A Review of Recent Developments on Secure Authentication Using RF Fingerprints Techniques

Huseyin Parmaksiz, C. Karakuzu
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引用次数: 2

Abstract

The Internet of Things (IoT) concept is widely used today. As IoT becomes more widely adopted, the number of devices communicating wirelessly (using various communication standards) grows. Due to resource constraints, customized security measures are not possible on IoT devices. As a result, security is becoming increasingly important in IoT. It is proposed in this study to use the physical layer properties of wireless signals as an effective method of increasing IoT security. According to the literature, radio frequency (RF) fingerprinting (RFF) techniques are used as an additional layer of security for wireless devices. To prevent spoofing or spoofing attacks, unique fingerprints appear to be used to identify wireless devices for security purposes (due to manufacturing defects in the devices' analog components). To overcome the difficulties in RFF, different parts of the transmitted signals (transient/preamble/steady-state) are used. This review provides an overview of the most recent RFF technique developments. It discusses various solution methods as well as the challenges that researchers face when developing effective RFFs. It takes a step towards the discovery of the wireless world in this context by drawing attention to the existence of software-defined radios (SDR) for signal capture. It also demonstrates how and what features can be extracted from captured RF signals from various wireless communication devices. All of these approaches' methodologies, classification algorithms, and feature classification are explained. In addition, this study discusses how deep learning, neural networks, and machine learning algorithms, in addition to traditional classifiers, can be used. Furthermore, the review gives researchers easy access to sample datasets in this field.
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射频指纹技术安全认证研究进展综述
物联网(IoT)概念在当今被广泛使用。随着物联网被更广泛地采用,无线通信(使用各种通信标准)的设备数量也在增长。由于资源限制,在物联网设备上无法定制安全措施。因此,安全在物联网中变得越来越重要。本研究提出利用无线信号的物理层特性作为提高物联网安全性的有效方法。根据文献,射频(RF)指纹(RFF)技术被用作无线设备的额外安全层。为了防止欺骗或欺骗攻击,出于安全目的,似乎使用唯一的指纹来识别无线设备(由于设备模拟组件的制造缺陷)。为了克服RFF中的困难,使用了传输信号的不同部分(瞬态/前置/稳态)。本文综述了RFF技术的最新发展。它讨论了各种解决方法以及研究人员在开发有效的RFFs时面临的挑战。它通过引起人们对用于信号捕获的软件定义无线电(SDR)的存在的注意,向在这种背景下发现无线世界迈出了一步。它还演示了如何以及哪些特征可以从各种无线通信设备捕获的射频信号中提取。解释了所有这些方法的方法、分类算法和特征分类。此外,本研究还讨论了除了传统分类器之外,如何使用深度学习、神经网络和机器学习算法。此外,该综述使研究人员可以轻松访问该领域的样本数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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