For downlink massive multiple-input multiple-output (MIMO) operating in time-division duplex protocol, users can decode the signals effectively by only utilizing the channel statistics as long as channel hardening holds. However, in a reconfigurable intelligent surface (RIS)-assisted massive MIMO system, the propagation channels may be less hardened due to the extra random fluctuations of the effective channel gains. To address this issue, we propose a learning-based method that trains a neural network to learn a mapping between the received downlink signal and the effective channel gains. The proposed method does not require any downlink pilots and statistical information of interfering users. Numerical results show that, in terms of mean-square error of the channel estimation, our proposed learning-based method outperforms the state-of-the-art methods, especially when the light-of-sight (LoS) paths are dominated by non-LoS paths with a low level of channel hardening, e.g., in the cases of small numbers of RIS elements and/or base station antennas.
翻译:对于在时间配置双轨协议下行的大型多投入多产出(MIIMO),用户只能通过在频道硬化状态下,利用频道统计数据才能有效解码信号。然而,在可重新配置的智能表面(RIS)辅助大型MIMO系统中,由于有效频道收益的随机波动增加,传播渠道可能不太硬化。为解决这一问题,我们提议了一种基于学习的方法,对神经网络进行培训,以了解接收到的下链接信号和有效频道收益之间的映射。拟议的方法不需要任何下链接试点项目和干扰用户的统计信息。数字结果显示,从频道估计的中度误差来看,我们提议的基于学习的方法超越了最新方法,特别是当光光线(LOS)路径以低水平频道硬化的非LOS路径为主时,例如,在少量的RIS元素和/或基站天线的情况下。