MEIC-global-CO2: a new global CO2 emission inventory with highly-resolved source category and sub-country information

This is a Preprint and has not been peer reviewed. The published version of this Preprint is available: https://doi.org/10.1007/s11430-023-1230-3. This is version 1 of this Preprint.

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Authors

Ruochong Xu, Dan Tong, Qingyang Xiao, Xinying Qin, Cuihong Chen, Liu Yan, Jing Cheng, Can Cui, Hanwen Hu, Wenyu Liu, Xizhe Yan, Huaxuan Wang, Xiaodong Liu, Guannan Geng, Yu Lei, Dabo Guan, Kebin He, Qiang Zhang

Abstract

CO2 emission inventory provides fundamental data for climate research and emission mitigation. Currently, most global CO2 emission inventories were developed with energy statistics from International Energy Agency (IEA) and were available at country level with limited source categories. Here, as the first step toward a high-resolution and dynamic updated global CO2 emission database, we developed a data-driven approach to construct seamless and highly-resolved energy consumption data cubes for 208 countries/territories, 797 sub-country administrative divisions in 29 countries, 42 fuel types, and 52 sectors, with the fusion of activity data from 24 international statistics and 65 regional/local statistics. Global CO2 emissions from fossil fuel combustion and cement production in 1970-2021 were then estimated with highly-resolved source category (1,484 of total) and sub-country information (797 of total). Specifically, 72% of global CO2 emissions in 2021 were estimated with sub-country information, providing considerably improved spatial resolution for global CO2 emission accounting. With the support of detailed information, the dynamics of global CO2 emissions across sectors and fuel types were presented, representing the evolution of global economy and progress of climate mitigation. Remarkable differences of sectoral contribution were found across sub-country administrative divisions within a given country, revealing the uneven distribution of energy and economic structure among different regions. Our estimates were generally consistent with existing databases at aggregated level for global total or large emitters, while large discrepancies were observed for middle and small emitters. Our database, named the Multi-resolution Emission Inventory model for Climate and air pollution research (MEIC) is publicly available through http://meicmodel.org.cn with highly-resolved information and timely update, which provides an independent carbon emission accounting data source for climate research.

DOI

https://doi.org/10.31223/X51T2R

Subjects

Earth Sciences, Environmental Sciences, Physical Sciences and Mathematics

Keywords

CO2 emissions, data-driven approach, highly-resolved source category, sub-country information

Dates

Published: 2023-08-03 07:40

License

CC BY Attribution 4.0 International

Additional Metadata

Conflict of interest statement:
The authors declare that they have no conflict of interest.

Data Availability (Reason not available):
Global CO2 emission data generated from this study are publicly available at: http://meicmodel.org.cn/.