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Joint Optimization based on Two-phase GNN in RIS-and DF-assisted MISO Systems with Fine-grained Rate Demands

Tang, Huijun; Zhang, Jieling; Zhao, Zhidong; Wu, Huaming; Sun, Hongjian; Jiao, Pengfei

Joint Optimization based on Two-phase GNN in RIS-and DF-assisted MISO Systems with Fine-grained Rate Demands Thumbnail


Authors

Jieling Zhang

Zhidong Zhao

Huaming Wu

Pengfei Jiao



Abstract

Reconfigurable intelligent Surfaces (RIS) and half-duplex decoded and forwarded (DF) relays can collaborate to optimize wireless signal propagation in communication systems. Users typically have different rate demands and are clustered into groups in practice based on their requirements, where the former results in the trade-off between maximizing the rate and satisfying fine-grained rate demands, while the latter causes a trade-off between inter-group competition and intra-group cooperation when maximizing the sum rate. However, traditional approaches often overlook the joint optimization encompassing both of these trade-offs, disregarding potential optimal solutions and leaving some users even consistently at low date rates. To address this issue, we propose a novel joint optimization model for a RIS-and DF-assisted multiple-input single-output (MISO) system where a base station (BS) is with multiple antennas transmits data by multiple RISs and DF relays to serve grouped users with fine-grained rate demands. We design a new loss function to not only optimize the sum rate of all groups but also adjust the satisfaction ratio of fine-grained rate demands by modifying the penalty parameter. We further propose a two-phase graph neural network (GNN) based approach that inputs channel state information (CSI) to simultaneously and autonomously learn efficient phase shifts, beamforming, and relay selection. The experimental results demonstrate that the proposed method significantly improves system performance. Index Terms-reconfigurable intelligent surface, decoded and forwarding relay, graph neural network, fine-grained rate demands

Citation

Tang, H., Zhang, J., Zhao, Z., Wu, H., Sun, H., & Jiao, P. (online). Joint Optimization based on Two-phase GNN in RIS-and DF-assisted MISO Systems with Fine-grained Rate Demands. IEEE Transactions on Wireless Communications, https://doi.org/10.1109/TWC.2025.3576298

Journal Article Type Article
Acceptance Date May 27, 2025
Online Publication Date Jun 11, 2025
Deposit Date May 27, 2025
Publicly Available Date Jun 12, 2025
Journal IEEE Transactions on Wireless Communications
Print ISSN 1536-1276
Electronic ISSN 1558-2248
Publisher Institute of Electrical and Electronics Engineers
Peer Reviewed Peer Reviewed
DOI https://doi.org/10.1109/TWC.2025.3576298
Public URL https://durham-repository.worktribe.com/output/3964866

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