Energy-Aware Resource Management in Vehicular Edge Computing Systems

Tayebeh Bahreini, Marco Brocanelli, Daniel Grosu
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引用次数: 4

Abstract

The low-latency requirements of connected electric vehicles and their increasing computing needs have led to the necessity to move computational nodes from the cloud data centers to edge nodes such as road-side units (RSU). However, offloading the workload of all the vehicles to RSUs may not scale well to an increasing number of vehicles and workloads. To solve this problem, computing nodes can be installed directly on the smart vehicles, so that each vehicle can execute the heavy workload locally, thus forming a vehicular edge computing system. On the other hand, these computational nodes may drain a considerable amount of energy in electric vehicles. It is therefore important to manage the resources of connected electric vehicles to minimize their energy consumption.In this paper, we propose an algorithm that manages the computing nodes of connected electric vehicles for minimized energy consumption. The algorithm achieves energy savings for connected electric vehicles by exploiting the discrete settings of computational power for various performance levels. We evaluate the proposed algorithm and show that it considerably reduces the vehicles’ computational energy consumption compared to state-of-the-art baselines. Specifically, our algorithm achieves 15-85% energy savings compared to a baseline that executes workload locally and an average of 51% energy savings compared to a baseline that offloads vehicles’ workloads only to RSUs.
车辆边缘计算系统中的能源感知资源管理
互联电动汽车的低延迟要求及其不断增长的计算需求导致有必要将计算节点从云数据中心移动到边缘节点,如路边单元(RSU)。然而,将所有车辆的工作负载卸载到rsu可能无法很好地扩展到不断增加的车辆和工作负载数量。为了解决这一问题,可以将计算节点直接安装在智能车上,使每辆车都可以在本地执行繁重的工作,从而形成一个车载边缘计算系统。另一方面,这些计算节点可能会在电动汽车中消耗大量的能量。因此,重要的是管理联网电动汽车的资源,以尽量减少其能源消耗。本文提出了一种对联网电动汽车计算节点进行最小化能耗管理的算法。该算法利用不同性能水平计算能力的离散设置,实现了联网电动汽车的节能。我们评估了所提出的算法,并表明与最先进的基线相比,它大大降低了车辆的计算能耗。具体来说,与本地执行工作负载的基准相比,我们的算法节省了15-85%的能源,与仅将车辆的工作负载卸载到rsu的基准相比,我们的算法平均节省了51%的能源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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