Optimization of STAR-RIS-Assisted Hybrid NOMA mmWave Communication

Muhammad Faraz Ul Abrar, Muhammad Talha,Rafay Iqbal Ansari,Syed Ali Hassan,Haejoon Jung

IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY(2023)

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摘要
Simultaneously reflecting and transmitting reconfigurable intelligent surfaces (STAR-RIS) has recently emerged out as prominent technology that exploits the transmissive property of RIS to mitigate the half-space coverage limitation of conventional RIS operating on millimeter-wave (mmWave). In this paper, we study a downlink STAR-RIS-based multi-user multiple-input single-output (MU-MISO) mmWave hybrid non-orthogonal multiple access (H-NOMA) wireless network, where a sum-rate maximization problem has been formulated. The design of active and passive beamforming vectors, time and power allocation for H-NOMA is a highly coupled non-convex problem. To handle the problem, we propose an optimization framework based on alternating optimization (AO) that iteratively solves active and passive beamforming sub-problems. Channel correlations and channel strength-based techniques have been proposed for a specific case of two-user optimal clustering and decoding order assignment, respectively, for which analytical solutions to joint power and time allocation for H-NOMA have also been derived. Simulation results show that: 1) the proposed framework leveraging H-NOMA outperforms conventional OMA and NOMA to maximize the achievable sum-rate; 2) using the proposed framework, the supported number of clusters for the given design constraints can be increased considerably; 3) through STAR-RIS, the number of elements can be significantly reduced as compared to conventional RIS to ensure a similar quality-of-service (QoS).
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关键词
NOMA,Millimeter wave communication,Optimization,Array signal processing,Resource management,Quality of service,Hardware,STAR-RIS,reconfigurable intelligent surfaces (RIS),mmWave communication,hybrid non-orthogonal multiple access,optimization,sum-rate maximization,beyond 5 G
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