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Passive Detection, Characterization, and Localization of Multiple LFMCW LPI Signals

机译:多个LFMCW LPI信号的无源检测,表征和定位

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A method for passive Detection, Characterization, and Localization (DCL) of multiple low power, Linear Frequency Modulated Continuous Wave (LFMCW) (i.e., Low Probability of Intercept (LPI)) signals is proposed. In contrast to other detection and characterization approaches, such as those based on the Wigner-Ville Transform (WVT) or the Wigner-Ville Hough Transform (WVHT), our approach does not begin with a parametric model of the received signal that is specified directly in terms of its LFMCW constituents. Rather, we analyze the signal over time intervals that are short, non-overlapping, and contiguous by modeling it within these intervals as a sum of sinusoidal (i.e., harmonic) components with unknown frequencies, deterministic but unknown amplitudes, unknown order (i.e., number of harmonic components), and unknown noise autocorrelation function. Using this model of the signal, which we refer to as the Short-Time Harmonic Model (STHM), we implement a detection statistic based on Thompson's Method for harmonic analysis, which leads to a detection threshold that is a function of False Alarm Probability P_(FA) and not a function of the noise properties. By doing so we reliably detect the presence of multiple LFMCW signals in colored noise without the need for prewhitening, efficiently estimate (i.e., characterize) their parameters, provide estimation error variances for a subset of these parameters, and produce Time-of-Arrival (TOA) estimates that can be used to estimate the geographical location of (i.e., localize) each LFMCW source. Finally, by using the entire time-series we refine these parameter estimates by using them as initial conditions to the Maximum Likelihood Estimator (MLE), which was originally given in and later found in to be too computationally expensive for multiple LFMCW signals if accurate initial conditions were not available to limit the search space. We demonstrate the performance of our approach via simulation.
机译:提出了一种对多个低功率线性调频连续波(LFMCW)(即低拦截概率(LPI))信号进行无源检测,表征和定位(DCL)的方法。与其他检测和表征方法相比,例如基于Wigner-Ville变换(WVT)或Wigner-Ville Hough变换(WVHT)的检测和表征方法,我们的方法并非从直接指定接收信号的参数模型开始就其LFMCW成员而言。相反,我们通过将信号在这些时间间隔内建模为具有未知频率,确定性但幅度未知,阶数未知(即,正弦波)的正弦(即谐波)分量之和,来分析短,不重叠和连续的时间间隔内的信号谐波分量的数量),以及未知噪声自相关函数。使用此信号模型(我们称为短时谐波模型(STHM)),我们基于Thompson方法对谐波进行分析,以实现检测统计信息,从而得出检测阈值是虚警概率P_的函数。 (FA),而不是噪声属性的函数。这样一来,我们就可以可靠地检测到有色噪声中存在多个LFMCW信号,而无需进行预白化,可以有效地估计(即表征)它们的参数,为这些参数的子集提供估计误差方差,并产生到达时间( TOA)估计值,可用于估计(即本地化)每个LFMCW源的地理位置。最后,通过使用整个时间序列,我们将这些参数估计值用作最大似然估计器(MLE)的初始条件,从而优化了这些参数估计值,该函数最初被提供,后来发现如果精确的初始值对于多个LFMCW信号在计算上过于昂贵没有条件限制搜索空间。我们通过仿真演示了我们方法的性能。

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