Investigating the Direct and Spillover Effects of Urbanization on Energy-Related Carbon Dioxide Emissions in China Using Nighttime Light Data
Abstract
:1. Introduction
2. Materials and Methods
2.1. Estimation of City-Scale CO2 Emissions in China
2.2. Urbanization and Meteorological Factors
- (1)
- Population Density (PD), expressed per unit of population in a city, is a common research indicator. A denser population shows stimulated consumption and further increases in production activities. Furthermore, residents’ production and consumption activities will lead to greater pollution emissions. As a result, the economies of scale caused by increased population density may lead to more CO2 emissions. Simultaneously, the sharing of technology and knowledge brought about by population aggregation is more productive than are isolated individuals; thus, it greatly improves production efficiency [23]. The agglomeration effect of the population can reduce the per capita discharge of CO2. Accordingly, the consequences of PD for the discharge of CO2 remain uncertain.
- (2)
- Per capita GDP (PGDP) serves as the measure for a city’s economic progress. A greater degree of growth of the economy tends to increase drastically the amount of energy consumed, which results in an increase in output [24]. However, economic development, to a certain extent, will help to improve people’s awareness of environmental protection, which is conducive to emission reduction [25]. Consequently, the PGDP result for the discharge of CO2 is puzzling.
- (3)
- Industrial Structure (IS) is determined by means of the percentages of GDP produced by primary, secondary and tertiary industries. The secondary industry, which is dominated by industrial production, often causes higher levels of consumption in terms of energy, as well as the discharge of pollution emissions. The concept of tertiary sector is adopted to describe industrial optimization and upgrading. The optimization and upgrading of IS may enhance energy performance, stimulating the utilization of cleaning energy and optimizing the distribution within social resources, which is seen as an efficacious way to reduce the intensity of the discharge of carbon [26]. When IS is optimized, the conventional energy-intensive industries are substituted for by high-tech industries, which will save the usage of energy and affect the discharge of carbon [27,28]. For that reason, this variable holds the promise of curbing CO2 emissions.
- (4)
- Foreign Direct Investment (FDI) stands as a proxy for the extent of trade in foreign areas, which is thought to be among the important factors governing CO2 emissions [29]. And yet, it is matter of controversy whether the impact of foreign trade will bring greater economic benefits or more severe environmental problems. In one respect, according to the “pollution paradise” hypothesis, foreign high-energy-consuming enterprises always invest in nations with inadequate environmental restrictions to escape high environmental costs. Foreign-trade-driven industrial prosperity often requires more energy consumption, so FDI increases the CO2 emissions of host countries. In another aspect, the “pollution halo” hypothesis shows that, due to the demonstration effect of environmentally friendly technology, multinational corporations with higher requirements for environmental protection appear to benefit the host country’s environment, promoting advances in technology and growth of economic strength, and thus restraining the discharge of carbon [30,31]. Therefore, the FDI’s impact on CO2 emissions continues to be ambiguous.
- (5)
- Government Intervention (GI) is determined as the general government expenditure as a percentage of GDP. The policy adjustments of government departments can maximize social welfare [32], and this is an indispensable part of addressing resource depletion and environmental issues [33]. The effective realization of emission reduction strategies requires government departments to give full play to their roles. Therefore, this variable is projected to reduce carbon emissions.
- (6)
- Technical Level (TL) is measured by the percentage of research and technology spending relative to the aggregate financial outlay. TL is a dual-edged sword in the fight against China’s carbon emissions crisis [34]. First, technological advancement is among the most suitable ways to cut carbon emissions, preserve resources and promote economic development through the implementation of energy-saving and sustainable business practices. Others contend that, when innovation efforts are primarily directed towards increasing the productivity of conventional factors, technological progress would increase pollutant emissions as a result of the spread of mass production, which would result in increased production and pollution and increased carbon emissions [34]. Consequently, the impact on the discharge of carbon from the level of technology is likewise unknown.
- (7)
- Energy Intensity (EI) is expressed in terms of total electricity consumption. The intensity of energy has been already documented as a key driver affecting carbon emissions [35], and electricity consumption stimulates the discharge of CO2 [36]. Therefore, emissions of carbon are projected to benefit from this variable.
- (8)
- Traffic congestion (TC) is expressed in terms of surfaced road area per capita. One of the primary causes of carbon emissions that contribute to the greenhouse effect is road traffic [37]. Traffic jams will reduce the fuel economy of vehicles, causing wasteful energy and inordinate discharge of CO2. In addition, convenient transportation will increase the demand for vehicles and may also promote CO2 emissions [38,39]. Accordingly, the impact on the discharge of carbon from TC remains uncertain.
