High mobility channel estimation is crucial for beyond 5G (B5G) or 6G wireless communication networks. This paper is concerned with channel estimation of high mobility OFDM communication systems. First, a two-dimensional compressed sensing problem is formulated by approximately linearizing the channel as a product of an overcomplete dictionary with a sparse vector, in which the Doppler effect caused by the high mobility channel is considered. To solve the problem that the traditional compressed sensing algorithms have too many iterations and are time consuming, we propose an unfolded deep neural network (UDNN) as the fast solver, which is inspired by the structure of iterative shrinkage-thresholding algorithm (ISTA). All the parameters in UDNN (e.g. nonlinear transforms, shrinkage thresholds, measurement matrices, etc.) are learned end-to-end, rather than being hand-crafted. Experiments demonstrate that the proposed UDNN performs better than ISTA for OFDM high mobility channel estimation, while maintaining extremely fast computational speed.
翻译:高流动性信道估计对于5G(B5G)或6G无线通信网络而言至关重要。本文件涉及对高流动性OFDM通信系统的频道估计。 首先,二维压缩遥感问题是通过将频道大致线性化而形成的,该频道是使用稀薄矢量的超完整字典的产物,其中考虑到高流动性通道造成的多普勒效应。为了解决传统压缩感测算法的迭代率过多且耗时的问题,我们提议开发一个深神经网络(UDNN)作为快速求解器,它受迭代缩微分控算法(ISTA)结构的启发。UDNNN的所有参数(如非线性变换、缩阈值、测量矩阵等)都是从端到端学的,而不是手工制作的。实验表明,拟议的UDNN在ODM高流动性通道估算方面比ISTA表现得更好,同时保持极快的计算速度。