作者:Shuangliang Zhao, Lei Shi, Yi Shi, Fei Zhao, Yuqi Fan
发表刊物:CollaborateCom 2022
年份:October 2022
摘要:Vehicular Edge Computing (VEC) is envisioned as a promising approach to process explosive vehicle tasks. In the VEC system, vehicles can choose to upload tasks to nearby edge nodes for processing. This approach requires an efficient communication method, and Non-Orthogonal Multiple Access (NOMA) can improve channel spectrum efficiency and capacity. However, in the VEC system, the channel condition is complex due to the fast mobility of vehicles, and the arrival time of each task is stochastic. These characteristics greatly affect the latency of tasks. In this paper, we adopt a NOMA-based task offloading and allocation scheme to improve the VEC system. To cope with complex channel conditions, we use NOMA to upload tasks in batches. We first establish the mathematical model, and divide the offloading and allocation of tasks into two processes: transmission and computation. Then we determine appropriate edge nodes for transmission and computation according to the position and speed of vehicles. We define the optimization objective as maximizing the number of tasks completed, and find that it is an integer nonlinear problem. Since there are more integer variables, this optimization problem is difficult to solve directly. Through further analysis, we design Asymptotic Inference Greedy Strategy (AIGS) algorithm based on heuristics. Simulation results demonstrate that our algorithm has great advantages.
参考文献拷贝字段:Shuangliang Zhao, Lei Shi, Yi Shi, Fei Zhao, Yuqi Fan. NOMA-Based Task Offloading and Allocation in Vehicular Edge Computing Networks[C]. 18th EAI International Conference on Collaborative Computing: Networking, Applications and Worksharing (CollaborateCom), Hangzhou, China, October 15-16, 2022: 343-359
相关下载:
NOMA-Based Task Offloading and Allocation in Vehicular Edge Computing Networks