Integrating Geodetector and GTWR to Unveil Spatiotemporal Heterogeneity in China’s Agricultural Carbon Emissions Under the Dual Carbon Goals
Abstract
:1. Introduction
2. Literature Review
3. Overview of the Study Area
4. Research Methods and Data Sources
4.1. Research Framework
4.2. ACE Accounting
4.3. Spatial and Temporal Evolution Analysis
4.3.1. SDE and Center of Gravity Shift
4.3.2. Spatial Correlation Analysis
- (1)
- GSA
- (2)
- LSA
4.4. Analysis of Driving Mechanisms
4.4.1. Principles of Model Operation
- (1)
- Complementarity: Revealing both the contributions and spatiotemporal dynamics of driving factors. Geodetector provides the overall explanatory power of driving factors and their interactive relationships, offering a basis for variable selection and analysis in the GTWR model. Meanwhile, GTWR delves into the spatiotemporal heterogeneity of these factors’ impacts, achieving a comprehensive analysis from “static contributions” to “dynamic variations.”
- (2)
- Overcoming limitations of traditional models. Traditional econometric models often assume uniform factor impacts across space and time, neglecting the spatiotemporal heterogeneity of agricultural carbon emissions influenced by regional natural conditions, production practices, and policy environments. These models fail to fully capture the spatiotemporal dynamic changes of driving factors. The integration of Geodetector and GTWR overcomes this limitation. Geodetector quantifies the explanatory power of each factor on spatial differentiation through q-values, revealing the relative importance and interactive effects of driving factors. GTWR, through localized regression, dynamically estimates the regression coefficients of factors across different times and spaces, capturing the spatiotemporal variations in their impact intensity.
- (3)
- Support for differentiated policy formulation. The integration of these models provides a more refined scientific basis for policy formulation. Geodetector identifies key driving factors and their interactions, offering a basis for prioritizing policy measures. GTWR further reveals the differentiated impacts of these factors across regions and time periods, supporting the development of region-specific and time-sensitive emission reduction strategies.
4.4.2. Geodetector
4.4.3. GTWR
4.4.4. Selection of Geodetector and GTWR Indicators
4.5. Data Sources
- (1)
- Spatial data: Province-level agricultural carbon emission vector data were obtained from the National Geographic Information Resource Catalog Service Platform (https://www.webmap.cn/) (3 February 2025).
- (2)
- Meteorological data: Temperature and precipitation datasets with 1 km spatial resolution, including monthly mean temperature and precipitation records across China, were acquired from the National Tibetan Plateau Data Center (https://data.tpdc.ac.cn/home) (3 February 2025).
- (3)
- Socioeconomic data: Statistical data on chemical fertilizers, pesticides, plastic mulching, diesel, irrigation, rice cultivation scale, and the 11 driving factor indicators were sourced from the China Statistical Yearbook and the China Rural Statistical Yearbook.
5. Results of the Study
5.1. Characteristics of Temporal Changes
5.2. Spatial Distribution Characteristics
5.2.1. Spatial Variation Characteristics
5.2.2. SDE and Center of Gravity Shift Analysis
5.3. Spatially Correlated Features
5.3.1. GSA Analysis
5.3.2. LSA Analysis
6. Analysis of the Results of the Impact Factors
6.1. Geodetector Analysis
6.1.1. Single-Factor Identification
6.1.2. Factor Interaction Identification
6.2. GTWR Analysis
7. Discussion
7.1. Spatiotemporal Evolution of ACEs in China
- (1)
- From a temporal perspective, China’s ACEs exhibit an overall trend of fluctuating growth, while carbon emission intensity has gradually declined, consistent with findings from Peng et al. [82]. The emission flux variability reflects synergistic policy–technology interactions, particularly post-2015 fertilizer/pesticide reduction initiatives. In contrast to previous studies, this research identifies a more substantial decline in emission intensity (83.33%), with the apparent paradox of decreasing intensity alongside increasing total emissions attributable to (1) the expansion of agricultural output value (COVAFAF growing at an average annual rate of 6.5%), which drives increased inputs and elevates total emissions; and (2) technological advancements such as precision fertilization and energy-efficient machinery, which reduce emissions per unit of output, significantly lowering intensity. This is closely linked to the effectiveness of policy regulation, indicating that technological improvements and policy support have a significant combined impact on reducing carbon emissions.
