Communication and Network Laboratory, Dalian University, Dalian 116622, China.
Sensors (Basel). 2023 Feb 27;23(5):2638. doi: 10.3390/s23052638.
Aiming at the problem of low estimation accuracy under a low signal-to-noise ratio due to the failure to consider the "beam squint" effect in millimeter-wave broadband systems, this paper proposes a model-driven channel estimation method for millimeter-wave massive MIMO broadband systems. This method considers the "beam squint" effect and applies the iterative shrinkage threshold algorithm to the deep iterative network. First, the millimeter-wave channel matrix is transformed into a transform domain with sparse features through training data learning to obtain a sparse matrix. Secondly, a contraction threshold network based on an attention mechanism is proposed in the phase of beam domain denoising. The network selects a set of optimal thresholds according to feature adaptation, which can be applied to different signal-to-noise ratios to achieve a better denoising effect. Finally, the residual network and the shrinkage threshold network are jointly optimized to accelerate the convergence speed of the network. The simulation results show that the convergence speed is increased by 10% and the channel estimation accuracy is increased by 17.28% on average under different signal-to-noise ratios.
针对毫米波宽带系统中由于未考虑“波束斜视”效应而导致在低信噪比下估计精度低的问题,本文提出了一种适用于毫米波大规模 MIMO 宽带系统的基于模型驱动的信道估计方法。该方法考虑了“波束斜视”效应,并将迭代收缩阈值算法应用于深度迭代网络。首先,通过训练数据学习将毫米波信道矩阵转换为具有稀疏特征的变换域,以获得稀疏矩阵。其次,在波束域去噪阶段提出了一种基于注意力机制的收缩阈值网络。该网络根据特征自适应选择一组最优阈值,可应用于不同的信噪比,以达到更好的去噪效果。最后,联合优化残差网络和收缩阈值网络,以加快网络的收敛速度。仿真结果表明,在不同信噪比下,网络的收敛速度提高了 10%,平均信道估计精度提高了 17.28%。