Efficient Task Offloading for MEC-Enabled Vehicular Networks: A Non-Cooperative Game Theoretic Approach

M. Hossain, Subina Khanal, E. Huh
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引用次数: 4

Abstract

Vehicular Edge Computing (VEC) is a new leading technology to enhance the vehicular performance through task offloading where resource-confined vehicles offload their computing task to the vehicular multi-access edge computing (MEC) networks in proximity. However, the environment of vehicular task offloading is extremely dynamic and faces some challenges to determine the location of processing the offloaded task. As a result, to achieve optimal performance by using traditional VEC system is difficult because in advance we don't know the demand of vehicles. Therefore, a non-cooperative game theory-based efficient task offloading (NGTO) scheme is proposed in this study where the offloading decisions are taken either the MEC server or remote cloud server through the game-theoretic approach. To reduce the processing latency of the vehicles' computation tasks and assure the maximum utility of each vehicle, we used a distributed best response offloading strategy. Our proposed strategy accommodates its offloading probability to achieve a unique equilibrium under certain conditions. Detailed performance evaluation affirms that our proposed NGTO scheme can outperform in all scenarios. It can minimize the response time at almost 41.2 % and average task failure rate at approximately 56.3% when compared with a local roadside unit computing (LRC) scheme. The reduced response time and task failure rates are approximately 25.2% and 20.4%, respectively, when compared with a collaborative (LRC with cloud via roadside unit) offloading scheme.
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基于mec的车辆网络的高效任务卸载:一种非合作博弈论方法
车辆边缘计算(VEC)是一种新的前沿技术,通过任务卸载来提高车辆性能,将资源受限的车辆将其计算任务卸载到附近的车辆多接入边缘计算(MEC)网络中。然而,车辆任务卸载的环境是动态的,在确定处理卸载任务的位置方面面临着一些挑战。因此,由于事先不知道车辆的需求,传统VEC系统难以达到最优性能。因此,本研究提出了一种基于非合作博弈论的高效任务卸载(NGTO)方案,通过博弈论方法在MEC服务器或远程云服务器上进行卸载决策。为了减少车辆计算任务的处理延迟,保证每辆车的最大效用,我们采用了分布式最优响应卸载策略。我们提出的策略使其卸载概率在一定条件下达到唯一均衡。详细的性能评估证实了我们提出的NGTO方案在所有场景下都具有优异的性能。与本地路边单元计算(LRC)方案相比,它可以将响应时间减少近41.2%,平均任务失败率减少约56.3%。与协作卸载方案(LRC与云通过路边单元)相比,减少的响应时间和任务失败率分别约为25.2%和20.4%。
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