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Analysis of Classification Methods Based on Radio Frequency Fingerprint for Zigbee Devices

机译:基于ZigBee设备射频指纹的分类方法分析

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Radio frequency fingerprint is an inherent characteristic of wireless communication devices which can be extracted from communication signals and be applied in wireless device identification for communication system security. This paper selects different characteristics of RF fingerprints and compares the identification accuracy of Zigbee devices with five classification algorithms, including support vector machine, bagging, neural network, naive Bayes, and random forest algorithms. The experimental research shows that the highest identification accuracy reaches approximately 100% by using multi-features of frequency offset, IQ offset, and circle offset based on the neural network algorithm under high SNR. With the reduction in SNR, the identification accuracy based on bagging algorithm with multi-features of frequency offset and IQ offset is the highest. The performance of support vector machine algorithm is the most stable.
机译:射频指纹是可以从通信信号中提取的无线通信设备的固有特性,并应用于用于通信系统安全的无线设备识别。本文选择了RF指纹的不同特性,并比较了具有五种分类算法的ZigBee器件的识别精度,包括支持向量机,装袋,神经网络,天真贝叶斯和随机林算法。实验研究表明,使用基于高SNR下的神经网络算法的频率偏移,IQ偏移和圆圈偏移,最高识别精度达到大约100%。随着SNR的减少,基于频率偏移和IQ偏移的多特征的袋装算法的识别精度最高。支持向量机算法的性能是最稳定的。

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