用于LoRa指纹识别的深度分数散射网络

Tiantian Zhang, Pinyi Ren, Dongyang Xu, Zhanyi Ren
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引用次数: 1

摘要

射频指纹(RFF)识别是一项关键的使能技术,可支持基于远程(LoRa)的物联网(IoT)中快速和可扩展的设备识别。近年来,利用人工智能技术深度挖掘RFF的硬件级、唯一性和弹性特征,显著提高了RFF的识别精度。然而,传统的人工智能技术缺乏强大的可解释性,需要大量的训练数据,占用大量的计算资源。为了解决上述问题,本文提出了一种深度分数散射网络(DFSNet),通过线性平移变多尺度分数小波滤波器提取隐藏在非平稳LoRa啁啾信号中的RFF特征。由于DFSNet的分数域变形稳定性,通过分数变换可以最大程度地降低噪声对特征提取的影响。首先,利用DFSNet构建混合RFF识别可解释性框架,计算并表征输入的散射系数;利用分数阶小波变换,我们可以清楚地解释每个系数所代表的特征。然后,分析了分数阶变形的鲁棒性。最后,实验结果表明,我们提出的混合DFSNet在每台设备上只需要5000个左右的LoRa实际训练样本,就可以达到98.5%左右的识别准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DFSNet: Deep Fractional Scattering Network for LoRa Fingerprinting
Radio frequency fingerprints (RFF) identification is a critical enabling technology to support rapid and scalable device identification in long rang (LoRa) based Internet of Things (IoT). In recent years, the identification precision of RFF has been significantly improved by leveraging artificial intelligence (AI) technologies to deeply exploit RFF features which are hardware-level, unique and resilient. However, traditional AI technologies lack strong interpretability, require massive amounts of training data and occupy huge computing resources. To address above challenges, we in this paper propose a deep fractional scattering network (DFSNet) to extract the RFF features hidden in non-stationary LoRa chirp signal through linear translation-variant multiscale fractional wavelet filters. Due to the fractional-domain deformation stability in DFSNet, the influence of noise on feature extraction can be reduced to the greatest extent by fractional transformation. Firstly, we apply DFSNet to build a hybrid RFF identification interpretability framework where the scattering coefficients of input can be calculated and characterized. Ben-efiting from the application of fractional wavelet transform, we can clearly explain the features represented by each coefficient. Then, the robustness characteristic of the fractional deformation is analyzed. Finally, experiment results show that our proposed hybrid DFSNet can achieve up to about 98.5% recognition accuracy rate with only about 5000 LoRa practical training samples per device.
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