Fast and reliable wireless communication has become a critical demand in human life. When natural disasters strike, providing ubiquitous connectivity becomes challenging by using traditional wireless networks. In this context, unmanned aerial vehicle (UAV) based aerial networks offer a promising alternative for fast, flexible, and reliable wireless communications in mission-critical (MC) scenarios. Due to the unique characteristics such as mobility, flexible deployment, and rapid reconfiguration, drones can readily change location dynamically to provide on-demand communications to users on the ground in emergency scenarios. As a result, the usage of UAV base stations (UAV-BSs) has been considered as an appropriate approach for providing rapid connection in MC scenarios. In this paper, we study how to control a UAV-BS in both static and dynamic environments. We investigate a situation in which a macro BS is destroyed as a result of a natural disaster and a UAV-BS is deployed using integrated access and backhaul (IAB) technology to provide coverage for users in the disaster area. We present a data collection system, signaling procedures and machine learning applications for this use case. A deep reinforcement learning algorithm is developed to jointly optimize the tilt of the access and backhaul antennas of the UAV-BS as well as its three-dimensional placement. Evaluation results show that the proposed algorithm can autonomously navigate and configure the UAV-BS to satisfactorily serve the MC users on the ground.
翻译:快速可靠的无线通信已成为人类生活中的一个关键需求。当自然灾害发生时,通过使用传统的无线网络提供无处不在的互连互通成为挑战。在这种情况下,无人驾驶航空飞行器(无人驾驶飞行器)的航空网络为快速、灵活和可靠的无线通信提供了一个充满希望的备选方案,用于在任务关键(MC)情况下的快速、灵活和可靠的无线通信。由于流动性、灵活部署和快速重组等独特特点,无人驾驶飞机可以随时改变位置,以便在紧急情况下向地面用户提供即时通信。因此,我们提出了一个数据收集系统,为这一使用案件使用无人驾驶飞行器基地站(UAV-BS)提供了信号和机器学习应用。在本文件中,我们研究了如何在静态和动态环境中控制无人驾驶飞行器的无线通信。我们调查了一种情况,即大型无人驾驶飞行器因自然灾害而被毁,而无人驾驶飞行器部署时使用综合接入和回路段技术,为灾区的用户提供即时需通信服务。我们提出了一个数据收集系统,为该案件提供快速连通的程序和机器学习应用软件。在本文中研究如何在静态和动态环境中控制一个深度强化的学习算算方法,以共同优化自动定位,以显示AVS-AVAVS的获取和自动导航的天平压。