Machine Learning-Based Carbon Emission Predictions and Customized Reduction Strategies for 30 Chinese Provinces
Abstract
:1. Introduction
2. Materials and Methods
2.1. Province Clusters
2.1.1. Classification Data Processing
2.1.2. Self-Adaptive k-Means++ Algorithm
2.2. Lasso Regression
2.3. Carbon Emission Prediction Algorithm
2.3.1. GM Algorithm
2.3.2. SVR Prediction Algorithm with TPE Bayesian Parameter Optimization
- 1.
- TPE-based Bayesian Parameter Optimization
- 2.
- SVR
2.4. Data Sources and Selection
2.4.1. Data Sources
2.4.2. Data Selection
3. Results
3.1. Provincial Classification
Spatial Distribution of Four Driving Factors
3.2. Handling Multicollinearity
3.2.1. Multicollinearity Analysis of the Driving Factors
3.2.2. Lasso Regression to Address Multicollinearity
3.3. PPR for Driving Factor Selection
3.4. GM-SVR Carbon Emission Prediction Model
3.4.1. Driving Factor Prediction
3.4.2. Carbon Emission Prediction
3.5. Comparative Analysis of Multiple Prediction Models
4. Discussion
4.1. Heterogeneity Analysis of Regional Carbon Emissions
4.1.1. Political Factors
- LCPPs: The political will of the government to promote low-carbon policies and reduce carbon emissions plays a critical role in shaping regional carbon emission trends. For instance, policies focused on clean energy development and energy efficiency improvements to reduce coal and electricity consumption. Additionally, the government’s political stability and emphasis on environmental protection influence the control and reduction of high-carbon energy sources. Policies such as energy consumption caps, green tax incentives, and support for renewable energy projects could be crucial in decreasing the reliance on coal. Furthermore, government initiatives can influence factors such as railway passenger volume and urban population distribution by promoting public transportation and urban development in environmentally friendly ways;
- EGHPs: In this category, the government’s adoption of strict energy control policies directly influences carbon emissions. Specific policies include carbon tax regulations, energy consumption quotas, and incentives for energy efficiency improvements in industries. The government may also provide financial support and subsidies to foster technological innovation, particularly in clean technologies such as renewable energy, carbon capture, and energy storage solutions. Support for domestic patent applications in green technologies also contributes to reducing carbon emissions by promoting local innovation in low-carbon solutions. These regions might also focus on green infrastructure to manage urban growth and reduce emissions;
- HCDPs: Government policies aimed at green development are particularly significant in reducing carbon emissions in these high-carbon-dependent provinces. For instance, policies may involve phasing out coal plants, incentivizing renewable energy adoption, and promoting energy-efficient technologies. Political transparency and public participation in environmental decision making can enhance the effectiveness of these policies. Furthermore, local governance plays an important role in the implementation of environmental protection laws, such as stricter emission standards and environmental impact assessments for industrial projects. Policies supporting electricity consumption reduction and public education on energy conservation are likely to be emphasized in these regions;
- SGPs: Political decisions regarding energy consumption directly influence carbon emissions, especially in the management of coal and electricity use. Governments may adopt energy transition policies that focus on reducing the share of coal in energy production and increasing the use of renewable energy sources. In addition, the government might introduce green technology support policies, such as subsidies for electric vehicles, solar power projects, and carbon emission reduction targets. These measures are designed to reduce the carbon footprint of key industries, particularly in manufacturing and transportation sectors. By focusing on low-carbon technology adoption, these provinces can further their goals of reducing emissions;
- LCTDPs: Policy guidance is vital in promoting an increase in the share of the secondary industry while reducing diesel consumption. For example, tax incentives for green technologies, subsidies for electric transportation, and carbon credit systems can play a central role. Governments may also provide strong support for education, promoting green technologies through research funding and the development of training programs for low-carbon industries. Additionally, transportation policies focusing on public transit and electric vehicle infrastructure could contribute to overall carbon reduction efforts. Technology development policies might include research and development (R&D) grants for low-carbon innovation, ensuring that these provinces maintain a technological edge in reducing their carbon emissions.
