Abstract

Urban agglomeration is a primary source of global energy consumption and CO2 emissions. It is employed as a major means of modern economic and social activities. Analysis of the temporal and spatial characteristics of CO2 emissions in urban agglomerations and prediction of the future trends of CO2 emissions in urban agglomerations will help in the implementation of CO2 reduction policies within region-wide areas. So, based on that, this study contains four aspects. Firstly, it calculates the energy CO2 emissions of China’s Chengdu-Chongqing urban agglomeration. Secondly, it analyzes the time and space changes in the area by using ArcGIS. Then, the STIRPAT model is used to investigate the factors influencing CO2 emissions, and the elasticity coefficient of the influencing factors is estimated using the ridge regression method, and the important influencing factors are screened on the basis of the estimated results, which are then used as input features for prediction. Finally, a combined prediction model based on the improved GM (1, N) and SVR models is constructed, and then the optimal solution is found through the particle swarm optimization algorithm. It sets up different CO2 emission scenarios to predict the energy CO2 emission of the region and its cities. The results show that, first, the CO2 emissions of the Chengdu-Chongqing urban agglomeration have accumulated year by year, but by 2030, as predicted, it will not reach its peak. The spatial layout of CO2 emissions in this region is not expected to undergo major changes by 2030. Second, population, GDP, gas and electricity consumption, and industrial structure have served as important factors affecting energy CO2 emissions in the region. Third, on the basis of the prediction results for different scenarios, the CO2 emissions in the baseline scenario are low in the short term, but the CO2 emissions in the low-carbon scenario are low in the long run. This study also puts forward some policy recommendations on how to reduce CO2 emissions.

Highlights

  • CO2 emissions are considered to be the main cause of global warming [1].Global warming tends to cause a variety of natural disasters, such as a sharp decline in biodiversity, extreme weather, food production loss, and an increase in infectious diseases and other disasters

  • To cope with the challenges of climate change and relieve the pressure on CO2 emissions at home and abroad, China has formulated and adopted a series of CO2 reduction measures in a responsible manner to turn the challenges of climate change into opportunities for lowcarbon transition

  • Spatial-Temporal Characteristics of Energy CO2 Emissions Based on ArcGIS

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Summary

Introduction

Global warming tends to cause a variety of natural disasters, such as a sharp decline in biodiversity, extreme weather, food production loss, and an increase in infectious diseases and other disasters. The environmental problems caused by global warming are receiving a lot of attention from different countries around the world. China is the world’s largest emitter of CO2 , and its emissions have been growing rapidly over the last few decades [2]. To cope with the challenges of climate change and relieve the pressure on CO2 emissions at home and abroad, China has formulated and adopted a series of CO2 reduction measures in a responsible manner to turn the challenges of climate change into opportunities for lowcarbon transition. In 2014, the corresponding leaders of China and the United States issued

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