Research on Spatial Delineation Method of Urban-Rural Fringe Combining POI and Nighttime Light Data—Taking Wuhan City as an Example
Abstract
:1. Introduction
2. Overview of the Study Area and Data Processing
2.1. Overview of the Study Area
2.2. Data Source and Preprocessing
2.2.1. Data and Sources
2.2.2. Data Preprocessing
3. Research Design
3.1. Research Methods
3.1.1. Kernel Density Estimate (KDE)
3.1.2. NPP and POI Composite Index
3.1.3. Breaking Point Analysis
3.1.4. Land Use Structure Information Entropy Model
3.2. Standards for Spatial Delineation of Urban-Rural Fringe
3.2.1. NPP and POI Composite Index Construction
3.2.2. Analysis of the Relationship between NPP and POI and Urban and Rural Spatial Structure
3.3. Delineation of Test Methods for Results
4. Results
4.1. Identification Results of Inner Boundary of Urban-Rural Fringe
4.2. Delineation of Spatial Scope of Urban-Rural Fringe
5. Discussion
5.1. Verification of Urban-Rural Fringe Identification Results
5.1.1. Overall Space Measurement
5.1.2. Transects Verification
5.1.3. Field Verification
5.2. Spatial Analysis of Urban and Rural Fringe in Wuhan
5.3. Comparative Analysis
5.4. Limitations
6. Conclusions
- (1)
- NPP and POI composite index is applied to the study of spatial delineation of urban-rural fringe, which can not only give full play to the attributes and micro-advantage potential of POI, synthesize the difference between the type of facilities and light intensity, reduce the “saturation” and “overflow” effects of Nighttime Light, but also master the direction of urban and rural development in a large scale by using NTL, reduce broken and isolated spots, and ensure the continuity of identification results. Compared with using POI, NTL, or population density data alone, the accuracy is higher, and the timeliness is more efficient.
- (2)
- NPP and POI can quantitatively identify potential central area and multi-layer structure of the city. The urban-rural fringe area of Wuhan is 1482.35 km2, which accounts for 17.30% of the total area of Wuhan City. Around the main body of the urban core area, it presents the “six axes and two rings” banded and leaping distribution characteristics. The urban core area of Wuhan City is in the form of “one main area with multiple cores”, and the rural areas are widely distributed in the periphery of Wuhan City, presenting a continuous distribution feature. This characteristic shows that NPP and POI can better represent the vitality of urban development than population statistics, land use, and landscape. The identification results have important reference significance for the allocation of global urban infrastructure, industrial division, ecological function division, and other studies.
- (3)
- NPP and POI composite index shows a double mutation law in urban and rural spaces. The first mutation occurred between the urban core area and the URF. With the increasing distance from the urban core area, NPP and POI showed a rapid downward trend. The second mutation occurred between the URF and the rural. With the increasing distance from the URF, the cumulative value of NPP and POI isosurface area showed a sharp upward trend. This law confirms that the urban-rural fringe, as a regional entity generated in the process of urban expansion, objectively exists, has spatial continuity, transition of factors such as economy, population, and land, and consistency of internal characteristics, which is of empirical significance for the discussion of the ternary and binary models in the study of cities spatial structure.
- (4)
- This paper only takes Wuhan City as an example to discuss the urban and rural spatial change law of NPP and POI and delimit the spatial scope of its urban-rural fringe. After the data are enriched in the future, cities with different areas, populations, and economic development statuses can be compared and analyzed to discuss the universality. Although NPP and POI can distinguish between natural landscape and man-made landscape, its value is extremely low in agricultural land, ecological land, and other natural areas, and the spatial subordination of such areas needs to be further discussed. NPP and POI can represent the vitality of development, with convenient access and a short renewal cycle. If machine learning and other methods can be used to build the spatial range of URF at different time points, it is of great significance to analyze the speed and direction of global urban expansion, urban shrinkage, and other issues.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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POI Function Category | POI First Level Industry Classification in Baidu Map | Number of POIs |
---|---|---|
Cultural and Sports | Tourist attractions, leisure and entertainment, sports and fitness, education and training, cultural media, natural features | 53,966 |
Commercial | Food, hotel, shopping, life service, beauty 1, car service, finance | 68,508 |
Industrial | Corporate | 70,204 |
Public service | Medical treatment, transportation facilities, government agencies | 33,640 |
Residential | Real estate | 119,543 |
Order Number of Section Lines | Average Value of Breaking Point of NPP and POI Composite Index |
---|---|
1~30 | 0.109 |
31~60 | 0.095 |
61~90 | 0.105 |
91~120 | 0.103 |
121~150 | 0.097 |
151~180 | 0.114 |
Land Category Name | Area/km2 | Proportion/% | |
---|---|---|---|
Agricultural land | Cultivated land | 216.42 | 14.60 |
Agricultural facility land | 1.49 | 0.10 | |
Sum | 217.91 | 14.70 | |
Ecological land | Grassland | 34.51 | 2.33 |
Forestland | 161.72 | 10.91 | |
Waters | 445.15 | 30.03 | |
Garden land | 5.58 | 0.37 | |
Sum | 646.96 | 43.64 | |
Construction land | Industrial land | 168.55 | 11.37 |
Mining land | 5.41 | 0.36 | |
Land for infrastructure | 175.11 | 11.81 | |
Education land | 52.44 | 3.54 | |
Commercial land | 20.54 | 1.39 | |
Land for logistics and warehouse | 20.4 | 1.38 | |
Residential land | 161.61 | 10.90 | |
Sum | 604.06 | 40.75 | |
Other lands | Other land | 13.42 | 0.91 |
Sum | 13.42 | 0.91 | |
Total | 1482.35 | 100 |
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Yu, J.; Meng, Y.; Zhou, S.; Zeng, H.; Li, M.; Chen, Z.; Nie, Y. Research on Spatial Delineation Method of Urban-Rural Fringe Combining POI and Nighttime Light Data—Taking Wuhan City as an Example. Int. J. Environ. Res. Public Health 2023, 20, 4395. https://doi.org/10.3390/ijerph20054395
Yu J, Meng Y, Zhou S, Zeng H, Li M, Chen Z, Nie Y. Research on Spatial Delineation Method of Urban-Rural Fringe Combining POI and Nighttime Light Data—Taking Wuhan City as an Example. International Journal of Environmental Research and Public Health. 2023; 20(5):4395. https://doi.org/10.3390/ijerph20054395
Chicago/Turabian StyleYu, Jing, Yingying Meng, Size Zhou, Huaiwen Zeng, Ming Li, Zhaoxia Chen, and Yan Nie. 2023. "Research on Spatial Delineation Method of Urban-Rural Fringe Combining POI and Nighttime Light Data—Taking Wuhan City as an Example" International Journal of Environmental Research and Public Health 20, no. 5: 4395. https://doi.org/10.3390/ijerph20054395
APA StyleYu, J., Meng, Y., Zhou, S., Zeng, H., Li, M., Chen, Z., & Nie, Y. (2023). Research on Spatial Delineation Method of Urban-Rural Fringe Combining POI and Nighttime Light Data—Taking Wuhan City as an Example. International Journal of Environmental Research and Public Health, 20(5), 4395. https://doi.org/10.3390/ijerph20054395