Collaborative Governance Mechanism of Climate Change and Air Pollution: Evidence from China
Abstract
:1. Introduction
2. Literature Review
3. Methodology
3.1. Theoretical Basis
3.2. Model Setting
3.3. Variables and Data
4. Results and Discussion
4.1. Benchmark Regression Analysis
4.2. Analysis of Cooperative Control Mechanism
4.3. Endogenous Problems
4.4. Robustness Test
5. Conclusions and Policy Implications
- There is a significant synergistic effect between the carbon emission reduction of Chinese industry and the emission reduction of comprehensive air pollutants. For every 1000 tons of industrial carbon emission reduction in China, 1 ton of air pollutant emission reductions can be produced. The increase in the intensity of environmental regulation is the main expansion path of the collaborative governance effect. R&D expenditures and the increase in clean energy in the energy structure will weaken the synergistic effect. However, R&D expenditure in the energy and power industry can significantly promote the reduction of comprehensive air pollutants.
- However, in the eastern, central, and western regions of China, the synergy between industrial carbon emission reduction and air pollutant emission reduction is not the same. Different regions have different levels of economic maturity. The correlation coefficient of the synergy between industrial carbon emission reduction and industrial comprehensive air pollution emission reduction in the western region is the largest, and it is also very significant. The level of economic development in eastern China is relatively high, and economic development and environmental pollution have been decoupled to some extent, so the correlation between carbon emissions and pollutant emissions is low. Therefore, it is necessary to formulate regionally differentiated emission reduction policies. The impact of R&D expenditure on the synergy between carbon emission reduction and comprehensive air pollutant emission reduction in the central and western regions is greater than that in the eastern region.
- China’s climate change and air pollution problems should be controlled through collaborative governance. Ignoring any aspect will lead to a reduction in policy benefits and an increase in policy costs.
- Appropriately increasing the intensity of environmental regulations can promote the expansion of the synergy between industrial carbon reduction and industrial comprehensive air pollutant reduction. Enhancing R&D expenditure in the energy and power industry can promote the reduction of industrial comprehensive air pollutants.
- Local governments should pay attention to regional differences when formulating emission reduction policies in the industrial sector. The central and western provinces should pay attention to the coordinated control of carbon emission reduction and air pollutant emission reduction and focus on increasing the R&D expenditure in the energy and power industry. The eastern region should focus on strengthening environmental regulations to control industrial carbon emissions and industrial air pollutant emissions separately.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Variables | Explanation | Data Resources | Units |
---|---|---|---|
ICAPR | industrial comprehensive air pollution reduction | China Environmental Yearbook | 104 ton |
ICR | industrial carbon reduction | China Energy Statistical Yearbook | 104 ton |
PGDP | GDP per capita | China Statistical Yearbook | 104 yuan |
RDE | R&D expenditures | China Science and Technology Statistical Yearbook | 108 yuan |
EE | Energy Efficiency | China Statistical Yearbook, China Energy Statistical Yearbook | 104 yuan/t-coal-e |
ES | Energy structure | China Energy Statistical Yearbook | % |
PUP | proportion of urban population | Provincial Statistical Yearbook | % |
PD | population density | China Statistical Yearbook | Person/km2 |
TEM | Temperature | China Environment Statistical Yearbook, China Environment Yearbook | °C |
ER | Environmental Regulation | China Environmental Yearbook | Item |
PSI | Proportion of secondary industry | China Statistical Yearbook | % |
(1) OLS | (2) FE | (3) General FGLS | |
---|---|---|---|
ICR | 0.0010 ** | 0.0009 *** | 0.0010 *** |
(0.00) | (0.00) | (0.00) | |
PGDP | 0.3629 | 1.4022 | 1.2966 |
(0.80) | (0.84) | (1.06) | |
PGDP2 | −0.0078 | −0.0223 | −0.021 |
(0.01) | (0.01) | (0.01) | |
EE | 15.9104 | 43.3151 | 32.9191 |
(31.36) | (36.42) | (29.03) | |
EE2 | 6.8642 | −6.585 | −4.7765 |
(19.96) | (21.52) | (16.86) | |
ER | 0.0001 * | 0.0001 * | 0.0001 * |
(0.0004) | (0.0013) | (0.0001) | |
ES | 3.5669 ** | 1.4167 ** | 0.5224 ** |
(33.43) | (27.68) | (30.17) | |
