| Literature DB >> 33551452 |
Mohammad Amin Haji Bagheri Fard1, Jean-Yves Chouinard1, Bernard Lebel2.
Abstract
In modern wireless systems such as ZigBee, sensitive information which is produced by the network is transmitted through different wired or wireless nodes. Providing the requisites of communication between diverse communication system types, such as mobiles, laptops, and desktop computers, does increase the risk of being attacked by outside nodes. Malicious (or unintentional) threats, such as trying to obtain unauthorized accessibility to the network, increase the requirements of data security against the rogue devices trying to tamper with the identity of authorized devices. In such manner, focusing on Radio Frequency Distinct Native Attributes (RF-DNA) of features extracted from physical layer responses (referred to as preambles) of ZigBee devices, a dataset of distinguishable features of all devices can be produced which can be exploited for the detection and rejection of spoofing/rogue devices. Through this procedure, distinction of devices manufactured by the different/same producer(s) can be realized resulting in an improvement of classification system accuracy. The two most challenging problems in initiating RF-DNA are (1) the mechanism of features extraction in the generation of a dataset in the most effective way for model classification and (2) the design of an efficient model for device discrimination of spoofing/rogue devices. In this paper, we analyze the physical layer features of ZigBee devices and present methods based on deep learning algorithms to achieve high classification accuracy, based on wavelet decomposition and on the autoencoder representation of the original dataset.Entities:
Keywords: Autoencoder learning; Data preamble; Physical layer; RF-DNA; Wavelet-transform; Wireless networks; ZigBee devices
Year: 2020 PMID: 33551452 PMCID: PMC7842151 DOI: 10.1007/s12243-020-00796-x
Source DB: PubMed Journal: Ann Telecommun ISSN: 0003-4347 Impact factor: 1.444