ADS-B Attack Classification using Machine Learning Techniques

Thabet Kacem, Aydin Kaya, A. Keçeli, C. Catal, D. Wijesekera, P. Costa
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引用次数: 1

Abstract

Automatic Dependent Surveillance Broadcast (ADS-B) is one of the most prominent protocols in Air Traffic Control (ATC). Its key advantages derive from using GPS as a location provider, resulting in better location accuracy while offering substantially lower deployment and operational costs when compared to traditional radar technologies. ADS-B not only can enhance radar coverage but also is a standalone solution to areas without radar coverage. Despite these advantages, a wider adoption of the technology is limited due to security vulnerabilities, which are rooted in the protocol’s open broadcast of clear-text messages. In spite of the seriousness of such concerns, very few researchers attempted to propose viable approaches to address such vulnerabilities. In addition to the importance of detecting ADS-B attacks, classifying these attacks is as important since it will enable the security experts and ATC controllers to better understand the attack vector thus enhancing the future protection mechanisms. Unfortunately, there have been very little research on automatically classifying ADS-B attacks. Even the few approaches that attempted to do so considered just two classification categories, i.e. malicious message vs not malicious message. In this paper, we propose a new module to our ADS-Bsec framework capable of classifying ADS-B attacks using advanced machine learning techniques including Support Vector Machines (SVM), Decision Tree, and Random Forest (RF). Our module has the advantage that it adopts a multi-class classification approach based on the nature of the ADS-B attacks not just the traditional 2category classifiers. To illustrate and evaluate our ideas, we designed several experiments using a flight dataset from Lisbon to Paris that includes ADS-B attacks from three categories. Our experimental results demonstrated that machine learningbased models provide high performance in terms of accuracy, sensitivity, and specificity metrics.
基于机器学习技术的ADS-B攻击分类
自动相关监视广播(ADS-B)是空中交通管制(ATC)中最重要的协议之一。它的主要优势在于使用GPS作为定位提供商,与传统雷达技术相比,定位精度更高,部署成本和操作成本也大大降低。ADS-B不仅可以增强雷达覆盖范围,而且对于没有雷达覆盖的地区,ADS-B是一个独立的解决方案。尽管有这些优势,但由于安全漏洞,该技术的广泛采用受到限制,这些漏洞根源于协议公开广播明文消息。尽管这些问题很严重,但很少有研究人员试图提出可行的方法来解决这些脆弱性。除了检测ADS-B攻击的重要性之外,对这些攻击进行分类也同样重要,因为它将使安全专家和ATC控制器能够更好地了解攻击向量,从而增强未来的保护机制。遗憾的是,目前关于ADS-B攻击自动分类的研究很少。即使是少数尝试这样做的方法也只考虑两种分类类别,即恶意消息与非恶意消息。在本文中,我们为ADS-Bsec框架提出了一个新的模块,能够使用先进的机器学习技术(包括支持向量机(SVM),决策树和随机森林(RF))对ADS-B攻击进行分类。我们的模块的优点是它采用了基于ADS-B攻击性质的多类分类方法,而不仅仅是传统的2类分类器。为了说明和评估我们的想法,我们使用从里斯本到巴黎的航班数据集设计了几个实验,其中包括三类ADS-B攻击。我们的实验结果表明,基于机器学习的模型在准确性、灵敏度和特异性指标方面提供了高性能。
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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