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人群动态分布感知下的天津市公园活力特征及影响因素研究
张赫, 贺晶, 杨天宇, 曹舒仪
天津大学
摘要:
【目的】人群的动态分布是公园内部活力及外部需求规模的关键表征,如何基于物联感知下的人群分布数据,识别并提升公园活力(即使用效率)的问题亟待解决。【方法】以天津市为例,识别差异化情景下公园绿地的活力强度、波动性特征及模式,进行服务半径内动态的需求规模与公园活力的回归分析。【结果】活力模式分类下,各级公园主要由“高强度-低波动”的锚点类、“低强度-高波动”的游离类构成,且社区公园整体使用效率高于综合公园;另外,需求导向的人群规模及波动因素对社区公园活力的影响较大,而供给导向的外部功能及内部构成等则是提升综合公园活力的关键。【结论】人群分布的实时监测为即时识别公园活力提供基础,并有助于提升公园的使用效率。
关键词:  风景园林  人群动态分布  物联网  公园绿地  活力模式  天津市
DOI:10.12409/j.fjyl.202212010675
分类号:TU984
基金项目:天津市教委社会科学重大项目“绿色低碳发展理念下天津区级国土空间规划实施路径与智能监测研究”(编号 2021JWZD04)
Research on Vitality Characteristics and Influence Factors of Urban Parks in Tianjin Under the Perception of Dynamic Population Distribution
ZHANG He, HE Jing, YANG Tianyu, CAO Shuyi
Tianjin University
Abstract:
[Objective] Urban parks provide a wide range of ecosystem services to support residents’ health and leisure life. Continuously attracting people is beneficial to the improvement of the use efficiency of urban parks. Meanwhile, the internet of things (IOT) can help identify and manage the coupling relationship between the flow of people and space, so as to realize the dynamic monitoring of the interaction between population distribution and green space. As population distribution has been greatly affected by objective and subjective scenarios such as epidemic control, it is necessary to focus on urban parks for further research. In addition, the connotation of space vitality has been extended to people gathering and attraction maintaining. However, the relationship between vitality fluctuation and intensity of urban parks is rarely analyzed from the dynamic perspective, which makes it difficult to identify park units with similar intensity but different fluctuation changes and further adopt differentiated renewal measures. Therefore, under the perception of population distribution, this research analyzes the relationship between vitality intensity and fluctuation, and uses this index to divide the dynamic patterns of parks, so as to identify the temporal vitality characteristics of various urban parks under different scenarios. What’s more, the research analyzes the influence of dynamic population scale rather than static scale factor, on the use of urban parks, and then proposes the strategy for improving park vitality to meet the behavioral needs of residents. [Methods] Taking some administrative areas of Tianjin as an example, the research obtains dynamic population distribution data based on sensors, and sets two experimental scenarios respectively targeting objective time and subjective control. Specifically, the research analyzes the vitality intensity and fluctuation of parks, and then divides the dynamic vitality modes involved and spatial layout characteristics thereof. In addition, from the perspective of demand, the research conducts the regression analysis of dynamic population scale and park vitality within the service radius to explore the influence of dynamic population on the service efficiency of parks classified by grade and mode. [Results] From the perspective of dynamic distribution of population, the research firstly identifies the characteristics of parks in different vitality modes, and then explores the key points of park optimization in a demand-oriented manner and specifically draws the following conclusions. 1) As a whole, in terms of daytime on weekdays, the vitality characteristics of urban parks are mainly “high intensity and low fluctuation” and “low intensity and high fluctuation”, which indicates that parks’ attractiveness to a certain population is often inversely proportional to the variation degree of population scale. It is found that parks characterized by high vitality intensity and low vitality fluctuation have higher service efficiency, and are able to attract a large number of people steadily, while those characterized by low vitality intensity and high vitality fluctuation have the lowest service efficiency, and can attract only a few people to stay intermittently, thus entailing further optimization. 2) The vitality difference between various modes of comprehensive parks is greater than that of community parks, and the vitality intensity of the latter is higher than that of the former in the daytime, endowing the latter with higher service efficiency. In addition, compared with community parks, comprehensive parks rely more on location such as geographical center. 3) As an important demand factor, the population scale within the service radius has a great influence on the vitality intensity and fluctuation of parks at all levels. To be more specific, the vitality of a community park largely depends on the dynamic scale characteristics of the population within a fifteen-minute life circle in which it is located, and the service efficiency thereof is demand-oriented. However, the internal composition and external environment are more essential to comprehensive parks. [Conclusion] Based on the dynamic characteristics of urban parks, the research concludes that at the macroscopic system adjustment level, increasing the number of community parks can improve the overall service ability rather than building new comprehensive parks or expanding the existing park area. At the mesoscopic site selection optimization level, community parks emphasize uniform spatial coverage, while comprehensive parks focus more on the site selection of geographical centers or highly accessible traffic locations. At the microscopic vitality enhancement level, it is beneficial to optimize the overall layout of community parks based on the spatial distribution of residents. The internal structure and external environment at the enhanced supply side have a greater influence on comprehensive parks. Finally, in the future, it is urgent to actively perceive people to realize the technically integrated process of “monitor-feedback-adjustment”, so as to facilitate the intelligent site selection and real-time adjustment of internal and external components of urban parks.
Key words:  landscape architecture  dynamic population distribution  internet of things  urban park  vitality mode  Tianjin
引用本文:张赫,贺晶,杨天宇,曹舒仪.人群动态分布感知下的天津市公园活力特征及影响因素研究[J].风景园林,2023,30(7):36-42.
ZHANG He,HE Jing,YANG Tianyu,CAO Shuyi.Research on Vitality Characteristics and Influence Factors of Urban Parks in Tianjin Under the Perception of Dynamic Population Distribution[J].Landscape Architecture Journal, 2023, 30(7):36-42.