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Software Define Radio in Realizing the Intruding UAS Group Behavior Prediction

机译:在实现侵入UAS组行为预测时,软件定义了无线电

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With the advancement of unmanned aerial vehicle (UAV) technology, UAV swarm has been showing its great security threats towards the ground facility. With current technologies, it is still challenging in unknown UAV swarm tracking and neutralization. In this paper, we propose an analytical method in predicting drone flying behavior based on the machine learning algorithm, which could be integrated into swarm behavior prediction. Radiofrequency (RF) signals emitted from the UAV are captured by software-defined radio (SDR) to form the time series data. By using conventional short-time Fourier transform (STFT), a time-frequency spectrum revealing the RF data energy distribution is obtained for analyzing the signal variance pattern formed by the two different types of UAV flying trajectory. The transformed time-frequency domain matrix would be applied in multiple machine learning classifier for telling the difference of different flying trajectory. The results present the applicability of using machine learning in predicting the flying features and modes of intruding UAV swarm. It shows the potential application of this method in realizing effective UAV swarm negation.
机译:随着无人驾驶飞行器(UAV)技术的进步,UAV群已经向地面设施展示了其巨大的安全威胁。使用当前的技术,在未知的UAV群追踪和中和仍然挑战。本文提出了一种基于机器学习算法预测无人机飞行行为的分析方法,可以集成到群体行为预测中。从UAV发出的射频(RF)信号由软件定义的无线电(SDR)捕获以形成时间序列数据。通过使用传统的短时傅里叶变换(STFT),获得了揭示RF数据能量分布的时间频谱,用于分析由两种不同类型的UAV飞行轨迹形成的信号方差图案。转换的时频域矩阵将应用于多个机器学习分类器,以讲述不同的飞行轨迹的差异。结果介绍了使用机器学习预测飞行功能和侵入无人机群的模式的适用性。它显示了这种方法在实现有效的UAV批量否定方面的潜在应用。

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