IRS 辅助单静态反向散射系统的联合主动和被动波束成形:无监督学习方法

Sahar Idrees;Salman Durrani;Zhiwei Xu;Xiaolun Jia;Xiangyun Zhou
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引用次数: 0

摘要

后向散射通信(BackCom)被视为物联网(IoT)中实现无处不在的连接的关键因素。然而,有限的范围和较低的可实现比特率等固有问题是广泛部署 BackCom 的突出障碍。在这项工作中,我们通过考虑一种由智能反射面(IRS)辅助的单静态 BackCom 系统,并通过基于数据驱动的深度学习(DL)方法进行无缝控制,来应对这些挑战。我们提出了一种深度残差神经网络(DRCNN)BackIRS-Net,它利用 IRS 相移与阅读器波束成形之间的独特耦合,共同优化这些量,以最大限度地提高阅读器接收到的反向散射信号的有效信噪比(SNR)。我们的研究表明,训练有素的 BackIRS-Net 的性能接近传统的基于优化的方法,而所需的计算复杂度和时间却大大减少,这表明该方案可用于实时部署。我们的结果表明,中等大小的 IRS 可以显著提高反向散射信噪比,从而将单静态 BackCom 的范围扩大 4 倍,这对于基于 BackCom 的物联网系统来说是一项重要改进。
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Joint Active and Passive Beamforming for IRS-Assisted Monostatic Backscatter Systems: An Unsupervised Learning Approach
Backscatter Communication (BackCom) has been envisioned as a key enabler for ubiquitous connectivity in the Internet of Things (IoT). However, the inherent issues of limited range and low achievable bit rate are prominent barriers to the widespread deployment of BackCom. In this work, we address these challenges by considering a monostatic BackCom system assisted by an intelligent reflecting surface (IRS) and controlled seamlessly by data driven deep learning (DL) based approach. We propose a deep residual neural network (DRCNN) BackIRS-Net that exploits the unique coupling between the IRS phase shifts and the beamforming at the reader, to jointly optimize these quantities in order to maximize the effective signal to noise ratio (SNR) of the backscatter signal received at the reader. We show that the performance of a trained BackIRS-Net is close to the conventional optimization based approach while requiring much less computational complexity and time, which indicates the utility of this scheme for real-time deployment. Our results show that an IRS of moderate size can significantly improve backscatter SNR, resulting in range extension by a factor of 4 for monostatic BackCom, which is an important improvement in the context of BackCom based IoT systems.
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