Smart City Gnosys

Smart city article details

Title Data-Driven Methods And Challenges For Intelligent Transportation Systems In Smart Cities
ID_Doc 17447
Authors Dabboussi A.H.; Jammal M.
Year 2023
Published IEEE Internet of Things Magazine, 6, 4
DOI http://dx.doi.org/10.1109/IOTM.001.2300004
Abstract As the Internet of Things (IoT) technology is seeing rapid advancements, the concept of creating smart cities is gaining huge popularity. One of the prominent sectors that can benefit from the rise in IoT technology and pave the way for smart cities is Intelligent Transportation Sys-tems (ITS). Data-driven approaches reliant on advancements in machine learning have gained wide popularity in the field of ITS. Such meth-ods facilitate solutions for problems in numerous ITS areas. This article aims to provide an analysis of some of the most notable works in four ITS categories: prediction and forecasting, detection, recognition, and safety. Different studies across these areas are reviewed, underlining the importance of data to ITS while focusing on the different architectures and technologies like machine learning used to advance ITS. Moreover, this article highlights the set of challenges faced by each area and proposes a potential solution for the main challenge. © 2018 IEEE.
Author Keywords


Similar Articles


Id Similarity Authors Title Published
35967 View0.901Yuan T.; Da Rocha Neto W.; Rothenberg C.E.; Obraczka K.; Barakat C.; Turletti T.Machine Learning For Next-Generation Intelligent Transportation Systems: A SurveyTransactions on Emerging Telecommunications Technologies, 33, 4 (2022)
32177 View0.883Bhalodiya D.; Sarda J.; Garg D.; Yang T.; Rathore R.S.Integration Of Iot And Machine Learning Models For Enhancing Efficiency In Smart Public Transportation SystemsLecture Notes in Networks and Systems, 1293 (2025)
4171 View0.883Zantalis F.; Koulouras G.; Karabetsos S.; Kandris D.A Review Of Machine Learning And Iot In Smart TransportationFuture Internet, 11, 4 (2019)
32646 View0.883Limkar S.; Ashok W.V.; Shende P.; Wagh K.; Wagh S.K.; Kumar A.Intelligent Transportation System Using Vehicular Networks In The Internet Of Vehicles For Smart CitiesJournal of Electrical Systems, 19, 2 (2023)
8929 View0.879Mrad S.; Mraihi R.An Overview Of Model-Driven And Data-Driven Forecasting Methods For Smart TransportationStudies in Big Data, 132 (2023)
30638 View0.876Sabeer S.; Ali S.S.; Siddiqua A.; Anjum A.Implementing Ml And Iot-Based Predictive Traffic-Management Systems For Smart Cities2024 2nd International Conference Computational and Characterization Techniques in Engineering and Sciences, IC3TES 2024 (2024)
13639 View0.874Shukla S.G.; Bachhav P.K.; Pachorkar P.R.; Jain A.R.; Patil P.C.; Kulkarni P.R.Challenges And Techniques In Data-Driven Systems For Smart CitiesData-Driven Systems and Intelligent Applications (2024)
50528 View0.874Venkateshwari P.; Veeraiah V.; Talukdar V.; Gupta D.N.; Anand R.; Gupta A.Smart City Technical Planning Based On Time Series Forecasting Of Iot Data2023 International Conference on Sustainable Emerging Innovations in Engineering and Technology, ICSEIET 2023 (2023)
32018 View0.873Priya R.; Lakshmi R.A.; Sudha C.; Pal S.; Ali G.A.; Alajmani S.H.Integrating Iot In Transportation For Smart City Development For Secured Data Processing2024 International Conference on Emerging Trends in Networks and Computer Communications, ETNCC 2024 - Proceedings (2024)
35883 View0.873Oladipo I.D.; AbdulRaheem M.; Awotunde J.B.; Bhoi A.K.; Adeniyi E.A.; Abiodun M.K.Machine Learning And Deep Learning Algorithms For Smart Cities: A Start-Of-The-Art ReviewEAI/Springer Innovations in Communication and Computing (2022)