基于深度学习的蜂窝无人机系统GPS欺骗检测

Yongchao Dang, Chafika Benzaïd, Bin Yang, T. Taleb
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引用次数: 4

摘要

基于蜂窝的无人机(UAV)系统是为无人机操作提供可靠和快速的超视距(BVLoS)通信服务的一个有前途的范例。然而,这种系统面临着严重的GPS欺骗威胁,对无人机的位置。为了实现安全可靠的无人机导航BVLoS,本文提出了一种蜂窝网络辅助无人机位置监测和反GPS欺骗系统,该系统采用深度学习方法实时检测欺骗GPS位置。具体来说,该系统引入了一个多层感知器(MLP)模型,该模型根据从附近基站收集的路径损耗测量数据的统计特性进行训练,以确定GPS位置的真实性。实验结果表明,该方法在3个基站情况下检测GPS欺骗的准确率可达93%以上,单基站情况下检测准确率可达80%以上。
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Deep Learning for GPS Spoofing Detection in Cellular-Enabled UAV Systems
Cellular-based Unmanned Aerial Vehicle (UAV) systems are a promising paradigm to provide reliable and fast Beyond Visual Line of Sight (BVLoS) communication services for UAV operations. However, such systems are facing a serious GPS spoofing threat for UAV’s position. To enable safe and secure UAV navigation BVLoS, this paper proposes a cellular network assisted UAV position monitoring and anti-GPS spoofing system, where deep learning approach is used to live detect spoofed GPS positions. Specifically, the proposed system introduces a MultiLayer Perceptron (MLP) model which is trained on the statistical properties of path loss measurements collected from nearby base stations to decide the authenticity of the GPS position. Experiment results indicate the accuracy rate of detecting GPS spoofing under our proposed approach is more than 93% with three base stations and it can also reach 80% with only one base station.
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