Mohammed Laroui, Hatem Ibn-Khedher, Hassine Moungla, H. Afifi
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引用次数: 3
Abstract
High Dynamic Unmanned Aerial Vehicles (UAVs) are introduced to assist V2X networking and communication that requires ultra low latency and safety requirements (ULLC). In this paper, we propose a Follow Me UAV (FMU) architecture that aids Vehicular Edge Computing for service offering. Then, a communication protocol is proposed and associated with placement, routing, and optimization algorithms in small and dense networks (OFMU and AFMU). We use deep learning techniques (LSTM and GRU) to predict the connected vehicles trajectory, then the results are used to feed the optimization models. Then, we clarify through Reinforcement Learning based implementations autonomous UAV path planning. Optimization approaches are implemented and evaluated under different quality and computing scenarios. Then, the models are quantified under UAV selection time and energy cost. Results prove the feasibility of the optimization algorithms and suggest the use of mobile UAV as low latency edge servers for service offering.
引入高动态无人机(uav)来辅助需要超低延迟和安全要求(ULLC)的V2X网络和通信。在本文中,我们提出了一种随我无人机(Follow Me UAV, FMU)架构,该架构有助于车辆边缘计算提供服务。然后,提出了一种通信协议,并将其与小型和密集网络(OFMU和AFMU)中的布局、路由和优化算法相关联。我们使用深度学习技术(LSTM和GRU)来预测联网车辆的轨迹,然后将结果用于馈送优化模型。然后,我们阐明了如何通过强化学习实现自主无人机的路径规划。在不同的质量和计算场景下对优化方法进行了实现和评估。然后,在无人机选择时间和能量成本下对模型进行量化。结果证明了优化算法的可行性,并建议使用移动无人机作为低延迟的边缘服务器来提供服务。