Deep Learning-based Spectral Efficiency Maximization in Massive MIMO-NOMA Systems with STAR-RIS

R. Perdana, Toan-Van Nguyen, Y. Pramitarini, Kyusung Shim, Beongku An
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引用次数: 2

Abstract

This paper studies a deep learning-based framework for spectral efficiency maximization problem in massive multiple-input multiple-output (MIMO)-non-orthogonal multiple access (NOMA) systems with simultaneously transmitting and reflecting reconfigurable intelligent surface (STAR-RIS). We formulate the spectral efficiency maximization with a joint design of power allocation of the users, phase shift matrix of transmission and reflection element at the STAR-RIS. Since the problem is non-convex and power allocation of the users and reflector/transmitter elements at a STAR-RIS are coupled, it is very challenging to solve optimally. We propose a low-complexity iterative algorithm based on the inner approximation (IA) method to solve this problem with guaranteed convergence at a relatively optimal level. For real-time optimization, we design a deep learning (DL) framework to predict the optimal solution of power allocation of users, phase shift matrix of transmission and reflection elements at the STAR-RIS according to distances and channel gains from the base station (BS) to STAR-RIS and from STAR-RIS to users. Simulation results show that the suggested scheme improves the spectral efficiency (SE) compared to the massive MIMO system with direct link and without STAR-RIS. Besides, the DL framework can predict the optimal solution within a short time under the suggested scheme.
基于深度学习的STAR-RIS大规模MIMO-NOMA系统频谱效率最大化
研究了一种基于深度学习的大规模多输入多输出(MIMO)-具有同步发射和反射可重构智能面(STAR-RIS)的非正交多址(NOMA)系统的频谱效率最大化问题。通过联合设计用户的功率分配、发射单元的相移矩阵和反射单元的相移矩阵,实现了星- ris的频谱效率最大化。由于该问题是非凸性的,并且STAR-RIS中用户和反射/发射单元的功率分配是耦合的,因此很难得到最优的解决。我们提出了一种基于内逼近(IA)方法的低复杂度迭代算法来解决这一问题,并保证在相对最优的水平上收敛。为了实时优化,我们设计了一个深度学习(DL)框架,根据基站(BS)到STAR-RIS和STAR-RIS到用户的距离和信道增益,预测用户功率分配、STAR-RIS发射和反射单元相移矩阵的最优解。仿真结果表明,与没有STAR-RIS的直接链路大规模MIMO系统相比,该方案提高了频谱效率。此外,深度学习框架可以在短时间内预测出建议方案下的最优解。
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