Frontiers in Energy Research (Jan 2024)

Multi-objective optimal scheduling considering low-carbon operation of air conditioner load with dynamic carbon emission factors

  • Xin Shen,
  • Jiahao Li,
  • Yujun Yin,
  • Jianlin Tang,
  • Jianlin Tang,
  • Bin Qian,
  • Bin Qian,
  • Xiaoming Lin,
  • Xiaoming Lin,
  • Zongyi Wang,
  • Zongyi Wang

DOI
https://doi.org/10.3389/fenrg.2024.1360573
Journal volume & issue
Vol. 12

Abstract

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As global temperatures rise and climate change becomes more severely. People realize that air conditioning systems as a controllable resource and play an increasingly important role in reducing carbon emissions. In the past, the operation optimization of air conditioning systems was mainly oriented to user comfort and electricity costs ignoring the long-term impact on the environment. This article aims to establish a multi-objective model of air-conditioning load to ensure user temperature comfort performance and reduce the total cost (i.e., electricity cost and carbon emission cost) simultaneously. Multi Sand Cat Swarm Optimization (MSCSO) algorithm combined with gray target decision-making (GTD) is used to explore optimal solution. Meanwhile four competitive strategies are applied to validate the effectiveness of the proposed method, i.e., genetic algorithm (GA), MSCSO-comfort objective, MSCSO-total electricity cost objective and unoptimization. The simulation results show that the MSCSO-GTD based objective method can significantly reduce total costs while taking into account appropriate indoor temperature comfort.

Keywords