Driving Factors of CO2 Emissions: Further Study Based on Machine Learning
Greenhouse gases, especially carbon dioxide (CO2) emissions, are viewed as one of the core causes of climate change, and it has become one of the most important environmental problems in the world. This paper attempts to investigate the relation between CO2 emissions and economic growth, industry st...
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doaj-9b46181518e24a7cb8b284faeefacbd52021-08-23T12:38:58ZengFrontiers Media S.A.Frontiers in Environmental Science2296-665X2021-08-01910.3389/fenvs.2021.721517721517Driving Factors of CO2 Emissions: Further Study Based on Machine LearningShanshan Li0Yam Wing Siu1Guoqin Zhao2Institute for Finance and Economics, Central University of Finance and Economics, Beijing, ChinaDepartment of Economics and Finance, The Hang Seng University of Hong Kong, Hong Kong, ChinaInstitute for Finance and Economics, Central University of Finance and Economics, Beijing, ChinaGreenhouse gases, especially carbon dioxide (CO2) emissions, are viewed as one of the core causes of climate change, and it has become one of the most important environmental problems in the world. This paper attempts to investigate the relation between CO2 emissions and economic growth, industry structure, urbanization, research and development (R&D) investment, actual use of foreign capital, and growth rate of energy consumption in China between 2000 and 2018. This study is important for China as it has pledged to peak its carbon dioxide emissions (CO2) by 2030 and achieve carbon neutrality by 2060. We apply a suite of machine learning algorithms on the training set of data, 2000–2015, and predict the levels of CO2 emissions for the testing set, 2016–2018. Employing rmse for model selection, results show that the nonlinear model of k-nearest neighbors (KNN) model performs the best among linear models, nonlinear models, ensemble models, and artificial neural networks for the present dataset. Using KNN model, sensitivity analysis of CO2 emissions around its centroid position was conducted. The findings indicate that not all provinces should develop its industrialization. Some provinces should stay at relatively mild industrialization stage while selected others should develop theirs as quickly as possible. It is because CO2 emissions will eventually decrease after saturation point. In terms of urbanization, there is an optimal range for a province. At the optimal range, the CO2 emissions would be at a minimum, and it is likely a result of technological innovation in energy usage and efficiency. Moreover, China should increase its R&D investment intensity from the present level as it will decrease CO2 emissions. If R&D reinvestment is associated with actual use of foreign capital, policy makers should prioritize the use of foreign capital for R&D investment on green technology. Last, economic growth requires consuming energy. However, policy makers must refrain from consuming energy beyond a certain optimal growth rate. The above findings provide a guide to policy makers to achieve dual-carbon strategy while sustaining economic development.https://www.frontiersin.org/articles/10.3389/fenvs.2021.721517/fullMachine learningCO2 emissionseconomic growthindustry structureforecasting |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Shanshan Li Yam Wing Siu Guoqin Zhao |
spellingShingle |
Shanshan Li Yam Wing Siu Guoqin Zhao Driving Factors of CO2 Emissions: Further Study Based on Machine Learning Frontiers in Environmental Science Machine learning CO2 emissions economic growth industry structure forecasting |
author_facet |
Shanshan Li Yam Wing Siu Guoqin Zhao |
author_sort |
Shanshan Li |
title |
Driving Factors of CO2 Emissions: Further Study Based on Machine Learning |
title_short |
Driving Factors of CO2 Emissions: Further Study Based on Machine Learning |
title_full |
Driving Factors of CO2 Emissions: Further Study Based on Machine Learning |
title_fullStr |
Driving Factors of CO2 Emissions: Further Study Based on Machine Learning |
title_full_unstemmed |
Driving Factors of CO2 Emissions: Further Study Based on Machine Learning |
title_sort |
driving factors of co2 emissions: further study based on machine learning |
publisher |
Frontiers Media S.A. |
series |
Frontiers in Environmental Science |
issn |
2296-665X |
publishDate |
2021-08-01 |
description |
Greenhouse gases, especially carbon dioxide (CO2) emissions, are viewed as one of the core causes of climate change, and it has become one of the most important environmental problems in the world. This paper attempts to investigate the relation between CO2 emissions and economic growth, industry structure, urbanization, research and development (R&D) investment, actual use of foreign capital, and growth rate of energy consumption in China between 2000 and 2018. This study is important for China as it has pledged to peak its carbon dioxide emissions (CO2) by 2030 and achieve carbon neutrality by 2060. We apply a suite of machine learning algorithms on the training set of data, 2000–2015, and predict the levels of CO2 emissions for the testing set, 2016–2018. Employing rmse for model selection, results show that the nonlinear model of k-nearest neighbors (KNN) model performs the best among linear models, nonlinear models, ensemble models, and artificial neural networks for the present dataset. Using KNN model, sensitivity analysis of CO2 emissions around its centroid position was conducted. The findings indicate that not all provinces should develop its industrialization. Some provinces should stay at relatively mild industrialization stage while selected others should develop theirs as quickly as possible. It is because CO2 emissions will eventually decrease after saturation point. In terms of urbanization, there is an optimal range for a province. At the optimal range, the CO2 emissions would be at a minimum, and it is likely a result of technological innovation in energy usage and efficiency. Moreover, China should increase its R&D investment intensity from the present level as it will decrease CO2 emissions. If R&D reinvestment is associated with actual use of foreign capital, policy makers should prioritize the use of foreign capital for R&D investment on green technology. Last, economic growth requires consuming energy. However, policy makers must refrain from consuming energy beyond a certain optimal growth rate. The above findings provide a guide to policy makers to achieve dual-carbon strategy while sustaining economic development. |
topic |
Machine learning CO2 emissions economic growth industry structure forecasting |
url |
https://www.frontiersin.org/articles/10.3389/fenvs.2021.721517/full |
work_keys_str_mv |
AT shanshanli drivingfactorsofco2emissionsfurtherstudybasedonmachinelearning AT yamwingsiu drivingfactorsofco2emissionsfurtherstudybasedonmachinelearning AT guoqinzhao drivingfactorsofco2emissionsfurtherstudybasedonmachinelearning |
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