针对无人机GPS欺骗攻击的智能检测算法

Shenqing Wang, Jian Wang, Chunhua Su, Xinshu Ma
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引用次数: 17

摘要

无人机技术在民用和军事信息获取领域的应用越来越广泛。GPS是无人机导航定位最关键的部分。然而,由于GPS信号的通信通道是开放的,攻击者可以伪装成真实的GPS信号对民用无人机进行GPS欺骗攻击。目前,针对GPS欺骗攻击的检测方案可分为三类,分别基于加密和数字签名、GPS信号的特性和无人机的各种外部特性。但这些方法存在计算效率低、设备升级困难、应用场景有限等问题。为了解决这些问题,我们提出了一种新的基于长短期记忆(LSTM)的GPS欺骗攻击检测方法。为了提高检测率,我们在机器学习算法之后,让无人机按照特定形状的路径飞行,精确检测GPS欺骗攻击。这也是机器学习首次被用于检测GPS欺骗攻击。根据该算法,可以在短时间内准确、快速地检测出GPS欺骗攻击。本文详细介绍了我们提出的抵抗GPS欺骗攻击的算法,并在仿真环境下进行了相应的实验。实验结果表明,该方法可以快速准确地检测无人机GPS欺骗攻击,而无需对现有设备进行升级。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent Detection Algorithm Against UAVs' GPS Spoofing Attack
Unmanned Aerial Vehicle (UAV) technology is more and more widely used in the field of civil and military information acquisition. GPS plays the most critical part of UAVs' navigation and positioning. However, since the communication channel of the GPS signals is open, attackers can disguise as real GPS signals to launch GPS spoofing attacks on civilian UAVs. At present, the detection schemes for GPS spoofing attacks can be divided into three categories respectively based on encryption and digital signatures, the characteristics of the GPS signal and various external characteristics of UAVs. However, there are some problems in these methods, such as low computing efficiency, difficulty in equipment upgrading, and limited application scenarios. To solve these problems, we propose a new GPS spoofing attack detection method based on Long Short-Term Memory (LSTM) which is a machine learning algorithm. In order to improve the detection ratio, after the machine learning algorithm, we let the UAVs fly according to the path of a specific shape to accurately detect GPS spoofing attacks. This is also the first time machine learning has been used to detect GPS spoofing attacks. According to our algorithm, we can detect GPS spoofing attacks accurately and quickly in a short time. This paper describes in detail the algorithm we proposed to resist GPS spoofing attacks, and the corresponding experiments are carried out in the simulation environment. The experimental results show that our method can quickly and accurately detect UAV GPS spoofing attacks without requiring upgrades to existing equipment.
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