论文标题
一种基于机器学习的无线通信的机器学习方法的新颖干扰攻击方法
A Novel Jamming Attacks Detection Approach Based on Machine Learning for Wireless Communication
论文作者
论文摘要
攻击攻击针对无线网络,造成了不必要的拒绝服务。尽管使用毫米波带,但5G尽管具有弹性,但仍容易受到这些攻击的影响。在过去的十年中,已经提出了几种类型的干扰检测技术,包括模糊逻辑,游戏理论,频道冲浪和时间序列。这些技术中的大多数在检测智能干扰器方面效率低下。因此,非常需要高准确性的高效且快速堵塞的检测技术。在本文中,我们比较了几种机器学习模型在检测干扰信号中的效率。我们研究了识别干扰信号的信号功能的类型,并使用这些参数生成了一个大数据集。使用此数据集,对机器学习算法进行了训练,评估和测试。这些算法是随机森林,支持向量机和神经网络。使用检测概率,错误警报的概率,错过检测的概率和准确性评估并比较这些算法的性能。仿真结果表明,基于基于检测的随机森林算法可以以高精度,高检测概率和较低的错误警报概率检测干扰器。
Jamming attacks target a wireless network creating an unwanted denial of service. 5G is vulnerable to these attacks despite its resilience prompted by the use of millimeter wave bands. Over the last decade, several types of jamming detection techniques have been proposed, including fuzzy logic, game theory, channel surfing, and time series. Most of these techniques are inefficient in detecting smart jammers. Thus, there is a great need for efficient and fast jamming detection techniques with high accuracy. In this paper, we compare the efficiency of several machine learning models in detecting jamming signals. We investigated the types of signal features that identify jamming signals, and generated a large dataset using these parameters. Using this dataset, the machine learning algorithms were trained, evaluated, and tested. These algorithms are random forest, support vector machine, and neural network. The performance of these algorithms was evaluated and compared using the probability of detection, probability of false alarm, probability of miss detection, and accuracy. The simulation results show that jamming detection based random forest algorithm can detect jammers with a high accuracy, high detection probability and low probability of false alarm.