Comprehensive Land Consolidation Zoning Based on Minimum Cumulative Resistance Model—A Case Study of Chongqing, Southwest China
Abstract
:1. Introduction
2. Analytical Framework
2.1. The Development Dilemma of PLES
2.2. The Versatility of CLC
3. Materials and Methods
3.1. Study Area
3.2. Data Sources and Processing
3.3. Research Methods
3.3.1. Overview of the MCR Model
3.3.2. Determination of the Expansion Source for PLES
3.3.3. Select the Resistance Factors That Affect the Expansion of PLES
3.3.4. Construct the Minimum Cumulative Resistance Surface of PLES
3.3.5. Establishing the Differential Resistance Surface
4. Results
4.1. Construction of Comprehensive Resistance Surface
- For the spatial expansion of production spaces in Chongqing, the lowest comprehensive resistance is 10.0, while the highest is 84.7. Regions such as Tongnan District, Dazu District, Hechuan District, and Dianjiang District, located in the western and northern parts of Chongqing, exhibit relatively lower comprehensive resistance values due to factors such as flat terrain, abundant water resources, and developed transportation. In contrast, areas such as Chengkou County, Wushan County, and Youyang County in the northeast and southeast regions face higher comprehensive resistance due to factors such as steep terrain, water scarcity, and pressures related to ecological conservation.
- For the spatial expansion of living space in Chongqing, the lowest comprehensive resistance is 13.0, while the highest is 90.0. Regions such as Yuzhong District, Jiangbei District, and Nan’an District, which fall within the urban functional core area, exhibit lower comprehensive resistance values. These areas are generally economically developed and offer convenient living conditions. In contrast, the northeastern and southeastern parts of Chongqing experience higher comprehensive resistance due to factors such as topography, level of economic development, and public service capacity.
- For the spatial expansion of ecological space in Chongqing, the lowest comprehensive resistance is 10.0, while the highest is 84.7. The northeastern and southeastern parts of the city exhibit relatively lower comprehensive resistance values. In contrast, the areas within the urban functional core zone, such as Yuzhong District, Nan’an District, and Jiangbei District, have the highest comprehensive resistance values. The western and northern regions form larger-scale high-resistance areas due to factors such as high human activity intensity and relatively lower ecological conservation importance.
4.2. Suitability Analysis of PLES Based on the MCR Model
4.3. Differentiated Strategy of CLC
5. Discussion
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Type | Data Name | Type Format | DATA Resolution | Data Source |
---|---|---|---|---|
Land use data | Land use data | Raster | 30 m × 30 m | Resource and Environment Science and Data Center https://www.resdc.cn/Default.aspx (accessed on 20 May 2023) |
Distance accessibility data | The downtown, rural settlement, river | Raster | 30 m × 30 m | Land use data extraction |
Socio-economic data | GDP | Raster | 1 km × 1 km | Resource and Environment Science and Data Center https://www.resdc.cn/Default.aspx (accessed on 21 May 2023) |
Points of interest | Vector | - | Resource and Environment Science and Data Center https://www.resdc.cn/Default.aspx (accessed on 20 May 2023) | |
Geological disaster | Vector | - | Global Disaster Data Platform https://www.gddat.cn (accessed on 20 May 2023) | |
Road network | Vector | - | Open street map | |
NPP-VIIRS | Raster | 500 m × 500 m | National Earth System Science Data Center http://geodata.nnu.edu.cn (accessed on 20 May 2023) | |
Natural environment data | DEM | Raster | 30 m × 30 m | Geospatial data cloud platform https://www.gscloud.cn (accessed on 20 May 2023) |
Slope, topographic position index | Raster | 30 m × 30 m | DEM extraction | |
Precipitation | Raster | 1 km × 1 km | Resource and Environment Science and Data Center https://www.resdc.cn/Default.aspx (accessed on 22 May 2023) | |
NDVI | Raster | 30 m × 30 m | Resource and Environment Science and Data Center (https://www.resdc.cn/Default.aspx) (accessed on 22 May 2023) | |
Biological richness index | Raster | 30 m × 30 m | Calculated according to the proportion of different land use types in the grid [47] | |
Ecosystem service value | Raster | 30 m × 30 m | The calculation is based on the unit ecosystem service equivalent factor [48] |
Items | Resistance Factor | Factor Classification and Score [51,52,53,54,55] | Weight | ||||
---|---|---|---|---|---|---|---|
10 | 30 | 50 | 70 | 90 | |||
PS | Land cover | Cultivated land | Unused land | Construction land | Grassland, Forest land | Waterbody | 0.265 |
Annual temperature | >17.3 | 15.4–17.3 | 13.1–15.4 | 10.2–13.1 | ≤10.2 | 0.112 | |
Slope | ≤2 | 2–6 | 6–15 | 15–25 | >25 | 0.208 | |
Distance from water source (m) | ≤500 | 500–2000 | 2000–5000 | 5000–10,000 | >10,000 | 0.159 | |
Distance from main road (m) | ≤500 | 500–1500 | 1500–2500 | 2500–5000 | >5000 | 0.119 | |
Distance from settlement (m) | ≤500 | 500–1000 | 1000–1500 | 1500–2000 | >2000 | 0.137 | |
LS | Land cover | Construction land | Unused land | Grassland | Cultivated land | Waterbody, Forest land | 0.251 |
Topographic position index | ≤0.40 | 0.4–0.5 | 0.5–0.6 | 0.6–0.7 | >0.7 | 0.127 | |
