In frequency-division duplexing (FDD) massive multiple-input multiple-output (MIMO) systems, downlink channel state information (CSI) needs to be sent from users back to the base station (BS), which causes prohibitive feedback overhead. In this paper, we propose a lightweight and adaptive deep learning-based CSI feedback scheme by capitalizing on deep equilibrium models. Different from existing deep learning-based approaches that stack multiple explicit layers, we propose an implicit equilibrium block to mimic the process of an infinite-depth neural network. In particular, the implicit equilibrium block is defined by a fixed-point iteration and the trainable parameters in each iteration are shared, which results in a lightweight model. Furthermore, the number of forward iterations can be adjusted according to the users' computational capability, achieving an online accuracy-efficiency trade-off. Simulation results will show that the proposed method obtains a comparable performance as the existing benchmarks but with much-reduced complexity and permits an accuracy-efficiency trade-off at runtime.
翻译:在重复频率(FDD)的多投入多重产出(MIMO)系统中,下链路状态信息(CSI)需要由用户发送回基站(BS),这会造成令人望而却步的反馈间接费用。在本文中,我们提议利用深层次平衡模式,采用基于学习的轻量级和适应性深层次CSI反馈计划。不同于现有的堆积多层的深层次基于学习的方法,我们提议一个隐含的平衡块,以模拟无限深度神经网络的进程。特别是,隐含的平衡块由固定点迭代确定,每个迭代的可训练参数共享,从而形成轻量模型。此外,远端迭代数可以根据用户的计算能力进行调整,实现在线精准效率交易。模拟结果将显示,拟议方法的效绩与现有基准相当,但复杂性大为降低,并允许在周期进行精准交易。