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Spatiotemporal Analysis of Carbon Emissions Based on Night-time Light Data in Western Provinces of China L&E, Vol.32, No.2, 2024

Light & Engineering 32 (2) 2024

Volume 32
Date of publication 04/24/2024
Pages 131–142

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Spatiotemporal Analysis of Carbon Emissions Based on Night-time Light Data in Western Provinces of China L&E, Vol.32, No.2, 2024
Articles authors:
Jun Shi, Xinyu Dai, Guangjiu Chen

Jun Shi, Doctor in Petroleum Engineering Management, Associate Professor. He graduated from the Southwest Petroleum University in 2014 and worked in Southwest Petroleum University. His research interests include Green and Lowcarbon technology

Xinyu Dai, graduated from the Southwest Petroleum University in 2021. Currently, he is the Master student in Logistics Engineering and Management at Southwest Petroleum University from 2021, doing research in low-carbon economy and development

Guangjiu Chen, Doctor of Management, Professor. He graduated from the Southwest Petroleum University in 2011 and worked in Luzhou Vocational & Technical College. His research interests include Education Management and Green Low-carbon

Abstract:
This study focuses on the fusion and calibration of DMSP–OLS and NPP–VIIRS night-time light data, sourced from the National Geophysical Data Centre in the United States. A long-time series night-time light dataset, spanning from 1999 to 2019, for the western provinces of China is created. In conjunction with carbon emission statistics from these 11 western provinces, an estimation model is constructed to analyse the changes in the spatiotemporal pattern of carbon emissions within the region, revealing the characteristics of carbon emissions caused by human night-time economic activities in western China, and provides theoretical reference for the formulation of energy conservation and emission reduction policies. Results show that:
– A strong correlation coefficient of 0.9067 exists between carbon emissions and the total digital number (DN) value of night-time light in the western provinces, with a negligible average relative error, and this result indicates the effectiveness of the estimation model;
– The study reveals an increasing trend in carbon emissions across all 11 provinces from 1999 to 2019, and this growth forms a radial expansion pattern centred around the provincial capitals of Sichuan, Shaanxi, and Inner Mongolia;
– By integrating night-time light images and calculated carbon emissions through the estimation model, a significantly positive spatial correlation of carbon emissions is discernible. This outcome presents as a high carbon agglomeration area in the Inner Mongolia Autonomous Region and a low carbon agglomeration area in Qinghai Province. On the basis of these findings, the study proposes transformation measures to promote low carbon emissions in China’s western provinces. These practical suggestions provide a point of reference for China as it aims to meet its “carbon neutrality” and “peak carbon emissions” targets.
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