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Revitalizing historic districts: Identifying built environment predictors for street vibrancy based on urban sensor data

Vibrancy is indispensable and beneficial for revitalization of historic districts. Hence, identifying built environment predictors for vibrancy is of great interest to urban practitioners and policy makers. However, it is challenging. On the one hand, there is no consensus in selection of appropriat...

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Published in:Cities 2021-10, Vol.117, p.103305, Article 103305
Main Authors: Li, Miaoyi, Liu, Jixiang, Lin, Yifei, Xiao, Longzhu, Zhou, Jiangping
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Language:English
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creator Li, Miaoyi
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Xiao, Longzhu
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description Vibrancy is indispensable and beneficial for revitalization of historic districts. Hence, identifying built environment predictors for vibrancy is of great interest to urban practitioners and policy makers. However, it is challenging. On the one hand, there is no consensus in selection of appropriate proxy for vibrancy. On the other hand, the built environment is multidimensional, but limited studies examined its impacts on vibrancy from different dimensions simultaneously. The Baitasi Area is a typical historic district in Beijing, China. In this study, on the basis of a long-term repeatedly measured dataset generated from the Citygrid sensors, we investigated the spatiotemporal distribution of street vibrancy in Baitasi Area and examined its built environment predictors in two seasons (i.e., summer/autumn and winter), with pedestrian volume as the proxy for vibrancy and built environment portrayed from four different dimensions (i.e., morphology, configuration, function, and landscape). We found that (1) the street vibrancy in Baitasi Area is temporally relatively evenly distributed, but with higher spatial concentration; (2) microclimate and built environment are more significant in winter than in summer/autumn; (3) street morphology and configuration features are more significant predictors than street function and landscape features; (4) generally, streets with higher point of interest (POI) diversity, higher buildings, and stronger network connection tend to have higher vibrancy. This study provides decision makers with insights in revitalizing historic districts. •Street vibrancy in Baitasi Area is temporally evenly distributed and yet with higher spatial concentration.•Effects of built environment on street vibrancy is more significant in winter than in summer/autumn.•Comparatively, day-time street vibrancy is less affected by the built environment.•Street morphology and configuration features are more significant predictors than street function and landscape features.•Streets with higher POI diversity, higher buildings, and stronger network connection tend to have higher vibrancy.
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source International Bibliography of the Social Sciences (IBSS); ScienceDirect Freedom Collection; PAIS Index
subjects Beijing, China
Built environment
Decision makers
Districts
Historic buildings & sites
Historic district
Morphology
Pedestrian volume
Policy making
Summer
Urban sensor data
Urban vibrancy
Winter
title Revitalizing historic districts: Identifying built environment predictors for street vibrancy based on urban sensor data
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