A Heterogeneity Study of Carbon Emissions Driving Factors in Beijing-Tianjin-Hebei Region, China, Based on PGTWR Model
Abstract
:1. Introduction
- i.
- Which of the eight model estimation results of the PGWTR model reflects superior overall statistics properties?
- ii.
- Degree and characteristics of spatial and temporal heterogeneity of carbon emissions in the Beijing–Tianjin–Hebei region
- iii.
- How do governments at all levels in the region formulate carbon emission reduction policies?
2. Materials and Methods
2.1. PGTWR Model
2.2. Construction of the Empirical Model
2.3. Methods of Carbon Accounting
3. Results
3.1. PGTWR Estimation of Results
3.2. Temporal Heterogeneity Analysis of the Regression Coefficient of Influencing Factors of Carbon Emission
3.2.1. Temporal Heterogeneity Analysis of the Influence of Industrial Structure on Carbon Emission
3.2.2. Temporal Heterogeneity Analysis of the Impact of Urbanization Level on Carbon Emission
3.2.3. Temporal Heterogeneity Analysis of the Impact of Energy Intensity on Carbon Emission
3.2.4. Temporal Heterogeneity Analysis of the Impact of Level of Economic Development on Carbon Emission
3.2.5. Temporal Heterogeneity Analysis of the Impact of Population Size on Carbon Emission
3.2.6. Temporal Heterogeneity Analysis of the Impact of Opening-Up on Carbon Emission
3.3. Spatial Heterogeneity Analysis of Regression Coefficient of Influencing Factors of Carbon Emission
4. Conclusions and Policy Recommendations
4.1. Conclusions
4.2. Policy Recommendations
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Variable | Variable Meaning | Unit | Data Source |
---|---|---|---|
Carbon emissions | CO2 emissions from fossil fuels | 10,000 ton | See Section 2.3 |
Industrial structure | Proportion of output value of secondary industry | % | Local Statistical Yearbook |
Urbanization level | Land area of urban construction | Square kilometers | China City Statistical Yearbook |
Energy intensity | Energy consumption per unit of GDP | Tons of standard/100 million yuan | Local Statistical Yearbook |
Level of economic development | GDP | One hundred million yuan | Chinese Statistical yearbook |
Population size | Population of permanent residents | Ten thousand people | Local Statistical Yearbook |
Opening up | Amount of foreign investment actually utilized | Thousands of dollars | Local Statistical Yearbook |
Energy | Average Low Emission | Standard Coal Coefficient | Carbon Content Per Calorific Value | Carbon Oxidation Rate | CO2 Emission Coefficient |
---|---|---|---|---|---|
Coke | 28,435 KJ/kg | 0.7143 kgce/kg | 26.37 tons of carbon/TJ | 0.93% | 1.9003 kg-CO2/kg |
Natural gas of oil field | 38.931 kg/m3 | 1.3300 kgce/m3 | 15.3 tons of carbon/TJ | 0.99% | 2.1622 kg-CO2/m3 |
Raw coal | 20,908 KJ/kg | 0.7143 kgce/kg | 26.37 tons of carbon/TJ | 0.94% | 1.9003 kg-CO2/kg |
Crude oil | 41,816 KJ/kg | 1.4286 kgce/kg | 20.1 tons of carbon/TJ | 0.98% | 3.0202 kg-CO2/kg |
Fuel oil | 41,816 KJ/kg | 1.4286 kgce/kg | 21.1 tons of carbon/TJ | 0.98% | 3.1705 kg-CO2/kg |
petroleum | 43,070 KJ/kg | 1.4714 kgce/kg | 18.9 tons of carbon /TJ | 0.98% | 2.9251 kg-CO2/kg |
kerosene | 43,070 KJ/kg | 1.4714 kgce/kg | 19.5 tons of carbon/TJ | 0.98% | 3.0179 kg-CO2/kg |
