Machine Learning Based Signal Detection for Ambient Backscatter Communications

Yunkai Hu, Peng Wang, Zihuai Lin, Ming Ding, Ying-Chang Liang
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引用次数: 26

Abstract

The ambient backscatter communication (AmBC) system enables radio-frequency (RF) powered devices (e.g., tags, sensors) to transmit their information bits to readers by backscattering and modulating the ambient RF signal. Different from traditional radio-frequency identification (RFID) systems, an AmBC system does not require a reader to transmit excitation signals to the tag and there is no additional carrier emitters required. Therefore, AmBC systems exhibit low-cost and high energy efficiency. The existing AmBC systems utilize an energy detector or a Minimum Mean Square Error (MMSE) detector to detect tag signals which suffers from high bit error rate (BER). In this paper, a machine learning based detection method is proposed to detect the tag signals for an AmBC system by transforming the detection problem into a classification problem. In more detail, the proposed method classifies the received signals into two groups based on the energy features of the received signals. Our simulation results show that the proposed machine learning based detection method outperforms the traditional detection methods, especially in the low SNR regime.
基于机器学习的环境后向散射通信信号检测
环境反向散射通信(AmBC)系统使射频(RF)供电设备(例如,标签,传感器)通过反向散射和调制环境RF信号将其信息位传输给阅读器。与传统的射频识别(RFID)系统不同,AmBC系统不需要阅读器将激励信号传输到标签,也不需要额外的载波发射器。因此,AmBC系统具有低成本和高能效的特点。现有的AmBC系统利用能量检测器或最小均方误差(MMSE)检测器来检测高误码率(BER)的标签信号。本文提出了一种基于机器学习的检测方法,将检测问题转化为分类问题,对AmBC系统的标签信号进行检测。更详细地说,该方法基于接收信号的能量特征将接收信号分为两组。仿真结果表明,基于机器学习的检测方法优于传统的检测方法,特别是在低信噪比条件下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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