In this work, we develop a joint denoising and feedback strategy for channel state information in frequency division duplex systems. In such systems, the biggest challenge is the overhead incurred when the mobile terminal has to send the downlink channel state information or corresponding partial information to the base station, where the complete estimates can subsequently be restored. To this end, we propose a novel learning-based framework for denoising and compression of channel estimates. Unlike existing studies, we extend a recently proposed approach and show that based solely on noisy uplink data available at the base station, it is possible to learn an autoencoder neural network that generalizes to downlink data. Subsequently, half of the autoencoder can be offloaded to the mobile terminal to generate channel feedback there as efficiently as possible, without any training effort at the mobile terminal or corresponding transfer of training data to the base station. Numerical simulations demonstrate the near optimal performance of the proposed method.
翻译:在这项工作中,我们为频率分区双面系统中的频道状态信息制定了联合分解和反馈战略。在这种系统中,最大的挑战是当移动终端必须将下链接频道状态信息或相应的部分信息发送到基地站时产生的间接费用,随后可以恢复完整的估计数。为此,我们提议了一个基于学习的新框架,用于频道估计值的分解和压缩。与现有的研究不同,我们推广了最近提出的方法,并表明仅仅基于在基地站可得到的噪音上行链接数据,就有可能学习一个综合到下链接数据的自动编码神经网络。随后,半个自动编码器可以卸载到移动终端,以便尽可能高效地生成频道反馈,而无需在移动终端进行任何培训或相应将培训数据转移到基地站。数字模拟显示了拟议方法的近最佳性表现。