Peaking Global and G20 Countries’ CO2 Emissions under the Shared Socio-Economic Pathways
Abstract
:1. Introduction
2. Literature Review
3. Methodology and Data
3.1. STIRPAT Model and PLS Regression
3.2. Scenario Analysis
- (1)
- SSP1: A road of sustainable development. The challenges people face in mitigating and adapting to climate change will be relatively low. The world will develop inclusively and the ecological environment will be respected. Investment in education and health will accelerate the demographic transition. Countries will shift their focus from economic growth to human well-being. Inequality will be lower and consumption will be less energy-intensive.
- (2)
- SSP2: Middle of the road. The challenges people face in mitigating and adapting to climate change will be modest. The world will follow a path in which social, economic, and technological trends do not deviate significantly from historical patterns.
- (3)
- SSP3: A road of regional competition. People are facing great challenges in mitigating and adapting to climate change. Due to concerns about competitiveness and regional conflicts, the policies of various countries will gradually turn to face national and regional security issues. Due to excessive efforts in the face of security issues, countries will sacrifice broader development, including education investment decline, slow economic development, inequality deterioration, and serious environmental degradation.
- (4)
- SSP4: A road of unequal development. The challenges people face in mitigating climate change will be low, and the challenge of adapting to climate change will be high. In this scenario, the inequality between and within countries in the world will become more and more serious. This will lead to a gradual increase in the development gap between different countries and different strata in the world. With the passage of time, there will be two extreme development situations, one is high-tech and capital-intensive, the other is the serious backwardness of social and economic development.
- (5)
- SSP5: A road of high fossil fuel consumption. The challenges people face in mitigating climate change will be great, and the challenges of adapting to climate change will be relatively low. In this scenario, countries around the world believe in rapid development and technological progress, and the energy-intensive development model will promote rapid economic growth. In addition, people believe in the ability to manage societies and ecosystems, including through geoengineering if necessary.
3.3. Data
4. Results and Discussion
4.1. Historical CO2 Emissions
4.2. Projections of CO2 Emissions in SSP Baseline Scenarios
- (1)
- According to the SSP1 baseline scenario, the world will generally change its existing development path and optimize it in a sustainable direction. Due to a relatively low population (P) change, low energy intensity (EI), and gradually decreasing fossil energy share (FS), it can be found that in the SSP1 scenario, at least half of the countries can reach the peak and enter a steady downward trend in the future, including China, which currently contributes the most to global CO2 emissions. The emission path of the world in the SSP1 scenario is also at a low level. This suggests that a sustainable development path is feasible for reducing CO2 emissions when there is no new climate policy.
- (2)
- In the SSP2 baseline scenario, countries around the world will almost maintain their existing development patterns. Combined with Figure 2, it can be found that this route is not conducive to reducing CO2 emissions. Only Japan, the Russian Federation, and the United Kingdom can enter a stable downward trend of CO2 emissions. Combined with the actual situation, there are still developing countries such as India in the extensive model of development, and the transformation of the development model cannot be achieved overnight. In addition, this result also shows that some countries which have achieved the peak of CO2 emissions in history still need to further optimize their development model, otherwise they may not achieve the real ‘carbon peak’.
- (3)
- In the SSP3 baseline scenario, countries will embark on a road that focuses on regional security and high-intensity competition, which will greatly weaken the development potential of some emerging economies and developing countries. In this scenario, the level of economic development is generally lower than that set in other scenarios. This will make the world’s CO2 emissions path reach the lowest level in all baseline paths. It is clear that this competitive scenario will inevitably lead to unequal development at an international level and will not be conducive to the prosperity of the world. This is not in line with the consensus reached by most countries in the United Nations’ Sustainable Development Goals (SDGs).
- (4)
- In the SSP4 baseline scenario, the world will move towards an unequal development model, including inequality at an international level and inequality within countries or regions. This scenario corresponds to a relatively low energy intensity (EI), while population (P), economic development level (A), the urbanization rate (UR), and fossil energy share (FS) are set separately based on the situation of each country. Combined with Figure 2, we find that the CO2 emission path under the SSP4 setting, which represents inequality, is unexpected because it can achieve relatively low CO2 emissions in most of the countries. There is a lot of discussion about the impact of inequality on CO2 emissions in various studies. If we use income inequality to measure development inequality, some studies suggest that the relationship between income inequality and CO2 emissions shows different signs between rich countries and low-income countries [54,55]. In addition, some studies show that high-income groups within a country have a more positive effect on reducing CO2 emissions [56].
