用于高效 CSI 反馈的混合 CNN 变压器网络

IF 2 4区 计算机科学 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC Physical Communication Pub Date : 2024-08-22 DOI:10.1016/j.phycom.2024.102477
Ruohan Zhao, Ziang Liu, Tianyu Song, Jiyu Jin, Guiyue Jin, Lei Fan
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引用次数: 0

摘要

近年来,许多基于深度学习的方法被用于大规模多输入多输出(MIMO)系统中的信道状态信息(CSI)反馈。基于变压器的网络利用全局自注意机制,能有效捕捉天线之间的远程相关性,而卷积神经网络(CNN)则擅长获取本地信息。为了平衡两者的优势,本文提出了一种混合 CNN 和 Transformer 的高效特征聚合网络,即 EFANet。具体来说,我们通过混合卷积嵌入单元(CEU)和窗口多头自注意力(W-MSA),提出了精炼窗口多头自注意力(RW-MSA),以减少窗口间的信息丢失,实现高效特征聚合。此外,我们还开发了本地增强前馈网络(LEFN),以进一步整合 CSI 矩阵中的本地信息,并对不同区域的详细特征进行建模。最后,我们还设计了补偿单元(CU),以进一步补偿 CSI 矩阵中的全局和局部特征。通过上述设计,全局和局部特征可以充分互动,从而减少信息损失。大量实验表明,所提出的方法在降低计算复杂度的同时,实现了更好的 CSI 重建性能。
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Hybrid CNN-transformer network for efficient CSI feedback

In recent years, many deep learning-based methods have been utilized for the feedback of Channel State Information (CSI) in massive MIMO systems. The Transformer-based networks leverage global self-attention mechanisms that can effectively capture remote correlations between antennas, while Convolutional Neural Networks (CNNs) excel in acquiring local information. To balance the advantages of both, this paper proposes an Efficient Feature Aggregation Network called EFANet, which hybrid CNNs and Transformer. Specifically, we propose a Refined Window Multi-head Self-Attention (RW-MSA) through hybrid Convolutional Embedding Unit (CEU) and Window Multi-head Self-Attention (W-MSA) to reduce information loss between windows and achieve efficient feature aggregation. Additionally, we develop a Local Enhanced Feedforward Network (LEFN) to further integrate local information in the CSI matrix and model detailed features of different regions. Finally, the Compensation Unit (CU) is designed to further compensate for global-local features in the CSI matrix. Through the above design, the global and local features are fully interactive to reduce information loss. Numerous experiments have shown that the proposed method achieves better CSI reconstruction performance while reducing computational complexity.

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来源期刊
Physical Communication
Physical Communication ENGINEERING, ELECTRICAL & ELECTRONICTELECO-TELECOMMUNICATIONS
CiteScore
5.00
自引率
9.10%
发文量
212
审稿时长
55 days
期刊介绍: PHYCOM: Physical Communication is an international and archival journal providing complete coverage of all topics of interest to those involved in all aspects of physical layer communications. Theoretical research contributions presenting new techniques, concepts or analyses, applied contributions reporting on experiences and experiments, and tutorials are published. Topics of interest include but are not limited to: Physical layer issues of Wireless Local Area Networks, WiMAX, Wireless Mesh Networks, Sensor and Ad Hoc Networks, PCS Systems; Radio access protocols and algorithms for the physical layer; Spread Spectrum Communications; Channel Modeling; Detection and Estimation; Modulation and Coding; Multiplexing and Carrier Techniques; Broadband Wireless Communications; Wireless Personal Communications; Multi-user Detection; Signal Separation and Interference rejection: Multimedia Communications over Wireless; DSP Applications to Wireless Systems; Experimental and Prototype Results; Multiple Access Techniques; Space-time Processing; Synchronization Techniques; Error Control Techniques; Cryptography; Software Radios; Tracking; Resource Allocation and Inference Management; Multi-rate and Multi-carrier Communications; Cross layer Design and Optimization; Propagation and Channel Characterization; OFDM Systems; MIMO Systems; Ultra-Wideband Communications; Cognitive Radio System Architectures; Platforms and Hardware Implementations for the Support of Cognitive, Radio Systems; Cognitive Radio Resource Management and Dynamic Spectrum Sharing.
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