A Machine Learning Approach for Detecting and Classifying Jamming Attacks Against OFDM-based UAVs

Jered Pawlak, Yuchen Li, Joshua Price, M. Wright, K. Shamaileh, Quamar Niyaz, V. Devabhaktuni
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引用次数: 8

Abstract

In this paper, a machine learning (ML) approach is proposed to detect and classify jamming attacks on unmanned aerial vehicles (UAVs). Four attack types are implemented using software-defined radio (SDR); namely, barrage, single-tone, successive-pulse, and protocol-aware jamming. Each type is launched against a drone that uses orthogonal frequency division multiplexing (OFDM) communication to qualitatively analyze its impacts considering jamming range, complexity, and severity. Then, an SDR is utilized in proximity to the drone and in systematic testing scenarios to record the radiometric parameters before and after each attack is launched. Signal-to-noise ratio (SNR), energy threshold, and several OFDM parameters are exploited as features and fed to six ML algorithms to explore and enable autonomous jamming detection/classification. The algorithms are quantitatively evaluated with metrics including detection and false alarm rates to evaluate the received signals and facilitate efficient decision-making for improved reception integrity and reliability. The resulting ML approach detects and classifies jamming with an accuracy of 92.2% and a false-alarm rate of 1.35%.
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基于ofdm的无人机干扰检测与分类的机器学习方法
本文提出了一种机器学习方法来检测和分类无人机的干扰攻击。利用软件定义无线电(SDR)实现了四种攻击类型;即弹幕干扰、单音干扰、连续脉冲干扰和协议感知干扰。每种类型都是针对使用正交频分复用(OFDM)通信的无人机发射的,以定性地分析其影响,考虑干扰范围,复杂性和严重性。然后,在无人机附近和系统测试场景中使用SDR记录每次攻击前后的辐射参数。信噪比(SNR)、能量阈值和几个OFDM参数被用作特征,并被馈送到六种ML算法中,以探索和实现自主干扰检测/分类。采用检测和误报率等指标对算法进行定量评估,以评估接收到的信号,并促进有效决策,以提高接收完整性和可靠性。所得到的机器学习方法检测和分类干扰的准确率为92.2%,误报率为1.35%。
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