The Spatial Network Structure of China’s Regional Carbon Emissions and Its Network Effect
Abstract
:1. Introduction
2. Methodology and Data
2.1. Determination of the Spatial Correlation Network of Carbon Emissions
2.2. Characteristics of China’s Provincial Spatial Correlation Network of Carbon Emissions
2.2.1. Overall Network Characteristics
2.2.2. Network Characteristics of Each Node
2.2.3. Block Model Analysis
2.3. Data
3. Results and Discussion
3.1. Structural Characteristics of Spatial Correlation Networks for Carbon Emissions in China’s Provinces
3.1.1. Analysis of Overall Network Characteristics
3.1.2. Central Analysis
3.1.3. Block Model Analysis
3.2. Analysis of the Influence Factors of the Spatial Correlation of Carbon Emissions in Provinces Based on the Quadratic Assignment Procedure (QAP) Analysis Method
3.2.1. Model Construction
3.2.2. QAP Regression Analysis
3.3. Network Effects of Spatial Correlation of Carbon Emissions in China’s Provinces
- (1)
- The degree of point centrality coefficient is −0.008, indicating that for each unit of the point of centrality value, the carbon emission intensity decreases by 0.004 units. In Qinghai, Ningxia, Guangxi, Shaanxi, Jilin and other provinces, degree centrality is small, meaning that they can be strengthened with the neighboring provinces of carbon emission links to better promote the effective reduction of carbon emission intensity.
- (2)
- The betweenness centrality coefficient is −0.004, indicating that for each unit of the betweenness centrality value, the carbon emission intensity decreases by 0.004 units. In Shanghai, Jiangsu, Zhejiang, Guangdong, Fujian and other provinces, the betweenness centrality is higher. Most of these regions are located in the Yangtze River Delta and Pearl River Delta urban agglomeration, which are within the “hub” status in the overall network structure, and have a strong spatial spillover effect on carbon emissions in other provinces, effectively promoting overall carbon emission intensity reduction;
- (3)
- The closeness centrality of the regression coefficient value is −0.007, indicating that for each unit of the closeness centrality value, the carbon emission intensity decreases by 0.007 units. The higher the closeness degree, the closer the linkages in the overall network structure of the provinces are. Ningxia, Xinjiang, Qinghai, Jilin and other provinces with lower close closeness degrees can strengthen the connection with provinces in the center of the network, which can be effective to reduce carbon intensity.
4. Conclusions and Policy Implications
- (1)
- There are obvious spatial correlations between China’s provinces and regions in terms of carbon emissions. During 2008 to 2014, the network density increased by 19%, the network efficiency decreased by 7.66%, the network level decreased by 47.7%, and the network correlation degree was always 1, which indicates that the spatial correlation network structure of carbon emissions in China’s provinces has gradually stabilized.
- (2)
- The degree of point centralities of the five developed areas, including Shanghai, Tianjin, Zhejiang, Jiangsu and Guangdong provinces, is at the top. Those provinces are in the center of the carbon emissions network, and have more relations of reception. But in Gansu, Ningxia, Xinjiang, Heilongjiang, Qinghai, Jilin and other remote underdeveloped areas in the west, the degree of point centrality ranking has been lower but with more divergent relations, while most other provinces act as hubs. In the regions with the highest degree of point centrality, Shanghai, Tianjin, Guangdong (including Shenzhen) were the pilot areas in China to allow carbon emissions trading in 2012, but all of the carbon markets started trading in 2013, and the trading volumes were small. However, Shanghai, Tianjin and Guangdong are all economically developed regions, Jiangsu and Zhejiang are always the top economically developed provinces, and all of these five regions belong to the coastal areas in China. Whereas, the regions with low-ranking degree of point centrality are inland regions with relatively low level of economic development in China. Therefore, we believe that the reason for this result may be related to the level of regional economic development and their geographical location.
- (3)
- Carbon emissions can be divided into four blocks: “bidirectional spillover block”, “net beneficial block”, “net spillover block” and “broker block”.
- (4)
- The differences in the energy consumption, economic level and geographical location of the provinces have a significant impact on the spatial correlation relationship of carbon emissions.
