Does Coal Consumption Control Policy Synergistically Control Emissions and Energy Intensity?
Abstract
:1. Introduction
- (1)
- The CCCP policy announced in 2016 is a continuation and addition to the policy introduced in 2011; evaluating those two policies separately is inappropriate. However, existing studies focus only on a specific policy in a limited number of big cities. As far as policy relevance and integrity are concerned, this study uses time-varying difference-in-differences (DID) to examine the synergistic effects of those two consecutive CCCP in 73 cities across the country. Comprehensive analysis reveals a broader and more accurate picture of the effects of the CCCP.
- (2)
- Unlike previous studies that mainly explored the environmental and economic impacts of the CCCP separately, this study estimates the impacts of CCCP from the intensity perspective, including greenhouse gas (GHG) intensity, pollution emission intensity, and energy intensity, which helps us to effectively embody the efficiency of the policy implementation.
- (3)
- For the very first time, an SEM model is introduced to more precisely identify the mechanisms of the CCCP affecting GHG intensity, pollution emission intensity, and energy intensity. This can help policymakers further formulate effective policy instruments of the CCCP to balance reducing coal consumption with other desirable environmental effects.
2. Literature Review
2.1. The Effects of CCCP
2.2. Determinants of GHG Emission Intensity, Pollutant Emission Intensity, and Energy Intensity
3. The Mechanism of CCCP Affecting Emissions and Energy Intensity
4. Methodology
4.1. Empirical Strategy
4.2. Data
4.2.1. Explained Variables
- (1)
- SO2 emission intensity (gso2): we take the SO2 emission per unit of GDP to measure this variable.
- (2)
- CO2 emission intensity (gso2): we use the CO2 emission per unit of GDP to suggest this variable. The measurement of CO2 emissions is shown in Appendix B.
- (3)
- Energy intensity (toconsum_g): consistent with existing studies, we use energy consumption per unit of GDP. As for energy consumption, firstly, we collected original data on 24 energy types (raw coal, finely washed coal, other washed coal, briquette, other coal products (pulverized coal, coal water slurry), coke, crude oil, fuel oil, gasoline, diesel oil, general kerosene, refinery thousand gas, liquefied natural gas, liquefied petroleum gas, naphtha, other petroleum products, natural gas, blast furnace gas, converter gas, coke oven gas, other gas, heat, electricity) from the urban statistical yearbooks. Then, all 24 types of energy data are converted to standard coal and added together, which is total energy consumption. Additionally, coal consumption is calculated using the 12 coal energies (raw coal, washed coal, other washed coal, coal products, coke, other coking products, coke oven gas, blast furnace gas, converter gas, producer gas, other coal gas) of the industry, which is uniformly converted to standard coal and summed up.
4.2.2. Explanatory Variable: Policy Variable
4.2.3. Control Variables
4.2.4. Mediator Variables
5. Results and Discussion
5.1. Effects of the CCCP
5.2. Robustness Test
5.2.1. Parallel Trend Hypothesis Test: Event Study
5.2.2. Placebo Test
- (1)
- Re-grouping analysis
- (2)
- Counterfactual Analysis
5.3. Mechanism Test of CCCP
6. Conclusions and Policy Implementations
