论文标题
基于深度学习的FDD非平稳大规模MIMO下行链路通道重建
Deep Learning Based FDD Non-Stationary Massive MIMO Downlink Channel Reconstruction
论文作者
论文摘要
本文提出了一个基于模型驱动的深度学习的下行链路通道重建方案,用于频划分双工(FDD)大量多输入多输出(MIMO)系统。考虑到空间非平稳性,这是未来极大的孔径大量MIMO系统的关键特征。通过神经网络学习了通道模型参数,而不是通道矩阵,以节省开销并提高通道重建的准确性。通过将通道视为图像,我们介绍您仅查看一次(Yolo)(Yolo),一个强大的对象检测神经网络,以实现模型参数的快速估算过程,包括对路径的角度和延迟的检测以及散射器可见性区域的识别。基于深度学习的方案避免了基于算法的参数提取方法引入的复杂迭代过程。低复杂性基于算法的炼油厂进一步完善了Yolo估计值的高精度。鉴于模型驱动的深度学习效率以及神经网络和算法的组合,提出的方案可以快速,准确地重建非平稳的下行链路通道。此外,提出的方案还适用于广泛相关的固定系统,并将可比的重建精度作为一种基于算法的方法,并大大降低了时间消耗。
This paper proposes a model-driven deep learning-based downlink channel reconstruction scheme for frequency division duplexing (FDD) massive multi-input multi-output (MIMO) systems. The spatial non-stationarity, which is the key feature of the future extremely large aperture massive MIMO system, is considered. Instead of the channel matrix, the channel model parameters are learned by neural networks to save the overhead and improve the accuracy of channel reconstruction. By viewing the channel as an image, we introduce You Only Look Once (YOLO), a powerful neural network for object detection, to enable a rapid estimation process of the model parameters, including the detection of angles and delays of the paths and the identification of visibility regions of the scatterers. The deep learning-based scheme avoids the complicated iterative process introduced by the algorithm-based parameter extraction methods. A low-complexity algorithm-based refiner further refines the YOLO estimates toward high accuracy. Given the efficiency of model-driven deep learning and the combination of neural network and algorithm, the proposed scheme can rapidly and accurately reconstruct the non-stationary downlink channel. Moreover, the proposed scheme is also applicable to widely concerned stationary systems and achieves comparable reconstruction accuracy as an algorithm-based method with greatly reduced time consumption.