Smart City Gnosys

Smart city article details

Title Virtual Mobile Edge Computing Based On Iot Devices Resources In Smart Cities
ID_Doc 61163
Authors Laroui M.; Khedher H.I.; Moungla H.; Afifi H.; Kamal A.E.
Year 2020
Published IEEE International Conference on Communications, 2020-June
DOI http://dx.doi.org/10.1109/ICC40277.2020.9148982
Abstract The emerging of the internet of things (IoT) led to increasing the computation resources required to satisfy a large number of requests from the connected devices, for this the Cloud Computing (CC) allows the processing of requests in the cloud to guarantee the efficiency of services for end-users. The main problem of the current CC architecture is the latency in real-time applications such as video streaming, which require a distributed architecture to support the future generation of applications. The Mobile Edge Computing (MEC) provides a fully distributed architecture where a part of processing executed in the edge of network which supports the requirements of IoT applications. In this paper, we propose to use the connected devices as on-demand virtual edge servers to provide computation services close to endusers where each submitted task is divided into a set of sub-tasks, each one can be executed by any other device which is a part of the virtual edge server according to the available resources in the selected device. In this context, we have formulated the partitioned and the offloading problem in MEC environment using linear programming techniques. Optimal Partitioned and Offloading (OPO) algorithm that allocates network, storage and computing resources to user application sub-tasks with respect to MEC constraints and user quality requirements is modeled, implemented, and evaluated. Results show the feasibility and efficiency of the proposed algorithms. © 2020 IEEE.
Author Keywords Cloud Computing; IoT; Mobile Edge Computing (MEC); optimization; Partitioned and Offloading Algorithm


Similar Articles


Id Similarity Authors Title Published
37278 View0.9do 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)
16146 View0.893Gu X.; Zhang G.; Zhao N.Cooperative Mobile Edge Computing Architecture In Iov And Its Workload Balance PolicyProceedings of 2019 IEEE 1st International Conference on Civil Aviation Safety and Information Technology, ICCASIT 2019 (2019)
61096 View0.892Ma H.; Ji B.; Wu H.; Xing L.Video Data Offloading Techniques In Mobile Edge Computing: A SurveyPhysical Communication, 62 (2024)
14704 View0.891Huang H.; Peng K.; Xu X.Collaborative Computation Offloading For Smart Cities In Mobile Edge ComputingIEEE International Conference on Cloud Computing, CLOUD, 2020-October (2020)
15371 View0.888Lin L.; Liao X.; Jin H.; Li P.Computation Offloading Toward Edge ComputingProceedings of the IEEE, 107, 8 (2019)
58104 View0.883Dustdar S.; Murturi I.Towards Distributed Edge-Based SystemsProceedings - 2020 IEEE 2nd International Conference on Cognitive Machine Intelligence, CogMI 2020 (2020)
37381 View0.882Huang 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)
20723 View0.881Samarneh A.A.; Alma'aitah A.Y.Distributed Task Offloading In Mobile Edge Computing Using Metaheuristics2024 6th International Conference on Communications, Signal Processing, and their Applications, ICCSPA 2024 (2024)
15367 View0.88Jiao L.; Yin H.; Huang H.; Guo D.; Lyu Y.Computation Offloading For Multi-User Mobile Edge ComputingProceedings - 20th International Conference on High Performance Computing and Communications, 16th International Conference on Smart City and 4th International Conference on Data Science and Systems, HPCC/SmartCity/DSS 2018 (2019)
2802 View0.88Liu Z.R.A Multi-Joint Optimisation Method For Distributed Edge Computing Resources In Iot-Based Smart CitiesJournal of Grid Computing, 21, 4 (2023)