In this letter, a novel framework to deliver critical spread out URLLC services deploying unmanned aerial vehicles (UAVs) in an out-of-coverage area is developed. To this end, the resource optimization problem, i.e., resource blocks (RBs) and power allocation, and optimal UAV deployment strategy are studied for UAV-assisted 5G networks to jointly maximize the average sum-rate and minimize the transmit power of UAV while satisfying the URLLC requirements. To cope with the sporadic URLLC traffic problem, an efficient online URLLC traffic prediction model based on Gaussian Process Regression (GPR) is proposed which derives optimal URLLC scheduling and transmit power strategy. The formulated problem is revealed as a mixed-integer nonlinear programming (MINLP), which is solved following the introduced successive minimization algorithm. Finally, simulation results are provided to show our proposed solution approach's efficiency.
翻译:在本信内,为在覆盖区外部署无人驾驶飞行器(无人驾驶飞行器)的URLLC提供关键的分散服务,制定了一个新的框架,为此,为UAV协助的5G网络研究了资源优化问题,即资源区块(RBs)和电力分配,以及UAV的最佳部署战略,以共同最大限度地提高UAV的平均总和率和最小化UAV的传输能力,同时满足URLC的要求。为了应对URLC的零星交通问题,提议了一个基于Gaussian进程回归(GPR)的高效的URLC在线交通预测模型,该模型将产生最佳的URLC日程安排和传输动力战略。所提出的问题作为混合整数非线性编程(MINLP)加以披露,这是在采用连续的最小化算法后解决的。最后,提供了模拟结果,以显示我们提议的解决方案方法的效率。