Analysis of the Spatial and Temporal Evolution of China’s Energy Carbon Emissions, Driving Mechanisms, and Decoupling Levels
Abstract
:1. Introduction
2. Materials and Methods
2.1. Carbon Emission Accounting Methods
2.1.1. Accounting for Energy Carbon Emissions
2.1.2. Energy Carbon Intensity Accounting
2.2. Kernel Density Estimation
2.3. Classification of Carbon Emissions
2.4. Log Mean Divided Index (LMDI) Exponential Decomposition
2.5. Tapio’s Decoupling Index Model
2.6. Catch-Up Decoupling Model
2.7. Explanatory Variables Selection and Description
3. Results
3.1. Characteristics of Spatial and Temporal Changes in Energy Carbon Emissions
3.1.1. Time Evolution Characteristics
3.1.2. Characteristics of Spatial Evolution
3.1.3. Analysis of the Dynamic Evolution of Disequilibrium
3.2. Classification of Carbon Emissions
3.3. Analysis of the Driving Mechanism of China’s Energy Carbon Emissions
3.4. Decoupling of Carbon Emissions from Economic Development at the Inter-Provincial Level in China
3.4.1. Overall Decoupling of Carbon Emissions from Economic Development at the Inter-Provincial Level
3.4.2. Analysis of Decoupling Transfers
3.4.3. Catch-Up Decoupling Analysis
4. Conclusions and Policy Recommendations
Conclusions
- (1)
- National level
- (2)
- Provincial level
5. Limitations and Prospects
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
Year | 2005 | 2006 | 2007 | 2008 | 2009 | 2010 | 2011 | 2012 | 2013 | 2014 | 2015 | 2016 | 2017 | 2018 | 2019 | 2020 | 2021 | |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Region | ||||||||||||||||||
Beijing | 11,998.62 | 12,327.388 | 13,113.708 | 13,336.661 | 13,679.251 | 13,867.019 | 12,932.269 | 13,139.232 | 12,074.419 | 12,511.52 | 12,144.764 | 11,496.04 | 11,288.46 | 11,565.706 | 11,524.71 | 11,654.88 | 12,568.55 | |
Tianjin | 12,488.522 | 13,293.075 | 14,127.898 | 14,055.932 | 15,107.56 | 18,436.843 | 20,231.116 | 20,377.362 | 21,142.105 | 20,419.87 | 20,158.968 | 19,033.916 | 18,905.176 | 19,623.763 | 19,788.62 | 20,147.33 | 21,456.44 | |
Hebei | 57,412.516 | 61,942.581 | 67,607.595 | 70,642.242 | 75,350.813 | 81,068.028 | 91,675.929 | 92,966.828 | 93,243.415 | 88,685.007 | 92,733.758 | 92,865.965 | 92,193.492 | 94,559.178 | 94,913.14 | 10,4878.33 | 106,589.12 | |
Shanxi | 56,159.395 | 62,219.48 | 64,241.45 | 63,124.779 | 62,530.73 | 67,088.454 | 73,955.093 | 77,225.595 | 79,194.815 | 81,095.64 | 93,090.316 | 92,133.059 | 97,087.731 | 103,926.66 | 109,327.2 | 115,200.55 | 125,633.31 | |
Inner Mongolia | 31,179.32 | 36,618.267 | 42,270.083 | 50,463.686 | 54,940.466 | 60,551.772 | 75,579.624 | 78,531.547 | 76,723.589 | 78,612.072 | 77,969.182 | 78,887.758 | 83,004.003 | 95,196.635 | 105,600.2 | 115,268.14 | 123,456.22 | |
Liaoning | 49,813.984 | 53,546.913 | 57,952.996 | 59,414.946 | 61,512.03 | 67,401.813 | 71,990.851 | 74,604.894 | 71,921.114 | 72,027.084 | 69,545.834 | 70,442.413 | 72,570.98 | 77,177.94 | 84,066.75 | 94,066.755 | 96,541.36 | |
