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One GAMP-Based Learning Scheme for the Time-Varying Massive MIMO Channels

机译:一种基于GAMP的时变海量MIMO信道学习方案

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This paper proposes a novel scheme for learning the channel statistics of the time- varying massive MIMO network. In particular, the effects of the quantization at the receiver are considered. Firstly, we formulate the massive MIMO channel as a simultaneously time-varying sparse signal model through virtual channel representation (VCR) and first order auto regressive (AR) model. Then, we propose a sparse Bayesian learning (SBL) framework to learn the model parameters of the sparse virtual channel. To avoid the unacceptable complexity, we apply the expectation maximization (EM) algorithm to achieve the approximate solution. Specifically, the factor graph and the general approximate message propagation (GAMP)-based message passing algorithms are used to compute our wanted posterior statistics in the expectation step. After that, the non-zero supporting vector of virtual channel is obtained from channel statistics by a k-means clustering algorithm. Finally, we demonstrate the efficacy of the proposed schemes through simulations.
机译:本文提出了一种新颖的方案,用于学习时变大规模MIMO网络的信道统计信息。特别地,考虑了在接收机处的量化的影响。首先,我们通过虚拟通道表示(VCR)和一阶自回归(AR)模型将大规模MIMO通道公式化为同时时变稀疏信号模型。然后,我们提出了一种稀疏贝叶斯学习(SBL)框架来学习稀疏虚拟通道的模型参数。为了避免不可接受的复杂性,我们应用期望最大化(EM)算法来获得近似解。具体来说,因素图和基于一般近似消息传播(GAMP)的消息传递算法用于在期望步骤中计算所需的后验统计量。然后,通过k均值聚类算法从信道统计中获得虚拟信道的非零支持向量。最后,我们通过仿真证明了所提方案的有效性。

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