论文标题

基于深度学习的盲目多重用户检测,用于无资助的SCMA和MUSA系统

Deep Learning-Based Blind Multiple User Detection for Grant-free SCMA and MUSA Systems

论文作者

Sivalingam, Thushan, Ali, Samad, Mahmood, Nurul Huda, Rajatheva, Nandana, Aho, Matti Latva

论文摘要

6G中的大规模机器型通信(MMTC)需要支持大量资源的大量设备,从而在有效的随机访问中构成挑战。引入了无授予的随机访问和上行非正交多访问(NOMA),以增加过载因子并减少MMTC中信号开销的传输潜伏期。稀疏代码多重访问(SCMA)和多用户共享访问(MUSA)作为高级代码域NOMA方案。在无赠款的NOMA中,机器类型设备(MTD)在没有赠款的情况下将信息传输到基站(BS),为BS创造了挑战性的任务,以在所有潜在的活动设备中识别活跃的MTD。在本文中,建议在MMTC上行链路框架中针对无授予的SCMA和MUSA系统的新型预激活的残留神经网络检测(MUD)方案(MUD)方案,以在没有通道状态信息的情况下共同识别接收信号的稀疏和主动MTD的主动MTD及其各自信息的数量。一个新颖的残留单元,旨在学习多维SCMA代码簿的特性,Musa扩展序列以及具有不同设置的活动设备的相应组合。提出的方案从接收信号的标记数据集中学习,并从接收的信号中识别活动的MTD,而无需任何设备稀疏级别的知识。评估校准曲线以验证模型的校准。使用四种不同的MMWave通道模型在室内工厂设置中研究了所提出的泥浆方案的应用。数值结果表明,当系统中的活性MTD数量较大时,与现有方法相比,与现有方法相比,所提出的泥浆具有明显更高的检测概率。

Massive machine-type communications (mMTC) in 6G requires supporting a massive number of devices with limited resources, posing challenges in efficient random access. Grant-free random access and uplink non-orthogonal multiple access (NOMA) are introduced to increase the overload factor and reduce transmission latency with signaling overhead in mMTC. Sparse code multiple access (SCMA) and Multi-user shared access (MUSA) are introduced as advanced code domain NOMA schemes. In grant-free NOMA, machine-type devices (MTD) transmit information to the base station (BS) without a grant, creating a challenging task for the BS to identify the active MTD among all potential active devices. In this paper, a novel pre-activated residual neural network-based multi-user detection (MUD) scheme for the grant-free SCMA and MUSA system in an mMTC uplink framework is proposed to jointly identify the number of active MTDs and their respective messages in the received signal's sparsity and the active MTDs in the absence of channel state information. A novel residual unit designed to learn the properties of multi-dimensional SCMA codebooks, MUSA spreading sequences, and corresponding combinations of active devices with diverse settings. The proposed scheme learns from the labeled dataset of the received signal and identifies the active MTDs from the received signal without any prior knowledge of the device sparsity level. A calibration curve is evaluated to verify the model's calibration. The application of the proposed MUD scheme is investigated in an indoor factory setting using four different mmWave channel models. Numerical results show that when the number of active MTDs in the system is large, the proposed MUD has a significantly higher probability of detection compared to existing approaches over the signal-to-noise ratio range of interest.

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