Smart City Gnosys

Smart city article details

Title Optimizing Traffic Flow In Smart Cities: Soft Gru-Based Recurrent Neural Networks For Enhanced Congestion Prediction Using Deep Learning
ID_Doc 40920
Authors Abdullah S.M.; Periyasamy M.; Kamaludeen N.A.; Towfek S.K.; Marappan R.; Kidambi Raju S.; Alharbi A.H.; Khafaga D.S.
Year 2023
Published Sustainability (Switzerland), 15, 7
DOI http://dx.doi.org/10.3390/su15075949
Abstract Recently, different techniques have been applied to detect, predict, and reduce traffic congestion to improve the quality of transportation system services. Deep learning (DL) is becoming increasingly valuable for solving critiques. DL applications in transportation have been collected in several recently published surveys over the last few years. The existing research has discussed the cloud environment, which does not provide timely traffic forecasts, which is the cause of frequent traffic accidents. Thus, a solid understanding of the difficulties in predicting congestion is required because the transportation system varies widely between non-congested and congested states. This research develops a bi-directional recurrent neural network (BRNN) using Gated Recurrent Units (GRUs) to extract and classify traffic into congested and non-congested. This research uses a bidirectional recurrent neural network to simulate and forecast traffic congestion in smart cities (BRNN). Urban regions worldwide struggle with traffic congestion, and conventional traffic control techniques have failed miserably. This research suggests a data-driven approach employing BRNN for traffic management in smart cities, which uses real-time data from sensors and linked devices to control traffic more efficiently. The primary measures include predicting traffic metrics such as speed, weather, current, and accident probability. Congestion prediction performance has also been improved by extracting more features such as traffic, road, and weather conditions. The proposed model achieved better measures than the existing state-of-the-art methods. This research also explores an overview and analysis of several early initiatives that have shown promising results; moreover, it explores two potential future research approaches to increase the accuracy and efficiency of large-scale motion prediction. © 2023 by the authors.
Author Keywords bidirectional neural; congestion prediction; deep learning; gated recurrent unit; recurrent neural networks; traffic congestion; traffic load; transportation systems


Similar Articles


Id Similarity Authors Title Published
51592 View0.934Pritha A.; Fathima G.Smart Traffic Management: A Deep Learning Revolution In Traffic Prediction - A ReviewIET Conference Proceedings, 2024, 23 (2024)
58544 View0.93Sravani B.; Shreyas A.V.; Abbas H.M.; Chanti Y.; Punitha S.Traffic Congestion Prediction In Smart Cities Using Multilevel-Gated Recurrent UnitInternational Conference on Intelligent Algorithms for Computational Intelligence Systems, IACIS 2024 (2024)
17943 View0.926Attioui M.; Lahby M.Deep Learning-Based Congestion Forecasting: A Literature Review And FutureProceedings - 10th International Conference on Wireless Networks and Mobile Communications, WINCOM 2023 (2023)
42842 View0.926Bartlett Z.; Han L.; Nguyen T.T.; Johnson P.Prediction Of Road Traffic Flow Based On Deep Recurrent Neural NetworksProceedings - 2019 IEEE SmartWorld, Ubiquitous Intelligence and Computing, Advanced and Trusted Computing, Scalable Computing and Communications, Internet of People and Smart City Innovation, SmartWorld/UIC/ATC/SCALCOM/IOP/SCI 2019 (2019)
1395 View0.925Tripathi A.N.; Sharma B.A Deep Review: Techniques, Findings And Limitations Of Traffic Flow Prediction Using Machine LearningLecture Notes in Mechanical Engineering (2023)
58657 View0.925Selvan C.; Senthil Kumar R.; Iwin Thanakumar Joseph S.; Malin Bruntha P.; Amanullah M.; Arulkumar V.Traffic Prediction Using Gps Based Cloud Data Through Rnn-Lstm-Cnn Models: Addressing Road Congestion, Safety, And Sustainability In Smart CitiesSN Computer Science, 6, 2 (2025)
7345 View0.923Sawah M.S.; Taie S.A.; Ibrahim M.H.; Hussein S.A.An Accurate Traffic Flow Prediction Using Long-Short Term Memory And Gated Recurrent Unit NetworksBulletin of Electrical Engineering and Informatics, 12, 3 (2023)
13624 View0.922Uddin Gilani S.A.; Al-Rajab M.; Bakka M.Challenges And Opportunities In Traffic Flow Prediction: Review Of Machine Learning And Deep Learning Perspectives; [Desafíos Y Oportunidades En La Predicción Del Flujo De Tráfico: Revisión De Las Perspectivas De Aprendizaje Automático Y Aprendizaje Profundo]Data and Metadata, 3 (2024)
3392 View0.922Joseph L.M.I.L.; Goel P.; Jain A.; Rajyalakshmi K.; Gulati K.; Singh P.A Novel Hybrid Deep Learning Algorithm For Smart City Traffic Congestion PredictionsProceedings of IEEE International Conference on Signal Processing,Computing and Control, 2021-October (2021)
58566 View0.921Ruther R.; Klos A.; Rosenbaum M.; Schiffmann W.Traffic Flow Forecast Of Road Networks With Recurrent Neural NetworksProceedings - 2021 International Symposium on Computer Science and Intelligent Controls, ISCSIC 2021 (2021)