In frequency division duplexing (FDD) mode, it is necessary to send the channel state information (CSI) from user equipment to base station. The downlink CSI is essential for the massive multiple-input multiple-output (MIMO) system to acquire the potential gain. Recently, deep learning is widely adopted to massive MIMO CSI feedback task and proved to be effective compared with traditional compressed sensing methods. In this paper, a novel network named ACRNet is designed to boost the feedback performance with network aggregation and parametric RuLU activation. Moreover, valid approach to expand the network architecture in exchange of better performance is first discussed in CSI feedback task. Experiments show that ACRNet outperforms loads of previous state-of-the-art feedback networks without any extra information.
翻译:在频率重复模式下,有必要将频道状态信息从用户设备发送到基地站。下链接 CSI对于大规模多投入多产出(MIMO)系统获取潜在收益至关重要。最近,深度学习被广泛接受为大型MIMO CSI反馈任务,并证明与传统压缩遥感方法相比是有效的。在本文中,名为ACRNet的新网络旨在通过网络集成和参数RUU激活来提高反馈性能。此外,扩展网络结构以交换更好的业绩的有效方法首先在 CSI反馈任务中讨论。实验显示ACRNet在没有任何额外信息的情况下,超过了以往最先进的反馈网络的负荷。