Smart City Gnosys

Smart city article details

Title Average Response Time (Art):Real-Time Traffic Management In Vfc Enabled Smart Cities
ID_Doc 11555
Authors Shabana; Mohmmad S.; Shaik M.A.; Mahender K.; Kanakam R.; Yadav B.P.
Year 2020
Published IOP Conference Series: Materials Science and Engineering, 981, 2
DOI http://dx.doi.org/10.1088/1757-899X/981/2/022054
Abstract The extension of Cloud computing with an effective impact is the Fog computing with respect to the edge network which has the capability of identifying location awareness with probable lower latency based on the ever increasing requirements the ever present connectivity and particularly low latency confront the real time traffic supervision in smart cities which is merely possible by integrating the aspects of "Fog Computing"and "Vehicular Networks"called as the Vehicular Fog Computing (VFC) which is capable of providing the real time position aware network response. In this paper we use the aspects and "use case of VFC"where in initially the article develops a "three layer VFC model"which enables us to implement the dispersed traffic organization by reducing the Average Response Time(ART) up to a greater extent and we facilitate the offloading scheme which is clearly based on the optimization problem for leveraging the parked and running vehicles as the fog nodes through with the performance is analyzed by validating the proposed model by providing measures or guidelines towards the challenges such as the VFC enabled traffic management as a whole. © Published under licence by IOP Publishing Ltd.
Author Keywords ART; Distributed computing; Fog computing; networks; traffic management; VFC


Similar Articles


Id Similarity Authors Title Published
53755 View0.879Jhawar V.; Rangnekar Y.; Mohapatra H.Survey Of Fog Computing Applications In Vehicular Communication For Smart Transportation SystemsDriving Innovation at the Intersection of Renewable Energy and the Internet of Vehicles (2025)
1710 View0.876Farooqi A.M.; Alam M.A.; Hassan S.I.; Idrees S.M.A Fog Computing Model For Vanet To Reduce Latency And Delay Using 5G Network In Smart City TransportationApplied Sciences (Switzerland), 12, 4 (2022)
26787 View0.864Sahil; Sood S.K.; Chang V.Fog-Cloud-Iot Centric Collaborative Framework For Machine Learning-Based Situation-Aware Traffic Management In Urban SpacesComputing, 106, 4 (2024)
26799 View0.862Rehman M.A.U.; Salah Ud Din M.; Mastorakis S.; Kim B.-S.Foggyedge: An Information-Centric Computation Offloading And Management Framework For Edge-Based Vehicular Fog ComputingIEEE Intelligent Transportation Systems Magazine, 15, 5 (2023)
41793 View0.862Islam L.; Hassan M.T.Performance Evaluation Of Vehicle-Centered Traffic Management Using Fog Computing-Based Wireless Network2023 26th International Conference on Computer and Information Technology, ICCIT 2023 (2023)
3376 View0.858Ali Z.H.; Badawy M.M.; Ali H.A.A Novel Geographically Distributed Architecture Based On Fog Technology For Improving Vehicular Ad Hoc Network (Vanet) PerformancePeer-to-Peer Networking and Applications, 13, 5 (2020)
59136 View0.855Khattak M.I.; Yuan H.; Ahmad A.; Khan A.; Hawbani A.; InamullahTsm: Temporal Segmentation And Modules-Based Computation Offloading Using Predictive Analytics And Nr-V2XInternet of Things (Netherlands), 24 (2023)
17592 View0.852Khabbaz M.Deadline-Constrained Rsu-To-Vehicle Task Offloading Scheme For Vehicular Fog NetworksIEEE Transactions on Vehicular Technology, 72, 11 (2023)
5818 View0.851Maruthamuthu R.; Patel N.; Yawanikha T.; Jayasree S.; Alsalami Z.; Subbarao S.P.V.A Way To Design Fog Computing Model For 5G Network Using Vanet2024 4th International Conference on Advance Computing and Innovative Technologies in Engineering, ICACITE 2024 (2024)
21432 View0.851Le T.V.; Le D.L.; Tran H.T.Dynamic Traffic Optimization System: Leveraging Iot And Fog Computing For Enhanced Urban Mobility With The Rao AlgorithmLecture Notes in Networks and Systems, 1195 LNNS (2024)