Analyzing the Differences in the Quantitative and Spatial Characteristics of Inter-Provincial Embodied Carbon Transfers in China Induced via Various Demand Factors
Abstract
:1. Introduction
2. Literature Review and Contributions
2.1. Literature Review
2.2. Research Gap
2.3. Objectives and Contributions
- Objective 1, assessing the impact of various demand factors on the inter-provincial transfer of ECEs in China;
- Objective 2, investigating the possibility of creating an I–O analysis system that combines HEM and CNA to evaluate differences in the characteristics of inter-provincial ECE transmission in China driven by different demand factors.
3. Methodology and Data
3.1. Leontief Model
3.2. Direct Carbon Emissions Intensity
3.3. Hypothetical Extraction Method
3.4. Complex Network Analysis
3.4.1. Characteristic Analysis of Nodes
- In-degree and out-degree
- 2.
- In-strength and out-strength
- 3.
- Betweenness centrality
3.4.2. Characteristic Analysis of a Community
3.4.3. Characteristic Analysis of a Network
- The average path length
- 2.
- The average clustering coefficient
3.5. Data Sources and Processing
4. Result
4.1. Analysis of Carbon Emissions and Transfers Caused by the Final Demand
4.1.1. Overall Characteristics
- The Category I provinces in China were mainly located in coastal areas or served as the hub of the country’s commodity trade, including Guangzhou, Zhejiang, and Beijing. Among these provinces, Guangdong was the most typical and important Category I province, receiving four of the top ten inter-provincial trade-embodied carbon transfer pathways and contributing about 33.73% (153.78 Mt) of the province’s total carbon imports. Figure 2b shows that Sector 16 was the main contributor to Guangdong’s imported carbon emissions (251.46 Mt), followed by Sector 10 (87.59 Mt) and Sector 9 (37.65 Mt). The rapid development of Guangdong’s automobile, electronics, and petrochemical industries has severely tested the resource-carrying capacity of its ecological environment. The huge demand and limited resources have led Guangdong’s enterprises to outsource carbon-intensive production and services to other regions, which is common among Category I provinces. However, the regions accommodating industrial transfer would generate substantial carbon emissions and, thus, bear a disproportionate share of liability for emissions reduction, which is unfair to production-oriented regions. Moreover, Beijing, the capital and commercial center of China, was the only non-coastal Category I province that was the destination of two major inter-provincial transfer pathways, with its NET second only to those of Guangdong and Zhejiang (−200.62 Mt). The booming services and logistics industry in Beijing is driven by household consumption and business activity, but this has also led to its dependence on carbon-intensive products from inland provinces;
- The Category II and III provinces were mainly engaged in primary and secondary industries (the manufacturing of intermediate products), which require a large amount of both imports and exports. Henan was representative of such provinces and is the only Category III province in Figure 2a that is both the destination and source of top-ten carbon pathways. In detail, Henan absorbed 35.43 Mt of carbon emissions from Inner Mongolia and transferred 37.70 Mt to Guangdong, while its own NET was only 32.24 Mt. Figure 2b provides further details on the sectoral carbon emissions in Henan. It imported 184.45 Mt and 36.69 Mt from the Sector 16s and Sector 10s of other provinces, while it exported 105.18 Mt, 45.52 Mt, 41.24 Mt, 20.14 Mt, and 15.8 Mt from Sectors 16, 10, 9, 2, and 19, respectively. With industrial upgrading, Category I provinces have gradually abandoned some heavily polluting industries. However, these industries have been transferred to the central and northern provinces due to the continued demand for products from Sectors 14 and 17. The developed industries of these provinces provide the necessary intermediate products for the southern provinces. But they also import large quantities of energy and materials from the interior for further processing, which significantly increases their ECEs. Overall, the pressure on these production-based provinces to achieve their policy targets for carbon reduction is serious. To efficiently achieve carbon reduction targets, policymakers should consider the impact of industrial production and consumption on ECEs in different locations when allocating carbon mitigation responsibilities. In addition, not only should Category I provinces reduce the utilization of carbon-intensive products but Category II and III provinces, such as Henan, should also be subsidized for the application of low-carbon technologies and minimization of carbon emissions;
- Based on the study of NET and sectoral carbon emissions, the Category IV provinces were categorized into two groups: resource-based and resource-processing compound provinces. The resource-based provinces are rich in mineral resources and fossil energy, including Xinjiang and Inner Mongolia. Inner Mongolia was the largest province in China in terms of carbon outflow, at about 367.89 Mt. IM16 was responsible for 306.15 Mt of carbon emissions transfers, or 83.22% of the total. This not only indicates that the development of this category of provinces is heavily dependent on the export of low-value-added resources but also reveals the dominance of the energy sector in China’s carbon transfer. The resource-processing compound provinces included Hebei, Shanxi, and Shandong, whose Sector 10 and Sector 9 contributed more significantly to carbon emissions. For example, HE10 contributed 173.78 Mt in carbon transfers, accounting for 53.38% of its total carbon outflow. These provinces have well-developed metal and non-metal manufacturing industries that provide raw materials for industries such as automobiles, electronic equipment, and construction in the central and eastern provinces. However, this development model results in serious carbon emission problems. Coordinating the development and carbon reduction of such provinces is a challenge that policymakers need to consider. Reducing pollution due to production and increasing the added value of products are extremely important for Category IV provinces. In addition, the allocation of responsibility for carbon mitigation needs to take due account of the contribution from production and consumption regions.