- (1)
- According to the structure and characteristics of the spatial network of carbon emissions in China, we should better understand the flow mechanism of carbon emissions and its conductivity, allocate carbon emission indicators across regions, and fully realize the coordinated emission reduction plan. With the establishment and improvement of China’s carbon emission trading market [18], the correlation of carbon emissions among the provinces has also increased year by year. Therefore, in the formulation of emission reduction plans, it is necessary to fully consider the relationship between the regions, and to solve the problem of optimal allocation of carbon emission from the micro and macro levels. Economically developed regions such as Beijing, Shanghai, and Tianjin are in the center of the network, and these provinces have high dependence on carbon emissions in resource-rich regions such as Xinjiang and Shanxi, reflecting the higher demand for carbon emissions in these economically developed regions. Therefore, it is possible that by establishing a “satellite” industrial chain through high carbon emission transfer can solve the problem of high carbon emissions in some regions. The Jiangsu, Zhejiang and Shanghai regions are “net beneficial” blocks with large populations, dense industry and huge carbon emissions, and these regions can also use industrial transfer methods to solve high carbon emissions. For the “net spillover” blocks in resource-rich areas, which have low economic development and low demand for carbon emissions, we can introduce high-carbon industries from developed regions, and balance the problem of excessive carbon emissions in some regions. Some mid-western regions are “brokers” blocks, which are closely linked to other sectors, and these regions should maintain a “middleman” role in allowing carbon emissions to be transmitted and flow through the network.
- (2)
- Continuously optimize China’s carbon emission spatial network, gradually reach the regional carbon emission balance, and achieve balanced emission reduction. We think that the implementation of different regional environmental policies may have a positive effect on reducing regional carbon emissions leakage, especially in non-power industries. In view of the characteristics of direct spillover in the eastern part of China and indirect spillovers in the western region, a corresponding carbon emission reduction policy was formulated to comprehensively consider both energy transfer costs and industrial transfer costs when implementing the “Southern Coal North Transportation” as well as “Western Gas East Transportation” on energy. Cost: not only will this consideration ensure the energy and carbon emissions of coastal economy developed regions, but also enables consideration of the ecological and economic costs brought about by high carbon emission.
- (3)
- Achieve balance and fairness between carbon emissions in all provinces across the country. According to the results of QAP regression analysis, the differences in energy consumption, economic level and geographical location between provinces have a significant impact on the spatial relationship of carbon emissions, and the adjacent carbon emission in the regions are obviously overflowing. Therefore, it is necessary to continuously narrow the economy and energy consumption differences between regions from the perspective of comprehensive development. The above conclusion can be realized through inter-regional low-carbon technology exchange, industrial transfer and population planning, and so can continuously improve China’s carbon emissions spatial network.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Province | In Degree | Out Degree | Degree of Point Centrality | Betweenness Centrality | Closeness Centrality |