PD | 0.0103 | −0.0015 | −0.0005 |
(0.02) | (0.02) | (0.02) | |
RDE | 14.0763 *** | 14.2009 *** | 14.7823 *** |
(2.87) | (2.64) | (3.36) | |
PSI | −0.6749 ** | −0.5040 ** | −0.4827 ** |
(0.27) | (0.24) | (0.24) | |
PUP | 1.2790 * | 1.1008 * | 0.8951 * |
(0.64) | (0.54) | (0.53) | |
TEM | 1.1811 | 1.0291 | 1.3711 |
(1.02) | (0.93) | (1.16) | |
_cons | −129.1950 ** | −4413.0113 * | −3980.1418 |
(57.69) | (2170.39) | (2515.28) | |
observations | 180 | 180 | 180 |
R-sq | 0.369 | 0.333 |
General FGLS | |||||
---|---|---|---|---|---|
(1) | (2) | (3) | (4) | (5) | |
ICR | 0.0010 *** | 0.0010 ** | 0.0010 *** | 0.0012 *** | 0.0013 *** |
(0.0003) | (0.0004) | (0.0008) | (0.0003) | (0.0008) | |
ER | 0.00005 * | 0.00004 * | 0.00003 * | 0.00004 ** | 0.00003 * |
(0.0001) | (0.0001) | (0.0001) | (0.0001) | (0.0001) | |
ES | 0.5224 * | 1.9582 * | 8.4370 * | 1.5509 * | 6.2292 * |
(30.1678) | (30.6192) | (30.2389) | (30.5302) | (28.2194) | |
RDE | 14.7823 *** | 14.4610 *** | 13.9015 *** | 14.2871 *** | 13.8872 *** |
(3.3556) | (3.0512) | (3.1948) | (3.0869) | (3.2711) | |
ICR*RDE | −0.0001 * | −8.4 × 10−5 *** | |||
(0.0001) | −0.0002 | ||||
ICR*ES | −0.0022** | −0.0028 ** | |||
(0.0029) | (0.01) | ||||
ICR*ER | 6.6 × 10−8 ** | 4.63 × 10−7 ** | |||
(0.0000) | (0.0000) | ||||
N | 180 | 180 | 180 | 180 | 180 |
control variables | control | control | control | control | control |
Regulate Variable | RDE | ES | ER | RDE + ES + ER |
---|---|---|---|---|
main effect | 0.00100 | 0.00120 | 0.00100 | 0.00130 |
Partial effect | −0.00018 | −0.00030 | 0.00025 | 0.00195 |
total effect | 0.00082 | 0.00090 | 0.00125 | 0.00325 |
(1) OLS | (2) OLS | (3) GMM | |
---|---|---|---|
ICR | 0.0010 ** | 0.0039 * | |
(0.0003) | (0.0034) | ||
PGDP | −1.5343 | −0.3629 | −1.4733 |
(1.0278) | (0.7974) | (1.8208) | |
PGDP2 | 0.0351 * | 0.0078 | 0.0122 |
(0.0189) | (0.0147) | (0.0247) | |
EE | −19.4779 | 15.9104 | −61.2680 |
(39.9242) | (31.3597) | (73.9000) | |
EE2 | 29.3423 | 6.8642 | 25.8784 |
(30.3737) | (19.9587) | (58.7883) | |
ER | 0.0000 | 0.0001 | −0.0002 |
(0.0001) | (0.0001) | (0.0002) | |
ES | 53.2887 * | 5.5669 | 65.4495 |
(30.1671) | (33.4302) | (48.4313) | |
PD | −0.0226 | 0.0103 | 0.0012 |
(0.0199) | (0.0167) | (0.0034) | |
FI | 0.0025 | 0.0029 | −0.0021 |
(0.0023) | (0.0021) | (0.0034) | |
RDE | 9.2622 *** | 14.0763 *** | 20.9282 ** |
(2.3284) | (2.8668) | (18.3543) | |
PSI | −0.8395 ** | −0.6749 ** | 0.0145 |
(0.3351) | (0.2664) | (0.1393) | |
PUP | 1.4294 * | 1.2790 * | 0.4173 |
(0.7508) | (0.6357) | (0.4315) | |
TEM | 1.0796 | 1.1811 | −0.3745 |
(1.0328) | (1.0208) | (0.4642) | |
_cons | −95.2766 | −129.1950 ** | −2.2401 |
(62.9734) | (57.6901) | (19.5160) | |
N | 180 | 180 | 150 |
Endogenous test | Weak instrumental variable test | ||
Wu-hausman F | 12.3579 | Cragg-Donald Wald F | 22.678 |
0.0434 | |||
Durbin chi2 | 12.6654 | kleibergen-Paap Wald F | 12.342 |
0.0504 |
Semiparametric Estimation | FE | ||||
---|---|---|---|---|---|
(1) Eastern Region | (2) Central Region | (3) Western Region | (4) Total | (5) Total | |
ICR | 0.0005 ** | 0.0008 ** | 0.0011 ** | 0.0008 *** | 0.0009 *** |
(0.0005) | (0.0004) | (0.0004) | (0.0002) | (0.0002) | |
PGDP | −1.1980 | −2.0200 | −3.2930 * | −0.3694 | −1.4022 |
(1.0360) | (1.3166) | (1.7494) | (0.2843) | (0.8445) | |
PGDP2 | 0.0276 | 0.0719 * | 0.1154 * | 0.0122 | 0.0223 |
(0.0200) | (0.0358) | (0.0618) | (0.0092) | (0.0147) | |
−22.8104 | 153.4049 ** | −52.1691 | −5.0120 | 1.4167 | |
(30.6604) | (39.6952) | (42.9638) | (7.3451) | (27.6776) | |
RDE | 6.2378 * | 15.3619 ** | 17.0268 * | 7.8298 ** | 14.2009 *** |
(3.0518) | (5.6152) | (9.1527) | (2.5190) | (2.6372) | |
ER | 0.0001 | ||||
(0.0001) | |||||
observations | 70 | 52 | 53 | 177 | 180 |
control variables | control | control | control | control | control |
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Wang, B.; Wang, Y.; Zhao, Y. Collaborative Governance Mechanism of Climate Change and Air Pollution: Evidence from China. Sustainability 2021, 13, 6785. https://doi.org/10.3390/su13126785
Wang B, Wang Y, Zhao Y. Collaborative Governance Mechanism of Climate Change and Air Pollution: Evidence from China. Sustainability. 2021; 13(12):6785. https://doi.org/10.3390/su13126785
Chicago/Turabian StyleWang, Bing, Yifan Wang, and Yuqing Zhao. 2021. "Collaborative Governance Mechanism of Climate Change and Air Pollution: Evidence from China" Sustainability 13, no. 12: 6785. https://doi.org/10.3390/su13126785
APA StyleWang, B., Wang, Y., & Zhao, Y. (2021). Collaborative Governance Mechanism of Climate Change and Air Pollution: Evidence from China. Sustainability, 13(12), 6785. https://doi.org/10.3390/su13126785