Study on the Emission Reduction Effect and Spatial Difference of Carbon Emission Trading Policy in China
Abstract
:1. Introduction
2. Literature Review and Theoretical Hypothesis
2.1. Literature Review
2.2. Theoretical Hypothesis
3. Methodology and Data
3.1. PSM-DID Model
3.2. Mediating Effect Model
3.3. Variables Selection and Data Description
3.3.1. Explained Variables
3.3.2. Control Variables
- (1)
- Per capita GDP (rgdp). Per capita GDP can reflect the economic development and living standard of the province. Economically-developed provinces tend to have more developed industries, resulting in more carbon emissions. At the same time, well-developed provinces often master clean energy technology, which is conducive to the realization of long-term carbon emission reduction. Therefore, in this paper, GDP per capita is selected to represent the degree of economic development, and the logarithm is lnrgdp.
- (2)
- The size of permanent population at the end of the year (pop). Population size and carbon emissions are inseparable. Population-intensive areas not only consume more energy in daily life, but also increase industrial carbon emissions. In this paper, the permanent population at the end of the year in each province is selected to represent the demographic variable, and the logarithm is lnrgdp.
- (3)
- Technical progress (tec). On one hand, technological progress can improve energy efficiency and reduce carbon emissions under the premise of certain output; on the other hand, the improvement of clean energy technology will gradually eliminate backward production capacity and further provide technical support for carbon emission reduction. Technological progress is the critical way of achieving the goal of carbon emission reduction in the long run. In this paper, the technology market turnover is selected to represent the level of technological progress, and will be used as a mechanism variable to test whether hypothesis H2a is valid. The logarithm is lntec.
- (4)
- Industrial structure (is). Industrial structure affects the total energy consumption and carbon emission intensity, which are also directly related to carbon emission. The optimization and upgrading of the industrial structure in each province can effectively promote carbon emission reduction in the long run, but whether the structural adjustment at this stage can bring a significant carbon emission reduction effect still needs to be verified and discussed. Since the secondary industry accounts for the vast majority of carbon emissions, this paper selects the proportion of secondary industry and regional GDP to describe changes in regional industrial structure and test whether hypothesis H2b is valid. The logarithm is lnis.
4. Empirical Analysis
4.1. Analysis of PSM-DID Regression Results
4.1.1. Effect Analysis of Carbon Emission Reduction at National Level
4.1.2. Effect Analysis of Carbon Emission Reduction at the Regional Level
Region Division Based on Carbon Emissions and Carbon Emission Intensity
Basic Background of Four Regions
Analysis on Carbon Emission Effect in Different Regions
4.2. Robustness Test
4.2.1. Parallel Trend Test
4.2.2. Robustness Test of Changing Time Width
4.3. Test of Mediating Effect
5. Conclusions and Implications
- (1)
- Accelerate the improvement of the institutional system and infrastructure of the carbon emission trading market and use the practical experience of the pilot areas to promote the stable operation and sustainable development of the national carbon emission trading market. At present, the national carbon emission trading market has been officially opened in China, but its system and technical specifications are still in the initial stage, which needs a host of pilot experience to support and gradually improve with market feedback. For most countries, the implementation of carbon emission trading policy is a strategic choice that can be adhered to for a long time. Therefore, they should accumulate experience from the pilot and vigorously support the construction of a carbon market.
- (2)
- Formulate emission reduction policies according to regional emission differences. There are great differences in terms of economic development, resource endowment, and environmental policies in different regions of China. Therefore, the formulation of carbon trading policy should also adapt to local conditions and fully consider regional heterogeneity. The High CE-High CI region should actively develop clean energy technology to further control carbon emission and intensity at the same time; the High CE-Low CI region should make most of its technology advantages and actively optimize the industrial structure to promote carbon reduction; the Low CE-High CI region should pay attention to the coordinated development of economy and carbon emission reduction to reduce carbon emission intensity and adhere to a carbon trading policy for a long time; the Low CE-Low CI region contributes significantly to carbon emission reduction. It should continue developing advanced technology in energy-saving and, furthermore, provide experience and technical support in energy conservation and emission reduction for other areas.