4.1.2. Economic Factors
- LCPPs: Economic transformation and industrial upgrading impact carbon emissions significantly. Also, high GDP regions are often accompanied by higher energy consumption and carbon emissions, especially in areas relying on traditional high-carbon energy. However, economic efficiency helps reduce carbon emission pressure;
- EGHPs: Economic openness, market transaction volume, and patent application volume are key economic factors driving green innovation and low-carbon technology application. Also, accelerated economic development can increase energy demand, leading to higher carbon emissions. However, the development of a green economy and environmental investments can mitigate this growth;
- HCDPs: The speed of economic growth is highly correlated with carbon emissions. Excessive reliance on heavy industry or high-carbon industries will increase emissions, while optimizing economic structure can help reduce emissions. In addition, the increase in per capita GDP has a noticeable effect on driving carbon emissions;
- SGPs: In this category, the proportion of coal and electricity consumption is directly linked to the stage of economic development. Economic development often leads to increased energy demand, resulting in higher carbon emissions. However, restructuring to rely on low-carbon technologies and clean energy may help reduce emissions;
- LCTDPs: The proportion of the secondary industry in the economic structure and energy consumption patterns impact carbon emissions. However, economic growth, especially industrialization, will increase carbon emissions unless there is a transition to clean energy technologies.
4.1.3. Social Factors
- LCPPs: Urban population density and demographic changes impact energy consumption and carbon emissions significantly. During urbanization, energy demand tends to rise, leading to higher carbon emissions. However, increased social awareness of environmental protection and energy conservation can alleviate this impact;
- EGHPs: Social culture, education levels, and environmental awareness affect carbon emissions significantly. As society deepens its understanding of the low-carbon economy, residents’ low-carbon lifestyles will contribute to reducing emissions. Meanwhile, social behavior and policy support will promote the application of low-carbon technologies;
- HCDPs: Urban population and urbanization have a particularly strong effect on carbon emissions. What is more, increased population density may lead to more energy demand, with transportation, buildings, and industries raising emissions. Additionally, social support and participation in environmental policies will influence the application of low-carbon technologies and emission reduction;
- SGPs: The public’s acceptance of low-carbon lifestyles is closely related to carbon emissions. As environmental policies and green technologies become more popular, social support for reducing energy consumption and carbon emissions gradually increases, facilitating a society-wide low-carbon transition;
- LCTDPs: Social structure, population mobility, and urbanization are closely related to carbon emissions. As per capita GDP and social welfare increase, energy demand typically rises, which may lead to higher carbon emissions.
4.1.4. Technological Factors
- LCPPs: Technological progress affects energy consumption patterns and carbon emissions directly, especially breakthroughs in clean energy and energy-saving technologies. Therefore, the adoption of advanced green technologies can significantly reduce coal and electricity consumption, thereby lowering emissions;
- EGHPs: Technological innovation, especially in the areas of energy savings, emission reduction, and low-carbon technologies, plays a crucial role in reducing carbon emissions. As market transaction volumes and patent applications increase, the research and application of low-carbon technologies will help control emissions;
- HCDPs: Technological advancements can improve energy efficiency effectively, especially in electricity consumption and building sectors. Additionally, the widespread use of green technologies in energy-saving, environmental protection, and clean production reduces carbon emissions directly;
- SGPs: Technological advancements are crucial in reducing carbon emissions. Emerging technologies will drive the green transformation of the energy structure to reduce dependence on high-carbon energy sources like coal and electricity, including high-efficiency energy, clean energy, and low-carbon production processes;
- LCTDPs: Innovations in green technologies for industrial production and energy consumption affect carbon emissions directly. Thanks to green technologies, the reduction in diesel consumption and improved energy efficiency in the secondary industry will reduce carbon emissions. Advances in sustainable energy will drive the transition to a low-carbon economy.
4.1.5. SWOT-Analysis
- 1.
