a combination of conditional value-at-risk (CVaR) and an expected cost with respect to a reference distribution. Thus, the proposed two-stage DR model becomes a two-stage stochastic optimization problem which can be readily solved. Case studies are carried out to verify the effectiveness of the proposed method based on the IEEE 6-bus test system and modified IEEE 118-bus test system. Simulation results show the value of data in controlling the conservatism of the problem, and the DR problem converges to the stochastic problem with fixed distribution as the data size goes to infinity.
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