4.1.2. Multiple Indicators of Provincial Carbon Emissions
4.2. Analysis of Carbon Emissions and Transfers Driven by Different Demand Factors
4.2.1. Overall Characteristics of Different Demand Factors
4.2.2. Sectoral Carbon Transfer for Different Demand Factors
4.2.3. The Interval Distribution of Carbon Transfer under Different Demand Factors
4.3. Complex Network Analysis for Different Demand Factors
4.3.1. Overall Network Characteristics of Different Demand Factors
4.3.2. Complex Network Analysis of Carbon Transfer
- Exports
- 2.
- Government consumption and household consumption
- 3.
- Capital formation
5. Policy Implications
5.1. Export
5.2. Household Consumption
5.3. Government Consumption
5.4. Capital Formation
6. Conclusions
- In 2017, the macro direction of China’s carbon transfer was from north to south, from resource-rich provinces (e.g., Inner Mongolia and Shandong) to the industrially developed provinces (e.g., Guangdong and Zhejiang). Of these, the main contributors to carbon emissions were electric power, gas and water production and supply (2050.14 Mt), and the manufacture of metal products (639.17 Mt). This result is similar to the results of studies in regions with different economies and cultures [54,75,76]. Therefore, the government should encourage the adoption of clean production technologies in the energy and manufacturing industries to reduce their carbon intensity.
- The carbon transfer caused by export factors was the most concentrated, and the main contributor was the manufacture of electrical machinery and electronic equipment in the southern provinces. For instance, Guangdong, the main recipient of carbon transfers due to export demand (197.92 Mt), received 77.95 Mt in GD14 (mainly from Inner Mongolia, Hebei, and Shanxi in the north), which accounted for 39.39% of the province. From a sector-specific perspective, the top-ranked export-related carbon transfer was HE10–GD14 (5.34 Mt), followed by NM16–GD14 (5.11 Mt). Seven of the top ten carbon transfers were from northern provinces (i.e., Hebei, Inner Mongolia, and Xinjiang) to southern provinces (i.e., Guangdong, Jiangsu, and Zhejiang), which coincides with Conclusion (1). In addition, the concentration of an export-related carbon transfer network was relatively high, with the highest number of inefficient paths (47,607), a higher average path length (1.058), and a lower number of modular communities (13). The key export-side sectors represented by GD14 should be restricted from importing carbon-intensive products and encouraged to develop clean technologies.
- The carbon transfer induced by household consumption factors was the most dispersed, and the factor obviously contributed to ECEs in sectors such as electric power, gas and water production and supply, and other services. The transfer network of ECEs induced by household consumption had the highest number of effective paths at 263,367, and it had 16 modular communities, which was higher than those of exports and capital formation. Therefore, in order to reduce greenhouse gas emissions, on the one hand, households should be incentivized to reduce the utilization of high-carbon and disposable products and to achieve low-carbon living goals by using green appliances, such as energy-efficient air conditioners, lighting, and refrigerators. On the other hand, the energy supply industry should be subsidized to develop cleaner production technologies and promote the recycling of renewable resources.
- The total volume of inter-sectoral carbon transfers induced by government consumption was the lowest (206.25 Mt), accounting for 5.60% of all demand factors. However, the share of carbon-intensive products caused by government consumption was 39.34%, which was the highest of all demand factors. Among them, other services (including finance, real estate, research, healthcare, education, etc.) was the most important contributor. The government can reduce the ECEs in the provision of public services by promoting paperless offices and environmentally friendly official travel, advocating for the use of low-carbon packaging, purchasing green products, and promoting solar lighting and smart sensor lighting. It is also necessary to introduce green regulations for public buildings and their contractors, such as requiring the use of low-carbon materials for walls and windows and the installation of solar panels and rainwater recycling devices on the roofs of buildings.
