论文标题

低容量通道的大规模编码 - 诺玛:低复杂性方法

Massive Coded-NOMA for Low-Capacity Channels: A Low-Complexity Recursive Approach

论文作者

Jamali, Mohammad Vahid, Mahdavifar, Hessam

论文摘要

在本文中,我们提出了一种低复杂性递归方法,用于大规模和可扩展的代码域非正交多访问(NOMA),并应用于新兴的低容量场景。本文中的问题定义灵感来自下一代无线网络的三个主要要求。首先,拟议的计划在低容量制度中特别有益,这在最大兴趣的实际情况(例如The Internet(IoT)和大规模的机器型通信(MMTC))中很重要。其次,我们采用代码域NOMA来有效地分享用户之间的稀缺共同资源。最后,所提出的递归方法可以使代码域Noma具有低复杂性检测算法,这些算法可与用户数量相扩展,以满足大量连通性的要求。为此,我们根据分解模式矩阵,为代码域Noma提出了一种新颖的编码和解码方案,将可用资源元素分配给用户,作为几个较小因子矩阵的Kronecker产品。结果,可以在发射机侧的图案矩阵设计和接收器侧的混合符号的检测,可以通过矩阵进行尺寸,其尺寸比整体模式矩阵小得多。因此,这导致检测的复杂性和潜伏期显着降低。我们介绍了因子矩阵总体情况的检测算法。所提出的算法涉及几个递归,每个递归涉及与某些因子矩阵相对应的某些方程组。然后,我们以平均总和率,延迟和检测复杂性来表征系统性能。我们的延迟和复杂性分析证实了我们提出的方案在启用大模式矩阵方面的优越性。

In this paper, we present a low-complexity recursive approach for massive and scalable code-domain nonorthogonal multiple access (NOMA) with applications to emerging low-capacity scenarios. The problem definition in this paper is inspired by three major requirements of the next generations of wireless networks. Firstly, the proposed scheme is particularly beneficial in low-capacity regimes which is important in practical scenarios of utmost interest such as the Internet-of-Things (IoT) and massive machine-type communication (mMTC). Secondly, we employ code-domain NOMA to efficiently share the scarce common resources among the users. Finally, the proposed recursive approach enables code-domain NOMA with low-complexity detection algorithms that are scalable with the number of users to satisfy the requirements of massive connectivity. To this end, we propose a novel encoding and decoding scheme for code-domain NOMA based on factorizing the pattern matrix, for assigning the available resource elements to the users, as the Kronecker product of several smaller factor matrices. As a result, both the pattern matrix design at the transmitter side and the mixed symbols' detection at the receiver side can be performed over matrices with dimensions that are much smaller than the overall pattern matrix. Consequently, this leads to significant reduction in both the complexity and the latency of the detection. We present the detection algorithm for the general case of factor matrices. The proposed algorithm involves several recursions each involving certain sets of equations corresponding to a certain factor matrix. We then characterize the system performance in terms of average sum rate, latency, and detection complexity. Our latency and complexity analysis confirm the superiority of our proposed scheme in enabling large pattern matrices.

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