Is the Economy, Environment and Energy (3E) System Sustainable?—An Analysis of the Coordination Degree of Carbon Decoupling and Energy Equity in the Yangtze River Economic Belt
Abstract
:1. Introduction
2. Theoretical Analysis and Research Area
2.1. Equity and Efficiency Coupling
2.2. Study Area
3. Data and Methodology
3.1. Calculation Method of Carbon Decoupling with Economic Growth
3.2. Evaluation Method of Energy Equity
3.3. Coordination Model Design
3.4. Bivariate Local Moran Index
3.5. Data Sources
4. Empirical Analysis Results
4.1. Energy Equity Evaluation
4.2. Estimation of Coordination Degree
Year | Degree of Coordination (D Value) | Coordination Type |
---|---|---|
2008 | 0.707 | Intermediate coordination |
2009 | 0.577 | Reluctant coordination |
2010 | 0.483 | Near coordination |
2011 | 0.331 | Mild imbalance |
2012 | 0.545 | Reluctant coordination |
2013 | 0.649 | Primary coordination |
2014 | 0.721 | Intermediate coordination |
2015 | 0.782 | Intermediate coordination |
2016 | 0.803 | Good coordination |
2017 | 0.816 | Good coordination |
2018 | 0.833 | Good coordination |
2019 | 0.839 | Good coordination |
- (1)
- From 2008 to 2011, the Yangtze River Economic Belt as a whole experienced a phase of recession and imbalance, declining from intermediate coordination to mild discordance. The main reason for this change was the rapid prosperity of China’s economy during this period, when increasing carbon emissions deviated from the development track of the low-carbon economy, resulting in the discordant development of carbon decoupling and energy equity.
- (2)
- From 2012 to 2015, the Yangtze River Economic Belt as a whole experienced a phase of coordinated improvement, rising from near coordination to a level of coordinated development. This stage shows that the Yangtze River Economic Belt quickly departed from the previous mode of economic development, which came at the expense of the environment and energy. Instead, it paid more attention to curbing the high carbon emissions of traditional industries. It actively developed clean energy, such as hydroelectricity and solar energy, while maintaining a high regional economic growth rate.
- (3)
- From 2016 to 2019, the Yangtze River Economic Belt as a whole experienced a stable phase of coordinated development and reached the highest level of good coordination in history. This stage suggests that the Yangtze River Economic Belt as a whole maintained a balance between the low-carbon economy and energy fairness and gradually improved the coordination between the two. Although the entire Yangtze River basin did not fall into the high-consumption traditional economic development mode during this period, it revealed to some extent the challenges in promoting the coordinated development of the low-carbon economy and energy fairness.
4.3. Heterogeneity Analysis
5. Discussion
5.1. This Study’s Limitations
5.2. The Future Research Prospect and Its Main Difficulties
6. Conclusions and Policy Implication
6.1. Conclusions
6.2. Policy Implication
6.2.1. Eliminating Inter-Basin Differences Is an Important Way for the Yangtze River Economic Belt to Achieve Coordinated Development of Carbon Decoupling and Energy Equity
6.2.2. Accelerating the Construction of a Guaranteed Mechanism for Energy Equity
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Decoupling Types | Decoupling State | ∆CE | ∆GDP | Decoupling Index (e) | Decoupling Rank |
---|---|---|---|---|---|
Coupling | Expanding coupling | + | + | [0.8,1.2) | 3 |
Declining coupling | − | − | [0.8,1.2) | 5 | |
Decoupling | Strong decoupling | − | + | (,0) | 1 |
Weak decoupling | + | + | [0,0.8) | 2 | |
Recessionary decoupling | − | − | [1.2,+∞) | 4 | |
Negative decoupling | Strong negative decoupling | + | − | (,0) | 7 |
Weak negative decoupling | − | − | [0,0.8) | 6 | |
Expanding negative decoupling | + | + | [1.2,+) | 4 |
Year | 2008–2011 | 2012–2015 | |||||||
---|---|---|---|---|---|---|---|---|---|
