Hybrid beamforming is widely recognized as an important technique for millimeter wave (mmWave) multiple input multiple output (MIMO) systems. Generalized spatial modulation (GSM) is further introduced to improve the spectrum efficiency. However, most of the existing works on beamforming assume the perfect channel state information (CSI), which is unrealistic in practical systems. In this paper, joint optimization of downlink pilot training, channel estimation, CSI feedback, and hybrid beamforming is considered in GSM aided frequency division duplexing (FDD) mmWave MIMO systems. With the help of deep learning, the GSM hybrid beamformers are designed via unsupervised learning in an end-to-end way. Experiments show that the proposed multi-resolution network named GsmEFBNet can reach a better achievable rate with fewer feedback bits compared with the conventional algorithm.
翻译:普遍空间调节法(GSM)被进一步引入,以提高频谱效率;然而,大多数现有的波束成形工作假定了完美的频道状态信息(CSI),在实用系统中这是不切实际的。在本文件中,在GSM辅助频率分解(DFD)毫米Wave MIMO系统中,联合优化下行连接试点培训、频道估计、CSI反馈和混合波形组合被认为是一种重要技术。在深层学习的帮助下,GSM混合光束成型是通过无监督的端到端学习设计的。实验显示,与常规算法相比,名为GsmEFBNet的拟议多分辨率网络可以以较少的反馈位数达到更好的可实现率。