Channel estimation and beamforming play critical roles in frequency-division duplexing (FDD) massive multiple-input multiple-output (MIMO) systems. However, these two modules have been treated as two stand-alone components, which makes it difficult to achieve a global system optimality. In this paper, we propose a deep learning-based approach that directly optimizes the beamformers at the base station according to the received uplink pilots, thereby, bypassing the explicit channel estimation. Different from the existing fully data-driven approach where all the modules are replaced by deep neural networks (DNNs), a neural calibration method is proposed to improve the scalability of the end-to-end design. In particular, the backbone of conventional time-efficient algorithms, i.e., the least-squares (LS) channel estimator and the zero-forcing (ZF) beamformer, is preserved and DNNs are leveraged to calibrate their inputs for better performance. The permutation equivariance property of the formulated resource allocation problem is then identified to design a low-complexity neural network architecture. Simulation results will show the superiority of the proposed neural calibration method over benchmark schemes in terms of both the spectral efficiency and scalability in large-scale wireless networks.
翻译:然而,这两个模块被作为两个独立的组件处理,因此难以实现全球系统的最佳性。在本文件中,我们提议了一种深层次的基于学习的方法,根据接收的上行链路试点项目,直接优化基地站的信号信号,从而绕过明确的频道估计。不同于现有的完全数据驱动的方法,即所有模块都由深神经网络(DNNS)取代,提出了一种神经校准方法,以提高端到端设计的规模。特别是,传统时间效率算法的骨干,即最小方(LS)频道测深器和零推进(ZF)灯光标)得到保存,并且利用DNNN来调整其投入,以提高性能。随后确定了已拟订的资源分配问题的变异性性性性,以设计一个低度校准标准网络的弹性模型,以显示高校准率网络的大规模结构。