...
首页> 外文期刊>IEEE Network: The Magazine of Computer Communications >Offloading of Interdependent Computing Subtasks Based on VANET in the Harsh Environment
【24h】

Offloading of Interdependent Computing Subtasks Based on VANET in the Harsh Environment

机译:恶劣环境下基于VANET的相互依赖计算子任务卸载

获取原文
获取原文并翻译 | 示例

摘要

Inter-vehicle communication is crucial in many severe weather or natural disaster situations. However, the wireless link quality is worse than the wired in that the network topology between vehicles changes frequently as vehicles move at high speeds. This also seriously affects the quality of inter-vehicle communication and corresponding services. Emerging computing-intensive service tasks like autonomous driving are extremely time-dependent, which poses large issues for resource allocation between vehicles. In particular, vehicles driving will face greater obstacles when severe weather causes a serious shortage of roadside computing resources. Therefore, we develop appropriate offloading strategies for interdependent computation tasks in the harsh environment. To reduce the overall task completion time within the cost budget limitations, we study a dynamic offloading strategy based on vehicle distribution probability and revenue discount factor, where subtasks are offloaded to the appropriate vehicle by cellular vehicle-to-everything communication. Simultaneously, for small tasks with smaller amounts of calculation, we propose a quasi-static offloading strategy based on branch and bound. Simulation results for varying amounts of calculation, vehicle arrival rates, and average speeds show that the suggested strategies can enhance revenues while getting lower time complexity. Furthermore, our solutions are more adaptable to the extremely dynamic vehicular ad hoc network environment.
机译:在许多恶劣天气或自然灾害情况下,车辆间通信至关重要。然而,无线链路质量比有线链路差,因为随着车辆高速行驶,车辆之间的网络拓扑结构经常变化。这也严重影响了车间通信和相应服务的质量。自动驾驶等新兴的计算密集型业务任务对时间依赖性极强,这给车辆之间的资源分配带来了很大的问题。特别是,当恶劣天气导致路边计算资源严重短缺时,行驶的车辆将面临更大的障碍。因此,我们为恶劣环境中相互依赖的计算任务制定了适当的卸载策略。为了在成本预算限制范围内缩短整体任务完成时间,我们研究了一种基于车辆分配概率和收入折扣因子的动态卸载策略,其中子任务通过蜂窝车辆到一切通信卸载到适当的车辆。同时,针对计算量较小的小任务,提出了一种基于分支和边界的准静态卸载策略。不同计算量、车辆到达率和平均速度的仿真结果表明,所建议的策略可以提高收入,同时降低时间复杂度。此外,我们的解决方案更能适应极端动态的车辆自组网环境。

著录项

获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号