Fast and reliable connectivity is essential to enhancing situational awareness and operational efficiency for public safety mission-critical (MC) users. In emergency or disaster circumstances, where existing cellular network coverage and capacity may not be available to meet MC communication demands, deployable-network-based solutions such as cells-on-wheels/wings can be utilized swiftly to ensure reliable connection for MC users. In this paper, we consider a scenario where a macro base station (BS) is destroyed due to a natural disaster and an unmanned aerial vehicle carrying BS (UAV-BS) is set up to provide temporary coverage for users in the disaster area. The UAV-BS is integrated into the mobile network using the 5G integrated access and backhaul (IAB) technology. We propose a framework and signalling procedure for applying machine learning to this use case. A deep reinforcement learning algorithm is designed to jointly optimize the access and backhaul antenna tilt as well as the three-dimensional location of the UAV-BS in order to best serve the on-ground MC users while maintaining a good backhaul connection. Our result shows that the proposed algorithm can autonomously navigate and configure the UAV-BS to improve the throughput and reduce the drop rate of MC users.
翻译:在紧急情况或灾害情况下,现有的蜂窝网络覆盖面和能力可能无法满足移动网络的通信需求,在这种情况下,可以迅速利用移动网络的可部署解决办法,如轮/翼电池,以确保移动用户的可靠连接。在本文件中,我们考虑这样一种情况,即大型基地站(BS)因自然灾害而遭到破坏,运载BS的无人驾驶飞行器(UAV-BS)为灾区用户提供临时覆盖。在紧急情况或灾害情况下,无人驾驶飞行器可能无法使用蜂窝网络的覆盖面和能力来满足移动网络的通信需求,因此,我们提议了一个框架和信号程序,用于将机器学习用于此案件。深度强化学习算法旨在共同优化访问和回路天线倾斜以及UAV-BS的三维位置,以便为地面用户提供最佳服务,同时保持良好的反向连接。我们的结果显示,拟议的UAV-BS用户的自动导航和配置算法可以通过改进UAV-BS的下降率,从而通过改进UAV-BS用户的连接来降低和降低下降率。