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Generalized Bussgang LMMSE Channel Estimation for One-Bit Massive MIMO Systems

机译:一位大规模MIMO系统的广义BUSSGANG LMMSE信道估计

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摘要

In this paper, we consider the problem of channel estimation for uplink multiuser massive MIMO systems, where, in order to significantly reduce the hardware cost and power consumption, one-bit analog-to-digital converters (ADCs) are used at the base station (BS) to quantize the received signal. We first extend the conventional Bussgang linear minimum mean square error (BLMMSE) estimator to the general nonzero threshold case. We then study the problem of one-bit quantization design, aiming at minimizing the mean squared error of the generalized BLMMSE estimator. A set partition scheme is proposed to devise the quantization thresholds. The rationale behind the proposed scheme is to divide each antenna's received samples into a number of disjoint subsets according to their pairwise correlation and assign diverse thresholds to those highly correlated data samples. In addition to the set partition scheme, a gradient descent scheme is developed to search for optimal quantization thresholds. The proposed schemes only require the statistical information of the received signals to devise the quantization thresholds, which can be calculated in advance before the training process begins. Simulation results show that the generalized BLMMSE estimator can achieve a significant performance improvement over the conventional Bussgang LMMSE estimator.
机译:在本文中,我们考虑了上行链路多用户大规模MIMO系统的信道估计问题,其中,为了显着降低硬件成本和功耗,在基站上使用一位模数转换器(ADC) (BS)量化接收信号。我们首先将传统的Bussgang线性最小均方误差(BLMMSE)估算器扩展到一般非零阈值案例。然后,我们研究了单位量化设计的问题,旨在最小化广义BLMMSE估计器的平均平方误差。建议设置分区方案来设计量化阈值。所提出的方案背后的基本原理是根据它们的成对相关性将每个天线接收的样本分成多个不相交的子集,并将各种阈值分配给那些高度相关的数据样本。除了设置分区方案之外,开发了梯度下降方案以搜索最佳量化阈值。所提出的方案仅需要接收信号的统计信息来设计量化阈值,这可以在训练过程开始之前预先计算。仿真结果表明,广义的BLMMSE估计器可以通过传统的Bussgang Lmmse估算来实现显着的性能改进。

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