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A machine-learning approach to identifying drivers of CO₂ emissions in China's computing power infrastructure

Author

Listed:
  • Li, Pin
  • De, Gejirifu
  • Zhang, Jinsuo
  • Zou, Shaohui
  • Liu, Hong
  • Li, Yaxin

Abstract

Identifying the key determinants of CO₂ emissions from computing power infrastructure (CPI) is essential for designing effective decarbonization pathways. This study develops a three-stage analytical framework—emissions mechanism analysis, driver decomposition, and scenario forecasting—to examine the evolution of CO₂ emissions drivers and the mitigation potential of China's CPI over 2015–2030.Under the policy scenario for 2023–2030, the average annual growth rate of CO₂ emissions declines markedly from 23% during 2015–2023 to approximately 6%, with total emissions projected to reach about 219 Mt. by 2030. Computing scale remains the dominant driver; however, the development pattern shifts from scale-oriented expansion toward a more balanced emphasis on both scale and efficiency. Compared with 2023 levels, the contributions of power usage effectiveness (PUE) and computing energy intensity (CEI) decrease by 1.83% and 1.57%, respectively. In provinces such as Gansu, Xinjiang, Sichuan, Chongqing, Jilin, and Heilongjiang, the contribution of location-related factors declines significantly, supporting the effectiveness of China's “Eastern Data, Western Computing” initiative. As the strategy continues to advance, China is expected to partially mitigate the potential “spatial relocation–scale expansion” trade-off.

Suggested Citation

  • Li, Pin & De, Gejirifu & Zhang, Jinsuo & Zou, Shaohui & Liu, Hong & Li, Yaxin, 2026. "A machine-learning approach to identifying drivers of CO₂ emissions in China's computing power infrastructure," Energy Economics, Elsevier, vol. 158(C).
  • Handle: RePEc:eee:eneeco:v:158:y:2026:i:c:s0140988326002252
    DOI: 10.1016/j.eneco.2026.109346
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