Smart City Gnosys

Smart city article details

Title Ai-Driven Traffic Congestion Management: A Predictive Analytics Approach For Smart Cities
ID_Doc 7046
Authors Rathore S.P.S.; Farhaoui Y.; Aniebonam E.E.; Nagpal T.; Thanuja M.; Kaushik P.
Year 2025
Published 2025 IEEE International Conference on Interdisciplinary Approaches in Technology and Management for Social Innovation, IATMSI 2025
DOI http://dx.doi.org/10.1109/IATMSI64286.2025.10985513
Abstract Rapid urbanization, increased vehicle usage, and the growth of developing cities have resulted in severe traffic congestion, leading to economic losses, environmental harm, and a decline in quality of life. Traditional traffic management systems tend to be reactive, focusing on addressing traffic flow issues after they occur, rather than proactively managing them. To tackle this challenge, this paper proposes an AI-driven system designed to predict and manage traffic congestion. The system leverages continuous traffic data from IoT devices, such as images, GPS, and inductive loop sensors, to monitor real-time traffic conditions. Traffic predictions are made using a combination of CNN and LSTM networks. Additionally, Geographic Information System (GIS) technology is integrated for spatial analysis and dynamic traffic control, enabling real-time traffic light adjustments and providing drivers with alternative routes to avoid congestion. Preliminary experiments show that intelligent traffic management systems can significantly improve traffic flow and reduce congestion in large cities. The paper also explores challenges related to data privacy, scalability, and future advancements, including the integration of self-driving vehicles and the application of reinforcement learning. This system offers a practical solution for alleviating congestion and optimizing urban transportation systems. © 2025 IEEE.
Author Keywords AI-based Traffic Management; Geographic Information System (GIS); IoT Sensors; Long Short-Term Memory (LSTM) Networks; Real-time Data Processing; Traffic Congestion


Similar Articles


Id Similarity Authors Title Published
38883 View0.933Kumar 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)
55589 View0.925Sharma P.; Sharma S.; Pratap R.; Chauhan R.; Verma S.The Future Of Traffic Management: Embracing Ai For Sustainable Urban Mobility2025 IEEE International Students' Conference on Electrical, Electronics and Computer Science, SCEECS 2025 (2025)
23044 View0.924Revathy G.; Thangavel M.; Senthilvadivu S.; Savithri M.C.Enabling Smart Cities: Ai-Powered Prediction Models For Urban Traffic Optimization4th International Conference on Sentiment Analysis and Deep Learning, ICSADL 2025 - Proceedings (2025)
6715 View0.916Priya K.; Priyadharshini K.; Krishnan R.S.; Raj J.R.F.; Settu I.J.; Srinivasan A.Advancing Urban Traffic Control With Iot And Deep Learning: A Yolov8 And Lstm-Based Adaptive Signal SystemProceedings of the International Conference on Intelligent Computing and Control Systems, ICICCS 2025 (2025)
51592 View0.916Pritha A.; Fathima G.Smart Traffic Management: A Deep Learning Revolution In Traffic Prediction - A ReviewIET Conference Proceedings, 2024, 23 (2024)
19433 View0.915Al-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)
32238 View0.915Jain V.; Mitra A.Integrative Hybrid Information Systems For Enhanced Traffic Maintenance And Control In Bangalore: A Synchronized ApproachHybrid Information Systems: Non-Linear Optimization Strategies with Artificial Intelligence (2024)
21429 View0.914Skoropad V.N.; Deđanski S.; Pantović V.; Injac Z.; Vujičić S.; Jovanović-Milenković M.; Jevtić B.; Lukić-Vujadinović V.; Vidojević D.; Bodolo I.Dynamic Traffic Flow Optimization Using Reinforcement Learning And Predictive Analytics: A Sustainable Approach To Improving Urban Mobility In The City Of BelgradeSustainability (Switzerland), 17, 8 (2025)
6910 View0.914Dankan Gowda V.; Yogi K.S.; Srinivas I.V.; Kumar B.K.; Srinivas D.; Sudhakar Reddy N.Ai And Machine Learning For Intelligent Traffic Management In Iot-Connected Cities2024 Asian Conference on Intelligent Technologies, ACOIT 2024 (2024)
60223 View0.914Tsalikidis 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)