학술논문

Toward Secured Internet of Things (IoT) Networks: A New Machine Learning based Technique for Fingerprinting of Radio Devices
Document Type
Conference
Source
2022 IEEE 19th Annual Consumer Communications & Networking Conference (CCNC) Consumer Communications & Networking Conference (CCNC), 2022 IEEE 19th Annual. :955-956 Jan, 2022
Subject
Communication, Networking and Broadcast Technologies
Computing and Processing
Robotics and Control Systems
Wireless communication
Zigbee
Machine learning
Fingerprint recognition
Feature extraction
Safety
Internet of Things
Devices Identification
Radiometric Signature
Internet of Things Security
Language
ISSN
2331-9860
Abstract
The process of identifying and authenticating Internet of Things (IoT) devices based on the electromagnetic characteristics of their wireless interfaces is a topic that has been receiving a lot of attention lately due to the continuous growth in the market of embedded and wearable wireless devices. Securing the networks to whom these devices are connecting daily has become a significant security challenge, which is threatening the security and safety of thousands, maybe millions of private and public networks due to the vulnerable nature of wireless devices to a well-known set of possible attacks.In this paper, we present the initial results acquired from our work-in-progress to develop new radio-features-extraction-based technique to identify wireless devices, specifically Internet of Things (IoT) ZigBee and LoRa devices. This paper summarizes our initial experimental setup to gather and analyze the devices signals to extract the desired features and describes the signal pre-processing approach and the machine learning methods that we attempted to date.