基于多无人机服务边缘计算的车联网资源分配

Yuhang Wang, Ying He, Minhui Dong
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引用次数: 1

摘要

随着智能交通系统的快速发展,对自动驾驶辅助、紧急报警、信息娱乐等低延迟、高带宽的车载服务需求日益强烈。然而,在某些情况下(如交通拥堵、偏远地区),仅靠地面通信网络无法满足车辆的庞大需求。无人机(uav)具有灵活性和可部署性,可以作为地面网络的补充,缓解基站等地面设施的通信压力。在本文中,我们使用多无人机为车辆提供服务,并将多无人机场景建模为一个协作的多智能体系统。所有无人机共享有限的带宽资源,并配备边缘计算服务器为车辆服务。此外,如果不满足车辆的延迟要求,可能会造成严重的后果。因此,我们以车辆安全为首要任务,以延迟要求为约束条件。然后利用拉格朗日乘子将约束函数和成本函数结合起来,在保证车辆安全的前提下,尽可能的减少资源消耗。在分配资源时还应考虑信道效率和计算能力的影响。我们采用多智能体强化学习对无人机进行训练,同时引入注意机制,使每架无人机能够更好地利用其他无人机的信息进行自我优化。通过大量的实验,验证了该方法的有效性。特别是在严格限制带宽资源的情况下,在保证车辆安全的前提下,仍然可以根据车辆的需要进行资源分配。
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Resource Allocation in Vehicular Networks with Multi-UAV Served Edge Computing
With the rapid development of intelligent transportation systems, there is an increasingly strong demand for low-latency and high-bandwidth vehicular services, such as automatic driving assistance, emergency alarm, and infotainment. However, in some cases (e.g., traffic congestion, remote areas), the ground communication networks alone cannot meet the vast needs of vehicles. Unmanned aerial vehicles (UAVs) are flexible and deployable, which can be used as a supplement to the ground networks, to relieve the communication pressure on ground facilities, such as base stations. In this paper, we use multiple UAVs to provide services for vehicles and model the multi-UAV scenario as a collaborative multi-agent system. All UAVs share limited bandwidth resources and equip with edge computing servers to serve the vehicles. In addition, serious consequences may be caused if the delay requirements of vehicles are not satisfied. Therefore, we take vehicle safety as the top priority and the delay requirement as the constraints. Then we exploit the Lagrange multiplier to combine the constraint function and cost function, so as to reduce the resource consumption as much as possible on the premise of ensuring the safety of the vehicles. The influence of channel efficiency and computing power should also be taken into account when allocating resources. We adopt the multi-agent reinforcement learning to train the UAVs, and meanwhile introduce the attention mechanism so that each UAV can optimize itself better with the information of other UAVs. Through a large number of experiments, the effectiveness of our proposed method is verified. Particularly, in the case of strictly limiting bandwidth resources, resources can still be allocated according to vehicle needs under the premise of ensuring vehicle safety.
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