Demand-Led Optimization of Urban Park Services

As the demand for cultural and recreational services grows, the mismatch between the supply and demand of park services significantly affects residents’ well-being. Optimizing the spatial layout of park services is a focal point of urban park and green space research. Taking Hangzhou, Zhejiang Provi...

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Veröffentlicht in:Forests 2023-12, Vol.14 (12), p.2371
Hauptverfasser: Tong, Anqi, Qian, Xiaohu, Xu, Lihua, Wu, Yaqi, Ma, Qiwei, Shi, Yijun, Feng, Mao, Lu, Zhangwei
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container_end_page
container_issue 12
container_start_page 2371
container_title Forests
container_volume 14
creator Tong, Anqi
Qian, Xiaohu
Xu, Lihua
Wu, Yaqi
Ma, Qiwei
Shi, Yijun
Feng, Mao
Lu, Zhangwei
description As the demand for cultural and recreational services grows, the mismatch between the supply and demand of park services significantly affects residents’ well-being. Optimizing the spatial layout of park services is a focal point of urban park and green space research. Taking Hangzhou, Zhejiang Province, as a case study, this research analyzes the spatial patterns and balance of park service supply and demand. Utilizing the Grey Wolf Optimization Model optimized by the K-Nearest Neighbor Model (GWO-KNN), this study proposes construction objectives for optimizing park services. The results indicate the following: (1) significant differences exist in the park service demands of residents in different residential environments; (2) there is a noticeable spatial disparity in park service supply among various residential areas with an overall positive correlation between park service supply levels and resident demands, yet an imbalance exists; (3) this study categorizes spatial types into low-service coordination, high-service coordination, low-service imbalance, and high-service imbalance; (4) the GWO-KNN Model is applied with optimization objectives being the innovative aspect of this study. Strategies for each park category are proposed: emphasizing suburban park construction by utilizing surrounding green resources and adding diverse facilities; introducing facilities friendly to vulnerable groups to meet the needs of diverse populations; enhancing the complementary advantages between “new” and “old” cities by moderately increasing park sizes and improving cultural and facility development levels; optimizing spatial structure with limited land resources to construct an urban park network system. This study aims to provide theoretical and technical support for optimizing urban park and green space systems.
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The results indicate the following: (1) significant differences exist in the park service demands of residents in different residential environments; (2) there is a noticeable spatial disparity in park service supply among various residential areas with an overall positive correlation between park service supply levels and resident demands, yet an imbalance exists; (3) this study categorizes spatial types into low-service coordination, high-service coordination, low-service imbalance, and high-service imbalance; (4) the GWO-KNN Model is applied with optimization objectives being the innovative aspect of this study. 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source MDPI - Multidisciplinary Digital Publishing Institute; Elektronische Zeitschriftenbibliothek - Frei zugängliche E-Journals
subjects Artificial intelligence
Big Data
Coordination
Green infrastructure
Housing prices
Land resources
Machine learning
Mathematical optimization
Optimization algorithms
Optimization models
Parks & recreation areas
Per capita
Population
Provisions
Recreation demand
Residential areas
Supply & demand
Technical services
Urban development
Urban environments
title Demand-Led Optimization of Urban Park Services
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