DocumentCode :
87369
Title :
Improving ZigBee Device Network Authentication Using Ensemble Decision Tree Classifiers With Radio Frequency Distinct Native Attribute Fingerprinting
Author :
Patel, Hiren J. ; Temple, Michael A. ; Baldwin, Rusty O.
Author_Institution :
Dept. of Electr. & Comput. Eng., US Air Force Inst. of Technol. (AFIT), Dayton, OH, USA
Volume :
64
Issue :
1
fYear :
2015
fDate :
Mar-15
Firstpage :
221
Lastpage :
233
Abstract :
The popularity of ZigBee devices continues to grow in home automation, transportation, traffic management, and Industrial Control System (ICS) applications given their low-cost and low-power. However, the decentralized architecture of ZigBee ad-hoc networks creates unique security challenges for network intrusion detection and prevention. In the past, ZigBee device authentication reliability was enhanced by Radio Frequency-Distinct Native Attribute (RF-DNA) fingerprinting using a Fisher-based Multiple Discriminant Analysis and Maximum Likelihood (MDA-ML) classification process to distinguish between devices in low Signal-to-Noise Ratio (SNR) environments. However, MDA-ML performance inherently degrades when RF-DNA features do not satisfy Gaussian normality conditions, which often occurs in real-world scenarios where radio frequency (RF) multipath and interference from other devices is present. We introduce non-parametric Random Forest (RndF) and Multi-Class AdaBoost (MCA) ensemble classifiers into the RF-DNA fingerprinting arena, and demonstrate improved ZigBee device authentication. Results are compared with parametric MDA-ML and Generalized Relevance Learning Vector Quantization-Improved (GRLVQI) classifier results using identical input feature sets. Fingerprint dimensional reduction is examined using three methods, namely a pre-classification Kolmogorov-Smirnoff Test (KS-Test), a post-classification RndF feature relevance ranking, and a GRLVQI feature relevance ranking. Using the ensemble methods, an SNR=18.0 dB improvement over MDA-ML processing is realized at an arbitrary correct classification rate (%C) benchmark of %C=90%; for all SNR ∈ [0, 30] dB considered, %C improvement over MDA-ML ranged from 9% to 24%. Relative to GRLVQI processing, ensemble methods again provided improvement for all SNR, with a best improvement of %C=10% achieved at the lowest tested SNR=0.0 dB. Network penetration, measured using rogue ZigBee devices, show that at the SNR=12.- dB (%C=90%) the ensemble methods correctly reject 31 of 36 rogue access attempts based on Receiver Operating Characteristic (ROC) curve analysis and an arbitrary Rogue Accept Rate of . This performance is better than MDA-ML, and GRLVQI which rejected 25/36, and 28/36 rogue access attempts respectively. The key benefit of ensemble method processing is improved rogue rejection in noisier environments; gains of 6.0 dB, and 18.0 dB are realized over GRLVQI, and MDA-ML, respectively. Collectively considering the demonstrated %C and rogue rejection capability, the use of ensemble methods improves ZigBee network authentication, and enhances anti-spoofing protection afforded by RF-DNA fingerprinting.
Keywords :
Zigbee; ad hoc networks; authorisation; decision trees; fingerprint identification; learning (artificial intelligence); maximum likelihood detection; radiofrequency interference; telecommunication computing; telecommunication network reliability; GRLVQI feature relevance ranking; KS-Test; Kolmogorov-Smirnoff test; MCA; MDA-ML; RF-DNA features; RF-DNA fingerprinting arena; ROC; ZigBee ad hoc networks; ZigBee device authentication reliability; ZigBee device network authentication; antispoofing protection; curve analysis; ensemble decision tree classifiers; fisher-based multiple discriminant analysis; maximum likelihood; multiclass adaboost; network intrusion detection; network intrusion prevention; nonparametric random forest; post-classification RndF; radiofrequency distinct native attribute fingerprinting; radiofrequency interference; radiofrequency multipath; receiver operating characteristic; rogue rejection capability; unique security challenges; Authentication; Decision trees; Performance evaluation; Training; Vectors; Vegetation; Zigbee; AdaBoost; Radio frequency-distinct native attribute fingerprinting; ZigBee; generalized relevance learning vector quantization-improved; multiple discriminant analysis and maximum likelihood; random forest; security;
fLanguage :
English
Journal_Title :
Reliability, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9529
Type :
jour
DOI :
10.1109/TR.2014.2372432
Filename :
6981992
Link To Document :
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