大规模MIMO系统中信道状态信息的二维压缩感知

Wang Kai, L. Jingzhi, Xiao Lin, Hu Le
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引用次数: 1

摘要

在现有的基于压缩感知的海量MIMO信道状态信息获取方案中,由于信道的重构和测量带来的巨大开销是电力有限的用户无法承受的。将信道估计与反馈相结合,提出了一种用于海量MIMO信道状态信息的二维压缩感知方案。海量MIMO用户不再重构信道矢量,而是从时域压缩空间域测量值,并将测量值反馈给基站重建信道。由于重构从用户端转移到后台,减轻了用户端对计算量和内存的需求。数值结果表明,该算法能在可接受的精度下显著降低信道状态信息采集开销。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Two-dimensional compressed sensing of channel state information in massive MIMO system
In most of the existing compressed sensing based Massive MIMO channel state information acquisition schemes, the huge overhead introduced by reconstruction and measurement of channel cannot afford by power-limited users. Combining channel estimation and feedback together, a Two-dimensional compressed sensing schemes is proposed for Massive MIMO channel state information. Instead of reconstruct the channel vector, Massive MIMO users compressed the spatial domain measurements from time domain and feed the measurement back to the BS and reconstruct the channel. Since the reconstruction is transferred from user side to BS, the new method alleviates the requirement of computation and memory of user side. Numerical results show that the proposed algorithm can significantly reduce the channel state information acquisition overhead with acceptable accuracy.
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