This paper proposes a model-driven deep learning (MDDL)-based channel estimation and feedback scheme for wideband millimeter-wave (mmWave) massive hybrid multiple-input multiple-output (MIMO) systems, where the angle-delay domain channels' sparsity is exploited for reducing the overhead. Firstly, we consider the uplink channel estimation for time-division duplexing systems. To reduce the uplink pilot overhead for estimating the high-dimensional channels from a limited number of radio frequency (RF) chains at the base station (BS), we propose to jointly train the phase shift network and the channel estimator as an auto-encoder. Particularly, by exploiting the channels' structured sparsity from an a priori model and learning the integrated trainable parameters from the data samples, the proposed multiple-measurement-vectors learned approximate message passing (MMV-LAMP) network with the devised redundant dictionary can jointly recover multiple subcarriers' channels with significantly enhanced performance. Moreover, we consider the downlink channel estimation and feedback for frequency-division duplexing systems. Similarly, the pilots at the BS and channel estimator at the users can be jointly trained as an encoder and a decoder, respectively. Besides, to further reduce the channel feedback overhead, only the received pilots on part of the subcarriers are fed back to the BS, which can exploit the MMV-LAMP network to reconstruct the spatial-frequency channel matrix. Numerical results show that the proposed MDDL-based channel estimation and feedback scheme outperforms the state-of-the-art approaches.
翻译:本文提出一个基于宽频-千兆米(mmWave)大规模混合多输入多输出多输出(MIMO)系统基于模型驱动深度学习(MDDL)的频道估计和反馈计划,在该系统中,利用角度偏移域域际频道的广度来减少间接费用。 首先,我们考虑时间分解系统的上行频道估计。为了减少基地站有限的无线电频(RF)链段用于估计高频频道的上行连接试点管理费,我们提议联合培训分阶段转换网络和频道估计器,将其作为自动编码器。 特别是,通过利用频道结构化的缓冲模型和从数据样本中学习综合培训参数,拟议中的多度测量-驱动器网络与设计冗余版词词词词词词字典网络可以联合回收多个亚离子转换器的频道频道。 此外,我们考虑将州下行频道估计和频道估计器作为自动编码的自动编码。 类似,BS-DDRM 和频道的试算器只能进一步将所接受的电路路路路路路路路路路路机用于B-BS-SDDDDDD-S 和Mexeral-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s可以进一步显示-s