- (3)
- Improve the clean energy technology innovation capacity, as well as optimize the regional industrial structure. As mentioned above, technological innovation and upgrading can significantly promote carbon emission reduction, which is an important factor to promoting the stable decline of regional carbon emissions in the long run. International advanced technologies for carbon emission reduction should be actively introduced and applied based on the specific situation. The government should also allocate some funds to support the development of clean energy technologies and provide intellectual support for long-term carbon emission reduction. At the same time, industrial structure optimization has great room for improvement in the long run. Therefore, technology progress should be combined with optimization of the industrial structure to promote the green and low-carbon development of regional economies.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
DID | Difference In Difference |
PSM-DID | Propensity Score Matching-Difference in Difference |
CE | Carbon Emission |
CI | Carbon emission Intensity |
BRICS | Brazil, Russia, China, India, and South Africa |
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Type | Coal | Coke | Gasoline | Kerosene | Diesel Oil | Fuel Oil | Natural Gas |
---|---|---|---|---|---|---|---|
Carbon emission coefficient (ton/standard coal) | 0.7559 | 0.855 | 0.5538 | 0.5714 | 0.5921 | 0.6185 | 0.4483 |
Variable | lnce | lnci | lnrgdp | lnpop | lntec | lnis | Numbers | |
---|---|---|---|---|---|---|---|---|
All samples | Mean | 9.0420 | 6.5721 | 10.4107 | 8.1810 | 4.0263 | 6.044017 | 450 |
Std.deviation | 0.8845 | 0.8350 | 0.6468 | 0.7484 | 1.8588 | 0.2243153 | ||
Minimum | 5.8730 | 3.3351 | 8.5599 | 6.2971 | −0.6349 | 5.074501 | ||
Maximum | 10.6326 | 8.5677 | 12.0111 | 9.4326 | 8.6474 | 6.429079 | ||
Experiment group | Mean | 8.6569 | 5.7852 | 10.9268 | 8.0748 | 5.8171 | 5.939875 | 90 |
Std.deviation | 0.6639 | 0.7753 | 0.6054 | 0.7183 | 1.3396 | 0.3223677 | ||
Minimum | 6.9031 | 3.3351 | 9.3363 | 6.9499 | 3.5754 | 5.074501 | ||
Maximum | 9.7083 | 7.0797 | 12.0111 | 9.4326 | 8.6474 | 6.250909 | ||
Control group | Mean | 9.1383 | 6.7688 | 10.2816 | 8.2076 | 3.5785 | 6.070053 | 360 |
Std.deviation | 0.9070 | 0.7272 | 0.5906 | 0.7544 | 1.6945 | 0.1837659 | ||
Minimum | 5.8730 | 5.1827 | 8.5599 | 6.2971 | −0.6349 | 5.314727 | ||
Maximum | 10.6326 | 8.5677 | 11.7150 | 9.2209 | 7.2941 | 6.429079 |
Variables | Samples | Mean Value | Bias (%) | Test | ||
---|---|---|---|---|---|---|
Experiment Group | Control Group | T-Value | p-Value | |||
Per GDP | before | 10.921 | 10.19 | 134.1 | 12.88 | 0.000 |
after | 10.682 | 10.688 | −1.0 | −0.08 | 0.933 | |
