Smart City Gnosys

Smart city article details

Title Driven Traffic Flow Prediction In Smart Cities Using Hunter-Prey Optimization With Hybrid Deep Learning Models
ID_Doc 21009
Authors Alzughaibi A.; Karim F.K.; Darwish J.A.
Year 2024
Published Alexandria Engineering Journal, 107
DOI http://dx.doi.org/10.1016/j.aej.2024.08.083
Abstract Accurate and timely flow prediction is the most significant element for intelligent traffic management systems. However, developing a robust and potential prediction method is a challenge because of the nonlinear characteristics and inherent randomness of the traffic flow in smart cities. Deep learning can analyze historical traffic data and predict future traffic patterns in traffic flow prediction. This can be done by training deep neural networks on large datasets, such as traffic speed and volume data, to learn the underlying relationships between various factors influencing traffic flow. The resulting models can then be used to predict future traffic conditions, helping optimize traffic management, reduce congestion, and improve safety. This study introduces a Hunter Prey Optimization with Hybrid Deep Learning-Driven Traffic Flow in smart cities Prediction (HPOHDL-TFPM). The HPOHDL-TFPM approach's primary goal is to accurately and rapidly forecast traffic flow. The HPOHDL-TFPM technique uses Z-score normalization to normalize the traffic data to achieve this. In addition, the CBLSTM-AE model, which combines convolutional bidirectional long short-term memory and autoencoder, is utilized in the prediction of traffic flow in smart cities. Moreover, the HPO technique is applied as a hyperparameter optimizer to select the hyperparameter values properly. The experimental validation of the HPOHDL-TFPM approach is tested in several contexts. Numerous comparative studies demonstrated the improved performance of the HPOHDL-TFPM approach over other existing methods. © 2024 The Authors
Author Keywords Deep learning; Hunter prey optimization; Pattern recognition; Smart cities; Traffic flow prediction; Traffic management


Similar Articles


Id Similarity Authors Title Published
1395 View0.926Tripathi A.N.; Sharma B.A Deep Review: Techniques, Findings And Limitations Of Traffic Flow Prediction Using Machine LearningLecture Notes in Mechanical Engineering (2023)
51592 View0.921Pritha A.; Fathima G.Smart Traffic Management: A Deep Learning Revolution In Traffic Prediction - A ReviewIET Conference Proceedings, 2024, 23 (2024)
11489 View0.912Mohammed G.P.; Alasmari N.; Alsolai H.; Alotaibi S.S.; Alotaibi N.; Mohsen H.Autonomous Short-Term Traffic Flow Prediction Using Pelican Optimization With Hybrid Deep Belief Network In Smart CitiesApplied Sciences (Switzerland), 12, 21 (2022)
13624 View0.91Uddin 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)
8075 View0.91Zheng G.; Chai W.K.; Katos V.An Ensemble Model For Short-Term Traffic Prediction In Smart City Transportation SystemProceedings - IEEE Global Communications Conference, GLOBECOM (2019)
58620 View0.909Almukhalfi H.; Noor A.; Noor T.H.Traffic Management Approaches Using Machine Learning And Deep Learning Techniques: A SurveyEngineering Applications of Artificial Intelligence, 133 (2024)
34028 View0.908Miao Z.; Liao Q.Iot-Based Traffic Prediction For Smart CitiesIEEE Access, 13 (2025)
58592 View0.903Cenni D.; Han Q.Traffic Flow Prediction Using Uber Movement DataLecture Notes of the Institute for Computer Sciences, Social-Informatics and Telecommunications Engineering, LNICST, 594 LNICST (2024)
58601 View0.903Kundu S.; Desarkar M.S.; Srijith P.K.Traffic Forecasting With Deep Learning2020 IEEE Region 10 Symposium, TENSYMP 2020 (2020)
48697 View0.903Bilotta S.; Collini E.; Nesi P.; Pantaleo G.Short-Term Prediction Of City Traffic Flow Via Convolutional Deep LearningIEEE Access, 10 (2022)