一种基于实时机器学习的定位依赖型无人机GPS欺骗解决方案

Mohammad Nayfeh, Joshua Price, M. Alkhatib, K. Shamaileh, N. Kaabouch, Vijay K. Devabhakuni
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摘要

本文利用树莓派处理器在无人机(UAV)上实现了三级机器学习(ML)模型,用于实时分类两种全球定位系统(GPS)欺骗攻击(即静态,动态)。首先,利用先前工作中收集的数据集开发和测试了几个模型。该数据集传达gps特定的特征,包括位置信息。使用检测率、F-score、虚警率和误检率对模型进行评估,均显示出可接受的性能。然后,将最优模型加载到处理器中,并进行实时检测和分类测试。依赖于位置的应用,如固定路线的公共交通,预计将受益于本文提出的方法,因为所开发的模型中具有经度、纬度和海拔特征。
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A Real-time Machine Learning-based GPS Spoofing Solution for Location-dependent UAV Applications
In this paper, a three-class machine learning (ML) model is implemented on an unmanned aerial vehicle (UAV) with a Raspberry Pi processor for classifying two global positioning system (GPS) spoofing attacks (i.e., static, dynamic) in real-time. First, several models are developed and tested utilizing a dataset collected in a previous work. This dataset conveys GPS-specific features, including location information. Models evaluations are carried out using the detection rate, F-score, false alarm rate, and misdetection rate, which all showed an acceptable performance. Then, the optimum model is loaded to the processor and tested for real-time detection and classification. Location-dependent applications, such as fixed-route public transportations are expected to benefit from the methodology presented herein as the longitude, latitude, and altitude features are characterized in the developed model.
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