Airborne Base Stations (ABSs) allow for flexible geographical allocation of network resources with dynamically changing load as well as rapid deployment of alternate connectivity solutions during natural disasters. Since the radio infrastructure is carried by unmanned aerial vehicles (UAVs) with limited flight time, it is important to establish the best location for the ABS without exhaustive field trials. This paper proposes a digital twin (DT)-guided approach to achieve this through the following key contributions: (i) Implementation of an interactive software bridge between two open-source DTs such that the same scene is evaluated with high fidelity across NVIDIA's Sionna and Aerial Omniverse Digital Twin (AODT), highlighting the unique features of each of these platforms for this allocation problem, (ii) Design of a back-propagation-based algorithm in Sionna for rapidly converging on the physical location of the UAVs, orientation of the antennas and transmit power to ensure efficient coverage across the swarm of the UAVs, and (iii) numerical evaluation in AODT for large network scenarios (50 UEs, 10 ABS) that identifies the environmental conditions in which there is agreement or divergence of performance results between these twins. Finally, (iv) we propose a resilience mechanism to provide consistent coverage to mission-critical devices and demonstrate a use case for bi-directional flow of information between the two DTs.
翻译:机载基站能够根据动态变化的网络负载灵活调配地理资源,并在自然灾害期间快速部署备用连接方案。由于无线电基础设施由续航时间有限的无人机构载,在不进行大量实地试验的前提下确定基站的最佳部署位置至关重要。本文提出一种数字孪生引导的解决方案,其主要贡献包括:(i)在NVIDIA Sionna与Aerial Omniverse数字孪生两个开源平台间构建交互式软件桥梁,使同一场景能在双平台中进行高保真度评估,凸显各平台在资源分配问题中的独特优势;(ii)在Sionna中设计基于反向传播的算法,快速收敛确定无人机的物理位置、天线朝向与发射功率,确保无人机集群的高效覆盖;(iii)在AODT中对大规模网络场景(50个用户设备、10个机载基站)进行数值评估,识别双平台性能结果趋于一致或产生分歧的环境条件;(iv)提出面向关键任务设备的弹性覆盖机制,并通过双平台间的双向信息流用例验证该机制的有效性。