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Erschienen in: Energy Efficiency 4/2019

01.11.2018 | Original Article

Exploring the drivers of energy consumption-related CO2 emissions in China: a multiscale analysis

verfasst von: Bangzhu Zhu, Shunxin Ye, Ping Wang, Kaijian He, Tao Zhang, Rui Xie, Yi-Ming Wei

Erschienen in: Energy Efficiency | Ausgabe 4/2019

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Abstract

The exploration and modeling of the drivers of CO2 emissions can help make effective CO2 emission reduction policies. In this study, we examine the drivers of energy consumption-related CO2 emissions in China during 1978–2014 from a multiscale perspective. Firstly, we use the multivariate empirical mode decomposition model to simultaneously decompose the CO2 emissions and 17 drivers into several groups of intrinsic mode functions and one group of residues at different timescales. Secondly, we employ the stepwise regression analysis to explore and model the key drivers of CO2 emissions at different timescales without multicollinearity. The empirical results show that China’s CO2 emissions have obvious timescales of 6.17 years, 9.25 years, 18.5 years, 37.0 years, and long-term trend. At the short-term timescales, fuel structure and economic structure have significant impacts on CO2 emissions. At the medium-term timescales, urban population and fuel structure are the major contributors to CO2 emissions. At the long-term timescale, only per capita GDP has a positive effect on CO2 emissions. Finally, we propose the policy implications at the short, medium, and long timescales.

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Metadaten
Titel
Exploring the drivers of energy consumption-related CO2 emissions in China: a multiscale analysis
verfasst von
Bangzhu Zhu
Shunxin Ye
Ping Wang
Kaijian He
Tao Zhang
Rui Xie
Yi-Ming Wei
Publikationsdatum
01.11.2018
Verlag
Springer Netherlands
Erschienen in
Energy Efficiency / Ausgabe 4/2019
Print ISSN: 1570-646X
Elektronische ISSN: 1570-6478
DOI
https://doi.org/10.1007/s12053-018-9744-3

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