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A Neural Network Approach for Spectral and Energy Efficient Multiple Antenna Systems

机译:一种频谱和节能多天线系统的神经网络方法

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In this research, we investigate a low computational complexity user selection and a precoder approach that, respectively, achieves spectral/energy transmission efficiency in the multiple-antennas system utilizing supervised learning techniques. In particular, the user selection spectral efficient network employs a supervised classification approach to correspond (one to one) between each input class-label and a set of selected users where every realization of the channel is labeled with a class. On the other hand, the energy reserving precoder is a two-stage scheme. In the first one, a conventional deep-learning-based multiple antenna framework is applied to assess the uplink power allocation vector subject to service quality targets (QoS) of the individual users. In the second stage, we utilize the Lagrangian duality method to calculate the optimal precoder vector for downlink. The research outcomes recommend applying an adaptive system with a convolutional neural scheme for low target QoS users. For instance, at 1 dB target SINR signal, there is about 2.6 dBm gain in the performance than the null-steering scheme. We may, on the other hand, use a simple the null-steering strategy for users with high target QoS. Consequently, we can deduce that the proposed method provides a balance of energy efficiency and computational complexity.
机译:在该研究中,我们研究了利用监督学习技术的多天线系统中的频谱/能量传输效率,研究了低计算复杂性用户选择和预编码方法。特别地,用户选择光谱有效网络采用监督分类方法来对应(一到一个)在每个输入类 - 标签和一组所选择的用户之间对应(一到一个),其中频道的每个实现都用类标记。另一方面,能量保留预编码器是两级方案。在第一,应用传统的基于深度学习的多天线框架来评估经受各个用户的服务质量目标(QoS)的上行链路功率分配矢量。在第二阶段,我们利用拉格朗日二元性方法来计算下行链路的最佳预编码器向量。研究结果建议使用具有卷积神经方案的自适应系统,用于低目标QoS用户。例如,在1 dB的目标SINR信号中,性能比空转向方案的性能约为2.6 dBm增益。另一方面,我们可能会对具有高目标QoS的用户使用简单的NULL-STERING策略。因此,我们可以推断提出的方法提供能量效率和计算复杂性的平衡。

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