Machine Learning in RIS-Assisted NOMA IoT Networks

被引:16
作者
Zou, Yixuan [1 ]
Liu, Yuanwei [1 ]
Mu, Xidong [1 ]
Zhang, Xingqi [2 ]
Liu, Yue [3 ]
Yuen, Chau [4 ]
机构
[1] Queen Mary Univ London, Sch Elect Engn & Comp Sci, London E1 4NS, England
[2] Univ Coll Dublin, Dept Elect & Elect Engn, Dublin D04 V1W8, Ireland
[3] Macao Polytech Univ, Fac Appl Sci, Taipa, Macau, Peoples R China
[4] Singapore Univ Technol & Design, Engn Prod Dev Pillar, Singapore 487372, Singapore
基金
英国工程与自然科学研究理事会;
关键词
Deep learning (DL); deep reinforcement learning (DRL); Internet of Things (IoT) networks; nonorthogonal multiple access (NOMA); reconfigurable intelligent surfaces (RISs); RESOURCE-ALLOCATION; INTELLIGENT; OPTIMIZATION; SURFACES; MISO;
D O I
10.1109/JIOT.2023.3245288
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
A reconfigurable intelligent surface (RIS)-assisted downlink nonorthogonal multiple access (NOMA) Internet of Things (IoT) network is proposed, where a Quality-of-Service (QoS)-based NOMA clustering scheme is conceived to effectively utilize the limited wireless resources among IoT devices. A throughput maximization problem is formulated by jointly optimizing the phase shifts of the RIS and the power allocation of the base station (BS) from the short-term and long-term perspectives. We aim to investigate and compare the performance of deep learning (DL) and deep reinforcement learning (DRL) algorithms for solving the formulated problems. In particular, the DL method utilizes model-agnostic-metalearning (MAML) to enhance the generalization capability of the neural network and to accelerate the convergence rate. For the DRL method, the deep deterministic policy gradient (DDPG) algorithm is employed to incorporate continuous phase-shift variables. It shows that the DL method only focuses on the maximization of the instantaneous throughput, whereas the DRL method can coordinate the power consumption over different time slots to maximize the long-term throughput. Numerical results demonstrate that: 1) the proposed QoS-based NOMA clustering scheme achieves higher IoT throughput than the conventional channel-based scheme; 2) the implementation of RISs induces approximately 5%-25% throughput gain as the number of RIS elements increases from 8 to 64; 3) DL and DRL achieve a similar throughput performance for the short-term optimization, while DRL is superior for the long-term optimization, especially when the total transmit power is limited.
引用
收藏
页码:19427 / 19440
页数:14
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