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Reversed urbanism: Inferring urban performance through behavioral patterns in temporal telecom data

Author

Listed:
  • Ariel Noyman
  • Ronan Doorley
  • Zhekun Xiong
  • Luis Alonso
  • Arnaud Grignard
  • Kent Larson

Abstract

A fundamental aspect of well performing cities is successful public spaces. For centuries, understanding these places has been limited to sporadic observations and laborious data collection. This study proposes a novel methodology to analyze citywide, discrete urban spaces using highly accurate anonymized telecom data and machine learning algorithms. Through superposition of human dynamics and urban features, this work aims to expose clear correlations between the design of the city and the behavioral patterns of its users. Geolocated telecom data, obtained for the state of Andorra, were initially analyzed to identify “stay-points†—events in which cellular devices remain within a certain roaming distance for a given length of time. These stay-points were then further analyzed to find clusters of activity characterized in terms of their size, persistence, and diversity. Multivariate linear regression models were used to identify associations between the formation of these clusters and various urban features such as urban morphology or land-use within a 25–50 meters resolution. Some of the urban features that were found to be highly related to the creation of large, diverse and long-lasting clusters were the presence of service and entertainment amenities, natural water features, and the betweenness centrality of the road network; others, such as educational and park amenities were shown to have a negative impact. Ultimately, this study suggests a “reversed urbanism†methodology: an evidence-based approach to urban design, planning, and decision making, in which human behavioral patterns are instilled as a foundational design tool for inferring the success rates of highly performative urban places.

Suggested Citation

  • Ariel Noyman & Ronan Doorley & Zhekun Xiong & Luis Alonso & Arnaud Grignard & Kent Larson, 2019. "Reversed urbanism: Inferring urban performance through behavioral patterns in temporal telecom data," Environment and Planning B, , vol. 46(8), pages 1480-1498, October.
  • Handle: RePEc:sae:envirb:v:46:y:2019:i:8:p:1480-1498
    DOI: 10.1177/2399808319840668
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    References listed on IDEAS

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    1. S'andor Juh'asz & GergH{o} Pint'er & 'Ad'am Kov'acs & Endre Borza & Gergely M'onus & L'aszl'o LH{o}rincz & Bal'azs Lengyel, 2022. "Amenity complexity and urban locations of socio-economic mixing," Papers 2212.07280, arXiv.org, revised Jul 2023.
    2. Lisa Orii & Luis Alonso & Kent Larson, 2020. "Methodology for Establishing Well-Being Urban Indicators at the District Level to be Used on the CityScope Platform," Sustainability, MDPI, vol. 12(22), pages 1-25, November.
    3. Xinyue Ye & Jiaxin Du & Yu Ye, 2022. "MasterplanGAN: Facilitating the smart rendering of urban master plans via generative adversarial networks," Environment and Planning B, , vol. 49(3), pages 794-814, March.
    4. Olga Palusci & Carlo Cecere, 2022. "Urban Ventilation in the Compact City: A Critical Review and a Multidisciplinary Methodology for Improving Sustainability and Resilience in Urban Areas," Sustainability, MDPI, vol. 14(7), pages 1-44, March.
    5. Sandor Juhasz & Gergo Pinter & Adam Kovacs & Endre Borza & Gergely Monus & Laszlo Lorincz & Balazs Lengyel, 2022. "Amenity complexity and urban locations of socio-economic mixing," Papers in Evolutionary Economic Geography (PEEG) 2232, Utrecht University, Department of Human Geography and Spatial Planning, Group Economic Geography, revised Nov 2022.

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