Province | ∆CE | ∆GDP | Decoupling | ∆CE | ∆GDP | Decoupling | |||
Shanghai | + | + | 0.422 | Weak decoupling | + | + | −0.055 | Strong decoupling | |
Jiangsu | + | + | 0.456 | Weak decoupling | + | + | 0.246 | Weak decoupling | |
Zhejiang | + | + | 0.349 | Weak decoupling | + | + | −0.111 | Strong decoupling | |
Anhui | + | + | 1.187 | Expanding negative | + | + | 0.655 | Weak decoupling | |
Jiangxi | + | + | 0.507 | Weak decoupling | + | + | 0.361 | Weak decoupling | |
Hubei | + | + | 0.384 | Weak decoupling | + | + | −0.437 | Strong decoupling | |
Hunan | + | + | 0.228 | Weak decoupling | + | + | −0.237 | Strong decoupling | |
Chongqing | + | + | 0.693 | Weak decoupling | + | + | 0.378 | Weak decoupling | |
Sichuan | + | + | 0.647 | Weak decoupling | + | + | 0.390 | Weak decoupling | |
Guizhou | + | + | 0.453 | Weak decoupling | + | + | 0.527 | Weak decoupling | |
Yunnan | + | + | 0.477 | Weak decoupling | + | + | 0.250 | Strong decoupling | |
Year | 2015–2019 | ||||||||
Province | ∆CE | ∆GDP | e | Decoupling | |||||
Shanghai | + | + | 0.040 | Weak decoupling | |||||
Jiangsu | + | + | 0.266 | Weak decoupling | |||||
Zhejiang | + | + | 0.010 | Weak decoupling | |||||
Anhui | + | + | 0.203 | Weak decoupling | |||||
Jiangxi | + | + | 0.291 | Weak decoupling | |||||
Hubei | + | + | 0.184 | Weak decoupling | |||||
Hunan | + | + | 0.248 | Weak decoupling | |||||
Chongqing | + | + | 0.160 | Weak decoupling | |||||
Sichuan | + | + | 0.106 | Weak decoupling | |||||
Guizhou | + | + | 0.314 | Weak decoupling | |||||
Yunnan | + | + | 0.091 | Weak decoupling |
Primary Indicators | Secondary Indicators | Tertiary Indicators | Index Attribute |
---|---|---|---|
Input | Availability | Raw coal | + |
Crude oil | + | ||
Natural gas | + | ||
Primary electricity | + | ||
Process | Energy-consuming equipment | The number of household cars per hundred households | + |
The number of air conditioners per hundred households | + | ||
The number of water heaters per hundred households | + | ||
The number of microwave ovens per hundred households | + | ||
Pollution control | The output value of the secondary industry | + | |
The proportion of environmental pollution control to GDP | + | ||
The comprehensive utilization rate of industrial solid waste | + | ||
Result | Affordability | The proportion of urban per-capita living electricity expenditure to income | − |
Per-capita energy consumption | + | ||
Per-capita electricity consumption | + | ||
Sustainability | Energy structure cleanliness | + | |
Energy consumption intensity of GDP | − | ||
Carbon emission intensity | − |
Tertiary Indicators | Description of Indicators |
---|---|
Raw coal | Actual coal reserves available for local consumption (in ten thousand tons) |
Crude oil | Actual oil reserves available for local consumption (in ten thousand tons) |
Natural gas | Actual natural gas reserves available for local consumption (in 100 million cubic meters) |
Primary electricity | Actual primary electricity reserves available for local consumption (in 100 million kilowatt-hours) |
The number of household cars per hundred households | The annual number of cars in urban households |
The number of air conditioners per hundred households | The annual number of air conditioners in urban households |
The number of water heaters per hundred households | The annual number of water heaters in urban households |
The number of microwave ovens per hundred households | The annual number of microwave ovens in urban households |
The output value of the secondary industry | (100 million yuan) |
The proportion of environmental pollution control to GDP | The total investment in environmental pollution control divided by the actual GDP (%) |
The comprehensive utilization rate of industrial solid waste | (%) |
The proportion of urban per-capita living electricity expenditure to income | The ratio of per-capita living electricity expenditure of urban residents to per-capita income (%) |
