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Downlink channel estimation of FDD based massive MIMO using spatial partial-common sparsity modeling

机译:基于FDD基于FDD的大规模MIMO的下行链路通道估计使用空间偏常见的稀疏模型

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摘要

Downlink channel estimation in FDD massive MIMO systems is a challenge in 5G wireless communication systems. Using orthogonal pilots for downlink channel estimation leads to the pilot overhead problem. To cope with this problem, spatio-temporal common sparsity feature of delay domain beside the compressive sensing algorithm has used for channel estimation. In a practical affair, the spatial common sparsity of the adjacent antennas groups is not entirely separate. In this paper, we model the FDD massive MIMO downlink frequency selective channel estimation problem by a spatial partial-common sparsity, in which it is assumed that the spatial sparsity pattern of antennas in each group has a common part and an uncommon part. For the proposed model, we design a proper pilot sequence, and finally, we propose an estimation method associated with this model to solve the problem. Our proposed method has better NMSE and BER performance than reference methods in the same pilot overhead ratio, which is shown in the simulation results. (C) 2020 Elsevier B.V. All rights reserved.
机译:FDD大规模MIMO系统中的下行链路信道估计是5G无线通信系统中的挑战。使用正交导频对于下行链路信道估计导致导频开销问题。为了应对这个问题,压缩感测算法旁边的延迟域的时空常见稀疏特征用于信道估计。在实际情况下,相邻天线组的空间常见稀疏性并不完全分开。在本文中,我们通过空间偏常见的稀疏性模拟FDD大规模MIMO下行链路频率选择信道估计问题,其中假设每个组中的天线的空间稀疏模式具有共同部分和罕见部分。对于所提出的模型,我们设计了一个正确的试点序列,最后,我们提出了一种与该模型相关的估计方法来解决问题。我们所提出的方法具有比同一导频架空比的参考方法更好的NMSE和BER性能,这在仿真结果中显示。 (c)2020 Elsevier B.v.保留所有权利。

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