4.7 Article

An empirical analysis on spatial correlation investigation of industrial carbon emissions using SNA-ICE model

Journal

ENERGY
Volume 224, Issue -, Pages -

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.energy.2021.120183

Keywords

Industrial carbon emissions; Social network analysis; Spatial correlation network; Degree of openness

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The study combines a modified gravity model with Social Network Analysis to investigate China's provincial Industrial Carbon Emissions from 2004 to 2017. It identifies complex spatial correlations and regional blocks in the spatial correlation network, highlighting factors such as spatial adjacency relations, innovation intensity, and degree of openness as key influences. The research contributes to the development of a collaborative carbon emission reduction mechanism for policy making and provincial green development in developing countries.
The modified gravity model is combined with Social Network Analysis (SNA) in this work and used to investigate 2004e2017 provincial Industrial Carbon Emissions (ICE) of China. Specifically, by constructing spatial correlation network, the main contribution is here finding out its influencing factors with the help of Quality Assurance Procedure (QAP) of SNA. Results of case study are as follows. (1) The complex spatial correlations exist in the stable overall network structure for ICE of China's 30 provinces. (2) The obtained spatial correlation network (2017) in which Guangdong, Shandong, Henan, Hubei and Xinjiang are central can be divided into four regional blocks (from which spatial correlation effect is exhibited for entire 30 selected provinces and spatial spillover effect is revealed for several resourceful western provinces). (3) Spatial adjacency relations, innovation intensity and degree of openness (which can significantly enhance the degree of spatial correlation) are the prominent influencing factors for the proposed spatial correlation network. The major achievement is that the spatial correlations of carbon emissions of industry of China are contribute to creative construction of a collaborative carbon emission reduction mechanism for policy making and provincial green development of the developing countries . (c) 2021 Elsevier Ltd. All rights reserved.

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