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On reduced-rank approaches to matrix Wiener filters in MIMO systems

机译:MIMO系统中矩阵维纳滤波器的降秩方法

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Reduced-rank processing is a well-known strategy in the reduction of computational complexity and performance enhancement in the case of low sample support. In this paper, we use the eigenspace based principal component (PC) and cross-spectral (CS) method for rank-reduction of a matrix Wiener filter (WF) which estimates a signal vector instead of a scalar by minimizing the mean square error. Finally, we apply the resulting filters to a frequency-flat multi-input multi-output (MIMO) transmission channel. Although the matrix PC algorithm is computationally cheaper than the matrix CS algorithm, we have shown through analysis that the two methods are equal if we assume i.i.d. transmit symbols and uncorrelated white Gaussian noise. Simulation results have shown that the matrix multi-stage WF (MSWF), which approximates the WF in a Krylov subspace, is partially outperformed in the considered MIMO case.
机译:在样本支持率较低的情况下,降级处理是一种众所周知的策略,可以降低计算复杂性并提高性能。在本文中,我们使用基于特征空间的主成分(PC)和互谱(CS)方法来降低矩阵维纳滤波器(WF)的秩,该维纳滤波器通过最小化均方误差来估计信号矢量而不是标量。最后,我们将得到的滤波器应用于平坦的多输入多输出(MIMO)传输信道。尽管矩阵PC算法在计算上比矩阵CS算法便宜,但我们通过分析表明如果假设i.i.d,这两种方法是相等的。传输符号和不相关的高斯白噪声。仿真结果表明,在考虑的MIMO情况下,在Krylov子空间中逼近WF的矩阵多级WF(MSWF)的性能要好一些。

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