Population | before | 8.1219 | 8.2066 | −11.4 | −1.10 | 0.271 |
after | 8.238 | 8.3111 | −9.8 | −0.64 | 0.525 | |
Technical progress | before | 5.5482 | 3.3671 | 141.4 | 13.56 | 0.000 |
after | 4.8086 | 4.8762 | −4.4 | −0.34 | 0.737 | |
Industrial structure | before | 5.9394 | 0.4476 | −66.5 | −6.83 | 0.000 |
after | 6.0457 | 6.0478 | −0.9 | −0.08 | 0.938 |
Variables | Carbon Emission | Carbon Emission Intensity | ||
---|---|---|---|---|
(1) | (2) | (3) | (4) | |
Treat*T | −0.2216 *** | −0.2741 *** | −0.2457 *** | −0.2896 *** |
(0.056) | (0.04) | (0.001) | (0.0396) | |
lnrgdp | 0.5013 *** | −0.509 *** | ||
(0.0312) | (0.0308) | |||
lnpop | 0.924 *** | 0.2399 | ||
(0.1934) | (0.1913) | |||
lntec | −0.0597 ** | −0.0579 *** | ||
(0.0131) | (0.013) | |||
is | −0.0134 | 0.0793 | ||
(0.0972) | (0.41) | |||
cons | 8.9741 *** | −3.3583 ** | 6.8644 *** | 9.708 *** |
[0.000] | [0.045] | [0.000] | [0.000] | |
Province fixed | YES | YES | YES | YES |
Year fixed | YES | YES | YES | YES |
Before Carbon Trading Policy (2005–2013) | After Carbon Trading Policy (2014–2019) | |||||||
---|---|---|---|---|---|---|---|---|
Provinces or Cites | Per Carbon Emission (1000 tons) | Rank | Per Carbon Emission Intensity | Rank | Per Carbon Emission (1000 tons) | Rank | Per Carbon Emission Intensity | Rank |
Beijing | 2755.94 | 28 | 0.2346 | 30 | 1385.81 | 29 | 0.0510 | 30 |
Tianjin | 4366.20 | 27 | 0.7741 | 19 | 4415.61 | 27 | 0.3702 | 18 |
Hebei | 26,310.81 | 2 | 1.7085 | 5 | 29,690.54 | 4 | 1.0116 | 5 |
Shanxi | 25,496.92 | 3 | 3.4925 | 1 | 34,324.75 | 2 | 2.4776 | 2 |
Neimenggu | 20,933.48 | 4 | 2.9394 | 3 | 32,467.47 | 3 | 2.2391 | 3 |
Liaoning | 15,564.79 | 7 | 1.2519 | 9 | 17,442.11 | 7 | 0.8048 | 8 |
Jilin | 7658.83 | 18 | 1.4438 | 6 | 7928.67 | 19 | 0.7446 | 11 |
Heilongjiang | 9421.69 | 14 | 1.2345 | 10 | 11,216.25 | 13 | 0.9056 | 6 |
Shanghai | 5899.34 | 21 | 0.3926 | 27 | 5385.21 | 25 | 0.1753 | 29 |
Jiangsu | 20,064.19 | 5 | 0.5861 | 24 | 24,791.32 | 5 | 0.3097 | 21 |
Zhejiang | 11,323.22 | 9 | 0.4952 | 26 | 12,138.07 | 12 | 0.2458 | 25 |
Anhui | 10,246.71 | 11 | 0.9267 | 16 | 13,846.51 | 11 | 0.4929 | 14 |
Fujian | 6281.93 | 20 | 0.5067 | 25 | 7342.56 | 20 | 0.2308 | 27 |
Jiangxi | 5275.80 | 22 | 0.6813 | 23 | 7141.62 | 22 | 0.3696 | 19 |
Shandong | 30,237.44 | 1 | 1.0488 | 15 | 37,275.07 | 1 | 0.6192 | 13 |
Henan | 20,057.78 | 6 | 1.0772 | 13 | 20,135.11 | 6 | 0.4803 | 15 |
Hubei | 10,635.99 | 10 | 0.8206 | 17 | 10,855.41 | 14 | 0.3095 | 22 |
Hunan | 9464.26 | 13 | 0.7750 | 18 | 10,195.56 | 16 | 0.3197 | 20 |
Guangdong | 13,454.68 | 8 | 0.3432 | 29 | 15,613.85 | 10 | 0.1826 | 28 |
Guangxi | 5192.45 | 23 | 0.7142 | 20 | 6665.18 | 23 | 0.3937 | 17 |
Hainan | 637.20 | 30 | 0.3549 | 28 | 1031.94 | 30 | 0.2423 | 26 |
Chongqing | 4657.08 | 24 | 0.6857 | 22 | 5027.57 | 26 | 0.2743 | 23 |
