Smart City Gnosys

Smart city article details

Title A Survey On Computation Offloading For Vehicular Edge Computing
ID_Doc 5238
Authors Yuan S.; Fan Y.; Cai Y.
Year 2019
Published ACM International Conference Proceeding Series
DOI http://dx.doi.org/10.1145/3377170.3377228
Abstract Vehicular Edge Computing (VEC) is a promising new paradigm that has received a lot of attention recently. Computation Offloading (CO) can migrate computing tasks to the network edge of VEC, which is critical for mobile applications that are sensitive to computation power. However, the dynamicity and randomness of Internet of Vehicles (IoV) lead to new features and challenges in vehicular computation offloading. Therefore, we focus on the CO in VEC. This paper depicts a broad methodical literature analysis of CO scheme and CO methods in VEC domains and divides the current works of CO into various categories. The methodical analysis of this research will help researchers to find the important characteristics of CO and select the most appropriate algorithm for computing tasks. Challenges and research directions have also been suggested in this paper. © 2019 Association for Computing Machinery.
Author Keywords Computation Offloading; Internet of Vehicles; Multi-Access Edge Computing; Resources Allocation; Vehicular Edge Computing


Similar Articles


Id Similarity Authors Title Published
60992 View0.911Meneguette R.; De Grande R.; Ueyama J.; Filho G.P.R.; Madeira E.Vehicular Edge Computing: Architecture, Resource Management, Security, And ChallengesACM Computing Surveys, 55, 1 (2022)
26799 View0.891Rehman 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)
21262 View0.889Nakrani D.; Khuman J.; Yadav R.N.Dynamic Edge Server Placement For Computation Offloading In Vehicular Edge ComputingInternational Conference on Information Networking, 2023-January (2023)
32466 View0.885Wu Y.; Fang X.; Min G.; Chen H.; Luo C.Intelligent Offloading Balance For Vehicular Edge Computing And NetworksIEEE Transactions on Intelligent Transportation Systems, 26, 5 (2025)
23454 View0.885Elgendy I.A.Energy-Efficient And Secure Framework For Computation Offloading In Sustainable Vehicular Edge-Cloud Networks2024 IEEE Sustainable Power and Energy Conference, iSPEC 2024 (2024)
59136 View0.883Khattak 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)
18051 View0.869Agbaje P.; Nwafor E.; Olufowobi H.Deep Reinforcement Learning For Energy-Efficient Task Offloading In Cooperative Vehicular Edge NetworksIEEE International Conference on Industrial Informatics (INDIN), 2023-July (2023)
61096 View0.865Ma H.; Ji B.; Wu H.; Xing L.Video Data Offloading Techniques In Mobile Edge Computing: A SurveyPhysical Communication, 62 (2024)
14750 View0.863Fan J.; Wu J.; Mumtaz S.Collaborative-Filtering Privacy-Preserving Vehicular Edge Computation Offloading In Green Smart CitiesIEEE International Conference on Communications, 2023-May (2023)
16146 View0.86Gu 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)