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Beam Aggregation-Based mmWave MIMO-NOMA: An AI-Enhanced Approach

机译:基于光束聚合的MMWAVE MIMO-NOMA:AI增强的方法

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Millimeter wave (mmWave) multiple-input-multiple-output (MIMO) with hybrid beamforming enables high data rate broadband services for 5G. To further improve the spectral efficiency and connectivity, non-orthogonal multiple access (NOMA) has been considered to be integrated with mmWave MIMO. Nonetheless, the existing power-domain mmWave MIMO-NOMA with narrow analog beams suffers from beam misalignments which deteriorate the data rates of the misaligned users as well as the system fairness. Thereby, we propose a beam aggregation-based mmWave MIMO-NOMA scheme to loosen the requirement of beam alignment and improve the system fairness. The proposed scheme generates virtual beams with wider beamwidth by aggregating adjacent analog beams. NOMA transmissions are utilized within each aggregated virtual beam. Then, we propose a non-orthogonal multiuser precoding scheme to ensure the fairness within the aggregated beam by maximizing the minimum achievable rates of the grouped users. To address this issue, a max-min problem is proposed and artificial intelligence (AI) technology is exploited to solve this non-trivial problem. The problem is firstly converted to an equivalent penalized minimization problem and then an unsupervised deep neural network (DNN) is trained to map the instantaneous channel coefficients to the precoders in a data-driven fashion. Specifically, we explicitly introduce the transmit power as the DNN input to achieve better generalization in different signal-to-noise ratio regions. Performance evaluations reveal that the proposed scheme can achieve significant gain on the max-min data rate compared with the conventional scheme.
机译:具有混合波束成形的毫米波(MMWAVE)多输入多输出(MIMO)使高数据速率宽带服务能够为5G。为了进一步提高光谱效率和连接,已被认为是与MMWAVE MIMO集成的非正交多址(NOMA)。尽管如此,具有窄模拟光束的现有功率域MMWave MIMO-NOMA遭受光束错位,其恶化了未对准用户的数据速率以及系统公平性。由此,我们提出了一种基于光束聚合的MMWAVE MIMO-NOMM方案,以松开光束对准的要求并改善系统公平性。所提出的方案通过聚合相邻的模拟波束产生具有更宽的波束宽度的虚拟光束。在每个聚合的虚拟波束内使用NOMA传输。然后,我们提出了一种非正交的多用户预编码方案,以通过最大化分组用户的最小可实现的速率来确保聚集光束内的公平性。为了解决这个问题,提出了一个最大敏的问题,利用人工智能(AI)技术来解决这个非琐碎问题。首先将该问题转换为等效的惩罚最小化问题,然后训练无监督的深神经网络(DNN)以以数据驱动的方式将瞬时信道系数映射到预编码器。具体地,我们明确地将发射功率引入DNN输入,以在不同的信噪比区域中实现更好的泛化。性能评估表明,与传统方案相比,该方案可以实现最大数量的数据速率的显着增益。

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