Sichuan | 9840.54 | 12 | 0.7001 | 21 | 9235.85 | 17 | 0.2651 | 24 |
Guizhou | 8979.40 | 16 | 2.3808 | 4 | 10,478.53 | 15 | 0.8538 | 7 |
Yunnan | 8030.51 | 17 | 1.2307 | 11 | 7287.74 | 21 | 0.4197 | 16 |
Shaanxi | 9155.40 | 15 | 1.0762 | 14 | 16,014.17 | 9 | 0.7775 | 10 |
Gansu | 4529.65 | 25 | 1.3146 | 8 | 5781.91 | 24 | 0.7948 | 9 |
Qinghai | 1204.61 | 29 | 1.1913 | 12 | 1623.40 | 28 | 0.7026 | 12 |
Ningxia | 4513.80 | 26 | 3.4217 | 2 | 8633.85 | 18 | 2.8223 | 1 |
Xinjiang | 6810.96 | 19 | 1.3476 | 7 | 16,310.49 | 8 | 1.4966 | 4 |
Region Category | Provinces or Cities |
---|---|
High CE-High CI | Shanxi, Neimenggu, Xinjiang, Hebei, Liaoning, Shaanxi, Shandong, Anhui, Henan, Hubei |
High CE-Low CI | Jiangsu, Zhejiang, Guangdong, Hunan, Sichuan |
Low CE-High CI | Ningxia, Gansu, Jilin, Qinghai, Heilongjiang, Guizhou, Tianjin |
Low CE-Low CI | Yunnan, Guangxi, Jiangxi, Chongqing, Hainan, Fujian, Shanghai, Beijing |
Variables | High CE-High CI Region | High CE-Low CI Region | Low CE-High CI Region | Low CE-Low CI Region | ||||
---|---|---|---|---|---|---|---|---|
(1) CE | (2) CI | (3) CE | (4) CI | (5) CE | (6) CI | (7) CE | (8) CI | |
Treat*T | −0.38 *** | −0.3736 *** | −0.255 ** | −0.203 * | −0.3311 *** | −0.4352 *** | −0.3245 *** | −0.3326 *** |
(0.0767) | (0.0745) | (0.014) | (0.049) | (0.0947) | (0.0944) | (0.0795) | (0.0821) | |
lnrgdp | 0.507 *** | −0.5099 *** | 0.3523 *** | −0.6082 *** | 0.5069 *** | −0.5065 *** | 0.5709 *** | −0.4239 *** |
(0.0563) | (0.0547) | (0.000) | (0.000) | (0.0672) | (0.067) | (0.0693) | (0.0715) | |
lnpop | 3.5747 *** | 2.9013 *** | 0.7776 *** | −0.1951 * | 1.3083 *** | 0.5585 * | −0.9191 * | −1.8072 *** |
(0.558) | (0.5423) | (0.000) | (0.07) | (0.3063) | (0.3053) | (0.4722) | (0.4874) | |
lntec | −0.0659 ** | −0.0631 *** | −0.0549 | −0.0664 | −0.0538 ** | −0.0477 * | −0.0742 ** | −0.0806 ** |
(0.021) | (0.0205) | (0.183) | (0.106) | (0.0268) | (0.0268) | (0.0318) | (0.0328) | |
lnis | 0.5061 ** | 0.5862 *** | 1.316 *** | 1.3057 *** | −0.2015 | −0.0826 | 0.3009 | 0.3391 |
(0.206) | (0.2001) | (0.000) | (0.000) | (0.1419) | (0.1415) | (0.2912) | (0.3005) | |
cons | −28.669 *** | −15.6522 *** | −8.9739 *** | 6.6173 *** | −4.8867 ** | 8.7655 *** | 8.0596 * | 23.037 *** |
[0.000] | [0.000] | [0.000] | [0.000] | [0.02] | [0.000] | [0.086] | [0.000] | |
Province fixed | YES | YES | YES | YES | YES | YES | YES | YES |
Year fixed | YES | YES | YES | YES | YES | YES | YES | YES |
R2 | 0.8069 | 0.8558 | 0.6791 | 0.8765 | 0.7376 | 0.8749 | 0.5806 | 0.8914 |
Variables | 2005–2016 | 2005–2017 | 2005–2018 | |||
---|---|---|---|---|---|---|
lnCE | lnCI | lnCE | lnCI | lnCE | lnCI | |
Treat*T | −0.2045 *** | −0.2060 *** | −0.2272 *** | −0.2287 *** | −0.2371 *** | −0.2287 *** |
