Complex Gaussian belief propagation algorithms for distributed multicell multiuser MIMO detection

Ziqi Yue, Qing Guo, W. Xiang
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Abstract

In this paper, we considered a practical system where the number of base station antennas serving tens users is large but finite. The signal must be collected before detection, and the optimal maximum a posteriori (MAP) detector has high computational complexity that grows exponentially with the number of users. Even the suboptimal MMSE-SIC (soft interference cancellation) requires complexity proportional to the cube of the number of the antenna units. In this paper, we proposed a distributed detection scheme done at each antenna unit separately, termed complex Gaussian belief propagation algorithm (CGaBP), for multicell multi-user detection. The multiuser detection problem is reduced to a sequence of scalar estimations, and detecting each individual user using CGaBP is asymptotically equivalent to detecting the same user through a scalar additive Gaussian channel with some degradation in the signal-to-noise ratio (SNR) of the desired user due to the collective impact of interfering users. The degradation is determined by the unique fixed-point of state evolution equations. Numerical results show that CGaBP has low complexity and overhead, and achieves optimal data estimates for Gaussian symbols, and is better than MMSE-SIC for finite-alphabet symbols.
分布式多小区多用户MIMO检测的复高斯信念传播算法
在本文中,我们考虑了一个实际的系统,其中基站天线服务几十个用户的数量很大,但有限。检测前必须采集信号,最优最大后验(MAP)检测器计算复杂度高,且随用户数量呈指数增长。即使是次优的MMSE-SIC(软干扰消除)也需要与天线单元数量的立方成正比的复杂性。本文提出了一种在每个天线单元上分别完成的分布式检测方案,称为复高斯信念传播算法(CGaBP),用于多小区多用户检测。多用户检测问题被简化为一个标量估计序列,使用CGaBP检测每个单独的用户渐近等同于通过一个标量加性高斯信道检测同一个用户,由于干扰用户的集体影响,期望用户的信噪比(SNR)会有所下降。退化是由状态演化方程的唯一不动点决定的。数值结果表明,CGaBP算法具有较低的复杂度和开销,对高斯符号的估计效果较好,对有限字母符号的估计效果优于MMSE-SIC算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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