论文标题
基于ELM的叠加CSI反馈,用于FDD大型MIMO系统
ELM-based Superimposed CSI Feedback for FDD Massive MIMO System
论文作者
论文摘要
在频划分的双工(FDD)中,大量的多输入多输出(MIMO),基于深度学习(DL)的叠加通道状态信息(CSI)反馈提出了有希望的性能。 However, it is still facing many challenges, such as the high complexity of parameter tuning, large number of training parameters, and long training time, etc. To overcome these challenges, an extreme learning machine (ELM)-based superimposed CSI feedback is proposed in this paper, in which the downlink CSI is spread and then superimposed on uplink user data sequence (UL-US) to feed back to base station (BS).在BS,构建了基于ELM的网络以恢复下行链路CSI和UL-US。在构造的基于ELM的网络中,我们采用了基于ELM的子网的简化版本来替换基于DL的叠加反馈的子网,从而减少了训练参数。此外,每个基于ELM的子网的输入权重和隐藏偏见是通过使用其完整或部分条目从同一矩阵加载的,从而大大减少了内存需求。与基于DL的CSI叠加的CSI反馈相比,拟议的基于ELM的方法的下行链路CSI和UL-US的恢复性能相似或更好,基于ELM的方法具有较少的培训参数,存储空间,离线培训和在线运行时间。
In frequency-division duplexing (FDD) massive multiple-input multiple-output (MIMO), deep learning (DL)-based superimposed channel state information (CSI) feedback has presented promising performance. However, it is still facing many challenges, such as the high complexity of parameter tuning, large number of training parameters, and long training time, etc. To overcome these challenges, an extreme learning machine (ELM)-based superimposed CSI feedback is proposed in this paper, in which the downlink CSI is spread and then superimposed on uplink user data sequence (UL-US) to feed back to base station (BS). At the BS, an ELM-based network is constructed to recover both downlink CSI and UL-US. In the constructed ELM-based network, we employ the simplified versions of ELM-based subnets to replace the subnets of DL-based superimposed feedback, yielding less training parameters. Besides, the input weights and hidden biases of each ELM-based subnet are loaded from the same matrix by using its full or partial entries, which significantly reduces the memory requirement. With similar or better recovery performances of downlink CSI and UL-US, the proposed ELM-based method has less training parameters, storage space, offline training and online running time than those of DL-based superimposed CSI feedback.