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Impact of Channel State Misreporting on Multi-user Massive MIMO Scheduling Performance

机译:信道状态错误报告对多用户大规模MIMO调度性能的影响

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The robustness of system throughput with scheduling is a critical issue. In this paper, we analyze the sensitivity of multi-user scheduling performance to channel misreporting in systems with massive antennas. The main result is that for the round-robin scheduler combined with max-min power control, the channel magnitude misreporting is harmful to the scheduling performance and has a different impact from the purely physical layer analysis. Specifically, for the homogeneous users that have equal average signal-to-noise ratios (SNRs), underreporting is harmful, while overreporting is beneficial to others. In under-reporting, the asymptotic rate loss on others is derived, which is tight when the number of antennas is huge. One interesting observation in our research is that the rate loss “periodically” increases and decreases as the number of misreporters grows. For the heterogeneous users that have various SNRs, both underreporting and overreporting can degrade the scheduler performance. We observe that strong misreporting changes the user grouping decision and hence greatly decreases some users' rates regardless of others gaining rate improvements, while with carefully designed weak misreporting, the scheduling decision keeps fixed and the rate loss on others is shown to grow nearly linearly with the number of misreporters.
机译:计划调度的系统吞吐量的鲁棒性是一个关键问题。在本文中,我们分析了具有大型天线的系统中多用户调度性能对信道误报的敏感性。主要结果是,对于循环调度程序与最大-最小功率控制相结合,信道幅度误报对调度性能有害,并且与纯物理层分析有不同的影响。具体来说,对于具有相同平均信噪比(SNR)的同类用户,漏报是有害的,而漏报对其他用户是有益的。在报告不足的情况下,得出了其他天线的渐近速率损失,当天线数量巨大时,该损失很小。我们的研究中有一个有趣的发现,即速率损失随着错误报告者数量的增加而“周期性地”增加和减少。对于具有各种SNR的异构用户,报告不足和报告过多都会降低调度程序的性能。我们观察到,严重的误报会更改用户分组决策,从而极大地降低了某些用户的费率,而与其他用户的费率提升无关,而经过精心设计的弱误报,调度决策保持固定,并且对其他用户的费率损失几乎呈线性增长错误报告的数量。

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