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Meta-Learning-Driven Adaptive Codebook Design for Near-Field Communications

Signal Processing 2024-10-14 v1

Abstract

Extremely large-scale arrays (XL-arrays) and ultra-high frequencies are two key technologies for sixth-generation (6G) networks, offering higher system capacity and expanded bandwidth resources. To effectively combine these technologies, it is necessary to consider the near-field spherical-wave propagation model, rather than the traditional far-field planar-wave model. In this paper, we explore a near-field communication system comprising a base station (BS) with hybrid analog-digital beamforming and multiple mobile users. Our goal is to maximize the system's sum-rate by optimizing the near-field codebook design for hybrid precoding. To enable fast adaptation to varying user distributions, we propose a meta-learning-based framework that integrates the model-agnostic meta-learning (MAML) algorithm with a codebook learning network. Specifically, we first design a deep neural network (DNN) to learn the near-field codebook. Then, we combine the MAML algorithm with the DNN to allow rapid adaptation to different channel conditions by leveraging a well-initialized model from the outer network. Simulation results demonstrate that our proposed framework outperforms conventional algorithms, offering improved generalization and better overall performance.

Keywords

Cite

@article{arxiv.2410.08318,
  title  = {Meta-Learning-Driven Adaptive Codebook Design for Near-Field Communications},
  author = {Mianyi Zhang and Yunlong Cai and Jiaqi Xu and A. Lee Swindlehurst},
  journal= {arXiv preprint arXiv:2410.08318},
  year   = {2024}
}
R2 v1 2026-06-28T19:17:00.861Z