| Literature DB >> 35206195 |
Fang Chen1, Tao Zhao1, Di Wang2.
Abstract
Economic development depends on energy consumption, which is a major source of carbon emission. How to achieve economic decarbonization has become one of the key questions urgently needing to be solved on the road of carbon peak and carbon neutral development in China. Advancing total factor productivity (TFP) of carbon emission is an important way to promote economic decarbonization. For the carbon emission TFP, current research is mainly conducted from province level or an industry perspective, and studies its deference with various geographical locations, economic development levels, urbanization levels, etc., lacking the research that combines the decoupling effect to carbon emission TFP. The carbon emission TFP of Chinese cities and how to improve it remain unclear. Therefore, based on Tapio decoupling theory, this paper firstly analyzed the decoupling effect of China's 284 cities from 2005 to 2019, and aggregated the cities into four groups according to the decoupling effect. Then, using the DEA-Malmquist index, this paper researched the carbon emission TFP and its driving factors based on the aggregation. The result shows that weak decoupling is the main decoupling status in China. As a whole, carbon emission TFP of Chinese cities does not perform well, but it shows a growth trend over time. Strong decoupling cities outperform expansive negative decoupling cities on carbon emission TFP. Technical change and pure technical efficiency change have inhibiting effect and promoting effect on carbon emission TFP, respectively, which are the main factors for the difference of carbon emission TFP between strong decoupling cities and expansive negative decoupling cities. Based on these findings, some common but differentiated recommendations are provided for improving Chinese cities' carbon emission TFP.Entities:
Keywords: China’s cities; carbon emission; decoupling effect; total factor productivity
Mesh:
Substances:
Year: 2022 PMID: 35206195 PMCID: PMC8871953 DOI: 10.3390/ijerph19042007
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
The Tapio decoupling criteria for eight logical possibilities.
| Decoupling Statuses | ∆ | ∆ | DE | Symbol | |
|---|---|---|---|---|---|
| Decoupling | Strong decoupling | <0 | >0 | (−∞,0) | SD |
| Weak decoupling | ≥0 | ≥0 | [0,0.8] | WD | |
| Recessive decoupling | <0 | <0 | (1.2,+∞) | RD | |
| Coupling | Expansive coupling | >0 | >0 | (0.8,1.2] |
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| Weak negative coupling | <0 | <0 | (0.8,1.2] | WNC | |
| Negative decoupling | Weak negative decoupling | <0 | <0 | [0,0.8] | WND |
| Expansive negative decoupling | >0 | >0 | (1.2,+∞) | END | |
| Strong negative decoupling | >0 | <0 | (−∞,0) | SND | |
| Source: Tapio [ | |||||
Input and output indicators selected in the DEA–Malmquist index model.
| Indicators | Definition | |
|---|---|---|
| Inputs | Labor | The number of staff by the end of the year. |
| Asset | The sum of current capital and fixed investment was calculated, then converted into 2010 constant price. | |
| Energy | The end-use energy consumption in the city, computed into coal equivalent. | |
| Outputs | Desirable output: | The Gross Domestic Product of the city, with all the values being converted into 2010 constant price. |
| Undesirable output: CO2 | Carbon emissions from energy combustion (fossil fuels, electricity, and heat) of the city. | |
The cities with the largest or smallest carbon emissions in China.
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| City with largest carbon emissions | Shanghai | Shanghai | Shanghai | Shanghai | Beijing |
| City with smallest carbon emissions | Longnan | Longnan | Longnan | Longnan | Longnan |
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| City with largest carbon emissions | Shanghai | Shanghai | Shanghai | Shanghai | Shanghai |
| City with smallest carbon emissions | Longnan | Longnan | Longnan | Lijiang | Lincang |
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| City with largest carbon emissions | Shanghai | Shanghai | Shanghai | Shanghai | Shanghai |
| City with smallest carbon emissions | Lincang | Lincang | Lincang | Lincang | Lincang |
Figure 1The carbon emissions of Chinese cities during 2005–2019.
Figure 2Statistics on decoupling statuses of Chinese cities from 2005 to 2019.
Figure 3Statistics on carbon emission TFP of China’s cities during 2006–2019.
Figure 4The driving factors of carbon emission TFP of China’s cities during 2006–2019.
Figure 5The driving factors of carbon emission TFP of each cities during 2006–2019. (a) the mean value of carbon emission TFP of strong decoupling (SD) cities, weak decoupling (WD) cities, expansive coupling (EC) cities and expansive negative decoupling (END) cities, respectively. (b) the mean value of technical change index (TC) of each kind of cities. (c) the mean value of pure technical efficiency index (PEC) of each kind of cities. (d) the mean value of scale technical efficiency index (SEC) of each kind of cities.