- (2)
- Significant variations in agricultural carbon emissions are observed across provinces, aligning closely with the spatial differentiation characteristics identified by Liu et al. [81,83]. Concurrently, the spatial pattern of agricultural carbon emissions exhibits high-value clustering in the southeastern region, consistent with the findings of Wen et al. [84]. The gradual eastward and westward expansion of agricultural carbon emissions reflects differences in agricultural production modes across regions. The spatial clustering effect of agricultural carbon emissions has weakened over time, corroborating Xia’s conclusions [85]; however, this study covers a longer historical period, suggesting that the spatial distribution of agricultural carbon emissions is influenced by multiple factors over an extended timescale, potentially leading to gradual weakening of the spatial clustering effect. Compared to India [86], where high emissions are concentrated in irrigation-intensive areas, China’s eastern high-emission zones are centered in economically developed regions. This highlights the need for developing countries to optimize emission reduction strategies tailored to regional characteristics.
7.2. Determinants of ACEs in Chinese Provinces
- (1)
- Economic factors are the primary drivers of increased agricultural carbon emissions, with the COVAFAF exerting the greatest influence on agricultural carbon emissions. Moreover, as economic scale expands and agricultural modernization progresses, this influence exhibits periodic fluctuations, consistent with the findings of Li et al. regarding the driving role of economic scale in carbon emissions [87,88]. Furthermore, spatiotemporal differentiation in rural disposable income underscores policy coordination complexity. Coastal eastern regions demonstrate negative income–emission correlations, reflecting green consumption awareness enhancement in emission reduction. Conversely, western regions exhibit positive correlations, indicating persistent dependence on carbon-intensive agricultural production modes. This paradox reveals regional disparities in achieving income-growth–emission-reduction synergy, necessitating decoupling through non-agricultural industry support and green subsidy policies.
- (2)
- Agricultural input factors are key determinants of agricultural carbon emissions. The positive influence of total agricultural machinery power, employment in the primary sector, and fertilizer application on agricultural carbon emissions aligns with the findings of Guo et al. High-tech machinery in the eastern regions reduces emissions [89,90], while traditional machinery in the western regions exacerbates emissions, going beyond the single-input analysis of Tang et al. [91] and providing a reference for machinery optimization in Brazil. For instance, agricultural mechanization proliferation typically coincides with intensified fertilizer, pesticide, and plastic film applications. While collectively enhancing productivity, these practices elevate emission levels [92]. Concurrently, primary sector employment growth often drives land reclamation expansion and resource utilization intensification, subsequently amplifying demands for machinery, chemicals, and irrigation—thereby escalating emission scales. Effective agricultural decarbonization thus requires comprehensive consideration of input factor synergies.
- (3)
- Climatic variables, particularly Temp and Precip, significantly shape emission spatial distributions. Although Gołasa et al. [3] rarely directly address the role of climatic factors, both the existing literature and this study indicate that the impact of climate change on agricultural carbon emissions is increasingly significant. Temp elevation may prolong growing seasons and enhance photosynthesis, boosting agricultural yields, yet simultaneously drives increased agrochemical inputs that elevate emissions. Precip patterns directly determine irrigation requirements and production methods, with water-stressed regions exhibiting energy-intensive irrigation dependencies. Furthermore, Precip variability and extreme weather events intensify spatiotemporal emission heterogeneity [56]. Compared to the single climate variable analysis by Panchasara et al. [15], this study quantifies interactive effects, providing climate adaptation strategies for rice cultivation areas in Vietnam.
7.3. Spatiotemporal Heterogeneity of Influencing Factors
7.4. Research Limitations and Future Directions
7.4.1. Research Limitations
7.4.2. Future Research Directions
8. Conclusions and Policy Recommendations
8.1. Conclusions
- (1)
- Temporally, China’s total ACEs exhibited “fluctuating growth”, with an average annual rate of 0.26%, while emission intensity demonstrated a remarkable cumulative reduction of 83.33%. This indicates significant declines in carbon emissions per unit output alongside maintained production growth, reflecting synergistic effects of policy interventions and technological advancements.
- (2)
- Spatially, ACEs exhibited a pronounced “higher in the southeast, lower in the northwest” imbalance, with a dynamic evolution characterized by expanding high-emission zones and a westward shift of hotspots. SDE and centroid migration analyses revealed a “northeast-southwest” belt-shaped distribution, with the emission centroid consistently located in Nanyang, Henan Province, while gradually shifting northwestward, suggesting an emerging emission growth potential in western regions. Spatial autocorrelation results confirmed strengthening agglomeration patterns, particularly in the traditional agricultural regions of central-eastern China.
- (3)
- The driving mechanisms of ACEs exhibited pronounced spatiotemporal heterogeneity. The Geodetector results identified gross agricultural output value as the primary single-factor driver, displaying cyclical fluctuations characterized by phases of economic dominance, technological advancement, and structural adjustment. Factor interaction analysis revealed synergistic effects between agricultural economic scale and key factors such as regional economic development, industrial structure, and climatic conditions. GTWR modeling further disclosed that rural disposable income contributed to emission reductions in eastern regions, whereas variables such as gross agricultural output value, primary industry employment, fertilizer application, and total agricultural machinery power primarily drove emission increases across most regions, with notable variations in direction and intensity across spatiotemporal contexts.
