| Literature DB >> 34593825 |
Xi Tian1,2,3, Yiwei Liu3, Ming Xu4,5, Sai Liang6, Yaobin Liu1,3.
Abstract
Environmental footprint analyses for China have gained sustained attention in the literature, which rely on quality EEIO databases based on benchmark input-output (IO) tables. The Chinese environmentally extended input-output (CEEIO) database series provide publically available EEIO databases for China for 1992, 1997, 2002, 2007, and 2012 with consistent and transparent data sources and database structure. Based on the latest benchmark IO tables for China for 2017 and 2018, here we develop the corresponding 2017 and 2018 CEEIO databases following the same method used to develop previous CEEIO databases. The 2017 and 2018 CEEIO databases cover 44 and 28 types of environmental pressures, respectively, and consider multiple sector classifications including ones consistent with previous CEEIO databases and ones following the 2017 China's national economy industry classification standard. A notable improvement in the 2017 and 2018 CEEIO databases is the comprehensive inclusion of CO2 emissions from additional industrial processes. This work provides a consistent update of the CEEIO database and enables a wide range of timely environmental footprint analyses related to China.Entities:
Year: 2021 PMID: 34593825 PMCID: PMC8484342 DOI: 10.1038/s41597-021-01035-1
Source DB: PubMed Journal: Sci Data ISSN: 2052-4463 Impact factor: 6.444
Fig. 1Process of developing the 2017 CEEIO database. The part in green shows the first step of constructing the 2017 CEEIO database where we account the sectoral emission of 44 types of environmental pressure. The blue area shows how we develop the 49-sector 2017 CEEIO database. The orange part shows the construction process of the CEEIO database of different sector classifications.
Fig. 2Sectoral share of the 28 environmental pressures in 2017.
Fig. 3GHG and NOx intensities of top 10 sectors in the 2012 and 2017 CEEIO databases. (a) total intensity in CO2, (b) total intensity in CH4, (c) total intensity in N2O, (d) total intensity in NOx.
The coefficient of variation of the data used to estimate HTES emissions.
| Categories | Parameter description | coefficient of variation |
|---|---|---|
| Coal consumption | power plant | 5% |
| Industrial sectors | 5% | |
| Residential sectors | 14% | |
| Other sectors | 16% | |
| Liquid fuel combustion | Liquid fuel consumption | 5% |
| Emission factors | 25% | |
| Nonferrous metal smelting | Nonferrous metal production | 5% |
| Non-metallic minerals manufacturing | Output of Cement/glass/brick | 20% |
| emission factors (cement, glass) | 25% | |
| emission factors (brick) | 30% | |
| Ferrous metal smelting | Pig iron and steel yield | 15% |
Fig. 4The 97.5% confidence intervals of the emission of 13 environmental pressures.
Fig. 5CO2 emissions of each sector of China in 2017 in our database.
Fig. 6Kendall correlation coefficients of the CO2 emissions from each sector between the 2017 CEEIO database and Shan et al. (p < 2.2 × 10−22).
| Measurement(s) | environmental pressure |
| Technology Type(s) | digital curation |
| Sample Characteristic - Location | China |