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首页> 外文期刊>IEEE Transactions on Vehicular Technology >Eigen-Inference Precoding for Coarsely Quantized Massive MU-MIMO System With Imperfect CSI
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Eigen-Inference Precoding for Coarsely Quantized Massive MU-MIMO System With Imperfect CSI

机译:具有不完善CSI的粗量化大规模MU-MIMO系统的本征推断预编码

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This paper considers the precoding problem in massive multiuser multiple-input multiple-output (MU-MIMO) systems equipped with low-resolution digital-to-analog converters. In previous literature on this topic, it is commonly assumed that the channel state information (CSI) is perfectly known. However, in practical applications the CSI is inevitably contaminated by noise. In this paper, we propose, for the first time, an eigen-inference (EI) precoding scheme to improve the error performance of the coarsely quantized massive MU-MIMO systems under imperfect CSI, which is mathematically modeled by a sum of two rectangular random matrices (RRMs): root 1 - eta H + root eta E. Instead of performing analysis based on the RRM, using Girkoars Hermitization trick, the proposed method leverages the block random matrix theory by augmenting the RRM into a block symmetric channel matrix (BSCA). Specially, we derive the empirical distribution of the eigenvalues of the BSCA and establish the limiting spectra distribution connection between the true BSCA and its noisy observation. Then, based on these theoretical results, we propose an EI-based moments matching method for CSI-related noise level (eta) estimation and a rotation invariant estimation method for CSI reconstruction. Based on the cleaned CSI, the quantized precoding problem is tackled via the Bussgang theorem and the Lagrangian multiplier method. The prosed methods are finally verified by numerical simulations and the results demonstrate the effectiveness of the proposed precoder.
机译:本文考虑了配备有低分辨率数模转换器的大规模多用户多输入多输出(MU-MIMO)系统中的预编码问题。在关于该主题的先前文献中,通常假定信道状态信息(CSI)是完全已知的。然而,在实际应用中,CSI不可避免地被噪声污染。在本文中,我们首次提出了一种本征推断(EI)预编码方案,以改善不完美CSI下的粗量化大规模MU-MIMO系统的误码性能,该算法是通过两个矩形随机数之和进行数学建模的矩阵(RRM):根1-eta H +根etaE。使用Girkoars Hermitization技巧,不是基于RRM进行分析,而是通过将RRM扩展为块对称信道矩阵(BSCA)来利用块随机矩阵理论。 )。特别地,我们得出BSCA特征值的经验分布,并建立真实BSCA及其噪声观测之间的极限光谱分布连接。然后,基于这些理论结果,我们提出了一种基于EI的矩匹配方法,用于CSI相关噪声水平(eta)估计,以及一种旋转不变估计方法,用于CSI重建。基于清理的CSI,通过Bussgang定理和Lagrangian乘数法解决了量化的预编码问题。最后通过数值仿真验证了所提出的方法,结果证明了所提出的预编码器的有效性。

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