- LCPPs
- (1)
- Strengths
- Government Policy Support: policies such as clean energy development and energy efficiency improvements help reduce coal and electricity consumption;
- Political Stability: strong policy stability is conducive to achieving long-term low-carbon goals;
- High Public Awareness of Environmental Protection: with the improvement of environmental awareness, public support for low-carbon living and energy conservation helps in the implementation of policies.
- (2)
- Weaknesses
- High Dependency on Coal: despite government green energy policies, certain regions remain heavily dependent on coal, with a slow transition process;
- Economic Transition Challenges: some low-carbon potential provinces still lag in industrial restructuring and technological innovation, leading to high energy demand for economic growth.
- (3)
- Opportunities
- National-Level Policy Support: policies such as green tax incentives and renewable energy project support help accelerate the application of green technologies in these regions;
- Emerging Green Technologies: technological innovations can effectively reduce dependence on coal and electricity, driving regional low-carbon transitions.
- (4)
- Threats
- External Economic Competitive Pressure: during the low-carbon transition, there may be competitive pressure from other provinces or countries in the development of green technologies;
- Inconsistent Policy Implementation: local governments may have differences in implementing green policies, leading to uneven transition progress.
- 2.
- EGHPs
- (1)
- Strengths
- Government Promotion of Green Technologies: the government supports the popularization of low-carbon technologies through policies such as green infrastructure construction and innovation subsidies;
- Strong Market Activity and Patent Applications: these factors promote local innovation and the application of green technologies.
- (2)
- Weaknesses
- Increased Energy Demand from Economic Growth: rapid economic development leads to higher energy consumption and carbon emissions, especially in high-carbon industries that rely on traditional energy sources.
- (3)
- Opportunities
- Green Economic Investment: investment and support for green technologies, both domestic and international, provide opportunities for these regions to develop low-carbon industries;
- Renewable Energy: government support for clean energy technologies can accelerate the pace of green transition.
- (4)
- Threats
- Structural Dependence on High-Carbon Industries: despite green policies, reliance on traditional high-carbon industries may limit the effectiveness of the low-carbon transition;
- Inconsistency in Local Government Policy Implementation: differences in local government execution of low-carbon policies may affect the overall emission reduction results.
- 3.
- HCDPs
- (1)
- Strengths
- Government Policies Shifting Toward Low Carbon: policies aimed at promoting green technologies and improving energy efficiency are gradually being implemented;
- Significant Potential for Technological Advancements: particularly in energy efficiency and building energy conservation, there is considerable room for improvement.
- (2)
- Weaknesses
- Reliance on Heavy Industry or High-Carbon Industries: the transformation pressure is substantial due to the reliance on these industries;
- High Energy Consumption in Densely Populated Areas: this leads to higher carbon emissions.
- (3)
- Opportunities
- National Policy Support and Local Government Green Development Projects: these can help accelerate the low-carbon transition;
- Widespread Application of Green Technologies: clean energy and energy-saving technologies can effectively reduce carbon emissions.
- (4)
- Threats
- Competition from High-Carbon Industries: the difficulty in reforming traditional industries may increase the pressure on low-carbon transition;
- Policy Implementation Effectiveness: local government execution of policies may not meet expectations, especially if local governments lack sufficient enforcement.
- 4.
- SGPs
- (1)
- Strengths
- Active Government Policies on Energy Consumption Management and Reducing Coal Use: the government has taken proactive steps in managing energy consumption and reducing coal use;
- Market Transactions and Technological Innovation Support: these support the promotion of low-carbon technologies, contributing to carbon emissions control.
- (2)
- Weaknesses
- Dependency on High-Carbon Energy in Industrial Structure: economic growth could lead to increased energy demand and carbon emissions;
- Low Public Awareness of Low-Carbon Living: this hinders the widespread adoption of low-carbon technologies.
- (3)
- Opportunities
- Energy Structure Transformation: government efforts to promote low-carbon energy and technologies enhance the green transformation of industrial structures;
- Low-Carbon Technology Support Policies: subsidies and green technology incentives help accelerate industrial transformation.
