Smart City Gnosys

Smart city article details

Title Pervasive Sensing To Correlate Vehicle Driving Behavior With City-Scale Traffic Dynamics
ID_Doc 41962
Authors Das D.; Bhattacharjee S.; Chakraborty S.; Mitra B.; Das S.K.
Year 2025
Published IEEE Pervasive Computing
DOI http://dx.doi.org/10.1109/MPRV.2025.3555872
Abstract Individual driving behavior is a pivotal element that shapes the overall traffic dynamics in a city. In this work, we study and analyze the complex web of relationships between individual driving behaviors and their impact on the overall traffic dynamics of a smart city with two primary objectives: first, understanding the spatial interaction between individual vehicles and their impact on each other, and second, finding anomalous driving behaviors, which lead to congestion and traffic incidents. Specifically, we introduce an overarching modular framework investigating human factors of driver characteristics, vehicle attributes, geographical terrain surrounding the road infrastructure, and environmental conditions. Analyzing driving maneuvers considering such diverse factors emphasizes the removal of the bias in driving behavior prediction. Our study serves as an essential foundation to delve into the problem of traffic dynamics in a city and further motivates the need for a deeper understanding of the correlation between driving behavior and traffic management. © 2002-2012 IEEE.
Author Keywords


Similar Articles


Id Similarity Authors Title Published
13158 View0.899Meegahapola L.; Kandappu T.; Jayarajah K.; Akoglu L.; Xiang S.; Misra A.Buscope: Fusing Individual & Aggregated Mobility Behavior For “Live” Smart City ServicesMobiSys 2019 - Proceedings of the 17th Annual International Conference on Mobile Systems, Applications, and Services (2019)
25928 View0.897Balsa-Barreiro J.; Valero-Mora P.M.; Menéndez M.; Mehmood R.Extraction Of Naturalistic Driving Patterns With Geographic Information SystemsMobile Networks and Applications, 28, 2 (2023)
8314 View0.891Anjum M.; Shahab S.; Dimitrakopoulos G.; Guye H.F.An In-Vehicle Behaviour-Based Response Model For Traffic Monitoring And Driving Assistance In The Context Of Smart CitiesElectronics (Switzerland), 12, 7 (2023)
21038 View0.883Li T.; Alhilal A.; Zhang A.; Hoque M.A.; Chatzopoulos D.; Xiao Z.; Li Y.; Hui P.Driving Big Data: A First Look At Driving Behavior Via A Large-Scale Private Car DatasetProceedings - 2019 IEEE 35th International Conference on Data Engineering Workshops, ICDEW 2019 (2019)
735 View0.883Djahel, S; Doolan, R; Muntean, GM; Murphy, JA Communications-Oriented Perspective On Traffic Management Systems For Smart Cities: Challenges And Innovative ApproachesIEEE COMMUNICATIONS SURVEYS AND TUTORIALS, 17, 1 (2015)
44468 View0.881Dmitrieva E.; Pathani A.; Pushkarna G.; Acharya P.; Rana M.; Surekha P.Real-Time Traffic Management In Smart Cities: Insights From The Traffic Management Simulation And Impact AnalysisBIO Web of Conferences, 86 (2024)
9461 View0.879Ben-Othman J.; Mokdad L.Analytical Study For Vehicle Mobility ModelingProceedings - 10th International Conference on Wireless Networks and Mobile Communications, WINCOM 2023 (2023)
34056 View0.874Mutambik I.Iot-Enabled Adaptive Traffic Management: A Multiagent Framework For Urban Mobility OptimisationSensors, 25, 13 (2025)
27311 View0.873Castro P.S.; Zhang D.; Chen C.; Li S.; Pan G.From Taxi Gps Traces To Social And Community Dynamics: A SurveyACM Computing Surveys, 46, 2 (2014)
38780 View0.872Nandy M.; Dubey A.Nano Scale Machine Learning Intelligence-Based User Behaviour Analysis (Ni-Ubaa) For Smart Urban Traffic PlanningNanotechnology Perceptions, 20, S1 (2024)