Jammer Detection based on Artificial Neural Networks: A Measurement Study

Selen Gecgel, Caner Goztepe, Günes Karabulut-Kurt
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引用次数: 30

Abstract

Wireless networks are prone to jamming attacks due to the broadcast nature of the wireless transmission environment. The effect of jamming attacks can be further increased as the jammers can focus their signals on reference signals of the transmitters, to further deteriorate the transmission performance. In this paper, we aim to jointly determine the presence of the jammer, along with its attack characteristics by using neural networks. Two neural network architectures are implemented; deep convolutional neural networks and deep recurrent neural networks. The presence of jammer and the transmitter and the type of the jammer is determined through a diverse set of scenarios that are implemented on software defined radios using orthogonal frequency division multiplexing based signaling. To improve the detection performance, prepossessing techniques are applied. Test results show that the proposed approach can effectively detect and classify the jamming attacks with around 85% accuracy.
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基于人工神经网络的干扰检测:测量研究
由于无线传输环境的广播性,无线网络容易受到干扰攻击。由于干扰者会将自己的信号集中在发射机的参考信号上,从而进一步恶化发射机的传输性能,从而进一步增加了干扰攻击的效果。在本文中,我们的目标是利用神经网络共同确定干扰机的存在及其攻击特征。实现了两种神经网络架构;深度卷积神经网络和深度循环神经网络。干扰机和发射机的存在以及干扰机的类型是通过使用基于正交频分复用的信令在软件定义无线电上实现的各种场景来确定的。为了提高检测性能,采用了前置技术。测试结果表明,该方法可以有效地检测和分类干扰攻击,准确率在85%左右。
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