- (4)
- Threats
- Over-reliance on Coal and Traditional Energy: this could obstruct the low-carbon transition process;
- External Market and Policy Changes: changes in the global green economy and intense competition could heighten transition pressure.
- 5.
- LCTDPs
- (1)
- Strengths
- Strong Government Green Policies: these policies focus on energy structure adjustments and the application of low-carbon technologies;
- Market Activity and Technological Innovation: these factors help promote low-carbon technologies and the development of local green industries.
- (2)
- Weaknesses
- Challenges in Industrial Restructuring: difficulties remain in transforming high-carbon industries, leading to pressure in transitioning the economy;
- Limited Green Technology Diffusion: the popularization of green technologies is still constrained by technology maturity and insufficient funding.
- (3)
- Opportunities
- Technological Innovation and Increased Market Transactions: these push the application of low-carbon technologies, especially in electric transportation and clean energy;
- National Policy Support: national-level policies provide more green investment opportunities for these regions.
- (4)
- Threats
- Rapid Technological Iteration: the fast pace of green technology advancement may leave some regions behind in terms of technology updates;
- Short-Term Goals of Local Governments and Markets: inconsistent implementation of low-carbon policies may affect overall results due to the focus on short-term objectives.
4.2. Future Development Suggestions
4.2.1. LCPPs
4.2.2. EGHPs
4.2.3. HCDPs
4.2.4. SGPs
4.2.5. LCTDPs
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Algorithm A1 self-adaptive k-means++ | |
1: | Input: Features |
2: | Output: Categorized results by province |
3: | Initialize cluster centers randomly from data |
4: | For each k in the given range of cluster numbers do |
5: | For each iteration in the range of Max number of iterations do |
6: | Compute distances from each data point to each cluster center |
7: | For each data point do |
8: | Assign to the nearest cluster based on distance |
9: | End for |
10: | Update cluster centers based on assigned points |
11: | Check for convergence based on the center change threshold |
12: | Calculate the silhouette score for the current k and save |
13: | End for |
14: | End for |
15: | Determine the best k based on the maximum silhouette score |
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Primary Feature | Secondary Feature | Unit | Code |
---|---|---|---|
Population | Total Population | Ten thousand people | A1 |
Urbanization Rate | % | A2 | |
Urban Population | Ten thousand people | A3 | |
Resident Population at Year-End | Ten thousand people | A4 | |
Economy | Proportion of Secondary Industry in GDP | % | B1 |
Proportion of Tertiary Industry in GDP | % | B2 | |
GDP per Capita | CNY | B3 | |
