Smart City Gnosys

Smart city article details

Title Geosmartness For Personalized And Sustainable Future Urban Mobility
ID_Doc 27966
Authors Raubal M.; Bucher D.; Martin H.
Year 2021
Published Urban Book Series
DOI http://dx.doi.org/10.1007/978-981-15-8983-6_6
Abstract Urban mobility and the transport of people have been increasing in volume inexorably for decades. Despite the advantages and opportunities mobility has brought to our society, there are also severe drawbacks such as the transport sector’s role as one of the main contributors to greenhouse-gas emissions and traffic jams. In the future, an increasing number of people will be living in large urban settings, and therefore, these problems must be solved to assure livable environments. The rapid progress of information and communication, and geographic information technologies, has paved the way for urban informatics and smart cities, which allow for large-scale urban analytics as well as supporting people in their complex mobile decision making. This chapter demonstrates how geosmartness, a combination of novel spatial-data sources, computational methods, and geospatial technologies, provides opportunities for scientists to perform large-scale spatio-temporal analyses of mobility patterns as well as to investigate people’s mobile decision making. Mobility-pattern analysis is necessary for evaluating real-time situations and for making predictions regarding future states. These analyses can also help detect behavioral changes, such as the impact of people’s travel habits or novel travel options, possibly leading to more sustainable forms of transport. Mobile technologies provide novel ways of user support. Examples cover movement-data analysis within the context of multi-modal and energy-efficient mobility, as well as mobile decision-making support through gaze-based interaction. © 2021, The Author(s).
Author Keywords


Similar Articles


Id Similarity Authors Title Published
29653 View0.88Resch B.; Szell M.Human-Centric Data Science For Urban StudiesISPRS International Journal of Geo-Information, 8, 12 (2019)
20487 View0.879Butron-Revilla C.; Suarez-Lopez E.; Laura-Ochoa L.Discovering Urban Mobility Patterns And Demand For Uses Of Urban Spaces From Mobile Phone Data2021 2nd Sustainable Cities Latin America Conference, SCLA 2021 (2021)
46504 View0.876Ghosh 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)
37900 View0.871Suleymanoglu B.; Toth C.; Masiero A.; Ladai A.Monitoring The Environment In Smart Cities: The Importance Of Geospatial Location ReferencingInternational Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences - ISPRS Archives, 48, M-1-2023 (2023)
57757 View0.867Correa F.; Bartorila M.; Ribeiro-Palacios M.; Pérez-Soto G.I.; Rodríguez-Reséndiz J.Toward The Human Scale In Smart Cities: Exploring The Role Of Active Mobility In Ecosystemic UrbanismSmart Cities, 7, 6 (2024)
16755 View0.866Zheng 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)
45946 View0.866Allam Z.; Sharifi A.Research Structure And Trends Of Smart Urban MobilitySmart Cities, 5, 2 (2022)
49793 View0.864Sacco D.; Motta G.; You L.-L.; Bertolazzo N.; Carini F.; Ma T.-Y.Smart Cities, Urban Sensing, And Big Data: Mining Geo-Location In Social NetworksBig Data and Smart Service Systems (2017)
25438 View0.863Sanchez-Sepulveda M.V.; Navarro-Martin J.; Fonseca-Escudero D.; Amo-Filva D.; Antunez-Anea F.Exploiting Urban Data To Address Real-World Challenges: Enhancing Urban Mobility For Environmental And Social Well-BeingCities, 153 (2024)
4646 View0.861Mizuno Y.; Sagawa D.; Kimura Y.; Tanaka K.A Simulation Of Human Mobility That Reproduces The Behavioral CharacteristicsAdvances in Transdisciplinary Engineering, 41 (2023)