大规模MIMO中的自适应最小二乘滤波分析

Zeeshan Azmat Shaikh, S. Hanly, I. Collings
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引用次数: 1

摘要

研究了一种适用于多小区大规模MIMO系统的自适应波束形成算法。导频污染问题在多小区系统中由于不同小区的用户(或移动台)传输相同的导频而产生。本文重点研究了大规模多输入多输出系统中不同训练序列对导频污染的影响。具体来说,我们考虑了一种自适应波束形成算法,这种算法已经在MIMO干扰网络中得到了应用。该算法采用双向训练,从当前波束形成器发送训练序列以适应移动台接收滤波器,然后反向发送以移动台滤波器为波束形成器的训练序列以适应基站侧波束形成器。利用最小二乘目标函数对发射滤波器和接收滤波器进行自适应。自适应波束形成算法表明,如果随机训练序列来自不同小区的用户,则在平均和速率方面性能有所提高。数值结果证实了数学分析的正确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of adaptive least squares filtering in massive MIMO
This paper considers an adaptive beamforming algorithm for a massive MIMO system with multiple cells. The pilot contamination problem arises in multi-cell systems owing to transmission of the same pilots from users (or mobile stations) in different cells. The focus of this paper is to study the impact of different training sequences on pilot contamination in Massive MIMO systems. Specifically, we consider an adaptive beam-forming salgorithm which has been previously applied in MIMO interference networks. This algorithm uses bidirectional training in which training sequences are sent from current beamformers to adapt the mobile station receive filters and then the training sequences using mobile station filters as beamformers, are sent in reverse direction to adapt the beamformers at base station side. The adaptation of both transmit and receive filters is done using the least squares objective function. The adaptive beamforming algorithm shows improvement in performance in terms of average sum rate if the random training sequences are transmitted from users in different cells. Numerical results are presented to corroborate the mathematical analysis.
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