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Deep Learning-Based Sum Data Rate and Energy Efficiency Optimization for MIMO-NOMA Systems

机译:基于深度学习的MIMO-NOMA系统的总和数据速率和能效优化

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摘要

The increasing demands for massive connectivity, low latency, and high reliability of future communication networks require new techniques. Multiple-input-multiple-output non-orthogonal multiple access (MIMO-NOMA), which incorporates the NOMA concept into MIMO, is an appealing technology to enhance system throughput and energy efficiency. However, rapidly changing channel conditions and extremely complex spatial structure degrade the system performance and hinder its application. Thus, to tackle these limitations, in this paper, we propose a deep learning-based MIMO-NOMA framework for maximizing the sum data rate and energy efficiency. To be specific, we design an effective communication deep neural network (CDNN) in which several convolutional layers and multiple hidden layers are included. Thanks to the impressive representation ability of the deep learning technique, the CDNN framework addresses the power allocation problem for achieving higher data rate and energy efficiency of MIMO-NOMA with the aid of training algorithms. Additionally, simulation results corroborate that the proposed CDNN framework is a good candidate to enhance the performance of MIMO-NOMA in term of power allocation, and extensive simulations show that it realizes larger sum data rate and energy efficiency compared with conventional strategies.
机译:对未来通信网络的大规模连接,低延迟和高可靠性的需求越来越大需要新技术。将NOMA概念纳入MIMO的多输入多输出非正交多通路(MIMO-NOMA)是一种吸引力的技术,可以提高系统吞吐量和能效。然而,快速改变的信道条件和极其复杂的空间结构降低了系统性能并阻碍了其应用。因此,为了解决这些限制,本文提出了一种基于深度学习的MIMO-NOMA框架,用于最大化总和数据速率和能效。具体而言,我们设计了一种有效的通信深神经网络(CDNN),其中包括多个卷积层和多个隐藏层。由于深入学习技术的令人印象深刻的表示能力,CDNN框架通过训练算法借助于借助于训练算法来解决MIMO-NOMA的更高数据速率和能量效率的功率分配问题。此外,仿真结果证实了所提出的CDNN框架是增强MIMO-NOMA在功率分配期间的性能的良好候选者,并且广泛的模拟表明它与传统策略相比,它实现了更大的总和数据速率和能效。

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