论文标题

RIS增强了大规模的非正交多访问网络:部署和被动边界设计

RIS Enhanced Massive Non-orthogonal Multiple Access Networks: Deployment and Passive Beamforming Design

论文作者

Liu, Xiao, Liu, Yuanwei, Chen, Yue, Poor, H. Vincent

论文摘要

提出了一个新颖的框架,用于借助非正交多访问(NOMA)技术的可重构智能表面(RIS)的部署和被动横梁形成设计。共同部署,相移设计以及功率分配的问题是为了通过考虑用户的特定数据要求来最大化能源效率。为了解决这个相关问题,通过两个步骤采用了机器学习方法。首先,提出了一种新型的基于长期的短期内存(LSTM)回声状态网络(ESN)算法,通过利用真实数据集来预测用户的远程交通需求。其次,提出了一种基于双重Q-NETWORK(D3QN)的位置进来和相位对照算法来解决RIS的部署和设计联合问题。在拟议的算法中,由控制器控制RI的基站充当代理。该代理会定期观察RIS增强系统的状态,以通过从错误和用户的反馈中学习RIS的最佳部署和设计RIS的最佳部署和设计政策。此外,事实证明,拟议的基于D3QN的部署和设计算法能够在轻度条件下收敛。提供了仿真结果,以说明所提出的基于LSTM的ESN算法能够在预测准确性和计算复杂性之间取消权衡。最后,证明了拟议的基于D3QN的算法的表现优于基准,而Noma增强的RIS系统能够达到比正交多重访问(OMA)启用RIS系统的更高能源效率。

A novel framework is proposed for the deployment and passive beamforming design of a reconfigurable intelligent surface (RIS) with the aid of non-orthogonal multiple access (NOMA) technology. The problem of joint deployment, phase shift design, as well as power allocation is formulated for maximizing the energy efficiency with considering users' particular data requirements. To tackle this pertinent problem, machine learning approaches are adopted in two steps. Firstly, a novel long short-term memory (LSTM) based echo state network (ESN) algorithm is proposed to predict users' tele-traffic demand by leveraging a real dataset. Secondly, a decaying double deep Q-network (D3QN) based position-acquisition and phase-control algorithm is proposed to solve the joint problem of deployment and design of the RIS. In the proposed algorithm, the base station, which controls the RIS by a controller, acts as an agent. The agent periodically observes the state of the RIS-enhanced system for attaining the optimal deployment and design policies of the RIS by learning from its mistakes and the feedback of users. Additionally, it is proved that the proposed D3QN based deployment and design algorithm is capable of converging within mild conditions. Simulation results are provided for illustrating that the proposed LSTM-based ESN algorithm is capable of striking a tradeoff between the prediction accuracy and computational complexity. Finally, it is demonstrated that the proposed D3QN based algorithm outperforms the benchmarks, while the NOMA-enhanced RIS system is capable of achieving higher energy efficiency than orthogonal multiple access (OMA) enabled RIS system.

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