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Assessing provincial carbon budgets for residential buildings to advance net-zero ambitions (2503.05795v1)

Published 2 Mar 2025 in physics.soc-ph, econ.GN, and q-fin.EC

Abstract: Assessing provincial carbon budgets for residential building operations is a crucial strategy for advancing China's net-zero ambitions. This study is the first to employ a static-dynamic modeling approach to project future emission trends, particularly carbon peaks, in residential buildings across each province of China up to 2060. An optimized provincial carbon budget assessment scheme for residential buildings, based on the principle of maximizing expected emission reduction potential, is also proposed. Findings show that (1) in the business-as-usual scenario, the emissions for urban and rural residential buildings are projected to peak at 990 (+-0.7) and 450 (+-0.2) mega-tons of CO2 (MtCO2), respectively, with peak years occurring in 2031 (+-4.7) and 2026 (+-2.6). (2) In the decarbonization scenario, peak emissions decrease to 900 MtCO2 and 430 MtCO2 for urban and rural buildings, respectively. (3) The provinces with the highest emission reduction requirements are Henan (16.74 MtCO2), Xinjiang (12.59 MtCO2), Gansu (9.87 MtCO2), Hebei (8.46 MtCO2), and Guangdong (3.37 MtCO2), with Northwest China shouldering the greatest reduction responsibility, totaling 38.14 MtCO2. In conclusion, this study provides a dynamically optimized carbon budget assessment scheme for residential buildings, offering valuable insights for government policy-making and playing a key role in facilitating the low-carbon transition of China's building sector during the pre-2030 planning period, ultimately contributing to the goal of achieving net-zero emissions in the building sector by mid-century.

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