[0.000] | [0.000] | [0.000] | [0.000] | [0.000] | [0.000] | |
t | −0.0834 *** | −0.0810 *** | −0.0856 *** | −0.0837 *** | −0.0942 *** | −0.0934 *** |
[0.001] | [0.000] | [0.000] | [0.000] | [0.000] | [0.000] | |
lnrgdp | 0.5217 *** | −0.4874 *** | 0.5152 *** | −0.4758 *** | 0.5243 *** | −0.4918 *** |
[0.000] | [0.000] | [0.000] | [0.000] | [0.000] | [0.000] | |
lnpop | 0.7271 *** | −0.0366 | 0.8243 *** | 0.1113 | 0.9969 *** | 0.3594 * |
[0.000] | [0.864] | [0.000] | [0.594] | [0.000] | [0.088] | |
lntec | −0.0395 *** | −0.0380 *** | −0.0453 *** | −0.0433 *** | −0.0591 *** | −0.0557 *** |
[0.007] | [0.009] | [0.002] | [0.002] | [0.007] | [0.009] | |
is | −0.0775 | 0.0773 | −0.02958 | 0.0426 | −0.1481 | 0.0806 |
[0.762] | [0.762] | [0.778] | [0.684] | [0.173] | [0.452] | |
cons | −2.0335 | 12.1687 *** | −2.6012 | 10.8323 *** | −3.3522 * | 9.5339 *** |
[0.226] | [0.000] | [0.161] | [0.000] | [0.066] | [0.000] | |
Province fixed | YES | YES | YES | YES | YES | YES |
Year fixed | YES | YES | YES | YES | YES | YES |
R2 | 0.8071 | 0.8358 | 0.7739 | 0.8444 | 0.7469 | 0.8527 |
N | 281 | 281 | 316 | 316 | 346 | 346 |
Variable | Technology Progress | Industrial Structure | ||
---|---|---|---|---|
First Stage (1) | Second Stage (2) | First Stage (3) | Second Stage (4) | |
Treat*T | 0.1993 | 0.3493 ** | −0.0114 | −0.0245 *** |
(0.189) | (0.015) | (0.543) | (0.008) | |
lnrgdp | 1.3954 *** | 1.553 *** | 0.0014 | −0.02738 *** |
(0.000) | (0.000) | (0.709) | (0.000) | |
lnpop | −2.75 *** | −2.998 *** | 004489 *** | −0.08387 * |
(0.000) | (0.000) | (0.000) | (0.078) | |
Control variables | YES | YES | YES | YES |
Cons | 13.29376 ** | 13.89091 ** | 0.0823 | 1.380604 *** |
(0.024) | (0.016) | (0.125) | (0.000) | |
Province fixed | YES | NO | YES | NO |
Year fixed | YES | NO | YES | NO |
R2 | 0.6730 | 0.6656 | 0.2918 | 0.2625 |
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Tian, G.; Yu, S.; Wu, Z.; Xia, Q. Study on the Emission Reduction Effect and Spatial Difference of Carbon Emission Trading Policy in China. Energies 2022, 15, 1921. https://doi.org/10.3390/en15051921
Tian G, Yu S, Wu Z, Xia Q. Study on the Emission Reduction Effect and Spatial Difference of Carbon Emission Trading Policy in China. Energies. 2022; 15(5):1921. https://doi.org/10.3390/en15051921
Chicago/Turabian StyleTian, Guiliang, Suwan Yu, Zheng Wu, and Qing Xia. 2022. "Study on the Emission Reduction Effect and Spatial Difference of Carbon Emission Trading Policy in China" Energies 15, no. 5: 1921. https://doi.org/10.3390/en15051921
APA StyleTian, G., Yu, S., Wu, Z., & Xia, Q. (2022). Study on the Emission Reduction Effect and Spatial Difference of Carbon Emission Trading Policy in China. Energies, 15(5), 1921. https://doi.org/10.3390/en15051921