近空间飞艇载大规模多输入多输出网络的深度联合语义编码和波束成形

Minghui Wu;Zhen Gao;Zhaocheng Wang;Dusit Niyato;George K. Karagiannidis;Sheng Chen
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引用次数: 0

摘要

由于飞艇在平流层长期驻留的优势,近空飞艇通信网络被认为是未来地空一体化网络不可缺少的组成部分,但它迫切需要可靠、高效的飞艇- x链路。为了提高传输效率和容量,本文提出将语义通信与海量多输入多输出(MIMO)技术相结合。针对基于飞艇的空间海量MIMO图像传输网络,提出了一种深度联合语义编码和波束形成(JSCBF)方案,该方案融合源和信道的语义,共同设计语义编码和物理层波束形成。首先,我们设计了两个语义提取网络,分别从图像源和通道状态信息中提取语义。然后,我们提出了一个语义融合网络,可以将这些语义融合成复杂值的语义特征,以供后续物理层传输。为了在物理层有效地传输融合的语义特征,我们提出了混合数据和模型驱动的语义感知波束形成网络。在接收端,设计语义解码网络重构传输图像。最后,我们使用接收器上的图像重建质量作为度量,执行端到端深度学习来联合训练所有模块。所提出的深度JSCBF方案充分结合了语义通信的高效源压缩和鲁棒纠错能力与大规模MIMO的高频谱效率,实现了较现有方法的显著性能提升。
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Deep Joint Semantic Coding and Beamforming for Near-Space Airship-Borne Massive MIMO Network
Near-space airship-borne communication network is recognized to be an indispensable component of the future integrated ground-air-space network thanks to airships’ advantage of long-term residency at stratospheric altitudes, but it urgently needs reliable and efficient Airship-to-X link. To improve the transmission efficiency and capacity, this paper proposes to integrate semantic communication with massive multiple-input multiple-output (MIMO) technology. Specifically, we propose a deep joint semantic coding and beamforming (JSCBF) scheme for airship-based massive MIMO image transmission network in space, in which semantics from both source and channel are fused to jointly design the semantic coding and physical layer beamforming. First, we design two semantic extraction networks to extract semantics from image source and channel state information, respectively. Then, we propose a semantic fusion network that can fuse these semantics into complex-valued semantic features for subsequent physical-layer transmission. To efficiently transmit the fused semantic features at the physical layer, we then propose the hybrid data and model-driven semantic-aware beamforming networks. At the receiver, a semantic decoding network is designed to reconstruct the transmitted images. Finally, we perform end-to-end deep learning to jointly train all the modules, using the image reconstruction quality at the receivers as a metric. The proposed deep JSCBF scheme fully combines the efficient source compressibility and robust error correction capability of semantic communication with the high spectral efficiency of massive MIMO, achieving a significant performance improvement over existing approaches.
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Table of Contents IEEE Communications Society Information Corrections to “Coverage Rate Analysis for Integrated Sensing and Communication Networks” IEEE Journal on Selected Areas in Communications Publication Information Guest Editorial: Integrated Ground-Air-Space Wireless Networks for 6G Mobile—Part II
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