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

Q2 Energy Energy Informatics Pub Date : 2024-07-31 DOI:10.1186/s42162-024-00367-7
Jiawen Sun, Dong Hua, Xinfu Song, Mengke Liao, Zhongzhen Li, Shibo Jing
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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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考虑碳捕获的互联电力系统的多源协调低碳优化调度
电解铝和铁合金负荷的总体用电量很大,其中一些负荷具有调度潜力,可用于就地消纳风电,同时减少对常规火电的依赖。为了表征风电的不确定性,首先建立了基于瓦瑟斯坦距离的风电预测误差概率分布模糊集,并修正了极端情况下模糊集的近似半径。通过引入联合机会约束,在最低置信度下建立了不确定变量的不等式,从而提高了模型的可靠性。接下来,建立了一个用于源-负载协调的两阶段分布式鲁棒优化调度模型。在第一阶段,充分利用风电预测信息来调度电解铝负荷并优化机组承诺。在第二阶段,考虑了风电输出的不确定性,以调度铁合金负荷并优化机组输出。该模型被近似转换为混合整数线性规划问题,并使用顺序算法求解。案例验证采用了 IEEE 24 总线系统。验证结果表明,该模型可有效提高风电消纳能力,降低整体运营成本,并在低碳排放和稳健性之间取得平衡。
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来源期刊
Energy Informatics
Energy Informatics Computer Science-Computer Networks and Communications
CiteScore
5.50
自引率
0.00%
发文量
34
审稿时长
5 weeks
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