Balance between Smog Control and Economic Growth in China: Mechanism Analysis Based on the Effect of Green Technology Innovation
Abstract
:1. Introduction
2. Literature Review
3. Theoretical Mechanisms and Research Hypotheses
3.1. Analysis of the Impact of GTI on SP
3.2. Analysis of the Impact of GTI on EG
3.3. Impact of Different Types of GTI on SP and EG
4. Causality and Spatial Relationship Test
4.1. Stationarity Test and Causation Test
4.2. Spatial Relationship Test
5. Study Design
5.1. Econometric Models and Methods
5.2. Variables and Data Description
6. Empirical Analysis Results and Discussion
6.1. Impact of GTI on SP and EG under Spatial Correlation
6.2. Impact of Different Types of GTI on SP and EG
6.3. Analysis of the Comprehensive Impact of GTI on SP and EG
6.4. Robustness Test
7. Conclusions
8. Implications
- (1)
- GTI is an effective means to coordinate SP reduction and stabilize EG. We should delineate the responsibilities of government and enterprises in GTI. The report of the 19th Party Congress has proposed that green development should be effectively achieved through market-oriented GTI construction. The government should formulate scientific and rational environmental regulatory policies, strengthen R&D support for GTI and effectively guide social capital to enter green industries. Enterprises should contribute from the following aspects: establish the awareness of innovation and sustainable development; actively recruit and cultivate green innovation talents; promote the effective development of GTI activities; continuously improve the conversion rate of green technology achievements. Thus, the coordinated development of improved EG quality and efficiency and reduced SP and emissions can be achieved.
- (2)
- Fighting the Blue Sky Defense Battle is important to continuously deepen the battle against pollution. Local governments should actively implement the concept that clean water and green mountains are valuable assets. They should also continuously improve the green performance evaluation system, scientifically assess the bearing capacity of environmental resources and strictly adhere to the ecological protection red line. In the current stage of overcoming difficulties and deepening SP control, the government should continue to strengthen the environmental regulation of key polluting enterprises and the accountability and supervision of environmental protection departments. The government should also actively enhance public awareness of environmental protection and create an excellent social atmosphere for everyone to participate in smog control. In addition, smog is a composite pollutant with spatial transmission and negative externality. Thus, local governments should actively implement the three-year action plan to win the Blue Sky Defense Battle, build a cross-regional joint prevention and control mechanism and coordinate regional smog control.
- (3)