Gross Regional Product | Hundred million CNY | B4 | |
GDP per Capita of Region | CNY/person | B5 | |
Social Factors | Technology Market Transaction Value | Ten thousand CNY | C1 |
Road Passenger Traffic | Ten thousand CNY | C2 | |
Rail Passenger Traffic | Ten thousand CNY | C3 | |
Passenger Traffic | Ten thousand passenger trips | C4 | |
Education Expenditure | Ten thousand CNY | C5 | |
Domestic Patent Applications Received | Items | C6 | |
Energy Factors | Carbon Dioxide Emissions | MT | D1 |
Coal Consumption | Ten thousand tons | D2 | |
Gasoline Consumption | Ten thousand tons | D3 | |
Natural Gas Consumption | Hundred million cubic meters | D4 | |
Diesel Consumption | Ten thousand tons | D5 | |
Electricity Consumption | Billion kWh | D6 | |
Kerosene Consumption | Ten thousand tons | D7 | |
Environmental Factors | Green Coverage Rate in Built-up Areas | % | E1 |
Province | B3 | A1 | C1 | C2 | C3 | C4 | E1 |
---|---|---|---|---|---|---|---|
Shanghai | 0.006 | −0.023 | 0 | −0.01 | −0.008 | 0 | 0.319 |
Yunnan | 0 | −0.292 | 0 | 0 | 0.005 | −0.001 | −0.404 |
Inner Mongolia | 0.037 | 0.794 | 0 | −0.023 | 0.041 | 0.022 | −0.675 |
Beijing | 0 | 0.059 | 0 | 0 | 0.001 | 0 | −0.303 |
Jilin | 0.001 | 0.234 | 0 | −0.006 | −0.001 | 0.006 | 0.101 |
Sichuan | −0.001 | −0.046 | 0 | −0.002 | −0.002 | 0.002 | −4.88 |
Tianjin | −0.003 | 0 | 0 | 0.028 | 0.039 | −0.028 | 0 |
Ningxia | 0.003 | 3.242 | 0 | −0.02 | 0.053 | 0.018 | 1.854 |
Anhui | −0.006 | −0.041 | 0 | 0.004 | 0.011 | −0.004 | −0.61 |
Shandong | 0.026 | 1.441 | 0 | −0.003 | 0.009 | 0.003 | 4.257 |
Shanxi | −0.384 | −0.576 | 0.001 | 0.127 | 0.176 | −0.155 | −19.819 |
Guangdong | 0 | −0.017 | 0 | 0.001 | 0 | −0.001 | −2.114 |
Guangxi | 0.006 | −0.027 | 0 | 0.004 | 0.005 | −0.003 | 0.076 |
Xinjiang | 0.01 | −0.039 | 0 | 0 | −0.002 | 0 | 2.185 |
Jiangsu | 0 | −0.625 | 0 | −0.005 | −0.006 | 0.005 | −0.761 |
Jiangxi | 0.001 | −0.098 | 0 | −0.001 | 0 | 0.001 | −0.299 |
Hebei | −0.094 | 0.772 | 0 | 0 | 0.02 | −0.001 | 0 |
Henan | −0.05 | 0.125 | 0 | −0.021 | −0.03 | 0.02 | 0.19 |
Zhejiang | 0.01 | −0.011 | 0 | 0.011 | 0.01 | −0.011 | 2.707 |
Hainan | −0.002 | −0.222 | 0 | −0.012 | −0.02 | 0.012 | 0.139 |
Hubei | −0.001 | −0.008 | 0 | 0 | 0.003 | 0 | −0.453 |
Hunan | 0.005 | 0.142 | 0 | 0 | −0.001 | 0 | −11.551 |
Gansu | −0.002 | −0.019 | 0 | 0.004 | 0.007 | −0.004 | 0.306 |
Fujian | 0.004 | −0.069 | 0 | 0.001 | 0 | −0.001 | −3.901 |
Guizhou | 0.02 | 0.02 | 0 | 0 | −0.019 | 0 | −0.809 |
Liaoning | −0.064 | 0.344 | 0 | 0.009 | 0.004 | −0.008 | 0.254 |
Chongqing | −0.002 | −0.126 | 0 | 0 | 0.013 | 0 | −1.078 |
Shaanxi | 0.016 | 2.562 | 0 | 0.012 | 0.021 | −0.012 | −1.566 |
Qinghai | 0.007 | 0.418 | 0 | −0.015 | 0.007 | 0.015 | −0.24 |
Heilongjiang | −0.004 | 0.399 | 0 | −0.002 | 0.016 | 0 | 0.04 |
Category | Effective Driving Factors |
---|---|
Low-carbon potential provinces (LCPPs) | C2, B3, D2, A3, A1, C1, D6, C4, C6, C3, B5, B4 |