diesel | 42,652 KJ/kg | 1.4571 kgce/kg | 20.2 tons of carbon/TJ | 0.98% | 3.0959 kg-CO2/kg |
Liquefied petroleum gas | 50,179 KJ/kg | 1.7143 kgce/kg | 17.2 tons of carbon/TJ | 0.98% | 3.1013 kg-CO2/kg |
AICc Criterion (Optimal Spatial Bandwidth = 13, Optimal Temporal Bandwidth = 6) | GCV\RSS Criterion (Optimal Spatial Bandwidth = 7, Optimal Temporal Bandwidth = 6) | |||||||
---|---|---|---|---|---|---|---|---|
Mixing Effect | Individual Fixed Effect | Period Fixed Effect | Individual–Period Fixed Effect | Mixing Effect | Individual Fixed Effect | Period Fixed Effect | Individual–Period Fixed Effect | |
significance ratio of the estimate of local coefficient | 0.8919 | 0.3397 | 0.9679 | 0.4423 | 0.6703 | 0.2885 | 0.6688 | 0.3376 |
Sample size | 78 | 78 | 78 | 78 | 78 | 78 | 78 | 78 |
Degree of freedom | 31 | 32 | 31 | 32 | 15 | 15 | 15 | 15 |
Estimate of Variance of stochastic disturbance | 13.835 | 0.538 | 1.928 | 16.832 | 28.157 | 1.087 | 2.956 | 32.830 |
Value of CV criterion | 428.9 | 17.2 | 59.8 | 538.6 | 422.4 | 16.3 | 44.3 | 492.4 |
Value of GCV criterion | 0.0851 | 0.0034 | 0.0119 | 0.1069 | 0.0838 | 0.0032 | 0.0088 | 0.0977 |
Value of AICc criterion | 448.1 | 192.2 | 291.7 | 461.2 | 501.7 | 245.2 | 323.5 | 511.3 |
Modified goodness of fit | 0.9996 | 0.9814 | 0.9952 | 0.9999 | 0.9998 | 0.9319 | 0.9880 | 0.9999 |
F statistical value | 48,378 | 1035 | 4521 | 3,822,745 | 80,040 | 264 | 1581 | 244,461 |
F probability of statistics | 0.000 | 0.000 | 0.000 | 0.000 | 0.000 | 0.000 | 0.000 | 0.000 |
Modified critical value of probability (α = 0.01, 0.05, 0.1) | 0.0169 0.0844 0.1688 | 0.0171 0.0853 0.1706 | 0.0202 0.1012 0.2024 | 0.0185 0.0924 0.1849 | 0.0149 0.0745 0.1489 | 0.0159 0.0796 0.1592 | 0.0178 0.0888 0.1775 | 0.0166 0.0829 0.1658 |
logarithmic likelihood values | −213.1 | −86.5 | −136.3 | −220.8 | −240.9 | −113.9 | −152.9 | −246.8 |
Variable | Minimum | Maximum | Average | Upper Quartile | Lower Quartile | Quartile Range | Standard Deviation |
---|---|---|---|---|---|---|---|
X1 | 1.07 | 1.90 | 1.51 | 1.38 | 1.62 | 0.23 | 0.18 |
X2 | 0.76 | 1.12 | 0.90 | 0.84 | 0.94 | 0.10 | 0.09 |
X3 | 1.65 | 2.47 | 1.90 | 1.78 | 1.98 | 0.19 | 0.16 |
X4 | 0.35 | 0.62 | 0.50 | 0.43 | 0.55 | 0.12 | 0.07 |
X5 | −0.81 | −0.42 | −0.63 | −0.71 | −0.52 | 0.19 | 0.11 |
X6 | 0.08 | 0.15 | 0.11 | 0.09 | 0.13 | 0.04 | 0.02 |
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Lou, T.; Ma, J.; Liu, Y.; Yu, L.; Guo, Z.; He, Y. A Heterogeneity Study of Carbon Emissions Driving Factors in Beijing-Tianjin-Hebei Region, China, Based on PGTWR Model. Int. J. Environ. Res. Public Health 2022, 19, 6644. https://doi.org/10.3390/ijerph19116644
Lou T, Ma J, Liu Y, Yu L, Guo Z, He Y. A Heterogeneity Study of Carbon Emissions Driving Factors in Beijing-Tianjin-Hebei Region, China, Based on PGTWR Model. International Journal of Environmental Research and Public Health. 2022; 19(11):6644. https://doi.org/10.3390/ijerph19116644
Chicago/Turabian StyleLou, Ting, Jianhui Ma, Yu Liu, Lei Yu, Zhaopeng Guo, and Yan He. 2022. "A Heterogeneity Study of Carbon Emissions Driving Factors in Beijing-Tianjin-Hebei Region, China, Based on PGTWR Model" International Journal of Environmental Research and Public Health 19, no. 11: 6644. https://doi.org/10.3390/ijerph19116644