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Stackelberg game-based task offloading in vehicular edge computing networks

机译:基于Stackelberg游戏的任务在车辆边缘计算网络中卸载

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With the emergence of intelligent vehicles, how to satisfy the demands of the vehicles with computing-intensive and delay-sensitive tasks has become a challenging issue. Vehicular edge computing (VEC) is proposed as an advanced paradigm to improve the service of vehicles through offloading the task to the VEC servers. Nevertheless, VEC servers always have limited computation resources and do not satisfy the offloading requirements of vehicles. To this end, in this paper, we propose a more flexible offloading scheme by jointly considering the offloading strategies and the price strategy. In the proposed scheme, where the task can be dynamically divided into two parts parallel executed at the vehicles and VEC servers. A multi-leader and multi-follower Stackelberg game -based distributed algorithm is proposed to maximize the utilities of the vehicles and the VEC servers under the delay constraint. Finally, the game equilibrium is analyzed and achieved. Extensive experiments demonstrate that the proposed offloading scheme converges fast and always outperforms the existing schemes in terms of the vehicular utility under different network conditions. For instance, the proposed scheme achieves the utility improvement over 56.62% compared to the fixed selection strategy and achieves the utility improvement up to 161.0% compared to the complete offloading with fixed price strategy when the number of vehicles is 10. Additionally, the effects of key parameters such as the offloading strategies and, the price strategy, and the computation resource on the average utility of vehicles are also discussed and analyzed based on the simulation results.
机译:随着智能车辆的出现,如何满足汽车的需求,通过计算密集型和延迟敏感的任务已成为一个具有挑战性的问题。车辆边缘计算(VEC)被提出为先进的范例,以通过将任务卸载到VEC服务器来改善车辆的服务。尽管如此,VEC服务器始终具有有限的计算资源,不满足车辆的卸载要求。为此,在本文中,我们通过共同考虑卸载策略和价格战略来提出更灵活的卸载方案。在所提出的方案中,任务可以动态分为在车辆和VEC服务器上并行执行的两部分。提出了一种多领导和多跟随器Stackelberg游戏,以便在延迟约束下最大化车辆和VEC服务器的实用程序。最后,分析并达到了游戏均衡。广泛的实验表明,所提出的卸载方案在不同网络条件下的车辆效用方面会收敛快速,并且总是优于现有方案。例如,与固定选择策略相比,该拟议方案实现了效用超过56.62%,而当车辆数量为10时,与固定价格策略的完整卸载相比,高达161.0%的公用事业改善达到161.0%。此外还讨论了基于模拟结果的卸载策略和卸载策略和价格策略和价格策略和计算资源的关键参数。

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