- (9)
- Public transport (PT) is expressed in terms of bus ownership per ten-thousand people. As part of durable municipal design, the potential of mass transit to reduce emissions was studied. The development of buses, among the important ways to limit the usage of private cars that provide public transportation [40], can lower CO2 emissions and energy usage and improve road safety. Thus, this factor should cut CO2 emissions.
2.3. Methods Used
2.3.1. Temporal Trend
2.3.2. Spatial Dependence Analysis
2.3.3. Spatial Regression Analysis
3. Results
3.1. Spatio-Temporal Features of CO2 Emissions from Chinese Cities
3.2. Direct and Spillover Effects of Urbanization on CO2 Emissions
4. Discussion
4.1. Differences in the Spatial Distribution of CO2 Emissions
4.2. Explanation of the Differences in the Influences of Driving Factorsof CO2 Emission
4.3. Limitations and Future Directions
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Energy Type | Raw Coal | Coke | Crude Oil | Gasoline | Kerosene | Diesel Oil | Fuel Oil | Natural Gas | Heat | Electricity |
---|---|---|---|---|---|---|---|---|---|---|
Standard coal factor tce/t | 0.7143 | 0.9714 | 1.4286 | 1.4714 | 1.4714 | 1.4571 | 1.4286 | 1.33 | 34.12 | 0.1229 |
Carbon emission factor tC/tce | 0.7559 | 0.8550 | 0.5857 | 0.5538 | 0.5714 | 0.5921 | 0.6185 | 0.4483 | 0.67 | / |
Variables | N | Mean | s.d. | Min | Max |
---|---|---|---|---|---|
PU | 5396 | 37.035 | 19.139 | 7.136 | 100.000 |
LU | 5396 | 1.415 | 3.166 | 0.011 | 46.470 |
PD | 5396 | 424.460 | 376.480 | 4.547 | 11,563.707 |
PGDP | 5396 | 34,115.502 | 42,868.909 | 603.991 | 532,702.377 |
EU | 5396 | 47.270 | 11.207 | 13.520 | 90.970 |
IS | 5396 | 37.556 | 8.890 | 8.500 | 80.980 |
FDI | 5396 | 63,201.465 | 175,640.958 | 1.000 | 3,082,563.000 |
GI | 5396 | 14.776 | 10.543 | 0.499 | 91.551 |
TL | 5396 | 1.127 | 1.377 | 0.004 | 19.162 |
EI | 5396 | 804,344.902 | 1,409,824.958 | 4527.000 | 15,666,595.000 |
TC | 5396 | 3.770 | 5.548 | 0.004 | 84.213 |
PT | 5396 | 2.948 | 6.411 | 0.031 | 115.006 |
CO2 | 5396 | 2144.918 | 2678.390 | 7.614 | 24,053.895 |
PREC | 5396 | 0.118 | 0.063 | 0.008 | 0.365 |
SRAD | 5396 | 157.066 | 17.469 | 107.643 | 223.191 |
TEMP | 5396 | 287.087 | 5.438 | 270.726 | 298.750 |
WIND | 5396 | 2.267 | 0.684 | 0.777 | 5.977 |
Number | 284 | 284 | 284 | 284 | 284 |
Coefficient | Std. Error | t Value | P (>|t|) | VIF | |
---|---|---|---|---|---|
lnPU | 0.479 *** | 0.333 | 14.36 | 0.000 | 2.49 |
lnEU | −0.261 *** | 0.062 | −4.24 | 0.000 | 2.41 |
lnLU | −0.529 *** | 0.300 | −17.60 | 0.000 | 4.71 |
lnPD | 1.020 *** | 0.322 | 31.72 | 0.000 | 2.07 |
lnPGDP | 0.231 *** | 0.236 | 9.81 | 0.000 | 4.63 |
lnTL | 0.293 ** | 0.128 | 2.29 | 0.022 | 1.78 |
lnIS | −0.001 | 0.660 | −0.01 | 0.990 | 2.79 |
lnFDI | 0.170 *** | 0.072 | 23.80 | 0.000 | 2.06 |
lnEI | 0.389 *** | 0.014 | 27.98 | 0.000 | 3.38 |
lnGI | −0.254 *** | 0.015 | −17.19 | 0.000 | 1.14 |
lnPT | −0.181 *** | 0.020 | −9.20 | 0.000 | 3.11 |
lnTC | 0.095 *** | 0.250 | 3.81 | 0.000 | 3.07 |
lnPREC | −0.677 ** | 0.029 | −2.36 | 0.018 | 2.95 |
lnSRAD | −0.651 *** | 0.109 | −5.95 | 0.000 | 1.31 |
lnTEMP | −22.523 *** | 0.990 | −22.74 | 0.000 | 3.54 |
