Pan Kunbei, Zhou Bin, Zhang Wei, Ju Cheng
Shanghai Institute of Microsystem and Information Technology, Chinese Academy of Sciences, Shanghai 200050, China.
University of Chinese Academy of Sciences, Beijing 100049, China.
Sensors (Basel). 2023 Dec 25;24(1):121. doi: 10.3390/s24010121.
Full-duplex (FD) and reconfigurable intelligent surface (RIS) are potential technologies for achieving wireless communication effectively. Therefore, in theory, the RIS-aided FD system is supposed to enhance spectral efficiency significantly for the ubiquitous Internet of Things devices in smart cities. However, this technology additionally induces the loop-interference (LI) of RIS on the residual self-interference (SI) of the FD base station, especially in complicated urban outdoor environments, which will somewhat counterbalance the performance benefit. Inspired by this, we first establish an objective and constraints considering the residual SI and LI in two typical urban outdoor scenarios. Then, we decompose the original problem into two subproblems according to the variable types and jointly design the beamforming matrices and phase shifts vector methods. Specifically, we propose a successive convex approximation algorithm and a soft actor-critic deep reinforcement learning-related scheme to solve the subproblems alternately. To prove the effectiveness of our proposal, we introduce benchmarks of RIS phase shifts design for comparison. The simulation results show that the performance of the low-complexity proposed algorithm is only slightly lower than the exhaustive search method and outperforms the fixed-point iteration scheme. Moreover, the proposal in scenario two is more outstanding, demonstrating the application predominance in urban outdoor environments.
全双工(FD)和可重构智能表面(RIS)是有效实现无线通信的潜在技术。因此,从理论上讲,RIS辅助的FD系统应该能显著提高智能城市中无处不在的物联网设备的频谱效率。然而,这项技术还会在FD基站的残余自干扰(SI)上引发RIS的环路干扰(LI),尤其是在复杂的城市户外环境中,这在一定程度上会抵消性能优势。受此启发,我们首先在两种典型的城市户外场景中建立了考虑残余SI和LI的目标和约束条件。然后,我们根据变量类型将原问题分解为两个子问题,并联合设计波束成形矩阵和相移矢量方法。具体来说,我们提出了一种逐次凸逼近算法和一种与软演员-评论家深度强化学习相关的方案来交替解决这些子问题。为了证明我们提议的有效性,我们引入了RIS相移设计的基准进行比较。仿真结果表明,所提出的低复杂度算法的性能仅略低于穷举搜索方法,且优于定点迭代方案。此外,方案二在场景二中表现更突出,展示了在城市户外环境中的应用优势。