The Forms, Channels and Conditions of Regional Agricultural Carbon Emission Reduction Interaction: A Provincial Perspective in China
Abstract
:1. Introduction
2. Theoretical Analysis
3. Materials and Methods
3.1. Agricultural Carbon Emission
3.2. Spatial Correlation Test
3.3. Forms and Channels of Regionally Coordinated Emission Reduction—Classical SDM
3.4. Condition of Regional Direct Emission Reduction Interaction—Partitioned SDM for Agricultural Carbon Emission Intensity
3.5. Condition of Regional Indirect Emission Reduction Interaction—Partitioned SDM for Agricultural Patent Intensity (PI)
3.6. Model Selection
3.7. Data Sources
4. Results
4.1. Analysis of Agricultural Carbon Emissions and Agricultural Technology Innovations
4.2. Spatial Correlation Test
4.3. Coordinated Emission Reduction Strategies and Channel Selection
4.3.1. Choice of Regional Agricultural Coordinated Emission Reduction Strategies
4.3.2. Analysis of the Interaction Channels of Regionally Coordinated Emission Reduction
4.4. Analysis of Conditions for the Interaction of Emission Reduction Strategies
4.4.1. Conditions for Direct Emission Reduction Strategies Interaction
4.4.2. Conditions for Indirect Emission Reduction Strategic Interaction
5. Discussion
- (1)
- Unlike previous studies focusing on the reasons for the spatial correlation of carbon [12,20,21,23], this study analyzed and summarized the regional emission reduction interaction strategies and found two ways for the interaction of emission reduction between regions in China: (i) direct interaction of emission reduction, including imitation strategy and opposing strategy, and (ii) technical interaction. From the standpoint of direct interaction, owing to China’s relatively strict environmental assessment mechanism, to avoid administrative penalties, regions imitate each other’s carbon emission reduction behavior, but for regions with a high level of agricultural economic development, the more similar the level of economic development, the more likely it is to adopt the opposite emission reduction strategy, which differs from positive spatial correlation of carbon emissions found by some scholars [71,72,73,74]. This is because regions with a higher level of agricultural economic development have relatively fierce economic or environmental competition to compete for political performance, either choose the development idea of “economy first, environment second,” or choose the development idea of “environment first, economy second,” to take the lead in economic assessment or environmental assessment. From the viewpoint of technological interaction, scholars unanimously agreed on the existence of a technological interaction between regions [75,76,77]. Nevertheless, few studies examined the realization conditions of technological interaction. We discussed three conditions of industry, human capital, and R&D capabilities, and deduced three modes of technological interaction. First, “industrial agglomeration leads to technological interaction”. Cross-regional industrial agglomeration brings technology-sharing between regions. Geographically adjacent regions are dominated by industrial specialized agglomeration, and regions with similar technological development levels are dominated by industrial synergy agglomeration. Second, “knowledge spillovers lead to technological interaction,” which primarily occurs between regions with similar economic or technological levels, and is characterized by the cross-regional flow of human capital, but human capital does not flow from high-level regions to low-level regions. Third, the “technological R&D capability leads to technological interaction,” which is manifested as “the strong and the strong cooperating” between regions with high-tech R&D capabilities. The large gap in technological R&D capabilities affects the technology spillover between regions, and the technology threshold effect is apparent.
- (2)
- Many studies have discussed the ways of enterprise cooperation and its impact on carbon emission reduction [78,79,80] but the improvement of enterprise cooperation awareness is inseparable from the government’s guidance [81]. Apart from this, when the region implements the coordinated joint carbon reduction model, the carbon emission reduction efforts of enterprises can also reach the peak [82], showing that the interaction of carbon emission reduction between regions can send signals to enterprises, and then promote the interaction and cooperation between regional economy, industry, and enterprises. In this study, we focused on exploring what emission reduction interaction strategies have been adopted by various regions in China under the background of regional coordinated emission reduction policies, and used geographic weight, economic weight, and technical weight to comprehensively consider whether regional emission reduction interaction is “vicious interaction” or “benign interaction”. Our findings can lay the foundation for promoting the benign interaction between enterprises in the region. For regions that implement the imitation strategy, it is crucial to guide the development of low-carbon technologies of enterprises, drive the low-carbonization of the industry, and establish a “benchmark region for emission reduction”. For regions that implement opposing strategies, it is essential to regulate the competition of enterprises, guide the benign interaction between regions, and evade the increase in carbon emissions due to vicious competition. For regions where industrial agglomeration leads to technological interaction, it is essential to promote cooperation between cross-regional enterprises, further promoting technology-sharing and transfer through economy of scale and industrial chain extension. For regions where knowledge spillovers lead to technological interaction, it is essential to guide the wider flow of human capital and promote the sharing of regional emission reduction experience. For regions where technical level leads to technical interaction, it is essential to improve the overall technical R&D ability of the region by augment the technical R&D capabilities of enterprises, thereby decreasing the problems of technical barriers to regional technical interaction.