8.2. Policy Recommendations
- (1)
- Promoting precision fertilization to mitigate high carbon emission risks from excessive fertilizer use
- (2)
- Advancing the clean transition of agricultural machinery to reduce emissions from traditional operations
- (3)
- Optimizing industrial structure to decouple economic growth from agricultural carbon emissions
Author Contributions
Funding
Institutional Review Board Statement
Data Availability Statement
Conflicts of Interest
References
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Carbon Sources | Carbon Emission Coefficient | Reference Source |
---|---|---|
Fertilizers | 0.8956 kg C kg−1 | [33] |
Pesticides | 4.9341 kg C kg−1 | [33] |
Plastic sheeting | 5.18 kg C kg−1 | [13] |
Diesel oil | 0.5927 kg C kg−1 | IPCC [35] |
Plough | 312.6kg·km−2 | [36] |
Irrigation | 266.48 kg C kg−1 | [33] |
Region | Early Rice | Late Rice | In-Season Rice | Region | Early Rice | Late Rice | In-Season Rice |
---|---|---|---|---|---|---|---|
Beijing | 0 | 0 | 13.23 | Hubei | 17.51 | 39.00 | 58.17 |
Tianjin | 0 | 0 | 11.34 | Hunan | 14.71 | 34.10 | 56.28 |
Hebei | 0 | 0 | 15.33 | Guangdong | 15.05 | 51.60 | 57.02 |
Shanxi | 0 | 0 | 6.62 | Guangxi | 12.41 | 49.10 | 47.78 |
Inner Mongolia | 0 | 0 | 8.93 | Hainan | 13.43 | 49.40 | 52.29 |
Liaoning | 0 | 0 | 9.24 | Chongqing | 6.55 | 18.50 | 25.73 |
Jilin | 0 | 0 | 5.57 | Sichuan | 6.55 | 18.5 | 25.73 |
Heilongjiang | 0 | 0 | 8.31 | Guizhou | 5.10 | 21.00 | 22.05 |
Shanghai | 12.41 | 27.50 | 53.87 | Yunnan | 2.38 | 7.60 | 7.25 |
Jiangsu | 16.07 | 27.60 | 53.55 | Tibet | 0 | 0 | 6.83 |
Zhejiang | 14.37 | 34.50 | 57.96 | Shaanxi | 0 | 0 | 12.51 |
Anhui | 16.75 | 27.60 | 51.24 | Gansu | 0 | 0 | 6.83 |
Fujian | 7.74 | 52.60 | 43.47 | Qinghai | 0 | 0 | 0 |
Jiangxi | 15.47 | 45.80 | 65.42 | Ningxia | 0 | 0 | 7.35 |
Shandong | 0 | 0 | 21.00 | Xinjiang | 0 | 0 | 10.50 |
Henan | 0 | 0 | 17.85 |
Intestinal Fermentation | Fecal Waste Management | |||
---|---|---|---|---|
Carbon Sources | CH4 | CH4 | N2O | Reference Source |
Cattle | 61 kg/head⋅year | 18 kg/head⋅year | 1 kg/head⋅year | IPCC [35] |
Horse | 18 kg/head⋅year | 1.64 kg/head⋅year | 1.39 kg/head⋅year | IPCC [35] |
Donkey | 10 kg/head⋅year | 0.9 kg/head⋅year | 1.39 kg/head⋅year | IPCC [35] |
Mule | 10 kg/head⋅year | 0.9 kg/head⋅year | 1.39 kg/head⋅year | IPCC [35] |
Pig | 1 kg/head⋅year | 3.5 kg/head⋅year | 0.53 kg/head⋅year | IPCC [35] |
Camel | 46 kg/head⋅year | 1.92 kg/head⋅year | 1.39 kg/head⋅year | IPCC [35] |
Sheep | 5 kg/head⋅year | 0.16 kg/head⋅year | 0.33 kg/head⋅year | IPCC [35] |
Parameter | Definition | Unit | Explanation |
---|---|---|---|
Major Axis | The length of the major axis (usually in the east-west direction), indicating the extent of the spatial distribution of agricultural carbon emissions | km | The longer the major axis, the more the emissions tend to be distributed in the east-west direction |
Minor Axis | The length of the minor axis (usually in the north-south direction), indicating the extent of the spatial distribution of agricultural carbon emissions, opposite to the major axis | km | The longer the minor axis, the more the emissions tend to be distributed in the north-south direction, forming a contrast with the east-west distribution |
Oblateness | The ratio of the difference between the major and minor axes to the major axis, calculated as (major axis − minor axis)/major axis, reflecting the oblateness of the spatial distribution of agricultural carbon emissions | - | The smaller the oblateness, the more circular the distribution; the larger the oblateness, the more elongated the distribution |
Variant | Define | Description | Selection of Significance |
---|---|---|---|
