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Machine-Learning-Assisted Signal Detection in Ambient Backscatter Communication Networks

机译:环境反向散射通信网络中的机器学习辅助信号检测

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摘要

Ambient backscatter communication (AmBC) has emerged as a promising paradigm for enabling sustainable low-power operation of Internet of Things devices. This is due to its ability to enable sensing and communication through backscattering ambient wireless signals (e.g., WiFi and TV sig-nals). But a great impediment to AmBC-enabled networks is the difficulty in decoding the backscat-ter signals because the ambient signals are usually modulated and meant for other legacy receivers rather than AmBC devices. Drawing from the ability of machine learning (ML) to enhance the performance of wireless communication systems, some ML-aided techniques have been developed to assist signal detection in AmBC. Hence, this article aims to provide a comprehensive overview of the subject by describing the operation of the AmBC network, highlighting the major challenges to signal detection in AmBC, discussing and com-paring the performance of some existing ML-assisted solutions to AmBC signal detection, and highlighting some future research that could be carried out on the subject.
机译:环境反向散射通信 (AmBC) 已成为实现物联网设备可持续低功耗运行的一种有前途的范式。这是由于它能够通过反向散射的环境无线信号(例如,WiFi 和电视信号)实现传感和通信。但是,支持AmBC的网络的一大障碍是解码反向信号的困难,因为环境信号通常是调制的,并且用于其他传统接收器而不是AmBC设备。利用机器学习 (ML) 增强无线通信系统性能的能力,已经开发了一些 ML 辅助技术来辅助 AmBC 中的信号检测。因此,本文旨在通过描述 AmBC 网络的运行、强调 AmBC 中信号检测的主要挑战、讨论和比较一些现有的 ML 辅助解决方案对 AmBC 信号检测的性能,以及强调未来可以就该主题进行的一些研究来提供该主题的全面概述。

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