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Detection of GPS Spoofing Attacks on Unmanned Aerial Systems

机译:无人机空中系统的GPS欺骗攻击检测

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Unmanned Aerial Systems (UAS) have received a huge interest in military and civil applications. Applications of UAS are dependent on successful communications of these systems with different entities in their networks. A UAS network can include the UAS, ground control station, navigation satellite system, and automatic dependent surveillance-broadcast (ADS-B) receiver. Through these entities, a UAS is vulnerable to different cyber-attacks such as GPS spoofing. In this attack, a malicious user transmits fake signals to the GPS receiver on the UAS. The fake signals can mislead not only the aircraft but also air traffic controllers, leading to serious problems. These problems range from aircraft hijacking to collisions and human casualties. This paper proposes a supervised machine learning method based on the artificial neural network to detect GPS spoofing signals. Different features such as pseudo range, Doppler shift, and signal-to-noise ratio (SNR) are used to perform the classification of GPS signals. We examine and compare the efficiency of one-and two-hidden-layer neural networks with various numbers of hidden neurons. The results show that our proposed method provides a high probability of detection and a low probability of false alarm.
机译:无人机空中系统(UAS)对​​军事和民用申请产生了巨大的兴趣。 UAS的应用依赖于这些系统的成功通信,在其网络中具有不同的实体。 UAS网络可以包括UA,地面控制站,导航卫星系统和自动依赖监控广播(ADS-B)接收器。通过这些实体,UAS容易受到不同的网络攻击,例如GPS欺骗。在此攻击中,恶意用户将假信号传输到UAS上的GPS接收器。假信号不仅可以误导飞机,也可以误导空中交通管制员,导致严重的问题。这些问题范围从飞机劫持到碰撞和人类伤亡。本文提出了一种基于人工神经网络检测GPS欺骗信号的监督机器学习方法。诸如伪范围,多普勒频移和信噪比(SNR)的不同特征用于执行GPS信号的分类。我们检查并比较具有各种数量的隐蔽神经元的单隐层神经网络的效率。结果表明,我们所提出的方法提供了高概率的检测概率和误报的低概率。

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