---|---|---|---|---|---|
Shanghai | 26 | 11 | 89.655 | 171.898 | 90.625 |
Sichuan | 3 | 9 | 34.483 | 19.317 | 42.647 |
Yunnan | 1 | 9 | 31.034 | 18.103 | 45.313 |
Guangdong | 14 | 9 | 58.621 | 60.280 | 64.444 |
Gansu | 2 | 9 | 37.931 | 10.532 | 30.851 |
Ningxia | 0 | 9 | 31.034 | 0.000 | 3.333 |
Xinjiang | 0 | 9 | 31.034 | 0.000 | 3.333 |
Liaoning | 5 | 8 | 41.379 | 5.784 | 40.278 |
Tianjin | 22 | 8 | 82.759 | 53.485 | 80.556 |
Qinghai | 0 | 8 | 27.856 | 0.000 | 3.333 |
Shanxi | 7 | 8 | 37.931 | 60.869 | 55.769 |
Shandong | 10 | 8 | 55.172 | 17.791 | 59.184 |
Zhejiang | 22 | 7 | 75.862 | 63.651 | 80.556 |
Guizhou | 5 | 7 | 31.034 | 67.828 | 51.786 |
Henan | 6 | 7 | 34.483 | 11.355 | 55.769 |
Hubei | 1 | 7 | 24.138 | 2.152 | 28.713 |
Jiangsu | 23 | 7 | 82.759 | 31.538 | 82.857 |
Shanxi | 3 | 7 | 27.856 | 5.308 | 51.786 |
Fujian | 6 | 6 | 34.483 | 36.324 | 39.726 |
Heilongjiang | 0 | 6 | 20.690 | 0.000 | 3.333 |
Hunan | 5 | 6 | 24.138 | 3.965 | 54.717 |
Hebei | 5 | 5 | 27.856 | 7.846 | 51.786 |
Neimenggu | 5 | 5 | 31.034 | 35.126 | 42.647 |
Jilin | 0 | 5 | 17.241 | 0.000 | 3.333 |
Hainan | 0 | 5 | 17.241 | 0.000 | 3.333 |
Jiangxi | 8 | 4 | 27.586 | 2.745 | 58.000 |
Beijing | 11 | 4 | 41.379 | 25.349 | 55.769 |
Chongqing | 3 | 4 | 24.138 | 2.006 | 36.709 |
Guanxi | 2 | 3 | 13.793 | 0.333 | 37.179 |
Anhui | 7 | 2 | 24.138 | 0.417 | 54.717 |
Block | Number of Receiving Relations | Number of Relations Issued | Expected Internal Relationship Ratio (%) | Proportion of Actual Internal Relation (%) | Block Properties | ||
---|---|---|---|---|---|---|---|
Intra Block | Out of Block | Intra Block | Out of Block | ||||
First block | 2 | 19 | 2 | 15 | 6.90 | 11.76 | Bidirectional spillover block |
Second block | 30 | 88 | 30 | 27 | 24.14 | 52.63 | Net beneficial block |
Third block | 4 | 19 | 4 | 69 | 31.03 | 5.48 | Net spillover block |
Fourth block | 8 | 21 | 8 | 46 | 27.59 | 14.81 | Brokers block |
Variable | Non-Standardized Regression Coefficient | Standardized Regression Coefficient | Significant Probability Value | Probability 1 | Probability 2 |
---|---|---|---|---|---|
G | 0.134 | 0.248 | 0.000 | 0.000 | 1.000 |
C | −0.211 | −0.151 | 0.020 | 0.020 | 0.98 |
I | −0.02 | 0.075 | 0.100 | 0.100 | 0.89 |
E | −0.004 | −0.098 | 0.000 | 0.000 | 1.000 |
P | 0.000 | 0.246 | 0.000 | 0.000 | 1.000 |
Intercept | 0.457 | 0.000 | 0.000 | 0.000 | 0.000 |
Model | (1) | (2) | (3) |
---|---|---|---|
Constant term | 1.068 *** [0.0000] | 0.83 *** [0.0000] | 1.087 *** [0.0000] |
Degree of point centrality | −0.008 *** [0.0005] | - | - |
Betweenness centrality | - | −0.004 ** [0.0151] | - |
Closeness centrality | - | - | −0.007 *** [0.0003] |
F | 12.756 *** [0.0005] | 6.08 ** [0.0151] | 13.587 *** [0.0003] |
Wald | - | 164.13 *** [0.0000] | - |
R2 | 0.097 | 0.049 | 0.103 |
Hausman | 5.211 ** [0.0224] | 2.515 | 4.309 ** [0.0379] |
FE/RE (Fixed/Random Effects) | FX | RX | FX |
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Wang, F.; Gao, M.; Liu, J.; Fan, W. The Spatial Network Structure of China’s Regional Carbon Emissions and Its Network Effect. Energies 2018, 11, 2706. https://doi.org/10.3390/en11102706
Wang F, Gao M, Liu J, Fan W. The Spatial Network Structure of China’s Regional Carbon Emissions and Its Network Effect. Energies. 2018; 11(10):2706. https://doi.org/10.3390/en11102706
Chicago/Turabian StyleWang, Feng, Mengnan Gao, Juan Liu, and Wenna Fan. 2018. "The Spatial Network Structure of China’s Regional Carbon Emissions and Its Network Effect" Energies 11, no. 10: 2706. https://doi.org/10.3390/en11102706
APA StyleWang, F., Gao, M., Liu, J., & Fan, W. (2018). The Spatial Network Structure of China’s Regional Carbon Emissions and Its Network Effect. Energies, 11(10), 2706. https://doi.org/10.3390/en11102706