lnWIND | 0.587 *** | 0.038 | 15.64 | 0.000 | 1.20 |
Variables | Direct | Indirect | Total | Direct | Indirect | Total | Direct | Indirect | Total |
---|---|---|---|---|---|---|---|---|---|
lnPU | 0.039 *** | −0.072 | −0.033 | ||||||
(3.242) | (−0.957) | (−0.408) | |||||||
lnEU | 0.220 *** | −0.120 | 0.099 | ||||||
(11.643) | (−1.208) | (0.925) | |||||||
lnLU | 0.066 *** | 0.492 *** | 0.558 *** | ||||||
(7.906) | (8.447) | (8.770) | |||||||
lnPD | 0.042 ** | −0.313 ** | −0.271 ** | 0.032 * | −0.239 * | −0.207 | −0.027 | −0.786 *** | −0.813 *** |
(2.341) | (−2.563) | (−2.039) | (1.813) | (−1.935) | (−1.542) | (−1.374) | (−6.000) | (−5.673) | |
lnPGDP | 0.127 *** | 0.278 *** | 0.405 *** | 0.107 *** | 0.224 *** | 0.330 *** | 0.121 *** | 0.210 *** | 0.331 *** |
(13.258) | (4.228) | (5.892) | (11.052) | (3.301) | (4.652) | (12.752) | (3.448) | (5.194) | |
lnTL | 0.026 *** | 0.071 *** | 0.097 *** | 0.028 *** | 0.072 *** | 0.100 *** | 0.024 *** | 0.044 *** | 0.068 *** |
(9.339) | (4.026) | (5.177) | (10.084) | (4.035) | (5.252) | (8.534) | (2.694) | (3.878) | |
lnIS | −0.033 ** | −0.329 *** | −0.363 *** | 0.093 *** | −0.341 *** | −0.247 ** | −0.041 *** | −0.365 *** | −0.406 *** |
(−2.278) | (−3.828) | (−3.905) | (4.903) | (−3.093) | (−2.060) | (−2.844) | (−4.562) | (−4.699) | |
lnFDI | 0.006 *** | −0.031 *** | −0.026 ** | 0.004 *** | −0.026 ** | −0.022 * | 0.007 *** | −0.018 * | −0.011 |
(3.567) | (−3.050) | (−2.304) | (2.736) | (−2.442) | (−1.881) | (4.289) | (−1.898) | (−1.092) | |
lnEI | 0.047 *** | 0.187 *** | 0.234 *** | 0.042 *** | 0.170 *** | 0.212 *** | 0.046 *** | 0.145 *** | 0.190 *** |
(10.188) | (5.541) | (6.383) | (9.178) | (4.960) | (5.698) | (9.980) | (4.710) | (5.661) | |
lnGI | 0.024 *** | −0.064 * | −0.040 | 0.016 *** | −0.077 ** | −0.061 | 0.021 *** | −0.095 *** | −0.074 ** |
(5.075) | (−1.766) | (−1.041) | (3.352) | (−2.077) | (−1.546) | (4.553) | (−2.811) | (−2.057) | |
lnPT | 0.018 *** | −0.066 | −0.048 | 0.013 ** | −0.063 | −0.049 | 0.010 * | −0.158 *** | −0.148 *** |
(3.181) | (−1.511) | (−1.021) | (2.493) | (−1.493) | (−1.085) | (1.769) | (−3.939) | (−3.405) | |
lnTC | 0.031 *** | 0.143 *** | 0.175 *** | 0.030 *** | 0.150 *** | 0.180 *** | 0.020 *** | 0.041 | 0.061 |
(5.073) | (2.898) | (3.259) | (4.923) | (2.970) | (3.294) | (3.273) | (0.870) | (1.200) | |
rho | 0.746 *** | 0.754 *** | 0.726 *** | ||||||
(70.366) | (71.354) | (65.921) | |||||||
sigma2_e | 0.009 *** | 0.009 *** | 0.009 *** | ||||||
(50.773) | (50.703) | (50.825) | |||||||
Observations | 5396 | 5396 | 5396 | ||||||
R-squared | 0.847 | 0.847 | 0.862 | ||||||
Number | 284 | 284 | 284 |
Variables | Wx | Direct | Indirect | Total | Wx | Direct | Indirect | Total |
---|---|---|---|---|---|---|---|---|
CU | −0.072 *** | 0.115 *** | 0.041 | 0.156 *** | −0.062 *** | 0.116 *** | 0.070 | 0.186 *** |
(−4.278) | (11.439) | (0.750) | (2.609) | (−3.663) | (11.970) | (1.290) | (3.217) | |
lnPD | −0.102 *** | 0.007 | −0.309 ** | −0.302 ** | −0.081 *** | 0.011 | −0.229 ** | −0.218 * |
(−3.388) | (0.362) | (−2.509) | (−2.259) | (−2.693) | (0.607) | (−2.002) | (−1.747) | |
lnPGDP | −0.018 | 0.109 *** | 0.202 *** | 0.312 *** | −0.018 | 0.108 *** | 0.197 *** | 0.304 *** |
