论文标题

基于未偶联的压缩感应的大规模未包含的随机访问:巨大的MIMO的另一个祝福

Massive Unsourced Random Access Based on Uncoupled Compressive Sensing: Another Blessing of Massive MIMO

论文作者

Shyianov, Volodymyr, Bellili, Faouzi, Mezghani, Amine, Hossain, Ekram

论文摘要

我们通过利用大规模天线阵列提供的丰富空间维度来提出一种新的算法解决方案,以解决大规模的未包含随机访问(URA)问题。本文观察到,空间签名是大规模连通设置中URA的关键。所提出的方案依赖于一个开槽的传输框架,但消除了在耦合压缩传感(CCS)范式背景下引入的串联编码的需求。实际上,所有现有基于CCS的URA的现有作品都依赖于基于内部/外部树的编码器/解码器来缝合插槽恢复的序列。本文通过利用每个用户的旋转重建通道之间的性质相关性来采取不同的路径,以便整理其解码序列。首先通过杂交概括性消息传递(Hygamp)算法获得所需的插槽通道估计值和解码序列,该算法系统地适应了多亚抗tenna诱导的组稀疏性。然后,基于期望 - 最大化(EM)概念的通道相关感知的聚类框架与匈牙利算法一起使用,通过强制执行两个针对当前问题的聚类限制来查找Slotwise最佳分配矩阵。然后,根据随后的作业矩阵将解码序列与各自的用户相关联,可以实现缝线。详尽的计算机模拟表明,与研究在大规模URA背景下使用大规模天线阵列的最新技术相比,所提出的方案可以在高光谱效率下带来性能提高。

We put forward a new algorithmic solution to the massive unsourced random access (URA) problem, by leveraging the rich spatial dimensionality offered by large-scale antenna arrays. This paper makes an observation that spatial signature is key to URA in massive connectivity setups. The proposed scheme relies on a slotted transmission framework but eliminates the need for concatenated coding that was introduced in the context of the coupled compressive sensing (CCS) paradigm. Indeed, all existing works on CCS-based URA rely on an inner/outer tree-based encoder/decoder to stitch the slot-wise recovered sequences. This paper takes a different path by harnessing the nature-provided correlations between the slotwise reconstructed channels of each user in order to put together its decoded sequences. The required slot-wise channel estimates and decoded sequences are first obtained through the hybrid generalized approximate message passing (HyGAMP) algorithm which systematically accommodates the multiantenna-induced group sparsity. Then, a channel correlation-aware clustering framework based on the expectation-maximization (EM) concept is used together with the Hungarian algorithm to find the slotwise optimal assignment matrices by enforcing two clustering constraints that are very specific to the problem at hand. Stitching is then accomplished by associating the decoded sequences to their respective users according to the ensuing assignment matrices. Exhaustive computer simulations reveal that the proposed scheme can bring performance improvements, at high spectral efficiencies, as compared to a state-of-the-art technique that investigates the use of large-scale antenna arrays in the context of massive URA.

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