This paper investigates the resource allocation algorithm design for intelligent reflecting surface (IRS) aided multiple-input single-output (MISO) orthogonal frequency division multiple access (OFDMA) multicell networks, where a set of base stations cooperate to serve a set of ultra-reliable low-latency communication (URLLC) users. The IRS is deployed to enhance the communication channel and increase reliability by creating a virtual line of sight for URLLC users with unfavorable propagation conditions. This is the first study on IRS-enhanced OFDMA-URLLC systems. The resource allocation algorithm design is formulated as an optimization problem for the maximization of the weighted system sum throughput while guaranteeing the quality of service of the URLLC users. The optimization problem is non-convex and finding the globally optimal solution entails a high computational complexity which is not desirable for real-time applications. Therefore, a suboptimal iterative algorithm is proposed which \textit{jointly} optimizes all optimization variables in each iteration using a new iterative rank minimization approach. The algorithm is guaranteed to converge to a locally optimal solution of the formulated optimization problem. Our simulation results show that the proposed IRS design facilitates URLLC and yields large performance gains compared to two baseline schemes.
翻译:本文调查智能反射表面(IRS)辅助多投入单输出(MISO)多频分多访问(OFDMA)多细胞网络的资源分配算法设计,其中一组基地台站合作为一组超可靠低纬度通信(URLLC)用户提供服务。安装IRS是为了为具有不受欢迎的传播条件的URLLC用户建立一条虚拟视线,从而增强通信渠道和提高可靠性。这是关于IRS-加固DMA-URLC系统的第一个研究。资源分配算法设计是优化系统加权总和最大化的最佳问题,同时保证URLC用户的服务质量。优化问题是非convex和找到全球最佳解决方案,因此,为具有不受欢迎的传播条件的URLC用户设计了一个高计算复杂性。因此,提议了一种亚优的迭代算法,用新的迭代级最小化方法优化了每个系统的所有优化变量。保证了将加权系统总和总和加权总载量作为最佳的优化问题,同时保证了系统总和最优性LCRCM的模拟方案,从而展示了当地最佳性成果。