Large deviation delay analysis of queue-aware multi-user MIMO systems with two timescale mobile-driven feedback

Junting Chen, V. Lau
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引用次数: 3

Abstract

Multi-user multi-input-multi-output (MU-MIMO) systems usually require users to feedback the channel state information (CSI) for scheduling. Most of the existing literature on the reduced feedback user scheduling focused on the throughput performance and the queueing delay was usually ignored. As the delay is important for real-time applications, it is desirable to have a low feedback queue-aware user scheduling algorithm for MU-MIMO systems. This paper proposes a two timescale queue-aware user scheduling algorithm, which consists of a queue-aware mobile-driven feedback filtering stage and a SINR-based user scheduling stage. The feedback policy is obtained by solving a queue-weighted optimization problem. In addition, we evaluate the associated queueing delay performance by using the large deviation analysis. The large deviation decay rate for the proposed algorithm is shown to be much larger than the CSI-only scheduling algorithm. Numerical results demonstrate the large performance gain of the proposed algorithm over the CSI-only algorithm, while the proposed one requires only a small amount of feedback.
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具有双时间尺度移动驱动反馈的队列感知多用户MIMO系统的大偏差延迟分析
多用户多输入多输出(MU-MIMO)系统通常需要用户反馈信道状态信息(CSI)来进行调度。现有的关于减反馈用户调度的文献大多关注吞吐量性能,而忽略了排队延迟。由于延迟对实时应用非常重要,因此需要一种低反馈队列感知的MU-MIMO系统用户调度算法。本文提出了一种双时间尺度的队列感知用户调度算法,该算法由队列感知移动驱动的反馈过滤阶段和基于sinr的用户调度阶段组成。通过求解一个队列加权优化问题得到反馈策略。此外,我们还利用大偏差分析来评估相关的排队延迟性能。该算法的大偏差衰减率比仅使用csi的调度算法大得多。数值结果表明,该算法比仅使用csi的算法有较大的性能增益,且只需要少量的反馈。
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