Downlink massive multiple-input multiple-output (MIMO) precoding algorithms in frequency division duplexing (FDD) systems rely on accurate channel state information (CSI) feedback from users. In this paper, we analyze the tradeoff between the CSI feedback overhead and the performance achieved by the users in systems in terms of achievable rate. The final goal of the proposed system is to determine the beamforming information (i.e., precoding) from channel realizations. We employ a deep learning-based approach to design the end-to-end precoding-oriented feedback architecture, that includes learned pilots, users' compressors, and base station processing. We propose a loss function that maximizes the sum of achievable rates with minimal feedback overhead. Simulation results show that our approach outperforms previous precoding-oriented methods, and provides more efficient solutions with respect to conventional methods that separate the CSI compression blocks from the precoding processing.
翻译:在本文中,我们分析了CSI反馈间接费用与用户在系统实现可实现率方面实现的绩效之间的权衡。拟议系统的最终目标是确定频道实现中的波形信息(即预编码),我们采用深层次的学习方法设计端到端的预编码反馈结构,其中包括学习的试点项目、用户的压缩机和基站处理。我们提出了一个损失功能,以最小的反馈间接费用为最大比例实现可实现率。模拟结果显示,我们的方法比先前的预编码导向方法要好,并且为将CSI压缩块与预编码处理分开的传统方法提供了更有效的解决方案。