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Low-Complexity Beam-Domain Channel Estimation with Long-Term Statistics for Large MIMO Detection

机译:具有大批量MIMO检测的具有长期统计信息的低复杂度波束域信道估计

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This paper proposes low-complexity beam-domain channel estimation using long-term channel statistics in belief propagation (BP) based large multi-input multi-output (MIMO) detection. When the channel correlation matrix between the base station (BS) and each user equipment (UE) is available and used as prior information, maximum a-posteriori probability (MAP) estimation provides the optimal estimation performance. However, it requires undesirably complex large-scale matrix operations at any time the channel statistics is changed. By appropriately selecting beam-domain angular bins for each UE, the proposed method allows us to significantly reduce the computational cost while maintaining the near-optimal performance in terms of the mean square error (MSE) of estimated channel. The selection threshold is adaptively determined based on the prior information such as the channel correlation matrix, statistical beam, and receive SNR. For the subsequent BP-based signal detection, an appropriate covariance matrix is designed while considering the detrimental impact of channel estimation errors. Numerical results show that the proposed method can reduce the computational cost to less than 4% as compared to the MAP estimation, while providing similar MSE performance.
机译:本文提出了在基于信念传播(BP)的大型多输入多输出(MIMO)检测中使用长期信道统计信息进行的低复杂度波束域信道估计。当基站(BS)和每个用户设备(UE)之间的信道相关矩阵可用并用作先验信息时,最大后验概率(MAP)估计可提供最佳估计性能。但是,在任何时候改变信道统计信息都需要不希望有的复杂的大规模矩阵运算。通过适当地选择波束域角仓的每个UE,所提出的方法允许我们显著降低计算成本,同时保持在估计的信道的均方误差(MSE)方面的接近最优的性能。基于诸如信道相关矩阵,统计波束和接收SNR之类的先验信息来自适应地确定选择阈值。对于随后的基于BP的信号检测,设计适当的协方差矩阵,同时考虑信道估计误差的不利影响。数值结果表明,与MAP估计相比,该方法可以将计算成本降低到不到4%,同时提供类似的MSE性能。

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