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首页> 外文期刊>IEEE transactions on wireless communications >FDD Massive MIMO via UL/DL Channel Covariance Extrapolation and Active Channel Sparsification
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FDD Massive MIMO via UL/DL Channel Covariance Extrapolation and Active Channel Sparsification

机译:通过UL / DL信道协方差外推和有源信道稀疏化的FDD大规模MIMO

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摘要

We propose a novel method for massive multipleinput multiple-output (massive MIMO) in frequency division duplexing (FDD) systems. Due to the large frequency separation between uplink (UL) and downlink (DL) in FDD systems, channel reciprocity does not hold. Hence, in order to provide DL channel state information to the base station (BS), closed-loop DL channel probing, and channel state information (CSI) feedback is needed. In massive MIMO, this typically incurs a large training overhead. For example, in a typical configuration with M similar or equal to 200 BS antennas and fading coherence block of T similar or equal to 200 symbols, the resulting rate penalty factor due to the DL training overhead, given by max{0, 1 - M/T}, is close to 0. To reduce this overhead, we build upon the well-known fact that the angular scattering function of the user channels is invariant over frequency intervals whose size is small with respect to the carrier frequency (as in current FDD cellular standards). This allows us to estimate the users' DL channel covariance matrix from UL pilots without additional overhead. Based on this covariance information, we propose a novel sparsifying precoder in order to maximize the rank of the effective sparsified channel matrix subject to the condition that each effective user channel has sparsity not larger than some desired DL pilot dimension T-dl, resulting in the DL training overhead factor max{0, 1 -T-dl/T} and CSI feedback cost of T-dl pilot measurements. The optimization of the sparsifying precoder is formulated as a mixed integer linear program, that can be efficiently solved. Extensive simulation results demonstrate the superiority of the proposed approach with respect to the concurrent state-of-the-art schemes based on compressed sensing or UL/DL dictionary learning.
机译:我们提出了一种用于频分双工(FDD)系统中的大规模多输入多输出(大规模MIMO)的新颖方法。由于FDD系统中上行链路(UL)和下行链路(DL)之间的频率间隔较大,因此信道互易性不成立。因此,为了将DL信道状态信息提供给基站(BS),需要闭环DL信道探测和信道状态信息(CSI)反馈。在大规模MIMO中,这通常会导致大量的训练开销。例如,在具有M个相似或等于200个BS天线且T个衰落相干性块具有T个相似或等于200个符号的典型配置中,由于DL训练开销而导致的最终速率损失因子由max {0,1-M / T}接近于0。为了减少这种开销,我们基于一个众所周知的事实,即用户信道的角度散射函数在相对于载波频率而言较小的频率间隔内不变(如当前FDD蜂窝标准)。这使我们能够从UL导频估计用户的DL信道协方差矩阵,而无需额外的开销。基于此协方差信息,我们提出一种新颖的稀疏预编码器,以便在每个有效用户信道的稀疏度不大于某些所需DL导频维T-dl的条件下,最大化有效稀疏信道矩阵的秩。 DL训练开销因子max {0,1-T-dl / T}和T-dl导频测量的CSI反馈成本。稀疏预编码器的优化公式为混合整数线性程序,可以有效解决。大量的仿真结果证明了该方法相对于基于压缩感知或UL / DL词典学习的并发最新方案的优越性。

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