Jilin | 18,427.643 | 20,086.88 | 21,219.444 | 22,019.111 | 22,525.58 | 25,131.01 | 28,754.483 | 28,415.645 | 27,380.831 | 27,158.152 | 23,184.056 | 22,859.128 | 22,682.756 | 23,468.747 | 24,176.49 | 25,796.34 | 26,896.85 | |
Heilongjiang | 25,149.453 | 26,565.226 | 28,570.084 | 30,305.328 | 31,646.141 | 34,319.075 | 36,805.972 | 38,555.263 | 36,586.454 | 37,082.37 | 33,939.679 | 34,224.632 | 34,248.898 | 34,931.633 | 36,671.46 | 37,898.666 | 38,744.223 | |
Shanghai | 23,128.306 | 23,039.481 | 23,657.101 | 24,791.424 | 24,681.47 | 27,004.166 | 27,780.521 | 27,389.171 | 29,052.531 | 26,454.763 | 26,564.044 | 26,471.325 | 26,967.67 | 26,550.202 | 27,403.58 | 29,635.224 | 29,888.22 | |
Jiangsu | 47,340.372 | 51,815.725 | 55,854.135 | 57,632.443 | 60,246.025 | 67,259.233 | 77,527.449 | 79,158.29 | 81,395.446 | 80,822.449 | 83,706.697 | 87,125.359 | 86,307.475 | 85,537.563 | 87,372.58 | 88,746.32 | 92,746.32 | |
Zhejiang | 29,982.72 | 33,830.376 | 37,798.321 | 38,546.641 | 40,080.3 | 43,024.865 | 45,569.253 | 44,210.237 | 45,473.688 | 44,952.697 | 45,583.628 | 45,243.106 | 47,384.075 | 46,475.895 | 47,476.50 | 48,746.369 | 49,746.369 | |
Anhui | 19,693.454 | 21,189.638 | 23,602.034 | 26,945.052 | 29,653.55 | 31,428.394 | 34,147.836 | 35,238.853 | 38,271.91 | 39,541.489 | 39,619.898 | 39,553.309 | 40,938.104 | 42,504.565 | 42,779.28 | 43,779.285 | 44,779.285 | |
Fujian | 13,451.65 | 14,719.621 | 16,501.447 | 17,262.755 | 20,448.583 | 22,721.407 | 25,938.656 | 25,739.451 | 25,273.295 | 28,834.236 | 27,727.986 | 26,018.475 | 27,412.794 | 30,337.484 | 32,290.43 | 34,521.356 | 38,521.356 | |
Jiangxi | 11,730.639 | 12,799.931 | 13,982.176 | 14,209.29 | 14,875.145 | 17,300.321 | 23,669.643 | 19,208.941 | 20,697.428 | 21,081.452 | 21,969.719 | 22,259.928 | 22,729.037 | 23,758.601 | 24,266.73 | 26,456.369 | 29,456.369 | |
Shandong | 70,074.78 | 78,711.097 | 87,506.502 | 94,495.691 | 98,401.375 | 108,777.02 | 110,085.24 | 120,622.48 | 117,437.23 | 125,785.31 | 138,498.17 | 145,505.03 | 149,306.95 | 147,839.73 | 151,698.2 | 174,596.33 | 194,596.33 | |
Henan | 42,521.633 | 48,219.488 | 53,375.018 | 55,077.511 | 56,281.441 | 60,866.511 | 67,090.084 | 62,784.57 | 62,311.133 | 62,987.968 | 59,313.762 | 58,626.372 | 57,379.914 | 57,717.863 | 53,398.49 | 60,245.734 | 62,245.734 | |
Hubei | 23,951.237 | 26,514.086 | 29,337.711 | 29,358.838 | 31,527.241 | 36,156.131 | 41,145.958 | 41,171.968 | 35,834.787 | 36,282.25 | 34,444.153 | 34,258.002 | 35,062.216 | 36,458.122 | 38,710.66 | 39,443.35 | 42,443.35 | |
Hunan | 22,660.181 | 24,173.136 | 26,557.418 | 26,295.89 | 27,656.68 | 29,342.556 | 32,755.442 | 32,264.79 | 31,382.114 | 30,470.505 | 30,348.687 | 31,037.192 | 31,337.817 | 32,037.033 | 31,947.22 | 33,467.521 | 36,467.521 | |
Guangdong | 38,711.841 | 43,109.337 | 46,767.907 | 48,240.277 | 52,047.24 | 57,628.255 | 63,557.26 | 61,867.836 | 62,952.558 | 63,402.06 | 63,996.629 | 66,114.53 | 69,203.562 | 71,499.158 | 70,979.04 | 78,465 | 82,465 | |