X1 | Gross Output Value of Agriculture, Forestry, Animal Husbandry, and Fishery (COVAFAF) | CNY 100 million | Agricultural economic scale is reflected in total output value growth, which typically accompanies increased energy consumption and carbon emissions [47] |
X2 | Agricultural Industrial Structure (AIS) | - | Differential carbon emission intensities across sectors mean structural adjustments directly determine total ACEs [48] |
X3 | Economic Development Level (EDL) | - | Economic development drives agricultural modernization, potentially increasing energy use and emissions while also facilitating low-carbon technology adoption [19] |
X4 | Agricultural Production Efficiency (APE) | - | Efficiency improvements may reduce emissions per output unit, but scale expansion could lead to aggregate emission growth [49] |
X5 | Rural Disposable Income (RDI) | CNY | Rising incomes may promote carbon-intensive consumption patterns while also stimulating green agricultural investments [50] |
X6 | Primary Industry Employment (PIE) | CNY 10 thousand | Labor intensity influences agricultural production modes, thereby affecting emission intensity [51] |
X7 | Agricultural Chemical Fertilizer Application (ACFA) | t | Fertilizer production and application constitute major emission sources, with usage levels directly determining emission magnitudes [52] |
X8 | Total Agricultural Machinery Power (TAMP) | 10,000 kW·h | Mechanization intensification generally increases fossil energy consumption, elevating carbon emissions [53] |
X9 | Urbanization Rate (UR) | - | Urbanization may reduce agricultural land and labor while promoting intensification and emission growth [54] |
X10 | Temperature (Temp) | °C | Temperature variations affect crop growth cycles and energy demand, indirectly influencing agricultural emissions [55] |
X11 | Precipitation (Precip) | mm | Precipitation patterns shape agricultural practices and irrigation needs, consequently impacting energy use and emissions [56] |
Year | Major Axis/km | Short Axis/km | Oblateness |
---|---|---|---|
2000 | 1111.909 | 966.306 | 0.131 |
2005 | 1133.391 | 977.855 | 0.137 |
2010 | 1169.980 | 982.920 | 0.160 |
2015 | 1180.032 | 1017.942 | 0.137 |
2020 | 1192.313 | 1055.615 | 0.115 |
2023 | 1208.217 | 1088.359 | 0.100 |
Model | AICc | R2 | Adjusted R2 |
---|---|---|---|
OLS | 1156.0 | 0.4563 | 0.3334 |
GWR | 1154.6 | 0.4546 | 0.3078 |
GTWR | 23,098.5 | 0.9513 | 0.9509 |
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Dang, H.; Deng, Y.; Hai, Y.; Chen, H.; Wang, W.; Zhang, M.; Liu, X.; Yang, C.; Peng, M.; Jize, D.; et al. Integrating Geodetector and GTWR to Unveil Spatiotemporal Heterogeneity in China’s Agricultural Carbon Emissions Under the Dual Carbon Goals. Agriculture 2025, 15, 1302. https://doi.org/10.3390/agriculture15121302
Dang H, Deng Y, Hai Y, Chen H, Wang W, Zhang M, Liu X, Yang C, Peng M, Jize D, et al. Integrating Geodetector and GTWR to Unveil Spatiotemporal Heterogeneity in China’s Agricultural Carbon Emissions Under the Dual Carbon Goals. Agriculture. 2025; 15(12):1302. https://doi.org/10.3390/agriculture15121302
Chicago/Turabian StyleDang, Huae, Yuanjie Deng, Yifeng Hai, Hang Chen, Wenjing Wang, Miao Zhang, Xingyang Liu, Can Yang, Minghong Peng, Dingdi Jize, and et al. 2025. "Integrating Geodetector and GTWR to Unveil Spatiotemporal Heterogeneity in China’s Agricultural Carbon Emissions Under the Dual Carbon Goals" Agriculture 15, no. 12: 1302. https://doi.org/10.3390/agriculture15121302
APA StyleDang, H., Deng, Y., Hai, Y., Chen, H., Wang, W., Zhang, M., Liu, X., Yang, C., Peng, M., Jize, D., Zhang, M., & He, L. (2025). Integrating Geodetector and GTWR to Unveil Spatiotemporal Heterogeneity in China’s Agricultural Carbon Emissions Under the Dual Carbon Goals. Agriculture, 15(12), 1302. https://doi.org/10.3390/agriculture15121302