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Robust Superimposed Training Designs for MIMO AF Relaying Channels under Total Power Constraint

机译:在总功率约束下的MIMO AF中继频道的强大叠加训练设计

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We investigate how to design the robust training matrix for spatially correlated multiple-input multiple-output (MIMO) amplify-and-forward (AF) relaying channels with imperfect channel covariance matrices, where the unitary-invariant channel covariance error matrices and the colored noise are assumed. Moreover, the superimposed training technology and the total power constraint are both taken into account. In our work, the robust training design for linear minimum mean-squared-error (LMMSE) channel estimation is formulated as a nonconvex problem. In order to effectively solve the considered nonconvex optimization problem, we resort to an upper bound of the performance of the training optimization and then an iterative SDP algorithm is proposed for the training optimization. Finally, numerical simulations demonstrate the excellent advantages of the proposed robust training design for the LMMSE based channel estimation.
机译:我们研究了如何使用不完美信道协方差矩阵设计用于空间相关的多输入多输出(MIMO)放大和前进(AF)中继通道的强大训练矩阵,其中单一不变通道协方差误差矩阵和彩色噪声假设。此外,叠加的训练技术和总功率约束都被考虑在内。在我们的工作中,为线性最小平均平均误差(LMMSE)信道估计的强大训练设计被制定为非耦合问题。为了有效解决所考虑的非渗透优化问题,我们采取了训练优化性能的上限,然后提出了迭代SDP算法进行训练优化。最后,数值模拟展示了基于LMMSE的信道估计所提出的鲁棒训练设计的优异优势。

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