Guangxi | 10,261.545 | 11,265.167 | 12,868.063 | 12,757.037 | 14,148.72 | 17,212.221 | 21,173.247 | 23,254.117 | 23,380.218 | 23,210.166 | 21,791.625 | 22,655.55 | 23,965.271 | 25,181.685 | 26,628.65 | 27,728.365 | 28,728.223 | |
Hainan | 1598.842 | 2428.628 | 4409.141 | 4671.755 | 4966.895 | 5423.367 | 6392.068 | 6662.906 | 6190.831 | 6849.103 | 7498.034 | 7278.204 | 7070.089 | 7482.044 | 7685.407 | 7885.239 | 8085.698 | |
Chongqing | 9068.654 | 9834.204 | 10,715.227 | 13,268.907 | 14,269.873 | 15,754.548 | 17,945.746 | 17,713.05 | 15,341.73 | 16,441.897 | 14,420.451 | 14,862.151 | 15,321.748 | 15,422.782 | 15,565.26 | 16,565.665 | 18,565.333 | |
Sichuan | 21,609.477 | 24,174.667 | 27,013.884 | 29,831.582 | 33,567.332 | 34,594.562 | 34,904.466 | 36,346.76 | 37,329.405 | 38,653.411 | 33,105.502 | 32,553.343 | 31,964.3 | 31,171.36 | 33,463.12 | 34,463.887 | 36,463.635 | |
Guizhou | 18,222.234 | 21,208.949 | 22,687.785 | 21,057.055 | 23,065.929 | 23,247.165 | 25,705.446 | 28,128.194 | 29,204.301 | 28,206.238 | 28,228.924 | 29,571.299 | 29,741.36 | 27,410.37 | 28,084.69 | 29,410.987 | 32,410.336 | |
Yunnan | 17,688.943 | 19,464.585 | 20,336.834 | 20,922.611 | 22,713.016 | 23,979.158 | 24,755.196 | 25,707.336 | 25,436.331 | 22,871.815 | 20,711.095 | 20,486.29 | 21,760.629 | 24,186.349 | 25,297.39 | 26,300.446 | 29,300.332 | |
Shaanxi | 17,646.677 | 21,437.586 | 23,661.633 | 26,659.738 | 28,966.349 | 34,307.235 | 37,930.583 | 43,553.726 | 46,265.637 | 48,745.6 | 48,264.732 | 49,160.574 | 50,667.473 | 49,574.909 | 53,839.69 | 57,555.338 | 60,555.225 | |
Gansu | 12,953.157 | 13,819.341 | 15,370.926 | 15,672.057 | 15,476.926 | 17,227.728 | 19,902.132 | 20,497.592 | 21,197.156 | 21,348.103 | 20,648.926 | 19,863.062 | 20,038.48 | 20,992.541 | 21,253.85 | 26,666.125 | 27,666.898 | |
Qinghai | 2344.101 | 2944.23 | 3266.284 | 4067.184 | 4142.595 | 4133.085 | 4885.542 | 5824.752 | 6414.459 | 5985.861 | 5525.828 | 6435.889 | 6167.295 | 6032.492 | 5963.033 | 6422.001 | 7422.456 | |
Ningxia | 7310.221 | 8008.046 | 9057.795 | 10,009.469 | 11,008.736 | 13,027.29 | 17,343.634 | 18,634.516 | 19,829.671 | 20,184.71 | 20,957.493 | 20,860.469 | 25,644.47 | 28,583.99 | 31,066.64 | 35,100.045 | 38,100.693 | |
Xinjiang | 15,402.079 | 17,550.824 | 19,107.481 | 21,153.436 | 24,690.738 | 27,656.497 | 32,715.645 | 37,794.645 | 43,279.765 | 48,110.51 | 49,709.02 | 51,870.247 | 55,171.86 | 57,433.832 | 61,079.01 | 63,000.123 | 65,055.361 |
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Catch-Up Type | Economic Growth Gap | Carbon Intensity Gap | Catch-Up Decoupling Elasticity Factor | Catch-Up Effect |
---|---|---|---|---|
Absolute catch-up decoupling (A) | Emission reduction catch-up is better than economic catch-up | |||
Absolute catch-up decoupling (B) | Economic catch-up is better than emission reduction catch-up | |||
Relative catch-up decoupling (A) | Economic catch-up is better than emission reduction catch-up | |||
