Smart City Gnosys

Smart city article details

Title Grey Wolf Optimizer With Deep Learning Based Short Term Traffic Forecasting In Smart City Environment
ID_Doc 28472
Authors Jegadeesan R.; Rapaka E.V.; Himabindu K.; Behera N.R.; Shukla A.K.; Dangi A.K.
Year 2023
Published Proceedings - 5th International Conference on Smart Systems and Inventive Technology, ICSSIT 2023
DOI http://dx.doi.org/10.1109/ICSSIT55814.2023.10061127
Abstract Intelligent Transportation System (ITS) is one of the revolutionary technologies in smart cities that aids in minimizing traffic congestion and improving traffic quality. ITS provides real-time analysis and very effective traffic management by utilizing big data and communication technology. Traffic Flow Prediction (TFP) becomes a dynamic component in smart city management and was utilized for predicting the future traffic conditions on transportation networks relevant to past data. Machine Learning (ML) and Neural Network (NN) techniques can be broadly used in resolving real-time problems as these techniques are capable of managing adaptive data for some time. Deep Learning (DL) is a sub-divison of ML methods which earns effective performance on prediction and data classification tasks. This article designs a Grey Wolf optimizer with Deep Learning Based Short Term Traffic Forecasting (GWODL-STTF) in smart city environment. The presented GWODL-STTF technique concentrates on the prediction of traffic flow in smart cities. The presented GWODL-STTF technique involves two major processes. At the initial stage, the GWODL-STTF technique employed gated recurrent unit-neural network (GRU-NN) model to forecast traffic flow. Next, in the second stage, the GWODLSTTF technique makes use of GWO algorithm as a hyperparameter optimizer. The simulation values of the GWODL-STTF method can be tested under several metrics and the outcomes show the significant performance of the GWODLSTTF method over recent approaches with minimum MSE of 105.627. © 2023 IEEE.
Author Keywords Deep learning; Grey wolf optimizer; ITS; Smart cities; Traffic flow prediction


Similar Articles


Id Similarity Authors Title Published
21009 View0.901Alzughaibi A.; Karim F.K.; Darwish J.A.Driven Traffic Flow Prediction In Smart Cities Using Hunter-Prey Optimization With Hybrid Deep Learning ModelsAlexandria Engineering Journal, 107 (2024)
8489 View0.9Sheeba G.; Selvaganesan J.An Intelligent And Resolute Traffic Management System Using Grcnet-Stmo Model For Smart Vehicular NetworksInternational Journal of Information Technology (Singapore), 16, 8 (2024)
58657 View0.882Selvan 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)
4796 View0.882Ratnam V.S.; Suganya E.; Al-Farouni M.H.; Jeyanthi S.; Rajani Kanth T.V.A Smart Traffic Flow Optimization Using Graph Convolutional Network With Graph Long Short-Term Memory2nd IEEE International Conference on Integrated Intelligence and Communication Systems, ICIICS 2024 (2024)
1395 View0.881Tripathi A.N.; Sharma B.A Deep Review: Techniques, Findings And Limitations Of Traffic Flow Prediction Using Machine LearningLecture Notes in Mechanical Engineering (2023)
1927 View0.877Attoui S.-E.; Meddeb M.A Generic Framework For Forecasting Short-Term Traffic Conditions On Urban Highways2021 IEEE 8th International Conference on Data Science and Advanced Analytics, DSAA 2021 (2021)
40920 View0.877Abdullah S.M.; Periyasamy M.; Kamaludeen N.A.; Towfek S.K.; Marappan R.; Kidambi Raju S.; Alharbi A.H.; Khafaga D.S.Optimizing Traffic Flow In Smart Cities: Soft Gru-Based Recurrent Neural Networks For Enhanced Congestion Prediction Using Deep LearningSustainability (Switzerland), 15, 7 (2023)
58567 View0.877Wang Y.Traffic Flow Forecasting In Smart Cities With Deep LearningProceedings of SPIE - The International Society for Optical Engineering, 13421 (2024)
35912 View0.877Kulkarni A.; Anitha P.; Valluri J.Y.; Sunena Rose M.V.; Hemavathi U.; Hussein O.M.Machine Learning Approaches For Efficient Traffic Flow In Smart Cities3rd Odisha International Conference on Electrical Power Engineering, Communication and Computing Technology, ODICON 2024 (2024)
38701 View0.876Praveen Kumar B.; Hariharan K.Multivariate Time Series Traffic Forecast With Long Short Term Memory Based Deep Learning ModelProceedings of 2020 IEEE International Conference on Power, Instrumentation, Control and Computing, PICC 2020 (2020)