论文标题
DEEPTX:深度学习范围通过渠道预测
DeepTx: Deep Learning Beamforming with Channel Prediction
论文作者
论文摘要
最近在无线通信领域的许多任务中考虑了机器学习算法。以前,我们已经提议使用深度全卷积神经网络(CNN)进行接收器处理,并证明它可以提供可观的性能增长。在这项研究中,我们专注于发射器的机器学习算法。特别是,我们将波束形成并提出了一个CNN,该CNN对于给定上行链路通道估计值作为输入,输出下行链路通道信息将用于波束形成。考虑到基于UE接收器性能的损失功能,CNN以有监督的方式进行了监督方式。神经网络的主要任务是预测上行链路和下行链路插槽之间的通道演化,但它也可以学会处理整个链中的效率低下和错误,包括实际的波束成形阶段。提供的数值实验证明了波束形成性能的提高。
Machine learning algorithms have recently been considered for many tasks in the field of wireless communications. Previously, we have proposed the use of a deep fully convolutional neural network (CNN) for receiver processing and shown it to provide considerable performance gains. In this study, we focus on machine learning algorithms for the transmitter. In particular, we consider beamforming and propose a CNN which, for a given uplink channel estimate as input, outputs downlink channel information to be used for beamforming. The CNN is trained in a supervised manner considering both uplink and downlink transmissions with a loss function that is based on UE receiver performance. The main task of the neural network is to predict the channel evolution between uplink and downlink slots, but it can also learn to handle inefficiencies and errors in the whole chain, including the actual beamforming phase. The provided numerical experiments demonstrate the improved beamforming performance.