论文标题
是否准备用于边缘辅助自动驾驶汽车的常规车辆的转弯导航系统?
Are Turn-by-Turn Navigation Systems of Regular Vehicles Ready for Edge-Assisted Autonomous Vehicles?
论文作者
论文摘要
未来的私人和公共交通工具将由自动驾驶汽车(AV)主导,这些车辆可能比常规车辆更安全。但是,确保自主功能的良好性能需要快速处理重型计算任务。为每个AV提供强大的计算资源无疑是一个实用的解决方案,但可能会导致AV成本增加和驱动范围减少。在研究中探索的另一种解决方案是在每个AV上安装低功率计算硬件,并将重型任务卸载到功能强大的附近边缘服务器上。在这种情况下,AV的反应时间取决于在边缘服务器中导航任务完成的速度。为了减少任务完成延迟,Edge服务器必须配备足够的网络和计算资源来处理车辆需求。但是,该需求显示出较大的时空变化。因此,在不同位置部署相同数量的资源可能会导致不必要的资源过度提供。 考虑到这些挑战,在本文中,我们讨论了根据实际交通数据在不同城市地区部署不同资源的含义,以维持峰值与平均需求。由于部署边缘资源来处理平均需求会导致部署成本降低和系统利用率,因此我们研究高峰时段需求如何影响AVS的安全旅行时间,以及当前的转折性导航应用程序是否仍将提供最快的旅行路线。本文的见解和发现将激发新的研究,这些研究可以大大加快我们社会中边缘辅助的AV的部署。
Future private and public transportation will be dominated by Autonomous Vehicles (AV), which are potentially safer than regular vehicles. However, ensuring good performance for the autonomous features requires fast processing of heavy computational tasks. Providing each AV with powerful enough computing resources is certainly a practical solution but may result in increased AV cost and decreased driving range. An alternative solution being explored in research is to install low-power computing hardware on each AV and offload the heavy tasks to powerful nearby edge servers. In this case, the AV's reaction time depends on how quickly the navigation tasks are completed in the edge server. To reduce task completion latency, the edge servers must be equipped with enough network and computing resources to handle the vehicle demands. However, this demand shows large spatio-temporal variations. Thus, deploying the same amount of resources in different locations may lead to unnecessary resource over-provisioning. Taking these challenges into consideration, in this paper, we discuss the implications of deploying different amounts of resources in different city areas based on real traffic data to sustain peak versus average demand. Because deploying edge resources to handle the average demand leads to lower deployment costs and better system utilization, we then investigate how peak-hour demand affect the safe travel time of AVs and whether current turn-by-turn navigation apps would still provide the fastest travel route. The insights and findings of this paper will inspire new research that can considerably speed up the deployment of edge-assisted AVs in our society.