- GTI and high-quality coordinated regional economic development should be promoted. China is still in an important stage of shifting its EG rate, adjusting its industrial structure and transforming the development mode. We should abandon the EG mode that emphasizes the economy and underplays environmental protection. We should also adopt the new concept of green, low-carbon and circular development, vigorously promote green technological progress, stimulate the transformation and upgrading of industrial structure and promote high-quality economic development. We must actively promote cleaner production and end-of-line treatment technologies, achieve both source prevention and end-of-line treatment, consolidate and improve pollution prevention and control achievements, reduce environmental treatment costs and economic burden and achieve sustainable EG. In addition, the government should coordinate the planning of the development of economic zones and the construction of urban agglomerations, break inter-regional market barriers and accelerate the flow of factors and inter-regional technological exchanges and cooperation. Furthermore, the government should constantly promote the transformation of its functions, improve resource allocation efficiency and promote regional coordinated economic development.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
SP | Smog pollution |
GTI | Green technology innovation |
GII | Green invention and innovation |
EKC | Environmental Kuznets Curve |
R&D | Research and development |
PVAR | Panel vector autoregression |
NTL | Nighttime light data |
AQI | Air quality index |
WIPO | World Intellectual Property Organization |
H | Human capital |
SPE | Scale of government spending |
DEN | Population density |
EG | Economic growth |
GUMI | Green utility model innovation |
CPC | Communist Party of China |
OECD | Organization for Economic Co-operation and Development |
SIPO | State Intellectual Property Office |
NOAA | National Oceanic and Atmospheric Administration |
GS3SLS | General Spatial Three-Stage Least Squares |
IPC | International Patent Classification |
S | Industrial structure |
MH | Rate of investment in physical capital |
URBAN | City size |
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Variables | Inspection Form (c,t,l) | LLC Test | ADF-Fisher Test | ||
---|---|---|---|---|---|
Statistic | p-Value | Statistic | p-Value | ||
GTI | (c,t,1) | −13.7964 | 0.0000 | 88.9574 | 0.0090 |
SP | (c,t,1) | −10.9962 | 0.0000 | 156.7073 | 0.0000 |
EG | (c,t,1) | −9.8766 | 0.0004 | 104.0423 | 0.0004 |
NTL | (c,t,1) | −11.5741 | 0.0000 | 138.1501 | 0.0000 |
Assumed Ordinal Number | Null Hypothesis | Wald | p | Test Results |
---|---|---|---|---|
1 | GTI does not Granger-cause SP | 14.337 | 0.014 | refuse |
2 | EG does not Granger-cause SP | 8.204 | 0.084 | refuse |
3 | SP does not Granger-cause EG | 10.031 | 0.040 | refuse |
4 | GTI does not Granger-cause EG | 8.707 | 0.069 | refuse |
5 | GTI does not Granger-cause SP | 29.016 | 0.000 | refuse |
6 | NTL does not Granger-cause SP | 13.23 | 0.021 | refuse |
7 | SP does not Granger-cause NTL | 12.446 | 0.029 | refuse |
8 | GTI does not Granger-cause NTL | 25.183 | 0.000 | refuse |
Variables | Definition | Number of Samples | Mean | Standard Deviation | Minimum | Maximum |
---|---|---|---|---|---|---|