Economic density (Yuan∙108/km2) | >35.28 | 4.45–35.28 | 1.57–4.45 | 0.33–1.57 | ≤0.33 | 0.152 | |
Distance from geologic calamity (m) | >10,000 | 5000–10,000 | 2000–5000 | 1000–2000 | ≤1000 | 0.175 | |
Distance from POI (m) | ≤500 | 500–1500 | 1500–3000 | 3000–5000 | >5000 | 0.164 | |
Distance from urban area (m) | ≤1000 | 1000–5000 | 5000–10,000 | 10,000–15,000 | >15,000 | 0.131 | |
ES | Land cover | Waterbody, Forest land | Grassland | Cultivated land | Unused land | Construction land | 0.243 |
Elevation (m) | >1652 | 1169–1652 | 801–1169 | 488–801 | ≤488 | 0.122 | |
NDVI | >0.8 | 0.6–0.8 | 0.4–0.6 | 0.2–0.4 | ≤0.2 | 0.133 | |
Ecosystem service value (Yuan∙104/hm2) | >2268 | 1652–2268 | 1290–1652 | 844–1290 | ≤844 | 0.182 | |
Brightness at night | ≤4.5 | 4.5–15.8 | 15.8–32.6 | 32.6–79.9 | >79.9 | 0.144 | |
Biological richness index | >79.3 | 67.3–79.3 | 54.7–67.3 | 40.7–54.7 | ≤40.7 | 0.176 |
Type | Suitability Grades | Range of Minimum Cumulative Resistance | Proportion of Total Townships (%) |
---|---|---|---|
Production space | P1 | 0–1216 | 18.58 |
P2 | 1216–5133 | 30.88 | |
P3 | 5133–17,742 | 31.07 | |
P4 | 17,742–58,341 | 15.14 | |
P5 | 58,341–189,054 | 4.33 | |
Living space | L1 | 0–114,254 | 29.69 |
L2 | 114,254–149,740 | 11.41 | |
L3 | 149,740–263,994 | 25.47 | |
L4 | 263,994–631,856 | 25.96 | |
L5 | 631,856–1,816,252 | 7.47 | |
Ecological space | E1 | 95–1328 | 20.16 |
E2 | 1328–6082 | 20.64 | |
E3 | 6082–24,404 | 17.80 | |
E4 | 24,404–95,022 | 31.27 | |
E5 | 95,022–367,199 | 10.13 |
Suitability Zoning | Proportion (%) | Main Features | Main Measures |
---|---|---|---|
PFZ | 38.64 | The main source of agricultural product supply | (1) Improvement of agricultural production infrastructure to increase the efficiency of agricultural production. (2) Strengthen investment in agricultural science and technology to improve the yield and quality of agricultural products. (3) Construct the whole industrial chain of agricultural products and improve the income level of farmers. |
LFZ | 2.95 | Urban functional core area | (1) Optimize the spatial layout of construction land and guide residents to live in a moderate concentration. (2) Improve public service infrastructure and balance its spatial allocation. (3) Develop certain supporting industries and provide diversified employment opportunities for residents. |
EFZ | 39.92 | Important Ecosystem Conservation Area | (1) Implement ecological protection and restoration projects and conduct real-time monitoring of the quality of the ecological environment in key areas. (2) Develop rural tourism and turn ecological resources into ecological assets without destroying the local ecosystem. |
PLFZ | 8.55 | Public service supply capability and productivity are equally outstanding | (1) Coordinate the development needs of industrial land and the expansion needs of residents’ living space through measures such as increasing and decreasing linkage and the balance of entry and exit. (2) Introduce green, modern, and sustainable production technology to improve production quality and efficiency while minimizing environmental impact. |
EPFZ | 3.74 | Balance economic development and ecological protection | (1) Vigorously implement efficient and stable production methods such as precision agriculture and organic agriculture to reduce the impact on the ecological environment. (2) Based on the advantages of local ecological functions, explore the integrated development model of agriculture and tourism. |
ELFZ | 3.15 | Taking into account the need for livable life and ecological protection | (1) Strictly control the increment in construction land to avoid the extrusion of ecological space. (2) Promoting moderately concentrated population living, reducing resource consumption, and creating resource-saving and environment friendly composite spaces. |
PLEFZ | 3.05 | It is necessary to coordinate the relationship between industrial development, livable life, and ecological protection. | (1) First, meet the needs of ecological space protection, and then consider the need for livable living space construction and production space expansion. (2) Utilize the comprehensive advantages of the coordination of the functions of the PLES, actively cultivate green and environmentally friendly characteristic industries, and create a livable, suitable, and beautiful rural natural and social environment. |
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Luo, L.; Yang, C.; Chen, R.; Liu, W. Comprehensive Land Consolidation Zoning Based on Minimum Cumulative Resistance Model—A Case Study of Chongqing, Southwest China. Land 2023, 12, 1935. https://doi.org/10.3390/land12101935
Luo L, Yang C, Chen R, Liu W. Comprehensive Land Consolidation Zoning Based on Minimum Cumulative Resistance Model—A Case Study of Chongqing, Southwest China. Land. 2023; 12(10):1935. https://doi.org/10.3390/land12101935
Chicago/Turabian StyleLuo, Linzhong, Chaoxian Yang, Rongrong Chen, and Weiping Liu. 2023. "Comprehensive Land Consolidation Zoning Based on Minimum Cumulative Resistance Model—A Case Study of Chongqing, Southwest China" Land 12, no. 10: 1935. https://doi.org/10.3390/land12101935
APA StyleLuo, L., Yang, C., Chen, R., & Liu, W. (2023). Comprehensive Land Consolidation Zoning Based on Minimum Cumulative Resistance Model—A Case Study of Chongqing, Southwest China. Land, 12(10), 1935. https://doi.org/10.3390/land12101935