Smart City Gnosys

Smart city article details

Title Cooperative Mobile Edge Computing Architecture In Iov And Its Workload Balance Policy
ID_Doc 16146
Authors Gu X.; Zhang G.; Zhao N.
Year 2019
Published Proceedings of 2019 IEEE 1st International Conference on Civil Aviation Safety and Information Technology, ICCASIT 2019
DOI http://dx.doi.org/10.1109/ICCASIT48058.2019.8973164
Abstract As vehicle applications, mobile devices and the Internet of Things are growing fast, and developing an efficient architecture to deal with the big data in the Internet of Vehicles (IoV) has been an important concern for the future smart city. To overcome the inherent defect of centralized data processing in cloud computing, mobile edge computing (MEC) has been proposed by offloading computation tasks to edge computing servers. This paper proposes an improved software defined network (SDN)-based cooperative mobile edge computing architecture in IoV (CMEC-IoV), considering factors like latency, mobility and scalability. In addition, its components are described as well as various services. Based on the proposed architecture, a new workload balance policy is proposed to mitigate partial data flow to neighboring MEC servers for resource sharing. Experimental results demonstrate that the proposed policy can effectively avoid network congestion and improve IoV network stability, as it effectively reduces packet loss rate. © 2019 IEEE.
Author Keywords Cloud computing; Cooperative mobile edge computing; Internet of vehicles; Packet loss rate; Software defined network; Workload balance


Similar Articles


Id Similarity Authors Title Published
61163 View0.893Laroui M.; Khedher H.I.; Moungla H.; Afifi H.; Kamal A.E.Virtual Mobile Edge Computing Based On Iot Devices Resources In Smart CitiesIEEE International Conference on Communications, 2020-June (2020)
36621 View0.892Filiposka S.; Bernad C.; Kjorveziroski V.; Gilly K.; Roig P.J.; Alcaraz S.Mec Empowered Internet Of Vehicles For Smart City OptimisationsProceedings - 2023 IEEE SmartWorld, Ubiquitous Intelligence and Computing, Autonomous and Trusted Vehicles, Scalable Computing and Communications, Digital Twin, Privacy Computing and Data Security, Metaverse, SmartWorld/UIC/ATC/ScalCom/DigitalTwin/PCDS/Metaverse 2023 (2023)
37381 View0.889Huang H.; Zhan W.; Min G.; Duan Z.; Peng K.Mobility-Aware Computation Offloading With Load Balancing In Smart City Networks Using Mec FederationIEEE Transactions on Mobile Computing, 23, 11 (2024)
25414 View0.882El-Sayed, H; Chaqfeh, MExploiting Mobile Edge Computing For Enhancing Vehicular Applications In Smart CitiesSENSORS, 19, 5 (2019)
61096 View0.882Ma H.; Ji B.; Wu H.; Xing L.Video Data Offloading Techniques In Mobile Edge Computing: A SurveyPhysical Communication, 62 (2024)
37278 View0.879do Prado P.F.; Peixoto M.L.M.; Araújo M.C.; Gama E.S.; Gonçalves D.M.; Silva M.V.S.; Immich R.; Madeira E.R.M.; Bittencourt L.F.Mobile Edge Computing For Content Distribution And Mobility Support In Smart CitiesMobile Edge Computing (2021)
14704 View0.873Huang H.; Peng K.; Xu X.Collaborative Computation Offloading For Smart Cities In Mobile Edge ComputingIEEE International Conference on Cloud Computing, CLOUD, 2020-October (2020)
31984 View0.867Kamarudin I.E.; Ameedeen M.A.; Razak M.F.A.; Zabidi A.Integrating Edge Computing And Software Defined Networking In Internet Of Things: A Systematic ReviewIraqi Journal for Computer Science and Mathematics, 4, 4 (2023)
16148 View0.866Deebak B.D.Cooperative Mobile Traffic Offloading In Mobile Edge Computing For 5G Hetnet Iot ApplicationsReal-Time Intelligence for Heterogeneous Networks: Applications, Challenges, and Scenarios in IoT HetNets (2021)
39506 View0.865Shimaday H.; Kawamotoy Y.; Katoy N.Novel Workload Balancing Method For Uav-Based Edge Cloud Computing Systems With HandoverIEEE International Conference on Communications, 2020-June (2020)