SP | Smog pollution (μg/m3) | 3614 | 45.06 | 15.34 | 13.45 | 98.53 |
EG | Per capita income (million) | 3614 | 4.41 | 3.03 | 0.10 | 11.55 |
S | Industrial structure (%) | 3614 | 47.70 | 10.85 | 10.93 | 90.97 |
H | Human capital (year) | 3614 | 2.03 | 0.487 | 0.07 | 3.81 |
MH | Rate of investment in physical capital (%) | 3614 | 73.68 | 17.62 | 3.21 | 290.28 |
SPE | Scale of government spending (%) | 3614 | 15.27 | 8.06 | 4.18 | 153.62 |
URBAN | City size (100 km2) | 3614 | 1.35 | 1.88 | 0.07 | 33.71 |
DEN | Population density (Person/km2) | 3614 | 438.019 | 338.895 | 4.82 | 2713.02 |
GT | Green patent—keywords (piece) | 3614 | 17.06 | 32.55 | 0.00 | 607.29 |
GTI | Green patent—classification number (piece) | 3614 | 60.48 | 198.26 | 0 | 3657 |
GII | Green invention patent (piece) | 3614 | 31.69 | 116.80 | 0 | 2643 |
GUMI | Green utility model patent (piece) | 3614 | 28.78 | 82.67 | 0 | 1248 |
NTL | Nighttime light data (-) | 3614 | 7.32 | 7.92 | 0.17 | 56.61 |
NTL2 | Squared term of nighttime light data (-) | 3614 | 45.06 | 15.34 | 13.45 | 98.53 |
AQI | The proportion of air quality above Grade II (-) | 1390 | 0.776 | 0.156 | 0.31 | 1 |
Geographic Weights | Economic Weights | Mixed Weights | |||||||||
---|---|---|---|---|---|---|---|---|---|---|---|
SP | EG | SP | EG | SP | EG | ||||||
C | 23.98 *** | C | −6.812 *** | C | 12.47 *** | C | 2.884 *** | C | 12.72 *** | C | −2.745 *** |
(2.29) | (−10.38) | (8.72) | (10.28) | (7.20) | (−6.81) | ||||||
EG | −1.701 *** | SP | 0.291 *** | EG | −1.788 ** | SP | 0.139 *** | EG | −1.114 *** | SP | 0.241 *** |
(−4.50) | (26.62) | (−2.37) | (2.95) | (−2.12) | (28.41) | ||||||
EG2 | 0.067 *** | H | 2.296 *** | EG2 | 0.035 *** | H | 1.333 *** | EG2 | 0.013 *** | H | 1.934 *** |
(2.93) | (19.77) | (7.54) | (14.13) | (4.10) | (18.43) | ||||||
S | 0.416 *** | MH | −0.188 *** | S | 0.511 *** | MH | −0.520 *** | S | 0.464 *** | MH | −0.249 *** |
(26.69) | (−5.49) | (21.89) | (−5.85) | (25.45) | (−7.08) | ||||||
GTI | −0.114 *** | GTI | 0.043 *** | GTI | −0.258 *** | GTI | 0.062 *** | GTI | −0.176 *** | GTI | 0.054 *** |
(−12.54) | (15.40) | (−20.16) | (24.72) | (−17.29) | (20.49) | ||||||
WGTI | −0.178 ** | WGTI | 0.032 | WGTI | −0.002 * | WGTI | 0.001 | WGTI | −0.257 *** | WGTI | 0.052 |
(−2.52) | (1.38) | (−1.65) | (1.33) | (−5.68) | (4.14) | ||||||
DEN | 0.003 *** | S | 0.131 *** | DEN | 0.011 *** | S | 0.109 *** | DEN | 0.004 *** | S | 0.129 *** |
(5.93) | (22.65) | (17.07) | (22.90) | (7.44) | (24.68) | ||||||
H | −6.767 *** | SPE | −0.037 * | H | −3.829 *** | SPE | −0.145 | H | −6.024 *** | SPE | −0.086 * |
(−18.07) | (−1.72) | (−6.79) | (−0.95) | (−13.13) | (−1.86) | ||||||
FDI | 0.666 | URBAN | 0.003 * | FDI | 0.484 | URBAN | 0.003 | FDI | 0.349 | URBAN | 0.004 * |
(0.19) | (1.92) | (0.07) | (0.01) | (0.08) | (1.72) | ||||||
WSP | 0.914 *** | WEG | 0.620 *** | WSP | 0.002 * | WEG | 0.001 * | WSP | 0.633 *** | WEG | 0.307 *** |
(22.30) | (5.77) | (1.83) | (1.82) | (19.21) | (5.14) | ||||||
R2 | 0.79 | R2 | 0.25 | R2 | 0.89 | R2 | 0.76 | R2 | 0.87 | R2 | 0.58 |
Green Invention and Innovation (GII) | Green Utility Model Innovation (GUMI) | ||||||