- (5)
- In the SSP5 baseline scenario, countries will pay less attention to energy structure optimization and energy saving. This will lead to a high proportion of fossil energy (FS) and a high energy intensity (EI). It is worth noting that the setting of the population (P), economic development level (A), and urbanization rate (UR) in SSP5 is close to that in SSP1. Moreover, in the SSP5 scenario setting, it is considered that countries will take environmental measures other than energy structure optimization to reduce CO2 emissions. However, it is clear whether, under such a scenario, the world would be on a path to irreversible climate change. Except for the United Kingdom, which can maintain a downward trend of CO2 in this scenario, other countries will maintain a relatively divergent emission path. From the perspective of the world’s CO2 emission path, the path under the SSP5 baseline scenario is much higher than that under other scenarios, and there is no convergence trend in this path, which implies that all the efforts made by the world to change climate change may be in vain.
4.3. Projections of CO2 Emissions in SSP-3.4 Scenarios
- (1)
- In the SSP1-3.4 scenario, except for Argentina, Brazil, India, Saudi Arabia, and South Africa, all other countries studied in this paper can achieve a peak in CO2 emissions by 2050. In this scenario, the CO2 emissions of China, India, Korea, Rep., Mexico, and Saudi Arabia are at a high level compared with other scenarios. The paths of the world also follow this pattern. This shows the challenge of achieving more stringent climate goals while adhering to the sustainable development path. Taking the world as an example, compared with the SSP1 baseline scenario, the CO2 emissions corresponding to the SSP1-3.4 scenario are lower. However, compared with other SSP-3.4 scenarios, SSP1-3.4 requires more resources to achieve sustainable development goals other than climate change, so its CO2 emissions will be higher.
- (2)
- In the SSP2-3.4 scenario, most countries can reach the peak and achieve a stable decline in CO2 emissions. It is worth noting that the CO2 emissions of developed countries in the SSP2-3.4 scenario are generally higher than those in the SSP1-3.4 scenario which adheres to the sustainable development model. Due to the advanced technology level and development mode, developed countries can better balance the maintenance of the sustainable development path and the realization of climate goals. Therefore, compared with developing countries, climate goals will not encroach too much on the resources of other sustainable development goals.
- (3)
- In the SSP3-3.4 scenario, the CO2 emission paths at both country and global levels are similar to those in the baseline scenario, and are generally at a relatively low level. This is obviously caused by insufficient development caused by vicious competition among countries. Although this scenario is beneficial to curb climate change, it is not conducive to achieving equitable resource allocation among countries to achieve common prosperity.
- (4)
- For the SSP4-3.4 scenario, although it has the same connotation of inequality as SSP3-3.4, or even a higher degree of inequality, it is worth noting that this scenario does not exclude international cooperation. Similar to SSP4, it can achieve the goal of prosperity for some people. So, it can result in higher CO2 emissions than the lose–lose scenario of the SSP3-3.4. However, for the sustainable development scenario SSP1-3.4, where all people are treated equally, its emission levels will generally be lower.
- (5)
- In the SSP5-3.4 scenario, similar to SSP5, CO2 emissions at both the country and global level are higher than in the other scenarios. Different from SSP5, in the SSP5-3.4 scenario, although countries still follow the development route of fossil energy consumption, the proportion of fossil energy will be lower than that of SSP5. At the same time, the consumption of primary energy is also lower, which can significantly reduce the level of energy intensity. For the above reasons, the emission levels of most countries show a convergence trend under the SSP5-3.4 scenario, that is, the peak time has been greatly advanced.
