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Estimation of polynomial frequency modulation law for FM signals based on modified Extended Generalized Chirp Transform

机译:基于修改扩展广义啁啾变换的FM信号多项式频率调制法的估计

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In the paper the parameter estimation of the polynomial frequency law via estimation of parameters A = [a_1, a_2, ..., a_p] of a polynomial phase signal (PPS) is addressed. The term "estimation" is used mainly in statistical community, but in this paper the word "estimation" is understood also as a synonym for the word "assessment". The frequency law is strongly related to the polynomial phase signal, because the instantaneous frequency (IF) is the first derivative of the phase function. There are many parametric and nonparametric estimation methods for computing PPS. The most popular approach is based on the maximum likelihood (ML) estimator, which has the limitation due to a required multi-dimensional search over the parameter space and has numerous local optima making the application of gradient techniques impossible. Instead of the P-dimensional search of the ML estimation, an alternative solution with iterative reduction of the number of PPS coefficients to be estimated is proposed. The reduction of the PPS coefficients can be performed by the Extended Generalized Chirped Transform (EGCT). In the first step of the EGCT algorithm, the first phase coefficient is estimated. The maximum of the EGCT determines the estimated value of this coefficient. Successive de-chirping of the signal with one just estimated phase coefficient allows to formulate the next index function for one-dimensional search of the next coefficient. The proposed one-dimensional maximization process is implemented with initial "coarse" values of parameters obtained from fitting of a polynomial to the IF trajectory acquired from the Spectrogram, the Polynomial Wigner-Ville Distribution (PWVD) and from the Recursive Least Squares filter (RLS). This approach is analyzed mainly on the example of quadratic frequency modulated signals (QFM), but it can be easily extended to higher orders of polynomials.
机译:在涉及多项式A = [A_1,A_2,...,A_P]的参数估计的多项式频率律的参数估计被寻址了多项式相位信号(PPS)。术语“估计”主要用于统计界,但在本文中,“估计”一词也被理解为“评估”这个词的同义词。频率法与多项式相位信号密切相关,因为瞬时频率(IF)是相位函数的第一个导数。有许多用于计算PPS的参数和非参数估计方法。最流行的方法是基于最大可能性(ML)估计器,这具有由于参数空间所需的多维搜索引起的限制,并且具有许多本地Optima,使得应用梯度技术不可能。代替ML估计的P维搜索,提出了具有待估计的PPS系数数量的迭代减少的替代解决方案。可以通过扩展的广义啁啾变换(EGCT)来执行PPS系数的减少。在EGCT算法的第一步中,估计第一相位数。 EGCT的最大值决定了该系数的估计值。具有一个刚刚估计的相位数的信号的连续脱啁啾允许制定下一个索引函数,以便为下一个系数的一维搜索。所提出的一维的最大化过程用从频谱图所获取的多项式的拟合到IF轨迹,多项式Wigner-Ville分布(PWVD)和来自递归最小二乘滤波器(RLS)的初始“粗糙”值实现了初始“粗糙”的值。 )。该方法主要是在二次频率调制信号(QFM)的示例上分析,但它可以很容易地扩展到更高的多项式令。

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