Institute of Digital Communication Systems, Ruhr University Bochum, 44801 Bochum, Germany.
e:fs TechHub GmbH, 85080 Gaimersheim, Germany.
Sensors (Basel). 2022 Aug 31;22(17):6587. doi: 10.3390/s22176587.
Intelligent reconfigurable surfaces (IRSs) have gained much attention due to their passive behavior that can be a successor to relays in many applications. However, traditional relay systems might still be a perfect choice when reliability and throughput are the main concerns in a communication system. In this work, we use an IRS along with a decode-and-forward relay to provide a possible solution to address one of the main challenges of future wireless networks which is providing reliability. We investigate a robust transceiver design against the residual self-interference (RSI), which maximizes the throughput rate under self-interference channel uncertainty-bound constraints. The yielded problem turns out to be a non-convex optimization problem, where the non-convex objective is optimized over the cone of semidefinite matrices. We propose a novel mathematical method to find a lower bound on the performance of the IRS that can be used as a benchmark. Eventually, we show an important result in which, for the worst-case scenario, IRS can be helpful only if the number of IRS elements are at least as large as the size of the interference channel. Moreover, a novel method based on majorization theory and singular value decomposition (SVD) is proposed to find the best response of the transmitters and relay against worst-case RSI. Furthermore, we propose a multi-level water-filling algorithm to obtain a locally optimal solution iteratively. We show that our algorithm performs better that the state of the art in terms of time complexity as well as robustness. For instance, our numerical results show that the acheivable rate can be increased twofold and almost sixfold, respectively, for the case of small and large antenna array at transceivers.
智能可重构表面 (IRS) 因其被动行为而受到广泛关注,在许多应用中它可以成为继电器的替代品。然而,在通信系统中可靠性和吞吐量是主要关注点的情况下,传统的中继系统可能仍然是一个完美的选择。在这项工作中,我们使用 IRS 与解码转发中继相结合,为解决未来无线网络的主要挑战之一(提供可靠性)提供了一种可能的解决方案。我们研究了一种抗残余自干扰 (RSI) 的鲁棒收发器设计,该设计在自干扰信道不确定性约束下最大化吞吐量率。产生的问题是一个非凸优化问题,其中非凸目标在半正定矩阵的锥上进行优化。我们提出了一种新的数学方法来找到 IRS 性能的下界,可以作为基准。最终,我们展示了一个重要的结果,即对于最坏情况,只有当 IRS 元素的数量至少与干扰信道的大小相同时,IRS 才会有所帮助。此外,我们提出了一种基于乘法理论和奇异值分解 (SVD) 的新方法,以找到针对最坏情况 RSI 的收发器和中继的最佳响应。此外,我们提出了一种多级注水算法来迭代地获得局部最优解。我们表明,我们的算法在时间复杂度和鲁棒性方面都优于最新技术。例如,我们的数值结果表明,对于收发器的小天线阵列和大天线阵列,可达速率分别可以提高两倍和近六倍。