Relative catch-up decoupling (B) | Emission reduction catch-up is better than economic catch-up | |||
Failure to catch up with decoupled (A) | Emission reduction lags behind economic growth | |||
Failure to catch up with decoupled (B) | Economic growth lags behind emission reductions |
Norm | Yearbook Data Involved |
---|---|
energy structure | Energy consumption |
energy intensity | Energy consumption, GDP |
economic development | GDP |
population size | population |
NCV | Average low level heat generation |
carbon oxidation rate | |
Provincial grid average CO2 emission factor |
Particular Year | H-H | H-L | L-H | L-L |
---|---|---|---|---|
2005 | Hebei, Shanxi, Inner Mongolia, Liaoning, Heilongjiang, Shandong, Henan | Jiangsu, Zhejiang, Hubei, Guangdong | Jilin, Guizhou, Yunnan, Shaanxi, Gansu, Qinghai, Ningxia, Xinjiang | Beijing, Tianjin, Shanghai, Anhui, Fujian, Jiangxi, Hunan, Guangxi, Hainan, Chongqing, Sichuan, |
2013 | Hebei, Shanxi, Inner Mongolia, Liaoning, Shaanxi, Xinjiang | Jiangsu, Zhejiang, Shandong, Henan, Guangdong | Jilin, Heilongjiang, Guizhou, Yunnan, Gansu, Qinghai, Ningxia | Beijing, Tianjin, Shanghai, Anhui, Fujian, Jiangxi, Hubei, Hunan, Guangxi, Hainan, Chongqing, Sichuan |
2021 | Hebei, Liaoning, Shanxi, Shaanxi, Xinjiang, Inner Mongolia, Shandong | Jiangsu, Zhejiang, Guangdong, Henan | Jilin, Heilongjiang, Guizhou, Hainan, Ningxia, Gansu, Tianjin, Qinghai | Beijing, Anhui, Hunan, Chongqing, Fujian, Hubei, Sichuan, Yunnan, Shanghai, Jiangxi, Guangxi |
2005–2008 | 2009–2012 | 2013–2016 | 2017–2019 | 2020–2021 | |
---|---|---|---|---|---|
Beijing | weakly decoupled | out of touch | out of touch | weakly decoupled | weakly decoupled |
Tianjin | weakly decoupled | weakly decoupled | out of touch | weakly decoupled | weakly decoupled |
Hebei | weakly decoupled | weakly decoupled | weakly decoupled | Expansion negative decoupling | weakly decoupled |
Shanxi | weakly decoupled | weakly decoupled | weakly decoupled | Expansion negative decoupling | weakly decoupled |
Inner Mongolia | weakly decoupled | Growing Connections | weakly decoupled | Expansion negative decoupling | weakly decoupled |
Liaoning | weakly decoupled | weakly decoupled | out of touch | Expansion negative decoupling | weakly decoupled |
Jilin | weakly decoupled | weakly decoupled | out of touch | weakly decoupled | weakly decoupled |
Heilongjiang | weakly decoupled | weakly decoupled | out of touch | Growing Connections | weakly decoupled |
Shanghai | weakly decoupled | weakly decoupled | weakly decoupled | weakly decoupled | weakly decoupled |
Jiangsu | weakly decoupled | Growing Connections | weakly decoupled | out of touch | weakly decoupled |
Zhejiang | weakly decoupled | weakly decoupled | weakly decoupled | weakly decoupled | weakly decoupled |
Anhui | weakly decoupled | weakly decoupled | weakly decoupled | weakly decoupled | weakly decoupled |
Fujian | weakly decoupled | weakly decoupled | out of touch | Expansion negative decoupling | Growing Connections |
