Research on Site Selection Planning of Urban Parks Based on POI and Machine Learning—Taking Guangzhou City as an Example
Abstract
:1. Introduction
2. Study Area and Ideas
2.1. Study Area
2.2. Research Ideas
3. Data Sources and Methodology
3.1. Data Sources
3.2. Methodology
3.2.1. Kernel Density Estimation
3.2.2. Standard Deviation Ellipse
3.2.3. Nearest Neighbor Index
3.2.4. Service Pressure Evaluation
3.2.5. Decision Tree Model
4. Current Urban Park Layout in Guangzhou
4.1. Distribution Characteristics of Urban Parks
4.2. Service Pressure Evaluation of Urban Parks
5. Decision-Making on the Location of Urban Parks in Guangzhou
5.1. Decision Tree Establishment for Urban Park Siting
5.2. Prediction of Urban Park Site Selection
5.3. Refiltering According to the Current Layout of Urban Parks and Service Pressure
6. Discussion
7. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Level 1 Indicators | Level 2 Indicators | Names of Facilities | Quantities |
---|---|---|---|
Infrastructure services | Transport facility | Bus stops, subway stations, bus stations, train stations, etc. | 2357 |
Educational facility | Science and technology museums, libraries, exhibition centers, central schools, kindergartens, cultural palaces, etc. | 31,167 | |
Leisure and entertainment | Supermarkets, food markets, telecommunication offices, repair shops, photo studios, etc. | 3521 | |
Travel sight | Scenic spots, monuments, museums, churches, etc. | 6891 | |
Life service | Supermarkets, vegetable markets, telecommunication business halls, repair shops, photo studios, public toilets, etc. | 101,446 | |
Urban parks | Comprehensive parks, children’s parks, zoos, botanical gardens, residential parks, strip parks, etc. | 870 | |
Medical care facilities for the elderly | Retirement facility | Elderly care centers, social service centers, universities for the elderly, old age apartments, etc. | 1369 |
Medical service | Clinics, CDCs, nursing homes, general hospitals, specialty hospitals, pharmacies, etc. | 16,341 | |
Commercial services | Financial institution | Banks, securities companies, ATMs, insurance companies, trust companies, etc. | 12,572 |
Shopping center | Department stores, shopping centers, supermarkets, convenience stores, bazaars, building materials and furniture, etc. | 225,541 | |
Hotel | Guesthouse, apartment hotels, express hotels, star hotels, etc. | 21,287 | |
Catering | Chinese restaurants, coffee shops, cake stores, tea houses, fast food stores, snack stores, etc. | 72,961 | |
Administrative office facilities | Real estate | Office buildings, commercial buildings, residential areas, industrial buildings, etc. | 11,676 |
Company | Companies, factories, agriculture, forestry and fishery bases, etc. | 126,000 | |
Government organization | All levels of government, administrative units, welfare organizations, etc. | 29,750 | |
Total | 663,749 |
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Tang, X.; Zou, C.; Shu, C.; Zhang, M.; Feng, H. Research on Site Selection Planning of Urban Parks Based on POI and Machine Learning—Taking Guangzhou City as an Example. Land 2024, 13, 1362. https://doi.org/10.3390/land13091362
Tang X, Zou C, Shu C, Zhang M, Feng H. Research on Site Selection Planning of Urban Parks Based on POI and Machine Learning—Taking Guangzhou City as an Example. Land. 2024; 13(9):1362. https://doi.org/10.3390/land13091362
Chicago/Turabian StyleTang, Xiaoxiang, Cheng Zou, Chang Shu, Mengqing Zhang, and Huicheng Feng. 2024. "Research on Site Selection Planning of Urban Parks Based on POI and Machine Learning—Taking Guangzhou City as an Example" Land 13, no. 9: 1362. https://doi.org/10.3390/land13091362
APA StyleTang, X., Zou, C., Shu, C., Zhang, M., & Feng, H. (2024). Research on Site Selection Planning of Urban Parks Based on POI and Machine Learning—Taking Guangzhou City as an Example. Land, 13(9), 1362. https://doi.org/10.3390/land13091362