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Identification and authentication for wireless transmission security based on RF-DNA fingerprint

机译:基于RF-DNA指纹的无线传输安全性的识别和认证

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摘要

For wireless transmission, radio-frequency device anti-cloning has become a major security issue. Radio-frequency distinct native attribute (RF-DNA) fingerprint is a developing technology to find the difference among RF devices and identify them. Comparing with previous research, (1) this paper proposed that mean (μ) feature should be added into RF-DNA fingerprint. Thus, totally four statistics (mean, standard deviation, skewness, and kurtosis) were calculated on instantaneous amplitude, phase, and frequency generated by Hilbert transform. (2) We first proposed using the logistic regression (LR) and support vector machine (SVM) to recognize such extracted fingerprint at different signal-to-noise ratio (SNR) environment. We compared their performance with traditional multiple discriminant analysis (MDA). (3) In addition, this paper also proposed to extract three sub-features (amplitude, phase, and frequency) separately to recognize extracted fingerprint under MDA. In order to make our results more universal, additive white Gaussian noise was adopted to simulate the real environment. The results show that (1) mean feature conducts an improvement in the classification accuracy, especially in low SNR environment. (2) MDA and SVM could successfully identify these RF devices, and the classification accuracy could reach 94%. Although the classification accuracy of LR is 89.2%, it could get the probability of each class. After adding a different noise, the recognition accuracy is more than 80% when SNR≥5 dB using MDA or SVM. (3) Frequency feature has more discriminant information. Phase and amplitude play an auxiliary but also pivotal role in classification recognition.
机译:对于无线传输,射频设备反克隆已成为一个主要的安全问题。射频不同的本机属性(RF-DNA)指纹是一个开发技术,可以找到RF设备之间的差异并识别它们。与先前的研究相比,(1)本文提出了应将平均(μ)特征添加到RF-DNA指纹中。因此,在瞬时振幅,相位和频率上计算了全部四种统计(平均值,标准偏差,偏斜和峰氏矩,由Hilbert变换产生的频率计算。 (2)我们首先使用Logistic回归(LR)和支持向量机(SVM)来识别不同信噪比(SNR)环境的这种提取的指纹。我们将其性能与传统的多种判别分析(MDA)进行了比较。 (3)此外,本文还提出分别提取三个子特征(幅度,相位和频率)以识别MDA下提取的指纹。为了使我们的结果更加普遍,采用了添加剂白色高斯噪声来模拟真实环境。结果表明,(1)平均特征对分类精度进行改进,特别是在低SNR环境中。 (2)MDA和SVM可以成功识别这些RF器件,并且分类准确性可以达到94%。虽然LR的分类准确性为89.2%,但它可以获得每个班级的概率。添加不同的噪声后,当使用MDA或SVM的SNR≥5dB时,识别精度大于80%。 (3)频率特征具有更多判别信息。相位和幅度在分类识别中发挥辅助,但在分类识别中也是关键的作用。

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