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
CCCP Pilot Cities in 2011 | New Added Pilot Cities in 2016 | Cities without CCCP |
---|---|---|
Tianjin, Beijing, Tangshan, Shijiazhuang, Handan, Jinan, Jining, Weifang, Qingdao, Zhongshan, Foshan, Guangzhou, Huizhou, Jiangmen, Shenzhen, Zhangqing, Zhuhai, Shanghai, Nanjing, Nantong, Taizhou, Hefei, Jiaxing, Ningbo, Suqian, Changzhou, Wuxi, Wenzhou, Huzhou, Yancheng, Shaoxing, Suzhou, Lianyungang, Jinhua, Zhenjiang, Maanshan | Nanyang, Dalian, Shenyang, Zhengzhou | Baotou, Chengdu, Fuzhou, Guiyang, Guilin, Harbin, Haikou, Hohhot, Jincheng, Jingzhou, Kunming, Nanchang, Nanning, Xiamen, Shangrao, Shuozhou, Siping, Taiyuan, Urumqi, Xi’an, Xianning, Xianyang, Xinzhou, Xinyu, Yangquan, Yichang, Yinchuan, Yulin, Changchun, Changsha, Changzhi, Chongqing, Zunyi |
Appendix B
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Symbol | Variable | Unit | Mean | Standard Deviation (S.D) |
---|---|---|---|---|
gso2 | Sulphur dioxide emissions from industrial sector per unit of output value | Tones/CNY | 0.004294 | 0.0066496 |
gco2 | Carbon dioxide emissions from industrial sector per unit of output value | Tones/CNY | 0.000475 | 0.000684 |
toconsum_g | The proportion of energy consumption to output value | N/A | 1.128609 | 1.558941 |
pgdp | GDP per capita | CNY/people | 73,465.87 | 66,010.77 |
industry | The proportion of secondary industry in total output value | % | 47.97304 | 9.367037 |
pop | Total population at the end of the year | Million | 440.9437 | 440.9437 |
tec | The proportion of scientific expenditure in local fiscal expenditure | N/A | 0.0226534 | 0.0182364 |
fdi | The proportion of actual amount of foreign capital used in the year of GDP | Million USD/ten thousand CNY | 0.0042736 | 0.0034741 |
coal_c | The proportion of coal consumption in total energy consumption | N/A | 0.6634836 | 0.2435611 |
Lngso2 | Lngco2 | Toconsum_g | |
---|---|---|---|
D | −0.1283 ** | −0.0747 * | −0.2493 ** |
(−2.2283) | (−1.7183) | (−2.0735) | |
lnpgdp | −0.6909 *** | −0.8116 *** | −0.4622 * |
(−4.3276) | (−6.7058) | (−1.8887) | |
industry | 0.0122 ** | 0.0119 *** | −0.0196 |
−2.2196 | −2.8816 | (−1.5973) | |
lnpop | −1.6557 *** | −0.8276 ** | 0.7567 |
(−3.8338) | (−2.0245) | −1.4118 | |
lntec | −0.0104 | −0.0466 | −0.2061 ** |
(−0.2037) | (−1.1212) | (−2.4355) | |
lnfdi | −0.0853 *** | −0.0076 | −0.0708 |
(−3.1015) | (−0.4092) | (−1.5524) | |
coal_c | −0.2412 | 0.4925 * | 0.4498 |
(−1.5949) | −1.8374 | −1.0179 | |
Intercept | 10.5287 *** | 4.4165 | 0.9128 |
city | yes | yes | yes |
year | yes | yes | yes |
N | 992 | 1026 | 1030 |
r2_a | 0.9266 | 0.9203 | 0.7402 |
Lngso2 | Lngco2 | Toconsum_g | Lngso2 | Lngco2 | Toconsum_g | |
---|---|---|---|---|---|---|
D_2 | −0.0941 | −0.0701 | −0.0416 | |||
(−1.6029) | (−1.5137) | (−0.3607) | ||||
D_3 | −0.0844 | −0.0479 | 0.0380 | |||
(−1.3439) | (−0.9361) | (0.3229) | ||||
lnpgdp | −0.6673 *** | −0.8094 *** | −0.3294 | −0.6534 *** | −0.7912 *** | −0.2804 |
(−4.1203) | (−6.7011) | (−1.3835) | (−4.0681) | (−6.5723) | (−1.1499) | |
industry | 0.0129 ** | 0.0121 *** | −0.0166 | 0.0131 ** | 0.0124 *** | −0.0158 |
(2.3602) | (2.9812) | (−1.3676) | (2.4051) | (3.0756) | (−1.3208) | |
lnpop | −1.6677 *** | −0.8401 ** | 0.7645 | −1.6671 *** | −0.8369 ** | 0.7870 |
(−3.8721) | (−2.0501) | (1.4305) | (−3.8690) | (−2.0450) | (1.4698) | |
lntec | −0.0139 | −0.0468 | −0.2325 *** | −0.0163 | −0.0502 | −0.2429 *** |
