RESEARCH FRAMEWORK AND PROSPECT OF SYSTEM ELECTRICITY-CARBON COUPLING OPERATION DECISION-MAKING CONSIDERING PHOTOVOLTAIC POWER GENERATION CLUSTER

Zhou Honglian, Liao Mengke, Maimaiti Aili·Wupuer, Cui Yong, Zheng Jian, Wu Wenying

Acta Energiae Solaris Sinica ›› 2026, Vol. 47 ›› Issue (2) : 30-39.

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Acta Energiae Solaris Sinica ›› 2026, Vol. 47 ›› Issue (2) : 30-39. DOI: 10.19912/j.0254-0096.tynxb.2024-1717

RESEARCH FRAMEWORK AND PROSPECT OF SYSTEM ELECTRICITY-CARBON COUPLING OPERATION DECISION-MAKING CONSIDERING PHOTOVOLTAIC POWER GENERATION CLUSTER

  • Zhou Honglian1, Liao Mengke1, Maimaiti Aili·Wupuer1, Cui Yong2,3, Zheng Jian3, Wu Wenying2
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Abstract

In the context of constructing a new-type power system dominated by renewable energy, this study introduces an electricity-carbon coupling operational decision-making mechanism for photovoltaic power generation clusters. The goal is to fully utilize the potential of large-scale grid-connected photovoltaic power generation in supporting energy conservation and carbon reduction, while also enhancing the operational efficiency of power systems through the unified management of photovoltaic power stations. The design and theoretical analysis are concentrated on three key aspects: 1) Photovoltaic cluster partitioning methods that consider electricity-carbon indicators; 2) The construction of a critical path analysis model for the impact of photovoltaic clusters on system electricity-carbon indicators; 3) The establishment of an efficiency decision-making framework for electricity-carbon coupling operations within photovoltaic cluster models. Finally, the paper outlines future research priorities. The proposed approach establishes a foundation for analyzing how photovoltaic clusters can support low-carbon operational efficiency, provides analytical methods to clarify carbon emission responsibilities across operational stages and identify management weaknesses, and offers a reference for system operation mode adjustments and low-carbon dispatch decision-making.

Key words

PV power generation / clusters / electricity-carbon coupling / low-carbon dispatching / collaborative optimization

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Zhou Honglian, Liao Mengke, Maimaiti Aili·Wupuer, Cui Yong, Zheng Jian, Wu Wenying. RESEARCH FRAMEWORK AND PROSPECT OF SYSTEM ELECTRICITY-CARBON COUPLING OPERATION DECISION-MAKING CONSIDERING PHOTOVOLTAIC POWER GENERATION CLUSTER[J]. Acta Energiae Solaris Sinica. 2026, 47(2): 30-39 https://doi.org/10.19912/j.0254-0096.tynxb.2024-1717

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