We present distributed methods for jointly optimizing Intelligent Reflecting Surface (IRS) phase-shifts and beamformers in a cellular network. The proposed schemes require knowledge of only the intra-cell training sequences and corresponding received signals without explicit channel estimation. Instead, an SINR objective is estimated via sample means and maximized directly. This automatically includes and mitigates both intra- and inter-cell interference provided that the uplink training is synchronized across cells. Different schemes are considered that limit the set of known training sequences from interferers. With MIMO links an iterative synchronous bi-directional training scheme jointly optimizes the IRS parameters with the beamformers and combiners. Simulation results show that the proposed distributed methods show a modest performance degradation compared to centralized channel estimation schemes, which estimate and exchange all cross-channels between cells, and perform significantly better than channel estimation schemes which ignore the inter-cell interference.
翻译:我们提出了在蜂窝网络中联合优化智能反射表面(IRS)的分流和波纹体的分布式方法,拟议的计划只要求了解细胞内部培训序列和相应的收到的信号,而没有明确的频道估计,相反,通过抽样手段对SINR的目标进行了估计,并直接加以最大化,这自动包括并减轻细胞内部和细胞之间的干扰,条件是各细胞之间的上行联系培训是同步的。不同的计划被认为限制了来自干扰者的已知培训序列。与MIMO连接了一个同步的迭接双向培训计划,联合优化了IRS参数与光谱体和组合体。模拟结果表明,与中央频道估计计划相比,拟议的分布式方法表现下降幅度不大,后者估计和交换了各细胞之间的所有交叉通道,并且比忽视细胞间干扰的频道估计计划要好得多。