(−0.2682) | (−1.1126) | (−2.6855) | (−0.3137) | (−1.1978) | (−2.7677) | |
lnfdi | −0.0847 *** | −0.0081 | −0.0640 | −0.0841 *** | −0.0071 | −0.0604 |
(−3.0787) | (−0.4376) | (−1.4122) | (−3.0546) | (−0.3796) | (−1.3397) | |
coal_c | −0.2413 | 0.4885 * | 0.4847 | −0.2293 | 0.4992 * | 0.5005 |
(−1.6269) | (1.8240) | (1.0935) | (−1.5492) | (1.8623) | (1.1235) | |
Intercept | 10.3020 *** | 4.4608 | −0.8777 | 10.1231 *** | 4.2057 | −1.6543 |
(2.7321) | (1.4621) | (−0.1667) | (2.6912) | (1.3874) | (−0.3105) | |
N | 992 | 1026 | 1030 | 992 | 1026 | 1030 |
r2_a | 0.9263 | 0.9202 | 0.7386 | 0.9263 | 0.9201 | 0.7386 |
Bootstrap | ||||||
---|---|---|---|---|---|---|
Observed Coefficient | Bias | Std. Err. | [95% Conf. Interval] | |||
direct_effect | −0.0747 | 0.0007 | 0.0470 | −0.1726 | 0.0157 | (P) |
−0.1726 | 0.0157 | (BC) | ||||
industry structure | −0.0263 | 0.0000 | 0.0113 | −0.0490 | −0.0043 | (P) |
−0.0507 | −0.0060 | (BC) | ||||
technological progress | −0.0122 | 0.0014 | 0.0112 | −0.0330 | 0.0129 | (P) |
−0.0357 | 0.0090 | (BC) | ||||
energy structure | −0.0192 | −0.0001 | 0.0135 | −0.0518 | 0.0026 | (P) |
−0.0548 | 0.0007 | (BC) | ||||
total_effect | −0.1324 | 0.0019 | 0.0479 | −0.2292 | −0.0415 | (P) |
−0.2297 | −0.0424 | (BC) |
Bootstrap | ||||||
---|---|---|---|---|---|---|
Observed Coefficient | Bias | Std. Err. | [95% Conf. Interval] | |||
direct_effect | −0.1283 | −0.0018 | 0.0585 | −0.2342 | −0.0134 | (P) |
−0.2303 | −0.0059 | (BC) | ||||
industry structure | −0.0271 | −0.0005 | 0.0130 | −0.0525 | −0.0037 | (P) |
−0.0525 | −0.0040 | (BC) | ||||
Technological progress | −0.0027 | 0.0009 | 0.0137 | −0.0295 | 0.0242 | (P) |
−0.0312 | 0.0227 | (BC) | ||||
energy structure | 0.0094 | 0.0000 | 0.0075 | −0.0009 | 0.0269 | (P) |
−0.0001 | 0.0317 | (BC) | ||||
total_effect | −0.1487 | −0.0014 | 0.0572 | −0.2571 | −0.0358 | (P) |
−0.2525 | −0.0299 | (BC) |
Bootstrap | ||||||
---|---|---|---|---|---|---|
Observed Coefficient | Bias | Std. Err. | [95% Conf. Interval] | |||
direct_effect | −0.2493 | −0.0113 | 0.1355 | −0.5453 | 0.0025 | (P) |
−0.5333 | 0.0138 | (BC) | ||||
industry structure | 0.0434 | 0.0031 | 0.0318 | −0.0121 | 0.1160 | (P) |
−0.0206 | 0.1116 | (BC) | ||||
Technological progress | −0.0539 | −0.0004 | 0.0241 | −0.1047 | −0.0101 | (P) |
−0.1081 | −0.0120 | (BC) | ||||
energy structure | −0.0175 | −0.0019 | 0.0208 | −0.0638 | 0.0141 | (P) |
−0.0703 | 0.0132 | (BC) | ||||
total_effect | −0.2774 | −0.0104 | 0.1276 | −0.5667 | −0.0413 | (P) |
−0.5515 | −0.0202 | (BC) |
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Huangfu, J.; Zhao, W.; Yu, L. Does Coal Consumption Control Policy Synergistically Control Emissions and Energy Intensity? Sustainability 2023, 15, 7748. https://doi.org/10.3390/su15107748
Huangfu J, Zhao W, Yu L. Does Coal Consumption Control Policy Synergistically Control Emissions and Energy Intensity? Sustainability. 2023; 15(10):7748. https://doi.org/10.3390/su15107748
Chicago/Turabian StyleHuangfu, Jianhua, Wenjuan Zhao, and Lei Yu. 2023. "Does Coal Consumption Control Policy Synergistically Control Emissions and Energy Intensity?" Sustainability 15, no. 10: 7748. https://doi.org/10.3390/su15107748
APA StyleHuangfu, J., Zhao, W., & Yu, L. (2023). Does Coal Consumption Control Policy Synergistically Control Emissions and Energy Intensity? Sustainability, 15(10), 7748. https://doi.org/10.3390/su15107748