无小区大规模MIMO系统的稀疏活动检测

Mangqing Guo, M. C. Gursoy, P. Varshney
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引用次数: 3

摘要

本文研究了无单元大规模多输入多输出(MIMO)系统中的稀疏活动检测问题。采用近似消息传递(AMP)算法,将接入点接收到的导频信号分解为独立的圆对称复高斯噪声损坏分量。在AMP过程中利用最小均方误差(MMSE)去噪,得到阈值检测规则,并通过状态演化方程解析描述损坏分量的噪声协方差矩阵,有助于检测规则的性能分析。利用大数定律可以看出,当ap、导频和用户数量趋于无穷大,且导频和用户数量之比保持不变时,该阈值检测规则的错误概率趋于零。数值结果表明,随着ap数量的增加,误差概率减小,这与我们的理论分析一致。此外,我们还通过数值结果研究了阈值检测规则的误差概率与导频传输在每个信道相干间隔内使用的符号数之间的关系。
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Sparse Activity Detection in Cell-Free Massive MIMO systems
We investigate the sparse activity detection problem in cell-free massive multiple-input multiple-output (MIMO) systems in this paper. With the approximate message passing (AMP) algorithm, the received pilot signals at the access points (APs) are decomposed into independent circularly symmetric complex Gaussian noise corrupted components. By using the minimum mean-squared error (MMSE) denoiser during the AMP procedure, we obtain a threshold detection rule, and analytically describe the noise covariance matrix of the corrupted components via the state evolution equations, which is helpful for the performance analysis of the detection rule. Using the law of large numbers, it can be shown that the error probability of this threshold detection rule tends to zero when the number of APs, pilots and users tend to infinity while the ratio of the number of pilots and users is kept constant. Numerical results show that the error probability decreases while the number of APs increases, corroborating our theoretical analysis. In addition, we investigate the relationship between the error probability of the threshold detection rule and the number of symbols used for pilot transmissions during each channel coherence interval via numerical results.
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