Economic growth hub provinces (EGHPs) | C1, B5, D5, D7, C6, C2, C3, D2, C4, D4, D6, A4, A1, A3 |
High-carbon-dependent provinces (HCDPs) | A4, B3, C1, C2, D6, B4, C6, A3, D7, E1, B1 |
Sustainable growth provinces (SGPs) | C1, A3, A4, B5, C6, C2, B3, C3, E1, D5, B4, D3, D2, C4, D6, A1 |
Low-carbon technology-driven provinces (LCTDPs) | C2, C1, B5, C5, D5, B1, B3 |
Province | Factor | 2027 | 2028 | 2029 | 2030 | 2031 |
---|---|---|---|---|---|---|
Hainan (LCPPs) | C1 | 70,003.93 | 76,783.04 | 84,218.63 | 92,374.28 | 101,319.70 |
C2 | 26,654.30 | 28,043.98 | 29,506.10 | 31,044.46 | 32,663.03 | |
D5 | 455.33 | 468.52 | 482.10 | 496.07 | 510.44 | |
Liaoning (EGHPs) | C1 | 15,186,425.47 | 17,646,268.75 | 20,504,548.71 | 23,825,802.71 | 27,685,021.65 |
C2 | 74,335.99 | 75,319.90 | 76,316.83 | 77,326.95 | 78,350.45 | |
D5 | 2371.90 | 2532.60 | 2704.17 | 2887.38 | 3082.99 | |
Shandong (HCDPs) | C1 | 59,327,768.93 | 65,207,510.88 | 77,094,826.87 | 87,512,060.07 | 90,219,269.12 |
C2 | 114,268.81 | 114,535.20 | 114,802.20 | 115,069.82 | 115,338.07 | |
B1 | 41.08 | 40.68 | 40.29 | 39.90 | 39.51 | |
Heilongjiang (SGPs) | C1 | 8,159,351.428 | 9,517,661.358 | 11,102,092.92 | 12,950,289.21 | 15,106,159.89 |
C2 | 21,797.98 | 21,228.48 | 20,673.87 | 20,133.75 | 19,607.74 | |
D5 | 483.43 | 485.75 | 488.08 | 490.42 | 492.77 | |
Shanghai (LCTDPs) | C1 | 38,685,401.75 | 44,225,406.57 | 50,558,776.64 | 57,799,127.11 | 66,076,343.53 |
C2 | 4075.18 | 4163.22 | 4253.17 | 4345.06 | 4438.93 | |
B1 | 24.31 | 23.68 | 23.07 | 22.47 | 21.89 |
Fold | RMSE | MAE | R2 |
---|---|---|---|
1 | 0.158 | 0.150 | 0.952 |
2 | 0.165 | 0.154 | 0.957 |
3 | 0.160 | 0.152 | 0.954 |
4 | 0.159 | 0.153 | 0.956 |
5 | 0.164 | 0.156 | 0.955 |
Avg | 0.161 | 0.153 | 0.955 |
Algorithm | RMSE | MAE | R2 |
---|---|---|---|
GM | 0.345 | 0.351 | 0.671 |
LSTM | 0.315 | 0.342 | 0.678 |
SVR | 0.315 | 0.234 | 0.684 |
X-GBOOST | 0.475 | 0.443 | 0.618 |
Random Forest | 0.272 | 0.254 | 0.765 |
GM-SVR | 0.161 | 0.153 | 0.955 |
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Hong, S.; Fu, T.; Dai, M. Machine Learning-Based Carbon Emission Predictions and Customized Reduction Strategies for 30 Chinese Provinces. Sustainability 2025, 17, 1786. https://doi.org/10.3390/su17051786
Hong S, Fu T, Dai M. Machine Learning-Based Carbon Emission Predictions and Customized Reduction Strategies for 30 Chinese Provinces. Sustainability. 2025; 17(5):1786. https://doi.org/10.3390/su17051786
Chicago/Turabian StyleHong, Siting, Ting Fu, and Ming Dai. 2025. "Machine Learning-Based Carbon Emission Predictions and Customized Reduction Strategies for 30 Chinese Provinces" Sustainability 17, no. 5: 1786. https://doi.org/10.3390/su17051786
APA StyleHong, S., Fu, T., & Dai, M. (2025). Machine Learning-Based Carbon Emission Predictions and Customized Reduction Strategies for 30 Chinese Provinces. Sustainability, 17(5), 1786. https://doi.org/10.3390/su17051786