商业区的街道特征和人类活动:基于聚类的方法在深圳的应用

IF 2.6 3区 经济学 Q2 ENVIRONMENTAL STUDIES
Chendi Yang, Rui Ma, Hongqiang Fang, Siu Ming Lo, Jacqueline TY Lo
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引用次数: 0

摘要

商业区作为重要的公共场所,其建筑环境与人类活动之间存在着潜在的关联。然而,目前的研究主要集中在店铺内部环境和顾客满意度方面,很少系统地探讨商业区外部空间的一些环境特征对游客的影响。本研究以深圳的四个商业区为例,采用聚类分析方法,根据街道特征将街道分为五种类型。随后讨论了每种类型的街道与该地区人口分布之间的关系。为此,我们采用了一种综合方法,将街景全景图、兴趣点(POI)、街道和建筑矢量等多源城市数据整合在一起,以描述建筑环境。此外,还结合基于位置服务(LBS)数据的不同时间段的人员分布情况,建立了商业区不同街道的统计模型,并评估了街道特征与人员活动之间的关系。结果表明,五类街道的人口分布与空间特征之间的关系是不同的。不同类型的街道有各自的优势,而商业区的人类活动往往不受这种优势的影响,而是受其他特征的影响。这些因素的影响在工作日和周末有很大不同。通过对街道类型进行系统分类,并评估环境因素对人流的影响,本研究为未来城市商业区的更新和发展提供了新的启示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Street characteristics and human activities in commercial districts: A clustering-based approach application for Shenzhen
As a significant public place, the commercial area has a potential correlation between its built environment and human activities. However, the current research primarily concentrates on the internal environment of the store and customer satisfaction, while the impact of some environmental features of the outer space of the business district on visitors is seldom systematically discussed. This study takes four commercial districts in Shenzhen as examples, and the streets were categorized into five types based on street characteristics using the cluster analysis method. The relationship between each type of street and the population distribution in the region was subsequently discussed. To this end, a holistic approach was adopted, integrating multi-source urban data such as street view panorama, points of interest (POI), and street and building vectors to describe the built environment. Furthermore, the distribution of people at different times, based on location-based services (LBS) data, was combined to establish statistical models of various streets in commercial districts and evaluate the relationship between street characteristics and human activities. The results demonstrate that the relationship between population distribution and spatial characteristics is different in the five types of streets. Different types of streets have their own advantages, and human activities in the business district are often not affected by this advantage, but by other characteristics. The impact of these factors varies significantly between weekdays and weekends. By systematically categorizing street types and assessing the impact of environmental factors on pedestrian flow, this study sheds new light on the renewal and development of urban commercial districts in the future.
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来源期刊
CiteScore
6.10
自引率
11.40%
发文量
159
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