(−0.881) | (11.427) | (3.044) | (4.484) | (−0.902) | (10.956) | (2.894) | (4.236) | |
lnTL | 0.002 | 0.026 *** | 0.071 *** | 0.098 *** | 0.003 | 0.027 *** | 0.072 *** | 0.099 *** |
(0.364) | (9.629) | (4.056) | (5.233) | (0.625) | (9.959) | (4.268) | (5.545) | |
lnIS | −0.118 *** | 0.054 *** | −0.265 *** | −0.212 ** | −0.092 *** | 0.048 *** | −0.181 * | −0.133 |
(−4.250) | (3.191) | (−2.714) | (−1.994) | (−3.278) | (2.879) | (−1.860) | (−1.276) | |
lnFDI | −0.012 *** | 0.006 *** | −0.026 ** | −0.020 * | −0.012 *** | 0.005 *** | −0.025 ** | −0.019 * |
(−4.439) | (3.594) | (−2.520) | (−1.816) | (−4.249) | (3.536) | (−2.446) | (−1.789) | |
lnEI | 0.020 ** | 0.040 *** | 0.167 *** | 0.206 *** | 0.022 ** | 0.040 *** | 0.161 *** | 0.201 *** |
(2.286) | (8.555) | (4.922) | (5.599) | (2.448) | (9.058) | (4.993) | (5.787) | |
lnGI | −0.036 *** | 0.017 *** | −0.077 ** | −0.061 | −0.036 *** | 0.016 *** | −0.077 ** | −0.061 * |
(−3.683) | (3.524) | (−2.139) | (−1.577) | (−3.771) | (3.416) | (−2.390) | (−1.779) | |
lnPT | −0.030 *** | 0.009 * | −0.078 * | −0.069 | −0.034 *** | 0.006 | −0.094 ** | −0.088 ** |
(−2.754) | (1.679) | (−1.830) | (−1.490) | (−3.115) | (1.159) | (−2.289) | (−1.973) | |
lnTC | 0.025 ** | 0.022 *** | 0.138 *** | 0.160 *** | 0.025 ** | 0.022 *** | 0.131 *** | 0.154 *** |
(2.059) | (3.594) | (2.795) | (2.996) | (2.058) | (3.838) | (3.002) | (3.253) | |
lnPREC | −0.008 | 0.030 ** | 0.044 | 0.075 * | ||||
(−0.447) | (2.394) | (1.061) | (1.819) | |||||
lnSARD | 0.195 *** | −0.054 | 0.475 *** | 0.420 *** | ||||
(2.617) | (−0.923) | (3.015) | (2.962) | |||||
lnTEMP | 10.918 *** | −5.698 *** | 21.632 *** | 15.935 *** | ||||
(4.850) | (−3.464) | (4.051) | (2.955) | |||||
lnWIND | 0.020 | 0.051 *** | 0.181 *** | 0.233 *** | ||||
(0.881) | (3.860) | (2.954) | (3.712) | |||||
rho | 0.746 *** | 0.736 *** | ||||||
(69.437) | (65.840) | |||||||
sigma2_e | 0.009 *** | 0.009 *** | ||||||
(50.730) | (50.726) | |||||||
Observations | 5396 | 5396 | ||||||
R-squared | 0.851 | 0.860 | ||||||
Number | 284 | 284 |
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Sun, L.; Mao, X.; Feng, L.; Zhang, M.; Gui, X.; Wu, X. Investigating the Direct and Spillover Effects of Urbanization on Energy-Related Carbon Dioxide Emissions in China Using Nighttime Light Data. Remote Sens. 2023, 15, 4093. https://doi.org/10.3390/rs15164093
Sun L, Mao X, Feng L, Zhang M, Gui X, Wu X. Investigating the Direct and Spillover Effects of Urbanization on Energy-Related Carbon Dioxide Emissions in China Using Nighttime Light Data. Remote Sensing. 2023; 15(16):4093. https://doi.org/10.3390/rs15164093
Chicago/Turabian StyleSun, Li, Xianglai Mao, Lan Feng, Ming Zhang, Xuan Gui, and Xiaojun Wu. 2023. "Investigating the Direct and Spillover Effects of Urbanization on Energy-Related Carbon Dioxide Emissions in China Using Nighttime Light Data" Remote Sensing 15, no. 16: 4093. https://doi.org/10.3390/rs15164093
APA StyleSun, L., Mao, X., Feng, L., Zhang, M., Gui, X., & Wu, X. (2023). Investigating the Direct and Spillover Effects of Urbanization on Energy-Related Carbon Dioxide Emissions in China Using Nighttime Light Data. Remote Sensing, 15(16), 4093. https://doi.org/10.3390/rs15164093