Data-driven distributionally robust optimization approach for the coordinated dispatching of the power system considering the correlation of wind power

Hengzhen Wang,Zhongkai Yi,Ying Xu, Qinqin Cai,Zhimin Li, Hongwei Wang, Xuechen Bai

ELECTRIC POWER SYSTEMS RESEARCH(2024)

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摘要
With the increasing penetration of large-scale wind power into the power grid, it is crucial to develop a precise model to accurately depict the stochasticity and correlation among wind farm outputs, which is highly important for ensuring the safe and efficient utilization of wind energy in grid dispatching. In this article, a data-driven distributionally robust optimization (DDRO) dispatching approach that accounts for spatial correlations among outputs from multiple wind farms is proposed. The proposed approach is applied to a source-networkload-storage grid system to ascertain unit start-stop schedules and resource allocation effectively. First, a truncated spatial correlation model is proposed, enabling a comprehensive representation of spatial correlations and output constraints between distinct wind farms. Second, the ISODATA clustering algorithm is employed to generate typical scenarios, reduce model complexity, and expedite the computation process. Third, a unit commitment model considering the demand response is constructed and solved using the DDRO approach. Finally, the proposed model is applied to the IEEE 30-bus system to test its robustness and cost-effectiveness compared to the traditional robust optimization model. Additionally, it is applied to the IEEE 118-bus system to demonstrate its scalability and stability.
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关键词
Optimal dispatch,Data -driven distributionally robust,optimization,Truncated spatial correlation,Typical scenario generation
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