This paper investigates a symbiotic unmanned aerial vehicle (UAV)-assisted intelligent reflecting surface (IRS) radio system, where the UAV is leveraged to help the IRS reflect its own signals to the base station, and meanwhile enhance the UAV transmission by passive beamforming at the IRS. First, we consider the weighted sum bit error rate (BER) minimization problem among all IRSs by jointly optimizing the UAV trajectory, IRS phase shift matrix, and IRS scheduling, subject to the minimum primary rate requirements. To tackle this complicated problem, a relaxation-based algorithm is proposed. We prove that the converged relaxation scheduling variables are binary, which means that no reconstruct strategy is needed, and thus the UAV rate constraints are automatically satisfied. Second, we consider the fairness BER optimization problem. We find that the relaxation-based method cannot solve this fairness BER problem since the minimum primary rate requirements may not be satisfied by the binary reconstruction operation. To address this issue, we first transform the binary constraints into a series of equivalent equality constraints. Then, a penalty-based algorithm is proposed to obtain a suboptimal solution. Numerical results are provided to evaluate the performance of the proposed designs under different setups, as compared with benchmarks.
翻译:本文调查了共生无人驾驶飞行器(无人驾驶飞行器)辅助智能反射表面(IRS)无线电系统。 无人驾驶飞行器被用来帮助IRS反映其自身对基地站的信号,同时通过IRS的被动波束增强无人驾驶飞行器的传输。 首先,我们认为所有IRS的加权和比特误差率(BER)最小化问题,办法是联合优化无人驾驶飞行器的轨迹、IRS阶段转移矩阵和IRS时间安排,但须符合最低基本费率要求。为了解决这个问题,我们首先提出一个基于放松的算法。我们证明,趋同的放松时间安排变量是二进制的,这意味着不需要重建战略,因此无人驾驶飞行器的费率限制自动得到满足。第二,我们认为公平性BER优化问题。我们发现,基于放松的方法无法解决这一公平性问题,因为二进制基本费率要求可能无法通过二进制重建行动得到满足。为了解决这个问题,我们首先将二进制限制转化为一系列相同的平等制约。 然后,我们提议一种基于惩罚的算法,以获得一个亚optimatimal的解决方案,作为不同的性基准。