Next-generation networks need to meet ubiquitous and high data-rate demand. Therefore, this paper considers the throughput and trajectory optimization of terahertz (THz)-enabled unmanned aerial vehicles (UAVs) in the sixth-generation (6G) communication networks. In the considered scenario, multiple UAVs must provide on-demand terabits per second (TB/s) services to an urban area along with existing terrestrial networks. However, THz-empowered UAVs pose some new constraints, e.g., dynamic THz-channel conditions for ground users (GUs) association and UAV trajectory optimization to fulfill GU's throughput demands. Thus, a framework is proposed to address these challenges, where a joint UAVs-GUs association, transmit power, and the trajectory optimization problem is studied. The formulated problem is mixed-integer non-linear programming (MINLP), which is NP-hard to solve. Consequently, an iterative algorithm is proposed to solve three sub-problems iteratively, i.e., UAVs-GUs association, transmit power, and trajectory optimization. Simulation results demonstrate that the proposed algorithm increased the throughput by up to 10%, 68.9%, and 69.1% respectively compared to baseline algorithms.
翻译:下一代网络需要满足无处不在的高数据率需求。 因此,本文件审议了第六代(6G)通信网络中由特拉赫茨(THz)驱动的无人驾驶飞行器(UAVs)的吞吐量和轨迹优化问题。 在考虑的假设中,多个无人驾驶飞行器必须与现有的地面网络一道,每秒(TB/s)向城市地区提供点需求斜方程式服务。然而,由THz-获得动力的UAV构成一些新的限制,例如,对地面用户(GUs)协会和UAV轨道优化动态THz-通道条件,以满足GU的吞吐量需求。因此,提出了应对这些挑战的框架,即UAVs-GUs联合、传输电力和轨迹优化问题正在研究之中。 提出的问题是混合内源非线性编程(MINLP),这是难以解决的。 因此,建议采用迭代算算法解决三种次标的次频谱,即:UAVS-GUs-GUs轨迹优化满足GUs的需求需求,将UPUVs-69的能量递增至10的运算算结果,通过10。 并分别显示10 %的基线算算算。