- Capital formation had the greatest impact on the carbon transfer in China, and its cumulative carbon transfer accounted for 55.98% of the total (2062.92 Mt). The construction sector in economically developed provinces was the most important driver of capital formation, such as in Zhejiang (116.15 Mt, 58.59%), Chongqing (116.97 Mt, 77.66%), and Guangdong (100.00 Mt, 61.38%). Policy restrictions and targeted subsidies should be applied to guide builders to use environmentally friendly materials (e.g., recyclable materials, thermal insulation materials, and eco-walls), install solar panels, and construct waste heat recovery systems to reduce carbon emissions throughout the building life cycle.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Province | Abbreviation | Province | Abbreviation |
---|---|---|---|
Beijing | BJ | Hubei | HB |
Tianjin | TJ | Hunan | HN |
Hebei | HE | Guangdong | GD |
Shanxi | SX | Guangxi | GX |
Inner Mongolia | NM | Hainan | HI |
Liaoning | LN | Chongqing | CQ |
Jilin | JL | Sichuan | SC |
Heilongjiang | HL | Guizhou | GZ |
Shanghai | SH | Yunnan | YN |
Jiangsu | JS | Tibet | XZ |
Zhejiang | ZJ | Shaanxi | SN |
Anhui | AH | Gansu | GS |
Fujian | FJ | Qinghai | QH |
Jiangxi | JX | Ningxia | NX |
Shandong | SD | Xinjiang | XJ |
Henan | HA |
Code | Aggregated Sector |
---|---|
1 | Farming, Forestry, Animal Husbandry, Fishery and Water Conservancy |
2 | Mining Industry |
3 | Manufacture of Foods and Tobacco |
4 | Manufacture of Textiles and Clothing |
5 | Processing of Woods and Furniture |
6 | Manufacture of Papermaking, Printing, and Paper Products |
7 | Processing of Petroleum, Coking, and Nuclear Fuel |
8 | Chemical Industry |
9 | Manufacture of Nonmetal Products |
10 | Manufacture of Metal Products |
11 | Manufacture of General Machinery |
12 | Manufacture of Special Machinery |
13 | Manufacture of Transport Equipment |
14 | Manufacture of Electrical Machinery and Electronic Equipment |
15 | Manufacture of Instruments, Meters, and Other |
16 | Electric Power, Gas, and Water Production and Supply |
17 | Construction |
18 | Wholesale, Retail Trade, and Accommodation |
19 | Transport, Storage, and Post |
20 | Other Services |
Classification | Intensity of Carbon Emissions (t CO2/104 RMB) |
---|---|
Class I | 0.00–0.99 |
Class II | 1.00–4.99 |
Class III | 5.00–9.99 |
Class IV | 10.00–14.99 |
Class V | 15.00–19.99 |
Class VI | 20.00–24.99 |
Export | Household Consumption | Government Consumption | Capital Formation | |
---|---|---|---|---|
Average Degree | 514.054 | 574.822 | 108.455 | 581.820 |
Average Weighted Degree | 2,096,105 | 2,595,078 | 796,931 | 7,854,414 |
Average Path Length | 1.058 | 1.045 | 1.117 | 1.043 |
Average Clustering Coefficient | 0.855 | 0.949 | 0.834 | 0.958 |
Modularity Index | 0.455 | 0.536 | 0.523 | 0.424 |
Number of Communities | 13 | 15 | 25 | 13 |
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Li, Q.; Chen, C. Analyzing the Differences in the Quantitative and Spatial Characteristics of Inter-Provincial Embodied Carbon Transfers in China Induced via Various Demand Factors. Energies 2023, 16, 7721. https://doi.org/10.3390/en16237721
Li Q, Chen C. Analyzing the Differences in the Quantitative and Spatial Characteristics of Inter-Provincial Embodied Carbon Transfers in China Induced via Various Demand Factors. Energies. 2023; 16(23):7721. https://doi.org/10.3390/en16237721
Chicago/Turabian StyleLi, Qinghua, and Cong Chen. 2023. "Analyzing the Differences in the Quantitative and Spatial Characteristics of Inter-Provincial Embodied Carbon Transfers in China Induced via Various Demand Factors" Energies 16, no. 23: 7721. https://doi.org/10.3390/en16237721
APA StyleLi, Q., & Chen, C. (2023). Analyzing the Differences in the Quantitative and Spatial Characteristics of Inter-Provincial Embodied Carbon Transfers in China Induced via Various Demand Factors. Energies, 16(23), 7721. https://doi.org/10.3390/en16237721