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ZIGBEE DEVICE VERIFICATION FOR SECURING INDUSTRIAL CONTROL AND BUILDING AUTOMATION SYSTEMS

机译:用于控制工业控制和建筑自动化系统的ZigBee装置验证

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Improved wireless ZigBee network security provides a means to mitigate malicious network activity due to unauthorized devices. Security enhancement using RF-based features can augment conventional bit-level security approaches that are solely based on the MAC addresses of ZigBee devices. This paper presents a device identity verification process using RF fingerprints from like-model CC2420 2.4 GHz ZigBee device transmissions in operational indoor scenarios involving line-of-sight and through-wall propagation channels, as well as an anechoic chamber representing near-ideal conditions. A trained multiple discriminant analysis model was generated using normalized multivariate Gaussian test statistics from authorized network devices. Authorized device classification and ID verification were assessed using pre-classification Kolmogorov-Smirnov (KS) feature ranking and post-classification generalized relevance learning vector quantization improved (GRLVQI) relevance ranking. A true verification rate greater than 90% and a false verification rate less than 10% were obtained when assessing authorized device IDs. When additional rogue devices were introduced that attempted to gain unauthorized network access by spoofing the bit-level credentials of authorized devices, the KS-test feature set achieved a true verification rate greater than 90% and a rogue reject rate greater than 90% in 29 of 36 rogue scenarios while the GRLVQI feature set was successful in 28 of 36 scenarios.
机译:改进的无线ZigBee网络安全性提供了一种减轻由于未经授权的设备引起的恶意网络活动的方法。使用基于RF的功能的安全性增强可以增强仅基于ZigBee设备的MAC地址的常规位级安全性方法。本文介绍了一种设备身份验证过程,该过程使用来自类似型号的CC2420 2.4 GHz ZigBee设备传输的RF指纹,在包括视线和穿墙传播通道以及代表近乎理想条件的消声室的室内室内场景中使用。使用来自授权网络设备的归一化多元高斯检验统计信息生成训练有素的判别分析模型。使用分类前的Kolmogorov-Smirnov(KS)功能等级和分类后的广义相关性学习向量量化改进(GRLVQI)相关性等级来评估授权的设备分类和ID验证。评估授权的设备ID时,获得的真实验证率大于90%,错误验证率小于10%。当引入其他欺骗设备来通过欺骗授权设备的位级别凭据来尝试获得未经授权的网络访问时,KS测试功能集在29中实现了大于90%的真实验证率和大于90%的恶意拒绝率。 36个流氓场景中使用GRLVQI功能集,而在36个场景中的28个场景中成功使用了GRLVQI功能集。

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