基于深度学习的诱导式全球导航卫星系统欺骗检测框架

Asif Iqbal;Muhammad Naveed Aman;Biplab Sikdar
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摘要

全球导航卫星系统(GNSS)通过提供精确的定时和定位数据,在关键基础设施中发挥着至关重要的作用。然而,全球导航卫星系统的民用部分仍然容易受到各种欺骗攻击,因此需要强有力的检测机制。遏制此类攻击的能力大大提高了利用 GNSS 技术的系统的可靠性和安全性。有监督的机器学习(ML)技术在欺骗检测方面已显示出前景。然而,这些技术的有效性取决于包含所有可能攻击场景的训练数据,因此容易受到新型攻击载体的攻击。为了解决这一局限性,我们探索了基于表示学习的方法。这些方法可以用单一数据类别进行训练,然后应用于将测试样本分类为属于或不属于训练类别。在此背景下,我们引入了一个由变异自动编码器(VAE)和生成对抗网络(GAN)组成的 GNSS 欺骗检测模型。该复合模型旨在有效学习训练数据的类别分布。用于训练的特征是从标准 GNSS 接收机的射频和跟踪模块中提取的。为了训练我们的模型,我们利用了德克萨斯欺骗测试电池(TEXBAT)数据集。我们训练的模型产生了三种不同的检测器,能够有效识别欺骗信号。这些检测器在简单到中级数据集上的检测性能达到约 99%,证明了它们的鲁棒性。在以 DS-7 为代表的微妙攻击场景中,我们的方法达到了近 95% 的检测率。相比之下,在监督学习下,DS-7 的最佳检测得分仍限制在 44.1%。
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A Deep Learning Based Induced GNSS Spoof Detection Framework
The Global Navigation Satellite System (GNSS) plays a crucial role in critical infrastructure by delivering precise timing and positional data. Nonetheless, the civilian segment of the GNSS remains susceptible to various spoofing attacks, necessitating robust detection mechanisms. The ability to deter such attacks significantly enhances the reliability and security of systems utilizing GNSS technology. Supervised Machine Learning (ML) techniques have shown promise in spoof detection. However, their effectiveness hinges on training data encompassing all possible attack scenarios, rendering them vulnerable to novel attack vectors. To address this limitation, we explore representation learning-based methods. These methods can be trained with a single data class and subsequently applied to classify test samples as either belonging to the training class or not. In this context, we introduce a GNSS spoof detection model comprising a Variational AutoEncoder (VAE) and a Generative Adversarial Network (GAN). The composite model is designed to efficiently learn the class distribution of the training data. The features used for training are extracted from the radio frequency and tracking modules of a standard GNSS receiver. To train our model, we leverage the Texas Spoofing Test Battery (TEXBAT) datasets. Our trained model yields three distinct detectors capable of effectively identifying spoofed signals. The detection performance across simpler to intermediate datasets for these detectors reaches approximately 99%, demonstrating their robustness. In the case of subtle attack scenario represented by DS-7, our approach achieves an approximate detection rate of 95%. In contrast, under supervised learning, the best detection score for DS-7 remains limited to 44.1%.
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