Analysis and prediction of the temporal and spatial evolution of carbon emissions in China’s eight economic regions

Facing increasingly severe environmental problems, as the largest developing country, achieving regional carbon emission reduction is the performance of China’s fulfillment of the responsibility of a big government and the key to the smooth realization of the global carbon emission reduction goal. S...

Full description

Bibliographic Details
Main Authors: Zhen Yu, Yuan Zhang, Juan Zhang, Wenjie Zhang
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2022-01-01
Series:PLoS ONE
Online Access:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9714916/?tool=EBI
_version_ 1811297796663279616
author Zhen Yu
Yuan Zhang
Juan Zhang
Wenjie Zhang
author_facet Zhen Yu
Yuan Zhang
Juan Zhang
Wenjie Zhang
author_sort Zhen Yu
collection DOAJ
description Facing increasingly severe environmental problems, as the largest developing country, achieving regional carbon emission reduction is the performance of China’s fulfillment of the responsibility of a big government and the key to the smooth realization of the global carbon emission reduction goal. Since China’s carbon emission data is updated slowly, in order to better formulate the corresponding emission reduction strategy, it is necessary to propose a more accurate carbon emission prediction model on the basis of fully analyzing the characteristics of carbon emissions at the provincial and regional levels. Given this, this paper first calculated the carbon emissions of eight economic regions in China from 2005 to 2019 according to relevant statistical data. Secondly, with the help of kernel density function, Theil index and decoupling index, the dynamic evolution characteristics of regional carbon emissions are discussed. Finally, an improved particle swarm optimization radial basis function (IPSO-RBF) neural network model is established to compare the simulation and prediction models of China’s carbon emissions. The results show significant differences in carbon emissions in different regions, and the differences between high-value and low-value areas show an apparent expansion trend. The inter-regional carbon emission difference is the main factor in the overall carbon emission difference. The economic region in the middle Yellow River (ERMRYR) has the most considerable contribution to the national carbon emission difference, and the main contributors affecting the overall carbon emission difference in different regions are different. The number of regions with strong decoupling between carbon emissions and economic development is increasing in time series. The results of the carbon emission prediction model can be seen that IPSO-RBF neural network model optimizes the radial basis function (RBF) neural network, making the prediction result in a minor error and higher accuracy. Therefore, when exploring the path of carbon emission reduction in different regions in the future, the IPSO-RBF neural network model is more suitable for predicting carbon emissions and other relevant indicators, laying a foundation for putting forward more scientific and practical emission reduction plans.
first_indexed 2024-04-13T06:10:28Z
format Article
id doaj.art-20043a9288404ec4a1d281d7a8d62c8b
institution Directory Open Access Journal
issn 1932-6203
language English
last_indexed 2024-04-13T06:10:28Z
publishDate 2022-01-01
publisher Public Library of Science (PLoS)
record_format Article
series PLoS ONE
spelling doaj.art-20043a9288404ec4a1d281d7a8d62c8b2022-12-22T02:59:05ZengPublic Library of Science (PLoS)PLoS ONE1932-62032022-01-011712Analysis and prediction of the temporal and spatial evolution of carbon emissions in China’s eight economic regionsZhen YuYuan ZhangJuan ZhangWenjie ZhangFacing increasingly severe environmental problems, as the largest developing country, achieving regional carbon emission reduction is the performance of China’s fulfillment of the responsibility of a big government and the key to the smooth realization of the global carbon emission reduction goal. Since China’s carbon emission data is updated slowly, in order to better formulate the corresponding emission reduction strategy, it is necessary to propose a more accurate carbon emission prediction model on the basis of fully analyzing the characteristics of carbon emissions at the provincial and regional levels. Given this, this paper first calculated the carbon emissions of eight economic regions in China from 2005 to 2019 according to relevant statistical data. Secondly, with the help of kernel density function, Theil index and decoupling index, the dynamic evolution characteristics of regional carbon emissions are discussed. Finally, an improved particle swarm optimization radial basis function (IPSO-RBF) neural network model is established to compare the simulation and prediction models of China’s carbon emissions. The results show significant differences in carbon emissions in different regions, and the differences between high-value and low-value areas show an apparent expansion trend. The inter-regional carbon emission difference is the main factor in the overall carbon emission difference. The economic region in the middle Yellow River (ERMRYR) has the most considerable contribution to the national carbon emission difference, and the main contributors affecting the overall carbon emission difference in different regions are different. The number of regions with strong decoupling between carbon emissions and economic development is increasing in time series. The results of the carbon emission prediction model can be seen that IPSO-RBF neural network model optimizes the radial basis function (RBF) neural network, making the prediction result in a minor error and higher accuracy. Therefore, when exploring the path of carbon emission reduction in different regions in the future, the IPSO-RBF neural network model is more suitable for predicting carbon emissions and other relevant indicators, laying a foundation for putting forward more scientific and practical emission reduction plans.https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9714916/?tool=EBI
spellingShingle Zhen Yu
Yuan Zhang
Juan Zhang
Wenjie Zhang
Analysis and prediction of the temporal and spatial evolution of carbon emissions in China’s eight economic regions
PLoS ONE
title Analysis and prediction of the temporal and spatial evolution of carbon emissions in China’s eight economic regions
title_full Analysis and prediction of the temporal and spatial evolution of carbon emissions in China’s eight economic regions
title_fullStr Analysis and prediction of the temporal and spatial evolution of carbon emissions in China’s eight economic regions
title_full_unstemmed Analysis and prediction of the temporal and spatial evolution of carbon emissions in China’s eight economic regions
title_short Analysis and prediction of the temporal and spatial evolution of carbon emissions in China’s eight economic regions
title_sort analysis and prediction of the temporal and spatial evolution of carbon emissions in china s eight economic regions
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9714916/?tool=EBI
work_keys_str_mv AT zhenyu analysisandpredictionofthetemporalandspatialevolutionofcarbonemissionsinchinaseighteconomicregions
AT yuanzhang analysisandpredictionofthetemporalandspatialevolutionofcarbonemissionsinchinaseighteconomicregions
AT juanzhang analysisandpredictionofthetemporalandspatialevolutionofcarbonemissionsinchinaseighteconomicregions
AT wenjiezhang analysisandpredictionofthetemporalandspatialevolutionofcarbonemissionsinchinaseighteconomicregions