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4G Security Using Physical Layer RF-DNA with DE-Optimized LFS Classification

机译:使用具有DE优化的LFS分类的物理层RF-DNA进行4G安全

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Wireless communication networks remain underattack with ill-intentioned “hackers” routinely gaining unauthorized access through Wireless Access Points(WAPs)–one of the most vulnerable points in an informationtechnology system. The goal here is to demonstrate thefeasibility of using Radio Frequency (RF) air monitoring to augment conventional bit-level security at WAPs. The specific networks of interest are those based on Orthogonal Frequency Division Multiplexing (OFDM), to include 802.11a/g WiFi and 4G 802.16 WiMAX. Proof-of-concept results are presented to demonstrate the effectiveness of a “Learningfrom Signals” (LFS) classifier with Gaussian kernel bandwidth parameters optimally determined through DifferentialEvolution (DE). The resultant DE-optimized LFS classifier is implemented within an RF “Distinct Native Attribute” (RFDNA) fingerprinting process using both Time Domain (TD) and Spectral Domain (SD) input features. The RF-DNA isused for intra-manufacturer (like-model devices from a given manufacturer) discrimination of IEEE compliant 802.11a WiFi devices and 802.16e WiMAX devices. A comparative performance assessment is provided using results from the proposed DE-optimized LFS classifier and a Bayesian-based Multiple Discriminant Analysis/Maximum Likelihood (MDA/ML) classifier as used in previous demonstrations. The assessment is performed using identical TD and SD fingerprint features for both classifiers. Finally, the impact of Gaussian, triangular, and uniform kernel functions on classifier performance is demonstrated. Preliminary resultsof the DE-optimized classifier are very promising, with correct classification improvement of 15% to 40% realized over the range of signal to noise ratios considered.
机译:无线通信网络仍然受到攻击,恶意的“黑客”通常会通过无线接入点(WAP)获得未经授权的访问,而WAP是信息技术系统中最易受攻击的点之一。此处的目标是演示使用射频(RF)空中监视来增强WAP上常规位级别安全性的可行性。感兴趣的特定网络是基于正交频分复用(OFDM)的网络,其中包括802.11a / g WiFi和4G 802.16 WiMAX。提出了概念验证结果,以证明通过差分演化(DE)最佳确定的具有高斯内核带宽参数的“从信号中学习”(LFS)分类器的有效性。通过使用时域(TD)和谱域(SD)输入功能在RF“独特的本机属性”(RFDNA)指纹识别过程中实现最终的DE优化LFS分类器。 RF-DNA用于制造商(给定制造商的同类设备)对IEEE兼容802.11a WiFi设备和802.16e WiMAX设备的区分。使用建议的DE优化LFS分类器和先前演示中使用的基于贝叶斯的多判别分析/最大似然(MDA / ML)分类器的结果,提供了比较性能评估。对于两个分类器,使用相同的TD和SD指纹特征进行评估。最后,论证了高斯,三角和统一核函数对分类器性能的影响。经DE优化的分类器的初步结果非常有希望,在考虑的信噪比范围内,正确的分类改进可达到15%至40%。

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