Smart City Gnosys

Smart city article details

Title Discovering Urban Mobility Patterns And Demand For Uses Of Urban Spaces From Mobile Phone Data
ID_Doc 20487
Authors Butron-Revilla C.; Suarez-Lopez E.; Laura-Ochoa L.
Year 2021
Published 2021 2nd Sustainable Cities Latin America Conference, SCLA 2021
DOI http://dx.doi.org/10.1109/SCLA53004.2021.9540080
Abstract In sustainable urban mobility, the analysis of the daily life of citizens and mobility plans are being developed using data obtained through traditional methods like surveys. However, it is compulsory a new approach to study how citizens are moving in the city. In this context, the Arequipa Smart City research project developed a mobile application to gather geospatial data of the daily mobility of a group of university students. This work aims to discover urban mobility patterns using the information of the displacement data and the urban spaces represented by polygons. An important stage is to clean the data before to process and analyze the student' mobility data. The analysis of mobility patterns is supported by the duality conditions of space-time. The spatial conditions of the points of interest are analyzed using the geographic location of the students. From this analysis, we understand the demand for the use of urban spaces. Second, the temporal conditions are analyzed using stay time on urban space to discover the frequency of use of urban spaces. The results allow understanding the student's interaction with metropolitan urban spaces. In addition, we discuss the results to explain the importance of the analysis of smart mobility patterns in metropolitan areas to address urban accessibility. © 2021 IEEE.
Author Keywords points of interest; Smartphone; Urban mobility patterns


Similar Articles


Id Similarity Authors Title Published
46504 View0.886Ghosh N.; Sarkar U.; Nagesh P.Review On Application Of Call Details Records (Cdrs) Data To Understand Urban Mobility Scenarios For Future Smart CitiesSpringer Geography (2023)
9563 View0.883Leal D.; Albuquerque V.; Dias M.S.; Ferreira J.C.Analyzing Urban Mobility Based On Smartphone Data: The Lisbon Case StudyLecture Notes of the Institute for Computer Sciences, Social-Informatics and Telecommunications Engineering, LNICST, 486 LNICST (2023)
28986 View0.882Dorostkar E.; Najarsadeghi M.Hidden Urban Patterns: Existential Discovery Of Urban Patterns Based On Traffic And Virtual SpaceTransportation Research Interdisciplinary Perspectives, 23 (2024)
25572 View0.879Xie R.Exploring Mobile Phone Data For Urban Activity Analysis: Applications From Individual Activity Pattern To Group Activity RegularityProceedings - 2019 IEEE SmartWorld, Ubiquitous Intelligence and Computing, Advanced and Trusted Computing, Scalable Computing and Communications, Internet of People and Smart City Innovation, SmartWorld/UIC/ATC/SCALCOM/IOP/SCI 2019 (2019)
27966 View0.879Raubal M.; Bucher D.; Martin H.Geosmartness For Personalized And Sustainable Future Urban MobilityUrban Book Series (2021)
9220 View0.879Kim M.; Zo H.; Choi S.Analysis Of Micro-Mobility Usage By Commercial District Type In Metropolitan AreaInternational Conference on ICT Convergence (2024)
42827 View0.874Rocha, NP; Dias, A; Santinha, G; Rodrigues, M; Queirós, A; Rodrigues, CPrediction Of Mobility Patterns In Smart Cities: A Systematic Review Of The LiteratureTRENDS AND INNOVATIONS IN INFORMATION SYSTEMS AND TECHNOLOGIES, VOL 1, 1159 (2020)
16755 View0.871Zheng Y.A.; Lakhdari A.; Abusafia A.; Tony Lui S.T.; Bouguettaya A.Crowdweb: A Visualization Tool For Mobility Patterns In Smart CitiesProceedings - International Conference on Distributed Computing Systems, 2023-July (2023)
46603 View0.87Doorley R.; Noyman A.; Xiong Z.; Alonso L.; Grignard A.; Larson K.Revurb: Understanding Urban Activity And Human Dynamics Through Point Process Modelling Of Telecoms Data2019 Smart Cities Symposium Prague, SCSP 2019 - Proceedings (2019)
25526 View0.869Liu J.; Yuan Y.Exploring Dynamic Urban Mobility Patterns From Traffic Flow Data Using Community DetectionAnnals of GIS, 30, 4 (2024)