Accurate and efficient estimation of the high dimensional channels is one of the critical challenges for practical applications of massive multiple-input multiple-output (MIMO). In the context of hybrid analog-digital (HAD) transceivers, channel estimation becomes even more complicated due to information loss caused by limited radio-frequency chains. The conventional compressive sensing (CS) algorithms usually suffer from unsatisfactory performance and high computational complexity. In this paper, we propose a novel deep learning (DL) based framework for uplink channel estimation in HAD massive MIMO systems. To better exploit the sparsity structure of channels in the angular domain, a novel angular space segmentation method is proposed, where the entire angular space is segmented into many small regions and a dedicated neural network is trained offline for each region. During online testing, the most suitable network is selected based on the information from the global positioning system. Inside each neural network, the region-specific measurement matrix and channel estimator are jointly optimized, which not only improves the signal measurement efficiency, but also enhances the channel estimation capability. Simulation results show that the proposed approach significantly outperforms the state-of-the-art CS algorithms in terms of estimation performance and computational complexity.
翻译:精确和高效地估计高维信道是大规模多投入多输出量(MIMO)实际应用大规模多投入多输出量(MIMO)的关键挑战之一。在混合模拟数字(HAD)收发器的背景下,由于无线电频率链有限造成信息丢失,频道估计变得更加复杂。常规压缩传感器算法通常因性能不令人满意和计算复杂程度高而受到影响。在本文中,我们提议一个基于深层次学习(DL)的新框架,用于在大型MIMO系统中进行上行频道估计。为了更好地利用角域各频道的广度结构,提出了一种新的角空间分割法,将整个角空间分割成许多小区域,对每个区域专用的神经网络进行离线培训。在网上测试期间,最合适的网络是根据全球定位系统的信息选择的。在每个神经网络中,区域特定的测量矩阵和频道估计仪都是联合优化的,这不仅改进信号测量效率,而且还增强频道估计能力。Simulation-S-S-imlac-assimational-assimational-assisal 方法显示,拟议的业绩评估方法大大超越了C-assimlaction-S-S-Lisal-Lisal-Lisal-Lisal-S-S-S-S-S-S-Lismal-S-Lismal-Lismal-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-slvical-slect)。