打造适合慢跑的城市:利用大数据评估城市街道的可跑步性

IF 5.7 2区 工程技术 Q1 ECONOMICS
Feng Gao , Xin Chen , Shunyi Liao , Wangyang Chen , Lei Feng , Jiemin Wu , Qingya Zhou , Yuming Zheng , Guanyao Li , Shaoying Li
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引用次数: 0

摘要

慢跑在城市和交通战略领域一直被边缘化,因为它与通勤无关。公众对健康的日益关注突出表明,迫切需要规划和基础设施来支持户外体育活动,但目前对城市环境是否适合此类活动的评估还不够充分。这项调查揭示了一个以可获取的地理空间大数据为基础的可运行性评估框架。最初的步骤包括根据文献资料,从建筑环境、行人感知和自然环境中划分出潜在的衡量标准。随后,利用慢跑频率作为响应变量,以已确定的指标作为预测变量,构建逆向逐步回归分析。随后的模型保留了某些被视为有效指标的变量,并将其回归系数作为权重,计算出单个路段的可跑性指数。该框架在广州的应用证实了模型的客观性和有效性。所引入的框架为研究人员和城市规划者提供了一个客观、可重复的可运行性评估工具,并具有扩展性,可用于评估步行和自行车的可运行性。这项研究鼓励人们关注和支持慢跑活动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Crafting a jogging-friendly city: Harnessing big data to evaluate the runnability of urban streets

Crafting a jogging-friendly city: Harnessing big data to evaluate the runnability of urban streets
Jogging, historically marginalized in the realms of urban and transportation strategy since it is not about commuting, is garnering appreciation for its health-related merits. The growing public focus on health underscores the urgent need for planning and infrastructure to support outdoor physical activities, yet current evaluations of urban environments' friendliness toward such activities are insufficient. This investigation unveils a runnability evaluation framework predicated on accessible geospatial big data. Initial steps involved delineating potential metrics from the built environment, pedestrian perceptions, and the natural setting, as informed by literature. This was followed by constructing a backward stepwise regression analysis, utilizing jogging frequency as the response variable against the identified metrics as predictors. The ensuing model retained certain variables, which were then deemed valid metrics, and their regression coefficients were appropriated as weights to compute a runnability index for individual street segments. This framework was applied in Guangzhou, affirming the model's objectivity and validity. The introduced framework furnishes researchers and urban planners with an objective and reproducible tool for the evaluation of runnability and possesses the versatility for an extension to assess walkability and bikeability. This study encourages the attention and support of jogging activities.
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来源期刊
CiteScore
11.50
自引率
11.50%
发文量
197
期刊介绍: A major resurgence has occurred in transport geography in the wake of political and policy changes, huge transport infrastructure projects and responses to urban traffic congestion. The Journal of Transport Geography provides a central focus for developments in this rapidly expanding sub-discipline.
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