Terahertz ultra-massive multiple-input multiple-output (THz UM-MIMO) is envisioned as one of the key enablers of 6G wireless systems. Due to the joint effect of its large array aperture and small wavelength, the near-field region of THz UM-MIMO systems is greatly enlarged. The high-dimensional channel of such systems thus consists of a stochastic mixture of far and near fields, which renders channel estimation extremely challenging. Previous works based on uni-field assumptions cannot capture the hybrid far- and near-field features, and will suffer significant performance loss. This motivates us to consider hybrid-field channel estimation. We draw inspirations from fixed point theory to develop an efficient deep learning based channel estimator with adaptive complexity and linear convergence guarantee. Built upon classic orthogonal approximate message passing, we transform each iteration into a contractive mapping, comprising a closed-form linear estimator and a neural network based non-linear estimator. A major algorithmic innovation involves applying fixed point iteration to compute the channel estimate while modeling neural networks with arbitrary depth and adapting to the hybrid-field channel conditions. Simulation results will verify our theoretical analysis and show significant performance gains over state-of-the-art approaches in the estimation accuracy and convergence rate.
翻译:Terahertz UMIMO 超大成模多输出(THz UM-MIMO) 被设想为6G无线系统的关键推进器之一。由于其大型阵列孔径和小波长的共同效应,THz UM-MIMO 系统近场区域大大扩大。因此,这些系统的高维通道由远地和近地的随机混合组成,使得频道估计极具挑战性。以前基于单地假设的工程无法捕捉远地和近地混合特征,并将遭受重大性能损失。这促使我们考虑混合场频道估计。我们从固定点理论中汲取灵感,以开发一个具有适应性复杂性和线性趋同保证的高效深学习的频道估计仪。在传统或直线性信息传递后,我们将每次循环转换为合同式绘图,包括一个封闭式线性线性估计仪和以非线性估算仪为基础的神经网络。一项主要算创新是应用固定点对频道的精确度估计进行配置,以模型化频道精确度估算,同时将模拟和模拟光学深层结果分析。