在无人机网络中使用机器学习模型自主检测恶意事件

Nour Moustafa, A. Jolfaei
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引用次数: 11

摘要

无人机系统,即所谓的无人驾驶汽车(uav),已广泛应用于军事和民用领域。无人机系统已被用于现代军事和民用的网络战、作战和监视目的。然而,他们越来越多地遭受通过网络通信利用其漏洞的复杂恶意活动。由于无人机像有人驾驶的飞机一样构成复杂的基础设施,但没有操作员,因此它们仍然需要可靠的安全控制来确保其安全运行。本文提出一种自主入侵检测方案,用于发现利用无人机网络的高级和复杂的网络攻击。配置了一个测试平台,针对无人机网络发起恶意事件,收集合法和恶意的观察结果,并实时评估机器学习的性能。机器学习算法,包括决策树、k近邻、朴素贝叶斯、支持向量机和深度学习多层感知器,使用数据收集进行训练和评估,在检测精度、误报率和处理时间方面取得了令人鼓舞的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Autonomous detection of malicious events using machine learning models in drone networks
Drone systems, the so-called Unmanned Autonomous Vehicles (UAVs), have been widely employed in military and civilian sectors. Drone systems have been used for cyber warfare, warfighting and surveillance purposes of modern military and civilian applications. However, they have increasingly suffered from sophisticated malicious activities that exploit their vulnerabilities through network communications. As drones comprise a complex infrastructure as piloted aircraft but without operators, they still need a reliable security control to assert their safe operations. This paper proposes an autonomous intrusion detection scheme for discovering advanced and sophisticated cyberattacks that exploit drone networks. A testbed was configured to launch malicious events against a drone network for collecting legitimate and malicious observations and evaluate the performances of machine learning in real-time. Machine learning algorithms, including decision tree, k-nearest neighbors, naive Bayes, support vector machine and deep learning multi-layer perceptron, were trained and evaluated using the data collections, with promising results in terms of detection accuracy, false alarm rates, and processing times.
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