Abstract

Numerous studies have been devoted to uncovering the characteristics of resident density and urban mobility with multisource geospatial big data. However, little attention has been paid to the internal diversity of residents such as their occupations, which is a crucial aspect of urban vibrancy. This study aims to investigate the variation between individual and interactive influences of built environment factors on occupation mixture index (OMI) with a novel GeoDetector-based indicator. This study first integrated application (App) use and mobility patterns from cellphone data to portray residents’ occupations and evaluate the OMI in Guangzhou. Then, the mechanism of OMI distribution was analyzed with the GeoDetector model. Next, an optimized GeoDetector-based index, interactive effect variation ratio (IEVR) was proposed to quantify the variation between individual and interactive effects of factors. The results showed that land use mixture was the dominating factor, and that land use mixture, building density, floor area ratio, road density affected the OMI distribution directly. Some interesting findings were uncovered by IEVR. The influences of cultural inclusiveness and metro accessibility were less important in factor detector result, while they were found to be the most influential in an indirect way interacting with other built environment factors. The results suggested that both “hardware facilities” (land use mixture, accessibility) and “soft facilities” (cultural inclusiveness) should be considered in planning a harmonious urban employment space and sustainable city.

Highlights

  • Guangzhou Urban Planning & Design Survey Research Institute, Guangzhou 510060, China; Guangdong Enterprise Key Laboratory for Urban Sensing, Monitoring and Early Warning, Abstract: Numerous studies have been devoted to uncovering the characteristics of resident density and urban mobility with multisource geospatial big data

  • It hinted that though rail transit was essential to a city, the spatial distribution of occupation mixture index (OMI)

  • Considering the data availability and the regional characteristics of the study area, six potential driving factors were selected, among which the cultural inclusiveness was put forward based on cuisines POIs data and Shannon entropy, as an aspect of built environment factors

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Summary

Introduction

Guangzhou Urban Planning & Design Survey Research Institute, Guangzhou 510060, China; Guangdong Enterprise Key Laboratory for Urban Sensing, Monitoring and Early Warning, Abstract: Numerous studies have been devoted to uncovering the characteristics of resident density and urban mobility with multisource geospatial big data. This study first integrated application (App) use and mobility patterns from cellphone data to portray residents’ occupations and evaluate the OMI in Guangzhou. Li et al, analyzed the spatio-temporal dynamic of urban population density distribution with Baidu heat map data in Xian at multi time scales: morning, afternoon, evening and nighttime, and the mechanism of the dynamic was explored with regression models [4]. Tu et al, proposed a framework integrating cellphone data, POIs (point of interests) and check-in data to portray urban vibrancy in Shenzhen, and its mechanism was explored with global and local regressions [38]. Fu et al, measured the urban vibrancy with real-time population distribution data and small catering business data, and its mechanism was explored with a geographically weighted regression model in Urumqi [41]. Most related studies focused on the diversity of residents’ spatio-temporal characteristics, little attention was paid to the internal diversity of residents themselves, which is an indispensable aspect of urban vibrancy

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