We investigate a reconfigurable intelligent surface (RIS)-aided multi-user massive multiple-input multi-output (MIMO) system where low-resolution digital-analog converters (DACs) are configured at the base station (BS) in order to reduce the cost and power consumption. An approximate analytical expression for the downlink achievable rate is derived based on maximum ratio transmission (MRT) and additive quantization noise model (AQNM), and the rate maximization problem is solved by particle swarm optimization (PSO) method under both continuous phase shifts (CPSs) and discrete phase shifts (DPSs) at the RIS. Simulation results show that the downlink sum achievable rate tends to a constant with the increase of the number of quantization bits of DACs, and three quantization bits are enough to capture a large portion of the performance of the ideal perfect DACs case.
翻译:我们调查了一个可重新配置的智能表面(RIS)辅助多用户大规模多投入多产出产出(MIMO)系统,其中低分辨率数字分析转换器(DACs)配置在基站(BS),以减少成本和电力消耗,下行链路可实现率的大致分析表达方式基于最大比率传输(MRT)和添加量定量噪声模型(AQNM)得出,而最高比率最大化问题通过在连续阶段转移(CPS)和离散阶段转移(DPSs)的连续阶段移动(PSO)方法解决。模拟结果表明,下行链路和可实现率往往与发援会四分位数的增加一致,三个四分化点足以捕捉到理想完美发援会案例的大部分性能。