大规模MIMO检测的分裂预条件共轭梯度方法

Jiejun Jin, Ye Xue, Yeong-Luh Ueng, X. You, Chuan Zhang
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引用次数: 22

摘要

在大规模多输入多输出(MIMO)移动系统中,随着天线数量的增加,信号检测的计算复杂度呈指数级增长。例如,次优线性检测方案,如零强迫(ZF)检测器和最小均方误差(MMSE)检测器,总是需要平衡大规模矩阵反演操作带来的性能和复杂性。近年来,人们提出了一些迭代线性求解方法,如共轭梯度(CG)来解决这一问题。这一系列检测算法通过避免像矩阵反演这样的计算密集型操作,在错误率性能和计算复杂性之间提供了更好的权衡。然而,当系统负荷系数ρ增大时,其结果就不再令人满意。为了解决上述问题,本文首先通过探索均衡矩阵的性质,引入了一种新的低复杂度预条件;然后提出了一种分裂预条件共轭梯度(SPCG)方法来加快检测的收敛速度。分析和数值结果都证明了该算法在性能和复杂度方面的优势。当BER = 10−4时,该检测器的性能优于传统的CG检测器,约为2 dB。当用户天线数量较大时,其复杂度仅为现有基于不完全Cholesky分解(ICCG)的预条件共轭梯度检测器的25%。
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A split pre-conditioned conjugate gradient method for massive MIMO detection
In massive multiple-input multiple-output (MIMO) mobile system, the computational complexity of signal detection increases exponentially along with the growing number of antennas. For example, the sub-optimal linear detection schemes, such as zero forcing (ZF) detector and minimum mean square error (MMSE) detector, always have to balance the performance and complexity resulted from the large-scale matrix inversion operations. Recently, some iterative linear solvers, such as conjugate gradient (CG), have been proposed to address this issue. These series of detection algorithms offer a better tradeoff between error-rate performance and computational complexity by avoiding the computation-hungry operations like matrix inversion. However, when the the system loading factor ρ goes up, their results are no longer satisfactory. To solve the aforementioned issues, this paper 1) first introduces a novel, low-complexity pre-conditioner by exploring the properties of the equalization matrix and 2) then proposes a split pre-conditioned conjugate gradient (SPCG) method to speed up the convergence rate of detection. Both analytical and numerical results have demonstrated the performance and complexity advantages of the proposed algorithm over the sate-of-the-art ones. The proposed detector outperforms the conventional CG detector with around 2 dB for BER = 10−4. When the number of user antennas is relatively large, its complexity is only 25% of the existing pre-conditioned conjugate gradient detector based on incomplete Cholesky decomposition (ICCG).
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