Jiangxi | weakly decoupled | weakly decoupled | weakly decoupled | weakly decoupled | weakly decoupled |
Shandong | weakly decoupled | weakly decoupled | Growing Connections | out of touch | Growing Connections |
Henan | weakly decoupled | weakly decoupled | out of touch | out of touch | weakly decoupled |
Hubei | weakly decoupled | weakly decoupled | out of touch | Expansion negative decoupling | weakly decoupled |
Hunan | weakly decoupled | weakly decoupled | weakly decoupled | weakly decoupled | Growing Connections |
Guangdong | weakly decoupled | weakly decoupled | weakly decoupled | Growing Connections | weakly decoupled |
Guangxi | weakly decoupled | Expansion negative decoupling | out of touch | Growing Connections | weakly decoupled |
Hainan | Expansion negative decoupling | Growing Connections | weakly decoupled | Expansion negative decoupling | weakly decoupled |
Chongqing | Growing Connections | weakly decoupled | out of touch | weakly decoupled | Growing Connections |
Sichuan | weakly decoupled | weakly decoupled | out of touch | weakly decoupled | weakly decoupled |
Guizhou | out of touch | weakly decoupled | weakly decoupled | out of touch | Growing Connections |
Yunnan | weakly decoupled | weakly decoupled | out of touch | Expansion negative decoupling | Growing Connections |
Shaanxi | weakly decoupled | Growing Connections | weakly decoupled | Growing Connections | weakly decoupled |
Gansu | weakly decoupled | weakly decoupled | out of touch | Growing Connections | weakly decoupled |
Qinghai | Growing Connections | weakly decoupled | weakly decoupled | out of touch | Growing Connections |
Ningxia | weakly decoupled | Expansion negative decoupling | weakly decoupled | Expansion negative decoupling | weakly decoupled |
Xinjiang | weakly decoupled | Expansion negative decoupling | weakly decoupled | Expansion negative decoupling | weakly decoupled |
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Ji, J.; Li, C.; Ye, X.; Song, Y.; Lv, J. Analysis of the Spatial and Temporal Evolution of China’s Energy Carbon Emissions, Driving Mechanisms, and Decoupling Levels. Sustainability 2023, 15, 15843. https://doi.org/10.3390/su152215843
Ji J, Li C, Ye X, Song Y, Lv J. Analysis of the Spatial and Temporal Evolution of China’s Energy Carbon Emissions, Driving Mechanisms, and Decoupling Levels. Sustainability. 2023; 15(22):15843. https://doi.org/10.3390/su152215843
Chicago/Turabian StyleJi, Jingyi, Chao Li, Xinyi Ye, Yuelin Song, and Jiehua Lv. 2023. "Analysis of the Spatial and Temporal Evolution of China’s Energy Carbon Emissions, Driving Mechanisms, and Decoupling Levels" Sustainability 15, no. 22: 15843. https://doi.org/10.3390/su152215843
APA StyleJi, J., Li, C., Ye, X., Song, Y., & Lv, J. (2023). Analysis of the Spatial and Temporal Evolution of China’s Energy Carbon Emissions, Driving Mechanisms, and Decoupling Levels. Sustainability, 15(22), 15843. https://doi.org/10.3390/su152215843