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A Serial Maximum-likelihood Detection Algorithm for Massive MIMO Systems

机译:大规模MIMO系统的串行最大似然检测算法

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As an important part of massive Multi-Input Multi-Output (MIMO) technologies, signal detection has been studied in the literature in recent years. The detection complexity grows significantly as the number of antennas increases in the system. Maximum-likelihood (ML) has the optimal performance with the highest complexity, which is prohibitive for implementation. In this work, we propose a serial ML (SML) algorithm, which changes the way of detection from parallel multi-dimensional searching to serial single-dimensional searching to reduce detection complexity. Besides, we employ a valid initial value for the proposed algorithm to obtain a faster convergence. Based on the simulation results, for the system with 128 receive antennas, the proposed SML algorithm outperforms the Minimum Mean Square Error (MMSE) method under different numbers of users and modulation schemes. When achieving a similar performance, the complexity of serial ML is almost a half of that of low complexity Message Passing Detection algorithm in the system with 16QAM and 16 or 32 users. It is demonstrated that our proposed SML method is more suitable for signal detection when the system adopts low order modulation schemes and serves larger number of users.
机译:作为大规模多输入多输出(MIMO)技术的重要组成部分,近年来,文献中对信号检测进行了研究。随着系统中天线数量的增加,检测复杂度也显着增加。最大似然(ML)具有最佳的性能和最高的复杂性,这对于实现来说是无法实现的。在这项工作中,我们提出了一种串行ML(SML)算法,该算法将检测方式从并行多维搜索更改为串行单维搜索,以降低检测复杂度。此外,对于所提出的算法,我们采用了有效的初始值以获得更快的收敛性。根据仿真结果,对于具有128个接收天线的系统,在不同的用户数量和调制方案下,所提出的SML算法优于最小均方误差(MMSE)方法。当达到类似的性能时,串行ML的复杂度几乎是具有16QAM和16或32个用户的系统中低复杂度消息传递检测算法的一半。结果表明,当系统采用低阶调制方案并为大量用户服务时,我们提出的SML方法更适合信号检测。

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