Energy Informatics (Jul 2024)

Multi-source coordinated low-carbon optimal dispatching for interconnected power systems considering carbon capture

  • Jiawen Sun,
  • Dong Hua,
  • Xinfu Song,
  • Mengke Liao,
  • Zhongzhen Li,
  • Shibo Jing

DOI
https://doi.org/10.1186/s42162-024-00367-7
Journal volume & issue
Vol. 7, no. 1
pp. 1 – 18

Abstract

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Abstract The overall electricity consumption of electrolytic aluminum and ferroalloy loads is significant, and some of these loads have dispatch potential that can be used to locally absorb wind power while reducing dependence on conventional thermal power. To characterize the uncertainty of wind power, a fuzzy set of wind power forecasting error probability distribution based on the Wasserstein distance was first established, and the approximate radius of the fuzzy set was corrected under extreme scenarios. By introducing joint chance constraints, the inequalities of uncertain variables were established at the lowest confidence level to improve the reliability of the model. Next, a two-stage distributed robust optimal scheduling model for source-load coordination was developed. In the first stage, wind power forecasting information was fully utilized to schedule the electrolytic aluminum load and optimize unit commitment. In the second stage, the uncertainty of wind power output was considered to schedule the ferroalloy load and optimize unit output. The model was approximately transformed into a mixed-integer linear programming problem and solved using a sequential algorithm. The IEEE 24-bus system was used for case validation. The validation results show that the model can effectively improve wind power absorption capacity, reduce overall operating costs, and achieve a balance between low carbon emissions and robustness.

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