Per-capita energy consumption | Energy consumption divided by population (%) |
Per-capita electricity consumption | Electricity consumption divided by population (%) |
Energy structure cleanliness | Proportion of coal consumption (%) |
Energy consumption intensity of GDP | Energy consumption divided by real GDP (%) |
Carbon emission intensity | Carbon emissions divided by real GDP (%) |
Coordination Stage | Recessionary Imbalance Stage | Transition Stage | ||||
---|---|---|---|---|---|---|
Coordination type | Extreme imbalance | Severe imbalance | Moderate imbalance | Mild imbalance | Near coordination | Reluctant coordination |
Coordination level | [0, 0.1) | [0.1, 0.2) | [0.2, 0.3) | [0.3, 0.4) | [0.4, 0.5) | [0.5, 0.6) |
Coordination stage | Coordinated development stage | |||||
Coordination type | Primary coordination | Intermediate coordination | Good coordination | Excellent coordination | ||
Coordination level | [0.6, 0.7) | [0.7, 0.8) | [0.8, 0.9) | [0.9, 1] |
Primary Indicators | Tertiary Indicators | Indicator Symbol | Weight |
---|---|---|---|
Input | Raw coal | X1 | 0.09 |
Crude oil | X2 | 0.07 | |
Natural gas | X3 | 0.05 | |
Primary electricity | X4 | 0.03 | |
Process | The number of household cars per hundred households | Y1 | 0.07 |
The number of air conditioners per hundred households | Y2 | 0.11 | |
The number of water heaters per hundred households | Y3 | 0.02 | |
The number of microwave ovens per hundred households | Y4 | 0.07 | |
The output value of the secondary industry | Y5 | 0.11 | |
The proportion of environmental pollution control to GDP | Y6 | 0.08 | |
The comprehensive utilization rate of industrial solid waste | Y7 | 0.04 | |
Result | The proportion of urban per-capita living electricity expenditure to income | Z1 | 0.02 |
Per-capita energy consumption | Z2 | 0.07 | |
Per-capita electricity consumption | Z3 | 0.08 | |
Energy structure cleanliness | Z4 | 0.04 | |
Energy consumption intensity of GDP | Z5 | 0.02 | |
Carbon emission intensity | Z6 | 0.01 |
Year | Theil Value | Inter-Group Difference | Contribution Rate | Intra-Group Difference | Contribution Rate |
---|---|---|---|---|---|
2008 | 0.057 | 0.034 | 60.50% | 0.023 | 39.50% |
2009 | 0.051 | 0.031 | 59.65% | 0.021 | 40.35% |
2010 | 0.049 | 0.029 | 59.84% | 0.020 | 40.16% |
2011 | 0.045 | 0.027 | 59.47% | 0.018 | 40.53% |
2012 | 0.041 | 0.026 | 63.27% | 0.015 | 36.73% |
2013 | 0.044 | 0.028 | 63.52% | 0.016 | 36.48% |
2014 | 0.042 | 0.029 | 68.57% | 0.013 | 31.43% |
2015 | 0.036 | 0.027 | 72.44% | 0.010 | 27.56% |
2016 | 0.036 | 0.026 | 71.74% | 0.010 | 28.26% |
2017 | 0.036 | 0.025 | 71.19% | 0.010 | 28.81% |
2018 | 0.032 | 0.021 | 66.52% | 0.011 | 33.48% |
2019 | 0.029 | 0.019 | 65.91% | 0.010 | 34.09% |
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Fu, C.; Luo, C.; Liu, Y. Is the Economy, Environment and Energy (3E) System Sustainable?—An Analysis of the Coordination Degree of Carbon Decoupling and Energy Equity in the Yangtze River Economic Belt. Sustainability 2024, 16, 5817. https://doi.org/10.3390/su16135817
Fu C, Luo C, Liu Y. Is the Economy, Environment and Energy (3E) System Sustainable?—An Analysis of the Coordination Degree of Carbon Decoupling and Energy Equity in the Yangtze River Economic Belt. Sustainability. 2024; 16(13):5817. https://doi.org/10.3390/su16135817
Chicago/Turabian StyleFu, Chun, Chuanyong Luo, and Yezhong Liu. 2024. "Is the Economy, Environment and Energy (3E) System Sustainable?—An Analysis of the Coordination Degree of Carbon Decoupling and Energy Equity in the Yangtze River Economic Belt" Sustainability 16, no. 13: 5817. https://doi.org/10.3390/su16135817
APA StyleFu, C., Luo, C., & Liu, Y. (2024). Is the Economy, Environment and Energy (3E) System Sustainable?—An Analysis of the Coordination Degree of Carbon Decoupling and Energy Equity in the Yangtze River Economic Belt. Sustainability, 16(13), 5817. https://doi.org/10.3390/su16135817