- (3)
- In the field of cooperative emission reduction, unlike most scholars who focused on the interaction of emission reduction between countries, we focused on the interaction of emission reduction between regions. Li [83] pointed out that Belt and Road countries can achieve economic and environmental win–win through international trade, while infrastructure investment and energy cooperation can improve energy efficiency and reduce carbon emissions by promoting advanced technologies and funds transfer [84]. Mina [85] and Shin [86] analyzed the international cooperation of REDD+ projects and found that partnerships are less likely to be created between different organization categories (across-type bridging), but tend more towards cooperation with the same types (within-type bridging). Li [87] emphasized reducing emissions through energy-related aid from high-income countries to low-income countries. Scholars all believed that cooperation is beneficial to emission reduction. Compared with regional cooperation, international cooperation obviously faces more difficulties. Therefore, regional cooperation is more important for a country to achieve emission reduction goals. By studying the emission reduction interaction between regions in China, we found that in order to stimulate emission reduction potential, it is necessary to form emission reduction benchmark regions, to drive adjacent regions to reduce emissions through the “imitation effect,” and to promote technology spillovers and technology learning. Spillover should take full advantage of industrial agglomeration and human capital flow, and technology learning should reduce technical barriers. These conclusions provide more comprehensive and feasible recommendations for inter-regional emission reduction synergies in other countries.
- (4)
- This study discussed the coordinated strategies for low-carbon emission reduction of Chinese local governments. Currently, China’s agriculture is characterized by large-scale, industrialized, and small-scale farmers. Thus, it is not only crucial to examine the implementation path of low-carbon development from a macro-perspective but also perform comprehensive analysis from the farmers’ perspective. The better realization of regional agricultural coordinated emission reduction also warrants the cooperation of farmers. To investigate the low-carbon coordination between farmers from a micro-perspective will be the direction of future research. In addition, predicting agricultural carbon emissions under coordinated regional emission reduction, judging whether China’s carbon peaking goal can be achieved, and then guiding regions to adjust emission reduction interaction strategies, are also issues worthy of study.
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Category | Indicator | Source |
---|---|---|
Energy consumption | Amount of coal, coke, crude oil, gasoline, kerosene, diesel oil, fuel oil, electric power, and natural gas used in agricultural production | China Energy Statistics Yearbook |
Farmland utilization | Application amount of fertilizers, pesticides, and agricultural film, plowing area | China Rural Statistical Yearbook |
Crop planting | Planting area of rice, wheat, corn, soybeans, and vegetable | China Rural Statistical Yearbook |
Ruminant feeding | Annual average stock of cattle, horses, donkeys, mules, pigs, goats, and sheep | China Rural Statistical Yearbook |
Straw burning | Yield of rice, wheat, corn, soybeans, cotton, and canola | China Rural Statistical Yearbook |
Variables | Notation | Calculation | Data Sources |
---|---|---|---|
Agricultural carbon emission intensity | AEI | Ratio of agricultural carbon emissions to agricultural added value | Section 3.1 |
Agricultural patent intensity | PI | Ratio of number of agricultural patents to agricultural added value | China Patent Database |
Agricultural economy | AGDP | Ratio of agricultural added value to rural population | China Rural Statistical Yearbook |
Urbanization ratio | UR | Ratio of urban population to rural population | China Rural Statistical Yearbook |
