Principal component analysis based limited feedback scheme for massive MIMO systems

Anmeng Ge, Tiankui Zhang, Zhirui Hu, Zhimin Zeng
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引用次数: 12

Abstract

In multiuser MIMO systems, the required feedback rate per user increases linearly with the number of transmit antennas in order to achieve full multiplexing gain. When it comes to massive MIMO systems, the feedback overhead grows unacceptable. This motivates us to explore a novel feedback reduction scheme based on principal component analysis (PCA). The proposed PCA based feedback scheme exploits the spatial correlation characteristics of massive MIMO channel model, since transmit antennas are deployed compactly at base station (BS). In the proposed scheme, mobile station (MS) utilizes compression matrix to compress spatially correlated high-dimensional channel state information (CSI) into low-dimensional one. Then the compressed low-dimensional CSI is fed back to BS instantaneously with reduced feedback overhead and codebook search complexity. The compression matrix is attained by operating PCA on CSI which is estimated over a long-term period by MS. In order to recover high-dimensional CSI at BS, compression matrix is refreshed and fed back from MS to BS every long-term period. Numerical results and feedback overhead analysis show that the proposed PCA based feedback scheme can offer a tradeoff between system performance and feedback overhead.
基于主成分分析的大规模MIMO系统有限反馈方案
在多用户MIMO系统中,为了实现全复用增益,每个用户所需的反馈速率随发射天线数量线性增加。当涉及到大规模MIMO系统时,反馈开销变得不可接受。这促使我们探索一种新的基于主成分分析(PCA)的反馈约简方案。提出的基于主成分分析的反馈方案利用了大规模MIMO信道模型的空间相关特性,因为发射天线在基站(BS)内布置紧凑。在该方案中,移动站(MS)利用压缩矩阵将空间相关的高维信道状态信息压缩为低维信道状态信息。然后将压缩后的低维CSI即时反馈给BS,降低了反馈开销和码本搜索复杂度。压缩矩阵是通过对MS长期估计的CSI进行PCA运算得到的。为了在BS上恢复高维CSI,压缩矩阵每长时间更新一次,从MS反馈到BS。数值结果和反馈开销分析表明,基于主成分分析的反馈方案能够在系统性能和反馈开销之间取得平衡。
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