论文标题
基于测量的FHSS型无人机控制器在2.4GHz处检测:STFT方法
Measurement based FHSS-type Drone Controller Detection at 2.4GHz: An STFT Approach
论文作者
论文摘要
无人驾驶汽车(UAV)的应用在日常生活中迅速增加,因此发现无人机和/或其飞行员是至关重要的任务。许多无人机采用频率扩散频谱(FHSS)技术进行有效,安全地与其无线电控制器(RC)进行沟通,该信号遵循跳跃模式以防止有害干扰。为了实际区分频率跳跃(FH)RC信号,应该考虑现实世界的无线电传播环境,因为许多无人机与RCS从远距离的RC进行通信,在远距离中,信号既面对慢速又快速循环的现象。因此,在这项研究与文献不同的是,我们考虑了一种在叶子存在下在丘陵地形郊区环境中捕获空中信号,在实体条件下起作用的系统。我们采用短时傅立叶变换(STFT)方法来捕获每个信号的跳跃顺序。此外,使用STFT的自相关函数(ACF)计算与每个跳跃序列相关的时间守护,这导致准确区分每个UAV RC信号。为了验证所提出的方法的性能,给出了针对不同信噪比(SNR),窗口大小和TX-RX分离值的归一化均方误差(MSE)的结果。
The applications of the unmanned aerial vehicles (UAVs) increase rapidly in everyday life, thus detecting the UAVs and/or its pilot is a crucial task. Many UAVs adopt frequency hopping spread spectrum (FHSS) technology to efficiently and securely communicate with their radio controllers (RC) where the signal follows a hopping pattern to prevent harmful interference. In order to realistically distinguish the frequency hopping (FH) RC signals, one should consider the real-world radio propagation environment since many UAVs communicate with RCs from a far distance in which signal faces both slow and fast fading phenomenons. Therefore, in this study different from the literature, we consider a system that works under real-conditions by capturing over-the-air signals at hilly terrain suburban environments in the presence of foliages. We adopt the short-time Fourier transform (STFT) approach to capture the hopping sequence of each signal. Furthermore, time guards associated with each hopping sequence are calculated using the autocorrelation function (ACF) of the STFT which results in differentiating the each UAV RC signal accurately. In order to validate the performance of the proposed method, the results of normalized mean square error (MSE) respect to different signal-to-noise ratio (SNR), window size and Tx-Rx separation values are given.