Urban-rural income gap | UIG | Ratio of disposable income of urban residents to rural residents | China Rural Statistical Yearbook |
The intensity of investment in environmental governance | GER | Ratio of expenditure on environmental protection to agricultural added value | China Environmental Pollution Statistics Yearbook |
Test | Statistics | p-Value |
---|---|---|
LR-lag | 20.17 *** | 0.0052 |
LR-error | 12.18 * | 0.0948 |
LM-lag (Robust) | 32.58 *** | 0.0000 |
LM-error (Robust) | 101.61 *** | 0.0000 |
Year | Agricultural Carbon Emission Intensity | Agricultural Patent Intensity | ||
---|---|---|---|---|
Moran’s I | z-Value | Moran’s I | z-Value | |
2008 | 0.312 *** | 3.771 | 0.309 *** | 3.857 |
2009 | 0.302 *** | 3.681 | 0.274 *** | 3.509 |
2010 | 0.272 *** | 3.336 | 0.283 *** | 3.600 |
2011 | 0.275 *** | 3.355 | 0.315 *** | 3.949 |
2012 | 0.253 *** | 3.111 | 0.306 *** | 3.818 |
2013 | 0.217 *** | 2.730 | 0.319 *** | 3.939 |
2014 | 0.178 ** | 2.304 | 0.304 *** | 3.740 |
2015 | 0.147 ** | 1.964 | 0.292 *** | 3.609 |
2016 | 0.271 *** | 3.297 | 0.286 *** | 3.536 |
2017 | 0.316 *** | 3.767 | 0.264 *** | 3.310 |
2018 | 0.313 *** | 3.733 | 0.260 *** | 3.959 |
Variables | Coefficient | OPM | SEM | SAR | SDM |
---|---|---|---|---|---|
ln(PI) | βPI | 0.00002 (−0.00) | 0.005 (0.36) | 0.011 (0.79) | 0.008 (0.59) |
ln(AGDP) | βAGDP | 0.853 *** (−7.96) | −0.847 *** (−17.04) | −0.865 *** (−17.98) | −0.854 *** (−17.46) |
ln(UR) | βUR | −0.390 (−1.25) | −0.244 * (−1.69) | −0.270 * (−1.83) | −0.081 (−0.52) |
ln(GER) | βGER | 0.130 *** (−3.37) | −0.134 *** (−6.66) | −0.129 *** (−6.45) | −0.116 *** (−5.72) |
ln(UIG) | βUIG | −0.139 (−0.63) | −0.215 ** (−2.22) | −0.181 ** (−2.20) | −0.085 (−0.77) |
× ln(PI) | PI | −0.096 ** (−2.42) | |||
× ln(AGDP) | AGDP | 0.448 *** (3.13) | |||
× ln(UR) | UR | 0.051 (0.13) | |||
× ln(GER) | GER | 0.049 (0.93) | |||
× ln(UIG) | UIG | 0.336 (1.42) | |||
λ | 0.523 *** (7.10) | ||||
ρ | 0.353 *** (5.74) | 0.514 *** (7.08) |
Variables | Coefficient | |||
---|---|---|---|---|
ln(PI) | βPI | 0.008 (0.59) | 0.003 (0.20) | 0.016 (1.01) |
ln(AGDP) | βAGDP | −0.854 *** (−17.46) | −0.862*** (−16.38) | −0.871 *** (−16.83) |
ln(UR) | βUR | −0.081 (−0.52) | −0.346*** (−2.32) | −0.599 *** (−3.88) |
ln(GER) | βGER | −0.116 *** (−5.72) | −0.129*** (−6.07) | −0.127 *** (−6.02) |
ln(UIG) | βUIG | −0.085 (−0.77) | −0.144 (−1.44) | −0.186 * (−1.78) |
× ln(PI) | PI | −0.096 ** (−2.42) | −0.055 (−1.05) | −0.125 ** (−2.42) |
× ln(AGDP) | AGDP | 0.448 *** (3.13) | −0.150 (−0.76) | −0.186 (−1.06) |
× ln(UR) | UR | 0.051 (0.13) | 0.328 (0.79) | 0.823 * (1.81) |
× ln(GER) | GER | 0.049 (0.93) | −0.080 (−1.31) | −0.133 ** (−2.81) |
× ln(UIG) | UIG | 0.336 (1.42) | −0.547 * (−1.91) | −0.437 (−1.52) |
0.514 *** (7.08) | 0.365 *** (4.11) | 0.200 ** (2.21) |
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He, Y.; Wang, H.; Chen, R.; Hou, S.; Xu, D. The Forms, Channels and Conditions of Regional Agricultural Carbon Emission Reduction Interaction: A Provincial Perspective in China. Int. J. Environ. Res. Public Health 2022, 19, 10905. https://doi.org/10.3390/ijerph191710905
He Y, Wang H, Chen R, Hou S, Xu D. The Forms, Channels and Conditions of Regional Agricultural Carbon Emission Reduction Interaction: A Provincial Perspective in China. International Journal of Environmental Research and Public Health. 2022; 19(17):10905. https://doi.org/10.3390/ijerph191710905
Chicago/Turabian StyleHe, Yanqiu, Hongchun Wang, Rou Chen, Shiqi Hou, and Dingde Xu. 2022. "The Forms, Channels and Conditions of Regional Agricultural Carbon Emission Reduction Interaction: A Provincial Perspective in China" International Journal of Environmental Research and Public Health 19, no. 17: 10905. https://doi.org/10.3390/ijerph191710905
APA StyleHe, Y., Wang, H., Chen, R., Hou, S., & Xu, D. (2022). The Forms, Channels and Conditions of Regional Agricultural Carbon Emission Reduction Interaction: A Provincial Perspective in China. International Journal of Environmental Research and Public Health, 19(17), 10905. https://doi.org/10.3390/ijerph191710905