Massive multiple-input multiple-output (MIMO) communications using low-resolution analog-to-digital converters (ADCs) is a promising technology for providing high spectral and energy efficiency with affordable hardware cost and power consumption. However, the use of low-resolution ADCs requires special signal processing methods for channel estimation and data detection since the resulting system is severely non-linear. This paper proposes joint channel estimation and data detection methods for massive MIMO systems with low-resolution ADCs based on the variational Bayes (VB) inference framework. We first derive matched-filter quantized VB (MF-QVB) and linear minimum mean-squared error quantized VB (LMMSE-QVB) detection methods assuming the channel state information (CSI) is available. Then we extend these methods to the joint channel estimation and data detection (JED) problem and propose two methods we refer to as MF-QVB-JED and LMMSE-QVB-JED. Unlike conventional VB-based detection methods that assume knowledge of the second-order statistics of the additive noise, we propose to float the noise variance/covariance matrix as an unknown random variable that is used to account for both the noise and the residual inter-user interference. We also present practical aspects of the QVB framework to improve its implementation stability. Finally, we show via numerical results that the proposed VB-based methods provide robust performance and also significantly outperform existing methods.
翻译:使用低分辨率模拟数字转换器(ADCs)的大规模多输出多输出通信(MIMO)使用低分辨率模拟数字转换器(ADCs)是一种很有希望的技术,可以提供高光谱和高能效、负担得起的硬件成本和电耗;然而,使用低分辨率ADCs需要采用特殊的信号处理方法来进行频道估计和数据探测,因为由此形成的系统严重非线性。本文建议采用基于变异贝贝斯(VB)推断框架的低分辨率亚化体(MF-QVB)大规模MIMO系统采用联合频道估计和数据探测方法。我们首先获得匹配的过滤式VB(MF-QVB)和线性平均定量错误(LMMSE-QVB)的线性最小度偏差分辨方法,假设现有频道状态信息(CSI)可用特殊信号处理方法来进行频道估计和数据检测。然后,我们将这些方法扩大到以MF-Q-QVB-JED(VED)和LMMS-Q-QSE-QB-QB-JEDEDD。与基于常规的过滤检测方法不同常规VB检测方法不同,该方法假定对二级的二阶值测试方法也假定对二阶值的测试数据测试数据测试,我们目前使用了当前变压的当前变压压压结果的随机性数据列表,我们提议了目前使用的随机性数据,我们使用的随机性数据,我们建议了用于用于的随机级标准。