Tree-based Supervised Machine Learning Models For Detecting GPS Spoofing Attacks on UAS

Ghilas Aissou, Hadjar Ould Slimane, Selma Benouadah, N. Kaabouch
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引用次数: 7

Abstract

The security of Unmanned Aerial System (UAS) networks is becoming crucial as their number and application in several fields are increasing every day. For navigation and positioning, the Global Navigation System (GPS) is essential as it provides an accurate location for the UAS. However, since the civilian GPS signals are open and unencrypted, attackers target them in different ways such as spoofing attacks. To address this security concern, we propose a comparison of several tree-based machine learning models, namely Random Forest, Gradient Boost, XGBoost, and LightGBM, to detect GPS spoofing attacks. In this work, the dataset was built of real GPS signals that were collected using a Software Defined Radio unit and different types of simulated GPS spoofing attacks. The results show that XGBoost has the best accuracy (95.52%) and fastest detection time (2ms), which makes this model appropriate for UAS applications.
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基于树的有监督机器学习模型检测无人机的GPS欺骗攻击
随着无人机系统(UAS)网络的数量和在多个领域的应用日益增加,其安全性变得至关重要。对于导航和定位,全球导航系统(GPS)是必不可少的,因为它为无人机提供了准确的位置。然而,由于民用GPS信号是开放的、未加密的,攻击者以欺骗攻击等不同的方式来攻击它们。为了解决这一安全问题,我们提出了几种基于树的机器学习模型的比较,即随机森林、梯度Boost、XGBoost和LightGBM,以检测GPS欺骗攻击。在这项工作中,数据集是由使用软件定义无线电单元和不同类型的模拟GPS欺骗攻击收集的真实GPS信号构建的。结果表明,XGBoost具有最高的准确率(95.52%)和最快的检测时间(2ms),适合无人机应用。
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