Machine Learning-based RF Jamming Detection in Wireless Networks

Zhutian Feng, Cunqing Hua
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引用次数: 16

Abstract

Due to the open and shared nature of wireless medium, wireless networks are vulnerable to Radio Frequency (RF) jamming attacks since an attacker can easily emit an interference signal to prevent legitimate access to the medium or disrupt the reception of signal. An attacker may utilize different jamming strategies by exploiting the vulnerabilities of wireless protocols at different layers. Therefore, the detection and classification of jamming attacks is important to take proper countermeasures. In this paper, we firstly discuss some classic jamming strategies and some performance metrics for jamming detection. We then implement the jamming attack modules based on the NS-3 simulator, and study the effects of different types of jamming strategies. We propose some jamming detection schemes based on a variety of machine learning algorithms. The effectiveness of the proposed jamming detection schemes are valuated and optimized based on the collected data for different jamming attacks.
基于机器学习的无线网络射频干扰检测
由于无线媒体的开放性和共享性,无线网络很容易受到射频(RF)干扰攻击,因为攻击者可以很容易地发射干扰信号来阻止对媒体的合法访问或干扰信号的接收。攻击者可以通过利用无线协议在不同层的漏洞来利用不同的干扰策略。因此,对干扰攻击进行检测和分类,对采取适当的对抗措施具有重要意义。本文首先讨论了一些经典的干扰策略和干扰检测的性能指标。然后,基于NS-3仿真器实现了干扰攻击模块,并研究了不同干扰策略的效果。我们提出了一些基于各种机器学习算法的干扰检测方案。根据收集到的不同干扰攻击的数据,对所提出的干扰检测方案的有效性进行了评估和优化。
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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