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Optimization and uncertainty analysis of Co-combustion ratios in a semi-isolated green energy combined cooling, heating, and power system (SIGE-CCHP)

Author

Listed:
  • Ji, Jie
  • Wen, Wenchao
  • Xie, Yingqi
  • Xia, Aoyun
  • Wang, Wenjie
  • Xie, Jinbo
  • Yin, Qingyuan
  • Ma, Mengyu
  • Huang, Hui
  • Huang, Xiaolong
  • Zhang, Chu
  • Wang, Yaodong

Abstract

This study delved into the integration of biomass gas and natural gas within a Combined Cooling, Heating, and Power (CCHP) system. A Semi-Isolated Green Energy CCHP (SIGE-CCHP) model was devised to scrutinize the performance of co-firing equipment across diverse optimization objectives, while manipulating the proportions of natural gas and biomass gas as inputs. Findings revealed that escalating the share of biomass gas led to a reduction in carbon emissions but triggered an escalation in operational and maintenance costs. However, at an optimal mixing ratio of 1:1, carbon emissions exhibited marginal increments, coupled with a substantial decrease in operational and maintenance expenses. Notably, when prioritizing operational and maintenance costs, the system exhibited optimal performance, resulting in a notable 26.76 % cost reduction. Conversely, when prioritizing carbon emissions, the system metamorphosed into a carbon sequestration entity, with a maximal capacity to absorb 2021.86 kg of carbon dioxide. This study furnishes theoretical underpinnings for optimizing the operation of co-firing equipment, augmented by a sensitivity analysis aimed at intuitively elucidating the repercussions of varying mixing ratios on the system.

Suggested Citation

  • Ji, Jie & Wen, Wenchao & Xie, Yingqi & Xia, Aoyun & Wang, Wenjie & Xie, Jinbo & Yin, Qingyuan & Ma, Mengyu & Huang, Hui & Huang, Xiaolong & Zhang, Chu & Wang, Yaodong, 2024. "Optimization and uncertainty analysis of Co-combustion ratios in a semi-isolated green energy combined cooling, heating, and power system (SIGE-CCHP)," Energy, Elsevier, vol. 302(C).
  • Handle: RePEc:eee:energy:v:302:y:2024:i:c:s0360544224015573
    DOI: 10.1016/j.energy.2024.131784
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    References listed on IDEAS

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