Machine learning (ML) applications for wireless communications have gained momentum on the standardization discussions for 5G advanced and beyond. One of the biggest challenges for real world ML deployment is the need for labeled signals and big measurement campaigns. To overcome those problems, we propose the use of untrained neural networks (UNNs) for MIMO channel recreation/estimation and low overhead reporting. The UNNs learn the propagation environment by fitting a few channel measurements and we exploit their learned prior to provide higher channel estimation gains. Moreover, we present a UNN for simultaneous channel recreation for multiple users, or multiple user equipment (UE) positions, in which we have a trade-off between the estimated channel gain and the number of parameters. Our results show that transfer learning techniques are effective in accessing the learned prior on the environment structure as they provide higher channel gain for neighbouring users. Moreover, we indicate how the under-parameterization of UNNs can further enable low-overhead channel state information (CSI) reporting.
翻译:无线通信的机器学习(ML)应用在5G先进及以后的标准化讨论上获得了动力。现实世界ML部署的最大挑战之一是需要贴标签信号和大型测量运动。为了克服这些问题,我们提议为MIMO频道娱乐/估计和低间接费用报告使用未经训练的神经网络(UNNs ) 。UNNs通过安装几个频道测量来学习传播环境,并在提供更高的频道估计收益之前利用他们所学到的传播环境。此外,我们提出了一个UNN,用于多个用户的同步频道娱乐,或多个用户设备(UE)的位置,其中我们在估计的频道收益和参数数量之间进行权衡。我们的结果显示,转让学习技术在获取环境结构学得的先天知识方面是有效的,因为它们为邻近用户提供了更高的通道收益。此外,我们指出,UNNs在参数不足的情况下如何进一步为低端频道状态报告提供方便。