Radio Frequency (RF) emissions from electronic devices expose security vulnerabilities that can be used by an attacker to extract otherwise unobtainable information. Two realms of study were investigated here, including the exploitation of 1) unintentional RF emissions in the field of Side Channel Analysis (SCA), and 2) intentional RF emissions from physical devices in the field of RF-Distinct Native Attribute (RF-DNA) fingerprinting. Statistical analysis on the linear model fit to measured SCA data in Linear Regression Attacks (LRA) improved performance, achieving 98% success rate for AES key-byte identification from unintentional emissions. However, the presence of non-Gaussian noise required the use of a non-parametric classifier to furt...
In today’s connected world, almost everyone has at least one internet-connected device. With the num...
Radio Frequency RF Distinct Native Attribute (RF-DNA) Fingerprinting is a PHY-based security method ...
It is estimated that the number of Internet of Things (IoT) devices will reach 75 billion in the nex...
Radio Frequency (RF) emissions from electronic devices expose security vulnerabilities that can be u...
This research was performed to expand AFIT\u27s Radio Frequency Distinct Native Attribute (RF-DNA) f...
The ZigBee specification provides a niche capability, extending the IEEE 802.15.4 standard to provid...
Programmable Logic Controllers are used to control and monitor automated process in many Supervisory...
RF-DNA fingerprints are a waveform-based approach capable of distinguishing one device from others o...
The research presented here provides a comparison of classification, verification, and computational...
ZigBee networks are increasingly popular for use in medical, industrial, and other applications. Tra...
The popularity of ZigBee devices continues to grow in home automation, transportation, traffic manag...
This dissertation introduces a GRLVQI classifier into an RF-DNA fingerprinting process and demonstra...
This research contributed to the AFIT\u27s Radio Frequency Intelligence (RFINT) program by developin...
The Industrial Internet of Things (IIoT) market is skyrocketing towards 100 billion deployed devices...
This work provides development of Constellation Based DNA (CB-DNA) Fingerprinting for use in systems...
In today’s connected world, almost everyone has at least one internet-connected device. With the num...
Radio Frequency RF Distinct Native Attribute (RF-DNA) Fingerprinting is a PHY-based security method ...
It is estimated that the number of Internet of Things (IoT) devices will reach 75 billion in the nex...
Radio Frequency (RF) emissions from electronic devices expose security vulnerabilities that can be u...
This research was performed to expand AFIT\u27s Radio Frequency Distinct Native Attribute (RF-DNA) f...
The ZigBee specification provides a niche capability, extending the IEEE 802.15.4 standard to provid...
Programmable Logic Controllers are used to control and monitor automated process in many Supervisory...
RF-DNA fingerprints are a waveform-based approach capable of distinguishing one device from others o...
The research presented here provides a comparison of classification, verification, and computational...
ZigBee networks are increasingly popular for use in medical, industrial, and other applications. Tra...
The popularity of ZigBee devices continues to grow in home automation, transportation, traffic manag...
This dissertation introduces a GRLVQI classifier into an RF-DNA fingerprinting process and demonstra...
This research contributed to the AFIT\u27s Radio Frequency Intelligence (RFINT) program by developin...
The Industrial Internet of Things (IIoT) market is skyrocketing towards 100 billion deployed devices...
This work provides development of Constellation Based DNA (CB-DNA) Fingerprinting for use in systems...
In today’s connected world, almost everyone has at least one internet-connected device. With the num...
Radio Frequency RF Distinct Native Attribute (RF-DNA) Fingerprinting is a PHY-based security method ...
It is estimated that the number of Internet of Things (IoT) devices will reach 75 billion in the nex...