---|---|---|---|---|---|---|---|
SP | EG | SP | EG | ||||
C | 11.88 *** | C | −2.506 *** | C | 13.466 *** | C | −2.920 *** |
(6.59) | (−6.37) | (19.93) | (−7.12) | ||||
EG | −1.334 ** | SP | 0.229 *** | EG | −1.754 ** | SP | 0.248 *** |
(−2.51) | (27.66) | (−2.44) | (28.61) | ||||
EG2 | 0.122 *** | H | 1.843 *** | EG2 | 0.148 *** | H | 2.011 *** |
(3.76) | (18.18) | (4.66) | (18.71) | ||||
S | 0.466 *** | MH | −0.237 *** | S | 0.453 *** | MH | −0.278 * |
(25.56) | (−6.91) | (24.82) | (−1.75) | ||||
GII | −0.448 *** | GII | 0.140 ** | GUMI | −0.081 ** | GUMI | 0.090 * |
(−7.50) | (2.32) | (−2.28) | (1.83) | ||||
WGII | −0.513 *** | WGII | 0.092 *** | WGUMI | −0.002 ** | WGUMI | 0.074 |
(−2.92) | (3.27) | (−2.19) | (1.17) | ||||
DEN | 0.004 *** | S | 0.125 *** | DEN | 0.004 *** | S | 0.130 *** |
(7.93) | (24.89) | (7.45) | (24.11) | ||||
H | −5.973 *** | SPE | −0.093 | H | −6.019 *** | SPE | −0.079 *** |
(12.97) | (−0.68) | (−13.11) | (−2.57) | ||||
FDI | 0.586 | URBAN | 0.005 *** | FDI | 1.205 | URBAN | 0.003 ** |
(0.13) | (7.34) | (0.27) | (2.21) | ||||
WSP | 0.618 *** | WEG | 0.302 *** | WSP | 0.648 *** | WEG | 0.325 *** |
(18.53) | (5.00) | (19.93) | (5.54) | ||||
R2 | 0.87 | R2 | 0.61 | R2 | 0.87 | R2 | 0.56 |
Direction of Action | Pathway | Green Technology Innovation (GTI) | Green Invention and Innovation (GII) | Green Utility Model Innovation (GUMI) |
---|---|---|---|---|
Smog pollution | Direct impact | −0.176 | −0.448 | −0.081 |
Economic growth—smog pollution pathways | −0.054 | −0.036 | −0.040 | |
Combined impact | −0.230 | −0.484 | −0.121 | |
Economic growth | Direct impact | 0.054 | 0.140 | 0.090 |
Smog pollution—economic growth pathways | −0.042 | −0.102 | −0.020 | |
Combined impact | 0.012 | 0.038 | 0.070 | |
Can it be balanced? | Yes | Yes | Yes |
Economic Growth (NTL) | Smog Pollution (AQI) | Green Technology Innovation (GT) | |||||||||
---|---|---|---|---|---|---|---|---|---|---|---|
SP | NTL | AQI | EG | SP | EG | ||||||
C | 3.267 ** | C | −2.333 *** | C | 0.769 *** | C | 0.102 *** | C | 4.035 *** | C | −0.562 *** |
(2.00) | (−2.85) | (13.97) | (3.48) | (3.76) | (−2.90) | ||||||
NTL | −0.308 * | SP | 0.456 *** | EG | 0.026 ** | AQI | −16.62 *** | EG | −0.079 *** | SP | 0.011 ** |
(−1.78) | (9.75) | (1.99) | (−5.28) | (−9.28) | (1.93) | ||||||
NTL2 | 0.063 ** | H | 2.612 *** | EG2 | −0.003 *** | H | 2.448 *** | EG2 | 0.027 *** | H | 0.943 *** |
(2.05) | (10.36) | (−4.74) | (15.61) | (4.67) | (5.57) | ||||||
S | 0.237 *** | MH | −0.213 *** | S | −0.004 * | MH | −0.234 *** | S | 0.031 *** | MH | −0.272 *** |
(12.75) | (−4.00) | (−1.92) | (−5.55) | (3.63) | (−2.61) | ||||||
GTI | −0.189 *** | GTI | 0.014 *** | GTI | 0.002 *** | GTI | 0.054 *** | GT | −0.215 *** | GT | 7.821 *** |
(17.59) | (7.94) | (3.11) | (18.70) | (−5.18) | (10.65) | ||||||
WGTI | −0.470 *** | WGTI | 0.003 | WGTI | 0.006 * | WGTI | 0.017 | WGT | −0.017 ** | WGT | 0.061 |
(−9.72) | (1.51) | (1.74) | (1.40) | (−1.99) | (0.98) | ||||||
DEN | 0.013 *** | S | 0.063 *** | DEN | −0.008 | S | 0.013 *** | DEN | −0.003 | S | 0.040 *** |
(10.95) | (4.87) | (−0.61) | (16.87) | (−0.22) | (16.28) | ||||||
