Low‐carbon power system operation with disperse carbon capture‐transportation‐utilization chain

Author:

Song Zhenzi1ORCID,Wang Xiuli1,Zhao Tianyang2,Hesamzadeh Mohammad Reza3,Qian Tao4,Huang Jing5,Li Xin6

Affiliation:

1. School of Electrical Engineering Xi'an Jiaotong University Xi'an China

2. Energy and Electricity Research Center Jinan University Guangdong China

3. School of Electrical Engineering and Computer Science KTH Royal Institute of Technology Stockholm Sweden

4. School of Electrical Engineering Southeast University Nanjing China

5. School of Electrical Engineering Sichuan University Chengdu China

6. State Grid Shaanxi Electric Power Company Limited Xi'an China

Abstract

AbstractThe carbon capture‐transportation‐utilization (C‐CTU) chain strengthens the coupling between terminal energy consumption and renewable energy resources (RES), achieving carbon emission reduction in power generation sectors. However, the dynamic operation of the C‐CTU chain and the uncertainties induced by RES output pose new challenges for the low‐carbon operation. To address above challenges, the nonlinear dynamic operation model of C‐CTU chain is first proposed in this study. It is further incorporated into the day‐ahead operation scheme of the electricity‐carbon integrated system considering the stochastic nature of wind power. This scheme is treated as a two‐stage stochastic integer programming (TS‐SIP) problem with a mixed‐integer nonlinear recourse. By means of the polyhedral envelope‐based linearization method, this recourse is reformulated into its linear counterpart. To further improve the computational performance of classical decomposition algorithms, a novel Benders decomposition framework with hybrid cutting plane strategies is proposed to obtain better feasible solutions within a limited time. Simulations are conducted on two power system test cases with the C‐CTU chain. Numerical results indicate that the engagement of C‐CTU chain promotes the low‐carbon economic operation of the power system. Also, the proposed decomposition algorithm shows a superior solution capability to handle large‐scale TS‐SIP than state‐of‐the‐art commercial solvers.

Publisher

Institution of Engineering and Technology (IET)

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