Smart City Gnosys

Smart city article details

Title Optimizing Urban Traffic Flow In Smart Cities: A Fuzzy Goal Programming Approach
ID_Doc 40938
Authors Fathollahzadeh P.; Yari A.
Year 2024
Published 11th International Symposium on Telecommunication: Communication in the Age of Artificial Intelligence, IST 2024
DOI http://dx.doi.org/10.1109/IST64061.2024.10843499
Abstract The integration of new technologies, such as cloud computing, internet of things and artificial intelligent is essential for enhancing urban traffic management systems. This research aims to develop a comprehensive model for determining traffic volume in smart cities. An optimal planning algorithm was employed to analyze data, seeking the most effective solution from a set of alternatives. The proposed algorithm utilizes fuzzy weighting based on the average distance of vehicles approaching traffic lights, allowing for the determination of optimal timing for each light section. The results indicate that the algorithm outperforms fixed-time traffic lights, achieving a 15% reduction in urban traffic congestion. improvement being about 15% compared to the normal state. © 2024 IEEE.
Author Keywords fuzzy goal programming; multi-object optimization; smart city; Smart traffic light system; traffic management


Similar Articles


Id Similarity Authors Title Published
27576 View0.892Kabir Md.H.; Islam Md.S.; Hoque Md.J.Fuzzy Based Intelligent Transportation Systems For Smart Cities To Mitigate Road Traffic Congestion2024 International Conference on Innovations in Science, Engineering and Technology: Innovative Technologies for Global Solutions, ICISET 2024 (2024)
40767 View0.882Seifivand S.M.; Asghari P.; Javadi H.H.S.; Nourmohammadi H.Optimizing And Managing The Lighting Time Of The Traffic Light Using The Reinforcement Learning System Based On Fuzzy Logic And Training The System With Evolutionary AlgorithmsInternational Journal of Intelligent Transportation Systems Research (2025)
722 View0.881Jamshidnejad A.; De Schutter B.A Combined Probabilistic-Fuzzy Approach For Dynamic Modeling Of Traffic In Smart Cities: Handling Imprecise And Uncertain Traffic DataComputers and Electrical Engineering, 119 (2024)
38883 View0.88Kumar A.; Batra N.; Mudgal A.; Yadav A.L.Navigating Urban Mobility: A Review Of Ai-Driven Traffic Flow Management In Smart Cities2024 11th International Conference on Reliability, Infocom Technologies and Optimization (Trends and Future Directions), ICRITO 2024 (2024)
44539 View0.879Bose A.; Sardar T.H.; Mridha S.K.Recent Advancements And Future Perspectives Of Dynamic Fuzzy Controllers For Smart Traffic SignalingSpringer Tracts on Transportation and Traffic, 22 (2025)
21432 View0.879Le T.V.; Le D.L.; Tran H.T.Dynamic Traffic Optimization System: Leveraging Iot And Fog Computing For Enhanced Urban Mobility With The Rao AlgorithmLecture Notes in Networks and Systems, 1195 LNNS (2024)
50444 View0.878Xiao M.; Chen L.; Feng H.; Peng Z.; Long Q.Smart City Public Transportation Route Planning Based On Multi-Objective Optimization: A ReviewArchives of Computational Methods in Engineering, 31, 6 (2024)
24036 View0.877Kabir Md.H.; Islam Md.S.Enhancing Traffic Flow And Reducing Congestion: A Smart City Approach With An Iot-Based Intelligent Traffic Management System2024 International Conference on Innovations in Science, Engineering and Technology: Innovative Technologies for Global Solutions, ICISET 2024 (2024)
2745 View0.877Choudhary S.; Ali S.S.; Babu N.R.; Sharma H.; Kaliraman B.; Dhankhar Y.A More Efficient Way To Control Traffic Lights Through Ai-Led Smart City ManagementProceedings - International Conference on Technological Advancements in Computational Sciences, ICTACS 2023 (2023)
19433 View0.875Al-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)