A computational efficient approach for distributionally robust unit commitment with enhanced disjointed layered ambiguity set

Author:

Lian Yicheng1ORCID,Li Yuanzheng1ORCID,Zhao Yong1,Li Yang2ORCID,Liu Zhiwei1ORCID,Wang Jianxiao3ORCID

Affiliation:

1. School of Artificial Intelligence and Automation Huazhong University of Science and Technology Wuhan People's Republic of China

2. School of Electrical Engineering Northeast Electric Power University Jilin People's Republic of China

3. National Engineering Laboratory for Big Data Analysis and Applications Peking University Beijing People's Republic of China

Abstract

AbstractTo achieve the sustainable development of the society, renewable energy dominated power systems are gradually formed. However, the uncertainty of renewable power poses challenges for power system operations, such as balancing the load and generation in day‐ahead unit commitment problems. To address this issue, an enhanced disjointed layered ambiguity set is proposed in this paper to effectively capture the uncertainty of renewable generation forecast errors. On this basis, a two‐stage distributionally robust unit commitment optimization problem is formulated, which is computational challenge. To this end, a novel reformation approach and a worst‐case support set identification method are proposed to derive the optimal solution in a computationally efficient way. Simulation results demonstrate that the proposed ambiguity set brings lower operation costs of unit commitment while maintaining similar reliability compared to existing methods. In detail, the proposed ambiguity set achieves a reduction in operating costs of approximately 10.01%. The proposed novel reformation approach and solution method are also shown to have higher computation efficiency than the existing Benders decomposition method, resulting in a reduction in computation time to less than 3.78% of the original duration.

Publisher

Institution of Engineering and Technology (IET)

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