Channel state information (CSI) plays a critical role in achieving the potential benefits of massive multiple input multiple output (MIMO) systems. In frequency division duplex (FDD) massive MIMO systems, the base station (BS) relies on sustained and accurate CSI feedback from the users. However, due to the large number of antennas and users being served in massive MIMO systems, feedback overhead can become a bottleneck. In this paper, we propose a model-driven deep learning method for CSI feedback, called learnable optimization and regularization algorithm (LORA). Instead of using l1-norm as the regularization term, a learnable regularization module is introduced in LORA to automatically adapt to the characteristics of CSI. We unfold the conventional iterative shrinkage-thresholding algorithm (ISTA) to a neural network and learn both the optimization process and regularization term by end-toend training. We show that LORA improves the CSI feedback accuracy and speed. Besides, a novel learnable quantization method and the corresponding training scheme are proposed, and it is shown that LORA can operate successfully at different bit rates, providing flexibility in terms of the CSI feedback overhead. Various realistic scenarios are considered to demonstrate the effectiveness and robustness of LORA through numerical simulations.
翻译:由于大量天天和用户在大型MIIM系统中服务,反馈管理可能成为瓶颈。在本文中,我们提出了一种模式驱动的深入学习CSI反馈、称为可学习优化和正规化算法(LORA)的反馈方法。我们提出了一种新颖的可学习性消化方法和相应的培训计划,此外,还提出了一种新颖的可学习性量化方法和相应的培训计划,并提出了一种新颖的可学习性量化方法和相应的培训计划。它表明,LORA可以成功地以不同比位率进行运作,在CSI的模型中,为CSI的模拟中提供灵活性。