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Side-Information Aided Compressed Multi-User Detection for Up-Link Grant-Free NOMA

机译:侧面信息辅助压缩的多用户检测,用于Up-Link授予NOMA

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摘要

Grant-free non-orthogonal multiple access (NOMA) is considered as one of the most important methodologies for the machine-type communications (MTC). In the field of MTC, compressed sensing based multi-user detection (CS-MUD) has been recognized as an excellent candidate for joint user activity and data detection, since many users sporadically transmit short-size data packets at low rates. This article focuses on the CS-MUD problem in the up-link grant-free NOMA scenario, where users are (in)-active randomly in each time slot yet with high temporal correlation. First, we investigate the CS framework to fully extract the underlying side information in the temporal correlation and propose a novel CS-MUD algorithm. Then, to mitigate the performance degradation due to the imperfect channel estimation in practice, the proposed algorithm is further extended by utilizing the perturbed CS, where the impact of channel estimation errors is modeled as certain perturbation in the measurement matrix. Different from most of the state-of-the-art CS-MUD algorithms, both proposed algorithms can apply even in the absence of prior knowledge on the number of active users. Simulation results indicate that the proposed algorithms achieve better performance than the existing CS-MUD methods. Their convergence and complexity issues are also discussed theoretically and numerically.
机译:无授予非正交多次访问(NOMA)被认为是机器类型通信(MTC)最重要的方法之一。在MTC领域中,基于压缩的传感的多用户检测(CS-MUD)被识别为联合用户活动和数据检测的优异候选者,因为许多用户以低速率施换到短尺寸数据分组。本文重点介绍了Up-Link授予NOMM场景中的CS-MUD问题,其中用户在每个时隙中随机地随机,具有高时间相关性。首先,我们调查CS框架,以在时间相关中充分提取基础侧面信息,并提出一种新颖的CS-MUD算法。然后,为了减轻由于实践中的不完全信道估计而降低了性能下降,通过利用扰动的CS进一步扩展了所提出的算法,其中信道估计误差的影响被建模为测量矩阵中的某些扰动。与大多数最先进的CS-MUD算法不同,也可以在没有关于有效用户的数量的现有知识的情况下施加算法。仿真结果表明,所提出的算法比现有的CS-泥浆方法实现更好的性能。他们的融合和复杂性问题也在理论上和数值上讨论。

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