To compensate the loss from outdated channel state information in wideband massive multiple-input multipleoutput (MIMO) systems, channel prediction can be performed by leveraging the temporal correlation of wireless channels. Machine learning (ML)-based channel predictors for massive MIMO systems were designed recently; however, the time overhead to collect a large amount of training data directly affects the latency of the system. In this paper, we propose a novel ML-based channel prediction technique, which can reduce the time overhead to collect the training data by transforming the domain of channels from subcarrier to antenna in wideband massive MIMO systems. Numerical results show that the proposed technique can not only reduce the time overhead but also give additional performance gain compared to the ML-based channel prediction techniques without the domain transformation.
翻译:为了弥补宽带大规模多投入多重产出(MIMO)系统中过时的频道状态信息的损失,可以通过利用无线频道的时间相关性来进行频道预测;最近设计了大型MIMO系统的机器学习(ML)频道预测器;然而,收集大量培训数据的时间管理直接影响到该系统的延迟状态。在本文中,我们提议了一种新的基于ML的频道预测技术,通过将频道从子载体转变为大型MIMO系统的天线,可以减少收集培训数据的时间管理器。 数字结果显示,拟议的技术不仅可以减少时间管理,还可以与不进行域变的基于ML的频道预测技术相比,带来更多的性能收益。