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Library Spatiotemporal Analysis of Land Use Patterns on Carbon Emissions in China

Spatiotemporal Analysis of Land Use Patterns on Carbon Emissions in China

Spatiotemporal Analysis of Land Use Patterns on Carbon Emissions in China
Volume 10 Issue 2

Resource information

Date of publication
February 2021
Resource Language
ISBN / Resource ID
10.3390/land10020141
License of the resource

Nowadays, China is the world’s second largest economy and largest carbon emitter. This paper calculates the carbon emission intensity and the carbon emissions per capita of land use in 30 provinces at the national level in China from 2006 to 2016. A spatial correlation model is used to explore its spatiotemporal features. The results show that (1) China’s land use carbon emissions continued to grow from 2006 to 2016. The spatial heterogeneity of carbon emission intensity of land use initially decreased and then increased during this period. The carbon emission of land use pattern reached a peak in 2015 and the land use carbon emission intensity was relatively lower in east China; (2) southern China accounts for a majority of the total Chinese carbon sink. Better economic structure, land use structure and industrial structure will lead to lower carbon emission intensity of land use; (3) carbon emissions per capita of land use in China are affected not only by land development intensity, urbanization level, and energy consumption structure, but also by the population policy. It is significant to formulate differentiated energy and land use policies according to local conditions. This study not only provides a scientific basis for formulating different carbon emission mitigation policies for the local governments in China, but also provides theoretical reference for other developing countries for sustainable development. It contributes to the better understanding of the land use patterns on carbon emissions in China.

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Authors and Publishers

Author(s), editor(s), contributor(s)

Lin, Qiaowen
Zhang, Lu
Qiu, Bingkui
Zhao, Yi
Wei, Chao

Publisher(s)
Data Provider
Geographical focus