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Journal Article Reinforcement Learning-Based Multi-Agent Beam Tracking for Multi-RIS Hybrid Beamforming
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Authors
Najam Us Saqib, Guopei Zhu, Sung Ho Chae, Changjun Zhou, Zhonglong Zheng, Sang-Woon Jeon
Issue Date
2025-12
Citation
IEEE Transactions on Wireless Communications, v.25, pp.4309-4325
ISSN
1536-1276
Publisher
IEEE
Language
English
Type
Journal Article
DOI
https://dx.doi.org/10.1109/TWC.2025.3610047
Abstract
Reconfigurable intelligent surfaces (RIS) are emerging as a promising technology for next-generation wireless communications, capable of mitigating severe propagation attenuation, enhancing spectral efficiency, and expanding signal coverage. This paper focuses on online millimeter-wave (mmWave) beam tracking for multi-RIS-assisted hybrid beamforming systems. We develop two novel beam tracking algorithms based on multi-agent deep reinforcement learning (DRL): a multi-agent deep deterministic policy gradient (MADDPG)based algorithm for continuous-domain beam angle tracking and a multi-agent deep Q-network (MADQN)-based algorithm for codebook-based discrete-domain beam angle tracking. Both algorithms are designed to maximize the sum rate by jointly optimizing analog beamforming for the base station (BS) and reflection coefficients for multiple RISs in dynamic environments, leveraging historical information and without requiring current user position or channel information. After determining analog beamforming and RIS reflection coefficients, digital beamforming for the BS is constructed by estimating the end-to-end effective channel, which significantly reduces the overhead of channel estimation. Experimental results demonstrate that the proposed algorithms effectively adapt the analog beamformer and RIS reflection coefficients to account for user mobility, significantly outperforming existing benchmark schemes.
KSP Keywords
Analog Beamformer, Beam angle, Channel estimation(CE), Deep Q-Network, Deep reinforcement learning, Digital beam forming(DBF), Dynamic Environment, Effective channel, End to End(E2E), Hybrid Beamforming, Learning-based