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首页> 外文期刊>IEEE Transactions on Vehicular Technology >Learning the Time-Varying Massive MIMO Channels: Robust Estimation and Data-Aided Prediction
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Learning the Time-Varying Massive MIMO Channels: Robust Estimation and Data-Aided Prediction

机译:学习时变的大规模MIMO通道:鲁棒估计和数据辅助预测

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摘要

The quasi-static assumption of channels becomes invalid in a number of emerging applications of massive multiple-input multiple-output (MIMO) systems with high base station (BS)/user mobility, such as high speed train and unmanned aerial vehicle communications. In these situations, the time variation of channels shortens the channel coherence time and decreases the efficiency of traditional channel estimation schemes significantly. This paper focuses on the time-varying channel estimation problem in massive MIMO systems, where the mobility of BS/user is assumed to be high. The sparse property of the time-varying massive MIMO channels is analyzed, which reveals that the angular domain channels exhibit two kinds of spatial-temporal sparse (STS) structures, namely the temporal-common sparse structure and spatial-clustered sparse structure. By exploiting the STS structures, a novel structured variational Bayesian inference (VBI) framework is formulated to make a robust channel estimation during the training phase. A data-aided channel predication scheme is further proposed to combat the time variation of the channels during the data transmission phase without increasing the pilot consumption. The simulation results demonstrate the superiority of the proposed scheme in the time-varying scenarios with different BS/user mobilities.
机译:信道的准静态假设在具有高基站(BS)/用户移动性的大型多输入多输出(MIMO)系统的许多新出现的应用中无效,例如高速列车和无人驾驶飞行器通信。在这些情况下,通道的时间变化缩短了信道相干时间,并显着降低了传统信道估计方案的效率。本文侧重于大规模MIMO系统中的时变信道估计问题,其中BS /用户的移动性高。分析了时变的大规模MIMO通道的稀疏性质,其揭示了角域通道呈现两种空间稀疏(STS)结构,即时间常见的稀疏结构和空间聚类稀疏结构。通过利用STS结构,制定了一种新颖的结构化变分贝叶斯推理(VBI)框架以在训练阶段进行稳健的信道估计。进一步提出数据辅助信道预测方案以在数据传输阶段期间对信道的时间变化进行打击,而不增加导频消耗。仿真结果展示了具有不同BS /用户移动性的时变方案中所提出的方案的优越性。

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