A Low-Overhead Incorporation-Extrapolation based Few-Shot CSI Feedback Framework for Massive MIMO Systems

Binggui Zhou, Xi Yang, Jintao Wang, Shaodan Ma, Feifei Gao, Guanghua Yang
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Abstract

Accurate channel state information (CSI) is essential for downlink precoding at the base station (BS), especially for frequency FDD wideband massive MIMO systems with OFDM. In FDD systems, CSI is attained through CSI feedback from the user equipment (UE). However, large-scale antennas and large number of subcarriers significantly increase CSI feedback overhead. Deep learning-based CSI feedback methods have received tremendous attention in recent years due to their great capability of compressing CSI. Nonetheless, large amounts of collected samples are required to train deep learning models, which is severely challenging in practice. Besides, with the rapidly increasing number of antennas and subcarriers, most of these deep learning methods' CSI feedback overhead also grow dramatically, owing to their focus on full-dimensional CSI feedback. To address this issue, in this paper, we propose a low-overhead Incorporation-Extrapolation based Few-Shot CSI feedback Framework (IEFSF) for massive MIMO systems. To further reduce the feedback overhead, a low-dimensional eigenvector-based CSI matrix is first formed with the incorporation process at the UE, and then recovered to the full-dimensional eigenvector-based CSI matrix at the BS via the extrapolation process. After that, to alleviate the necessity of the extensive collected samples and enable few-shot CSI feedback, we further propose a knowledge-driven data augmentation method and an artificial intelligence-generated content (AIGC) -based data augmentation method by exploiting the domain knowledge of wireless channels and by exploiting a novel generative model, respectively. Numerical results demonstrate that the proposed IEFSF can significantly reduce CSI feedback overhead by 16 times compared with existing CSI feedback methods while maintaining higher feedback accuracy using only several hundreds of collected samples.
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大规模多输入多输出系统的低开销、基于并入-外推法的少量 CSI 反馈框架
准确的信道状态信息(CSI)对于基站(BS)的下行链路预编码至关重要,特别是对于采用 OFDM 的频率 FDD 宽带大规模 MIMO 系统。在 FDD 系统中,CSI 是通过用户设备(UE)的 CSI 反馈获得的。然而,大规模天线和大量子载波大大增加了 CSI 反馈开销。近年来,基于深度学习的 CSI 反馈方法因其强大的 CSI 压缩能力而备受关注。然而,训练深度学习模型需要收集大量样本,这在实践中具有很大的挑战性。此外,随着天线和子载波数量的快速增长,大多数深度学习方法由于侧重于全维 CSI 反馈,其 CSI 反馈开销也急剧增长。为了解决这个问题,我们在本文中提出了一种低开销的基于并入-外推法的无源多输入多输出系统(MIMO)CSI反馈框架(IEFSF)。为了进一步降低反馈开销,首先在 UE 上通过并入过程形成基于低维特征向量的 CSI 矩阵,然后在 BS 上通过外推过程恢复为基于全维特征向量的 CSI 矩阵。之后,为了减轻大量采集样本的必要性并实现少量的 CSI 反馈,我们进一步提出了一种知识驱动的数据增强方法和一种基于人工智能生成内容(AIGC)的数据增强方法,分别利用了无线信道的领域知识和一种新型生成模型。数值结果表明,与现有的 CSI 反馈方法相比,所提出的 IEFSF 能显著减少 CSI 反馈开销 16 倍,同时仅使用数百个采集样本就能保持较高的反馈精度。
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