Publication | Closed Access
BARGAIN-MATCH: A Game Theoretical Approach for Resource Allocation and Task Offloading in Vehicular Edge Computing Networks
169
Citations
67
References
2023
Year
Internet Of VehicleEngineeringEdge DeviceGame TheoryJoint Resource AllocationVec NetworkCooperative Resource AllocationGame Theoretical ApproachVehicle NetworkInternet Of ThingsCombinatorial OptimizationMobile Data OffloadingTask OffloadingMobile ComputingEdge ArchitectureEdge ComputingCloud ComputingBusinessMulti-access Edge ComputingResource Allocation
Vehicular edge computing (VEC) is emerging as a promising architecture of vehicular networks (VNs) by deploying the cloud computing resources at the edge of the VNs. However, efficient resource management and task offloading in the VEC network is challenging. In this work, we first present a hierarchical framework that coordinates the heterogeneity among tasks and servers to improve the resource utilization for servers and service satisfaction for vehicles. Moreover, we formulate a joint resource allocation and task offloading problem (JRATOP), aiming to jointly optimize the intra-VEC server resource allocation and inter-VEC server load-balanced offloading by stimulating the horizontal and vertical collaboration among vehicles, VEC servers, and cloud server. Since the formulated JRATOP is NP-hard, we propose a cooperative resource allocation and task offloading algorithm named BARGAIN-MATCH, which consists of a bargaining-based incentive approach for intra-server resource allocation and a matching method-based horizontal-vertical collaboration approach for inter-server task offloading. Besides, BARGAIN-MATCH is proved to be stable, weak Pareto optimal, and polynomial complex. Simulation results demonstrate that the proposed approach achieves superior system utility and efficiency compared to the other methods, especially when the system workload is heavy.
| Year | Citations | |
|---|---|---|
Page 1
Page 1