4.4. CO2 Emissions in 2050 Compared to 2019
5. Conclusions
6. Limitation
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Variable | Meaning | Description |
---|---|---|
CE | CO2 emissions | Annual CO2 emissions, Mt |
P | Population size | Year-end population |
A | Economic development level | Per capita GDP, at constant 2015 purchasing power parity (PPP), USD |
EI | Energy intensity | Total primary energy consumption/GDP, tce/105 |
UR | Urbanization rate | Urban population/Total population, % |
FS | Proportion of fossil energy consumption | Fossil energy consumption/Total primary energy consumption, % |
Country/Region | 1990 | 2000 | 2010 | 2019 | Proportion (%) | Growth Rate (%) |
---|---|---|---|---|---|---|
Argentina | 105.452 | 132.610 | 168.807 | 175.818 | 0.512 | 1.778 |
Australia | 274.888 | 355.033 | 396.535 | 400.973 | 1.167 | 1.310 |
Brazil | 198.637 | 306.378 | 403.094 | 444.906 | 1.295 | 2.820 |
Canada | 449.773 | 537.970 | 550.117 | 577.997 | 1.682 | 0.869 |
China | 2323.833 | 3360.874 | 8145.828 | 9810.456 | 28.555 | 5.092 |
France | 367.241 | 381.500 | 360.362 | 298.951 | 0.870 | −0.707 |
Germany | 1007.606 | 854.428 | 783.163 | 681.483 | 1.984 | −1.339 |
India | 613.130 | 961.256 | 1652.135 | 2471.946 | 7.195 | 4.925 |
Indonesia | 145.051 | 278.152 | 446.455 | 624.547 | 1.818 | 5.163 |
Italy | 403.781 | 434.379 | 397.116 | 330.276 | 0.961 | −0.691 |
Japan | 1086.992 | 1233.184 | 1197.903 | 1117.673 | 3.253 | 0.096 |
Korea, Rep. | 235.438 | 428.597 | 578.895 | 623.159 | 1.814 | 3.413 |
Mexico | 269.854 | 363.004 | 454.822 | 459.759 | 1.338 | 1.854 |
Russian Federation | 2233.921 | 1452.763 | 1526.638 | 1595.686 | 4.644 | −1.153 |
Saudi Arabia | 217.149 | 279.310 | 471.961 | 579.622 | 1.687 | 3.443 |
South Africa | 324.870 | 371.650 | 474.864 | 462.448 | 1.346 | 1.225 |
Turkey | 136.240 | 205.693 | 276.300 | 385.453 | 1.122 | 3.651 |
United Kingdom | 600.322 | 569.793 | 529.970 | 380.175 | 1.107 | −1.563 |
United States | 4978.861 | 5745.765 | 5494.979 | 5029.389 | 14.639 | 0.035 |
World | 21,548.909 | 23,847.931 | 31,291.429 | 34,356.612 | 100.000 | 1.622 |
Country/Region | Cons | lnP | lnA | (lnA)2 | lnEI | lnUR | lnFS |
---|---|---|---|---|---|---|---|
Argentina | −29.325 | 0.484 | 0.399 | 0.021 | 0.655 | 2.609 | 1.466 |
Australia | −1.396 | 0.279 | 0.345 | 0.016 | −0.108 | −3.237 | 2.566 |
Brazil | −21.179 | 0.482 | 0.548 | 0.031 | 1.071 | 0.771 | 0.929 |
Canada | −17.591 | 0.060 | 0.344 | 0.016 | 0.607 | 2.642 | 0.877 |
China | −40.416 | 1.415 | 0.327 | 0.021 | 1.023 | 0.930 | 1.700 |
France | −37.518 | 1.807 | 0.438 | 0.020 | 1.043 | −0.777 | 1.160 |
Germany | −2.169 | −0.175 | 0.578 | 0.028 | 1.175 | −0.812 | 0.715 |
India | −24.557 | 0.582 | 0.380 | 0.029 | 1.075 | 1.753 | 1.189 |
Indonesia | −57.171 | 2.597 | 0.436 | 0.037 | 1.149 | −0.884 | 1.490 |
Italy | −30.039 | 1.550 | 0.457 | 0.023 | 0.785 | −1.569 | 1.280 |
Japan | −67.089 | 3.466 | 0.347 | 0.017 | 0.608 | −0.366 | 0.906 |
Korea, Rep. | −42.889 | 1.198 | 0.186 | 0.009 | 0.138 | 3.445 | 2.139 |
Mexico | −36.284 | 0.435 | 0.512 | 0.028 | 0.456 | 1.547 | 4.217 |
Russian Federation | −34.814 | 2.320 | 0.558 | 0.027 | 0.975 | −4.444 | 1.382 |
Saudi Arabia | −31.784 | 0.434 | 0.733 | 0.037 | 0.692 | 3.821 | 0.000 |
South Africa | −27.411 | 0.648 | 0.490 | 0.028 | 1.028 | 0.879 | 1.718 |
