This paper proposes a deep learning approach to channel sensing and downlink hybrid beamforming for massive multiple-input multiple-output systems operating in the time division duplex mode and employing either single-carrier or multicarrier transmission. The conventional precoding design involves a two-step process of first estimating the high-dimensional channel, then designing the precoders based on such estimate. This two-step process is, however, not necessarily optimal. This paper shows that by using a learning approach to design the analog sensing and the hybrid downlink precoders directly from the received pilots without the intermediate high-dimensional channel estimation, the overall system performance can be significantly improved. Training a neural network to design the analog and digital precoders simultaneously is, however, difficult. Further, such an approach is not generalizable to systems with different number of users. In this paper, we develop a simplified and generalizable approach that learns the uplink sensing matrix and downlink analog precoder using a deep neural network that decomposes on a per-user basis, then designs the digital precoder based on the estimated low-dimensional equivalent channel. Numerical comparisons show that the proposed methodology results in significantly less training overhead and leads to an architecture that generalizes to various system settings.
翻译:本文提出了一种深层次的学习方法,用于为在时分双倍模式下运行并同时使用单一载体或多载体传输的大规模多输出多输出多输出系统提供感测和下链接混合波束,为在时分双倍模式下传中运行的大型多输出多输出多输出系统提供导导和下链接混合波束。常规预编码设计涉及一个两步过程,即先对高维信道进行初步估计,然后根据这种估计设计预译器,再根据这种估计设计高维信道或多载波传输的超导网络。而后根据这种估计来设计预译器。然而,这一两步过程不一定是最佳的。本文件表明,通过采用一种学习高链接感测矩阵和下连接模拟前导线的学习方法,利用一种深层神经网络直接设计模拟前导线,然后根据估计的低维等信道设计数字前导线,可以大大改进整个系统绩效。此外,这种方法无法对不同用户的系统进行通用的模拟和数字预译仪进行概括化。