Smart City Gnosys

Smart city article details

Title A Vehicle Congestion Prediction Approach For Smart City Traffic Management
ID_Doc 5752
Authors Gupta K.; Lee C.-N.
Year 2025
Published Procedia Computer Science, 260
DOI http://dx.doi.org/10.1016/j.procs.2025.03.246
Abstract Rapidly evolving smart cities across the globe are the new dimension in modern life. However, the slowly moving vehicles due to the swelling traffic volume is a major challenge in traffic management across these cities. The study emphasizes devising an approach to determine the traffic congestion in advance across different locations in the city to ensure better traffic management. The proposed approach devised a traffic management system by utilizing the graph neural network machine learning algorithm to analyze the tremendous traffic data and enabling the prediction about traffic congestion across different locations in the city with the aim of reducing the traffic congestion and planned routes for lowered traveling cost. The outcome of the extensive experimental work reßects the efficacy of the proposed approach in providing a better solution in determining the traffic congestion across different locations, well in advance. © 2025 The Authors. Published by Elsevier B.V.
Author Keywords Congestion Prediction; Graph Neural Network; Smart City; Traffic Management; Vehicular Congestion


Similar Articles


Id Similarity Authors Title Published
22862 View0.922Jenifer J.; Jemima Priyadarsini R.Empirical Research On Machine Learning Models And Feature Selection For Traffic Congestion Prediction In Smart CitiesInternational Journal on Recent and Innovation Trends in Computing and Communication, 11 (2023)
37160 View0.916Ei Leen M.W.; Jafry N.H.A.; Salleh N.M.; Hwang H.J.; Jalil N.A.Mitigating Traffic Congestion In Smart And Sustainable Cities Using Machine Learning: A ReviewLecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics), 13957 LNCS (2023)
36028 View0.914Roslan R.; Ng S.; Yee L.C.Machine Learning Techniques For Sustainable Smart Cities Traffic ManagementJournal of Advanced Research in Applied Sciences and Engineering Technology, 33, 1 (2023)
49871 View0.912Saleem M.; Abbas S.; Ghazal T.M.; Adnan Khan M.; Sahawneh N.; Ahmad M.Smart Cities: Fusion-Based Intelligent Traffic Congestion Control System For Vehicular Networks Using Machine Learning TechniquesEgyptian Informatics Journal, 23, 3 (2022)
60223 View0.907Tsalikidis N.; Mystakidis A.; Koukaras P.; Ivaškevičius M.; Morkūnaitė L.; Ioannidis D.; Fokaides P.A.; Tjortjis C.; Tzovaras D.Urban Traffic Congestion Prediction: A Multi-Step Approach Utilizing Sensor Data And Weather InformationSmart Cities, 7, 1 (2024)
12161 View0.905Hlaing S.S.; Tin M.M.; Khin M.M.; Wai P.P.; Sinha G.R.Big Traffic Data Analytics For Smart Urban Intelligent Traffic System Using Machine Learning Techniques2020 IEEE 9th Global Conference on Consumer Electronics, GCCE 2020 (2020)
7046 View0.905Rathore S.P.S.; Farhaoui Y.; Aniebonam E.E.; Nagpal T.; Thanuja M.; Kaushik P.Ai-Driven Traffic Congestion Management: A Predictive Analytics Approach For Smart Cities2025 IEEE International Conference on Interdisciplinary Approaches in Technology and Management for Social Innovation, IATMSI 2025 (2025)
50555 View0.904Zubairi J.A.; Idwan S.; Haider S.A.; Hurtgen D.Smart City Traffic Management For Reducing CongestionIEEE 19th International Conference on Smart Communities: Improving Quality of Life Using ICT, IoT and AI, HONET 2022 (2022)
49704 View0.903Omar T.; Bovard D.; Tran H.Smart Cities Traffic Congestion Monitoring And Control SystemACMSE 2020 - Proceedings of the 2020 ACM Southeast Conference (2020)
19433 View0.901Al-Jawahry H.M.Developing An Intelligent Traffic Management System For Smart Cities Through The Integration Of Machine Learning And Iot TechnologiesLecture Notes in Networks and Systems, 1306 LNNS (2025)