Turkey | −17.434 | 0.430 | 0.495 | 0.028 | 0.867 | 0.579 | 0.727 |
United Kingdom | 12.985 | −0.620 | 0.108 | 0.005 | 0.093 | −1.304 | 1.823 |
United States | −51.993 | 2.663 | 0.507 | 0.019 | 1.145 | −3.515 | 2.867 |
World | −17.762 | 0.249 | 0.472 | 0.027 | 0.921 | 1.034 | 1.961 |
Country | SSP1 | SSP2 | SSP3 | SSP4 | SSP5 | SSP1-3.4 | SSP2-3.4 | SSP3-3.4 | SSP4-3.4 | SSP5-3.4 |
---|---|---|---|---|---|---|---|---|---|---|
Argentina | 54.50 | 80.53 | 55.99 | 57.01 | 149.53 | 28.78 | 36.33 | 1.36 | 22.94 | 71.79 |
Australia | 3.61 | 26.76 | 2.53 | 16.00 | 102.87 | −7.43 | 4.43 | −40.94 | −33.05 | 57.22 |
Brazil | 69.09 | 82.95 | 62.53 | 72.48 | 151.91 | 39.84 | 48.59 | 9.84 | 39.50 | 71.85 |
Canada | −6.21 | 20.76 | 32.94 | 19.63 | 46.87 | −14.31 | 4.90 | −2.80 | −8.33 | 17.30 |
China | 21.79 | 51.41 | 61.69 | 41.35 | 114.84 | −4.30 | −10.32 | −27.17 | −28.13 | 12.15 |
France | −17.80 | 17.55 | 2.62 | 4.15 | 95.43 | −28.46 | −5.10 | −35.26 | −28.88 | 37.91 |
Germany | −20.84 | 16.73 | 47.61 | 22.62 | 50.96 | −30.39 | −3.81 | 0.26 | −9.15 | 8.71 |
India | 157.05 | 139.77 | 75.13 | 197.83 | 329.27 | 106.01 | 55.56 | −12.00 | 72.47 | 140.79 |
Indonesia | 6.90 | 49.39 | 108.72 | 10.95 | 90.94 | −16.60 | −9.89 | −5.31 | −41.74 | 2.97 |
Italy | −31.71 | −3.03 | −6.37 | −11.61 | 50.76 | −39.67 | −20.12 | −39.55 | −39.34 | 10.95 |
Japan | −35.69 | −27.53 | −48.31 | −38.64 | 32.81 | −41.33 | −37.20 | −62.46 | −53.29 | 5.71 |
Korea, Rep. | 35.77 | 59.20 | 44.73 | 39.10 | 121.78 | 18.65 | 1.77 | −19.52 | −24.97 | 45.20 |
Mexico | 92.19 | 174.92 | 83.29 | 98.30 | 346.42 | 33.93 | 30.90 | −31.30 | 11.16 | 161.13 |
Russian Federation | −40.96 | −22.46 | 2.76 | −44.99 | −1.84 | −48.05 | −42.42 | −45.01 | −65.66 | −44.38 |
Saudi Arabia | 212.52 | 176.04 | 174.62 | 186.38 | 314.74 | 184.73 | 152.93 | 126.19 | 166.11 | 235.75 |
South Africa | 109.57 | 134.10 | 127.97 | 118.33 | 188.18 | 66.55 | 70.10 | 24.43 | 54.33 | 96.92 |
Turkey | 2.47 | 22.49 | 1.78 | 22.18 | 96.87 | −7.68 | 4.50 | −26.82 | −6.26 | 51.19 |
United Kingdom | −35.80 | −11.75 | −8.05 | −18.00 | −6.74 | −41.54 | −24.60 | −39.87 | −45.65 | −25.01 |
United States | −36.31 | 15.28 | −17.99 | −13.77 | 158.65 | −49.29 | −19.82 | −65.34 | −60.01 | 48.34 |
World | 48.76 | 64.89 | 29.37 | 55.66 | 205.42 | 20.06 | 11.50 | −36.37 | −12.77 | 80.30 |
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Kong, Y.; Feng, C.; Guo, L. Peaking Global and G20 Countries’ CO2 Emissions under the Shared Socio-Economic Pathways. Int. J. Environ. Res. Public Health 2022, 19, 11076. https://doi.org/10.3390/ijerph191711076
Kong Y, Feng C, Guo L. Peaking Global and G20 Countries’ CO2 Emissions under the Shared Socio-Economic Pathways. International Journal of Environmental Research and Public Health. 2022; 19(17):11076. https://doi.org/10.3390/ijerph191711076
Chicago/Turabian StyleKong, Yuan, Chao Feng, and Liyang Guo. 2022. "Peaking Global and G20 Countries’ CO2 Emissions under the Shared Socio-Economic Pathways" International Journal of Environmental Research and Public Health 19, no. 17: 11076. https://doi.org/10.3390/ijerph191711076
APA StyleKong, Y., Feng, C., & Guo, L. (2022). Peaking Global and G20 Countries’ CO2 Emissions under the Shared Socio-Economic Pathways. International Journal of Environmental Research and Public Health, 19(17), 11076. https://doi.org/10.3390/ijerph191711076