论文标题

基于统计学习的单细胞大型MIMO系统的基于统计学习的联合天线选择和用户计划

Statistical Learning Based Joint Antenna Selection and User Scheduling for Single-Cell Massive MIMO Systems

论文作者

Guo, Mangqing, Gursoy, M. Cenk

论文摘要

基站(BSS)的大量天线和射频(RF)链导致大型MIMO系统的高能消耗。因此,如何通过计算高效的方法提高能源效率(EE)是大规模MIMO系统设计的重大挑战。通过这种动机,在本文中提出了一种基于学习的随机梯度下降算法,以获得最佳的关节上行链路和下行链路EE,并在单细胞大规模的MIMO系统中使用关节天线选择和用户调度。使用Jensen的不等式和无线通道的特征,可以获得系统吞吐量上的下限。随后,确定了系统的EE上的相应下限。最后,基于学习的随机梯度下降方法用于解决关节天线选择和用户调度问题,这是一个组合优化问题。罕见的事件模拟嵌入基于学习的随机梯度下降方法中,以生成概率很小的样品。在分析中,考虑了BS处的完美和不完美的通道侧信息(CSI)。在不完善的CSI病例的研究中,采用了最小均方误差(MMSE)通道估计。此外,考虑到BS的完美和不完美的CSI,研究了限制对大型MIMO系统中可用RF链数的影响。

Large number of antennas and radio frequency (RF) chains at the base stations (BSs) lead to high energy consumption in massive MIMO systems. Thus, how to improve the energy efficiency (EE) with a computationally efficient approach is a significant challenge in the design of massive MIMO systems. With this motivation, a learning-based stochastic gradient descent algorithm is proposed in this paper to obtain the optimal joint uplink and downlink EE with joint antenna selection and user scheduling in single-cell massive MIMO systems. Using Jensen's inequality and the characteristics of wireless channels, a lower bound on the system throughput is obtained. Subsequently, incorporating the power consumption model, the corresponding lower bound on the EE of the system is identified. Finally, learning-based stochastic gradient descent method is used to solve the joint antenna selection and user scheduling problem, which is a combinatorial optimization problem. Rare event simulation is embedded in the learning-based stochastic gradient descent method to generate samples with very small probabilities. In the analysis, both perfect and imperfect channel side information (CSI) at the BS are considered. Minimum mean-square error (MMSE) channel estimation is employed in the study of the imperfect CSI case. In addition, the effect of a constraint on the number of available RF chains in massive MIMO system is investigated considering both perfect and imperfect CSI at the BS.

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