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A Random-List Based LAS Algorithm for Near-Optimal Detection in Large-Scale Uplink Multiuser MIMO Systems

机译:基于随机列出的基于LAS算法,用于大型上行链路多用户MIMO系统中的近乎最佳检测

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Massive Multiple-input Multiple-output (MIMO) systems offer exciting opportunities due to their high spectral efficiencies capabilities. On the other hand, one major issue in these scenarios is the high-complexity detectors of such systems. In this work, we present a low-complexity, near maximumlikelihood (ML) performance achieving detector for the uplink in large MIMO systems with tens to hundreds of antennas at the base station (BS) and similar number of uplink users. The proposed algorithm is derived from the likelihood-ascent search (LAS) algorithm and it is shown to achieve near ML performance as well as to possess excellent complexity attribute. The presented algorithm, termed as random-list based LAS (RLB-LAS), employs several iterative LAS search procedures whose starting-points are in a list generated by random changes in the matched filter detected vector and chooses the best LAS result. Also, a stop criterion was proposed in order to maintain the algorithm's complexity at low levels. Near-ML performance detection is demonstrated by means of Monte Carlo simulations and it is shown that this performance is achieved with complexity of just O(K~2) per symbol, where K denotes the number of singleantenna uplink users.
机译:巨大的多输入多输出(MIMO)系统由于其高光谱效率能力而提供令人兴奋的机会。另一方面,在这些场景中的一个主要问题是这种系统的高复杂性探测器。在这项工作中,我们呈现出低复杂性,近乎最高的MIMMO(ML)性能,以便在基站(BS)和类似数量的上行链路用户中的大型MIMO系统中的上行链路探测器。所提出的算法源自似然升起搜索(LAS)算法,并且显示在近mL性能以及具有优异的复杂性属性。所呈现的算法称为基于随机列表的LAS(RLB-LAS),采用几个迭代LAS搜索过程,其起点处于由匹配的滤波器检测到的向量中的随机变化产生的列表中,并选择最佳的LAS结果。此外,提出了一种停止标准,以便在低水平下保持算法的复杂性。通过蒙特卡罗模拟证明了近ML性能检测,并表明,通过每个符号的o(k〜2)的复杂性实现了这种性能,其中k表示Singleantenna上行用户的数量。

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