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Deep Learning-Based User Clustering For Mimo-Noma Networks

机译:基于深度学习的MIMO-NOMA网络的用户聚类

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The user clustering problem in an uplink MIMO Non-Orthogonal Multiple Access (NOMA) scheme is considered here. The receiver is assumed to operate in two sequential stages that employ Linear Minimum Mean Squared Error (LMMSE) receivers. At the first stage, the receiver is designed to recover the transmission from a cluster of selected users/nodes. The contribution of these users is then subtracted from the received signal and the remaining user transmissions are then linearly recovered. The determination of which users should be detected during the first stage is formulated as a deep learning based multiple classification problem. In order to guarantee that the selection is robust to fast fading, the input to the neural network is based on second order channel statistics. Furthermore, the training process is simplified by using a large system approximation of the resulting sum-rates. Simulation results indicate that the proposed deep learning-based solution is able to achieve a significant rate advantage with respect to other lazy approaches, such as fixed or random cluster assignments.
机译:这里考虑上行链路MIMO非正交多址(NOMA)方案中的用户聚类问题。假设接收器以两个顺序阶段运行,该顺序级采用线性最小均方误差(LMMSE)接收器。在第一阶段,接收器旨在从所选用户/节点的群集恢复传输。然后从接收信号中减去这些用户的贡献,然后线性恢复剩余的用户传输。在第一阶段期间应该检测到哪些用户的确定是基于深度学习的多分类问题。为了保证选择快速衰落的稳健性,神经网络的输入基于二阶信道统计。此外,通过使用所得总和速率的大系统近似来简化训练过程。仿真结果表明,所提出的基于深度学习的解决方案能够对其他惰性的方法实现显着的速率优势,例如固定或随机群集分配。

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