H | −1.019 ** | SPE | 0.057 | H | 0.049 *** | SPE | −0.096 *** | H | −1.796 *** | SPE | −0.055 *** |
(−2.09) | (1.34) | (2.52) | (−5.03) | (−4.09) | (−2.55) | ||||||
FDI | 2.155 | URBAN | 0.006 *** | FDI | −0.003 | URBAN | 0.034 ** | FDI | 0.030 | URBAN | 0.061 *** |
(0.35) | (2.13) | (−0.04) | (2.35) | (0.79) | (6.51) | ||||||
WSP | 0.816 *** | WNTL | 0.013 *** | WAQI | 0.059 *** | WEG | 0.708 *** | WSP | 0.634 *** | WEG | 0.317 ** |
(26.27) | (21.03) | (9.68) | (7.17) | (3.07) | (2.16) | ||||||
R2 | 0.80 | R2 | 0.55 | R2 | 0.90 | R2 | 0.77 | R2 | 0.91 | R2 | 0.75 |
Green Invention Innovation (GII) | Green Utility Model Innovation (GUMI) | ||||||
---|---|---|---|---|---|---|---|
AQI | EG | AQI | EG | ||||
C | 0.769 *** | C | 9.866 *** | C | 0.766 *** | C | 9.956 *** |
(13.67) | (9.15) | (14.09) | (9.22) | ||||
EG | 0.021 * | AQI | −16.51 *** | EG | 0.032 *** | AQI | −16.01 *** |
(1.67) | (−5.33) | (2.43) | (−4.50) | ||||
EG2 | −0.003 *** | H | 2.288 *** | EG2 | −0.003 *** | H | 2.562 *** |
(−4.53) | (14.65) | (−5.01) | (16.38) | ||||
S | −0.004 *** | MH | −0.203 *** | S | −0.004 *** | MH | −0.296 *** |
(−7.17) | (−4.84) | (−6.24) | (−6.99) | ||||
GII | 0.005 *** | GII | 0.142 *** | GUMI | 0.003 ** | GUMI | 0.079 *** |
(3.70) | (9.78) | (2.09) | (7.03) | ||||
WGII | 0.003 * | WGII | 0.060 * | WGUMI | 0.003 | WGUMI | 0.019 |
(1.89) | (1.85) | (0.39) | (0.98) | ||||
DEN | −0.008 *** | S | 0.128 *** | DEN | −0.009 | S | 0.129 *** |
(−7.27) | (6.759) | (−1.38) | (6.39) | ||||
H | 0.047 *** | SPE | −0.024 *** | H | 0.046 *** | SPE | −0.027 *** |
(3.44) | (−4.90) | (3.31) | (−5.27) | ||||
FDI | −0.003 | URBAN | 0.061 *** | FDI | −0.009 | URBAN | 0.041 *** |
(−0.04) | (6.29) | (−0.11) | (5.83) | ||||
WAQI | 0.601 *** | WEG | 0.714 *** | WAQI | −0.588 *** | WEG | 0.694 *** |
(9.65) | (6.63) | (−5.54) | (2.72) | ||||
R2 | 0.89 | R2 | 0.79 | R2 | 0.92 | R2 | 0.76 |
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Yuan, K.; Qin, Y.; Wang, C.; Li, Z.; Bai, T. Balance between Smog Control and Economic Growth in China: Mechanism Analysis Based on the Effect of Green Technology Innovation. Int. J. Environ. Res. Public Health 2023, 20, 1475. https://doi.org/10.3390/ijerph20021475
Yuan K, Qin Y, Wang C, Li Z, Bai T. Balance between Smog Control and Economic Growth in China: Mechanism Analysis Based on the Effect of Green Technology Innovation. International Journal of Environmental Research and Public Health. 2023; 20(2):1475. https://doi.org/10.3390/ijerph20021475
Chicago/Turabian StyleYuan, Kai, Yabing Qin, Chenlu Wang, Zihao Li, and Tingting Bai. 2023. "Balance between Smog Control and Economic Growth in China: Mechanism Analysis Based on the Effect of Green Technology Innovation" International Journal of Environmental Research and Public Health 20, no. 2: 1475. https://doi.org/10.3390/ijerph20021475
APA StyleYuan, K., Qin, Y., Wang, C., Li, Z., & Bai, T. (2023). Balance between Smog Control and Economic Growth in China: Mechanism Analysis Based on the Effect of Green Technology Innovation. International Journal of Environmental Research and Public Health, 20(2), 1475. https://doi.org/10.3390/ijerph20021475