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首页> 外文期刊>IEEE Transactions on Signal Processing >Performance of ESPRIT for Estimating Mixtures of Complex Exponentials Modulated by Polynomials
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Performance of ESPRIT for Estimating Mixtures of Complex Exponentials Modulated by Polynomials

机译:ESPRIT用于估计多项式调制的复杂指数混合的性能

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摘要

High-resolution (HR) methods are known to provide accurate frequency estimates for discrete spectra. The polynomial amplitude complex exponentials (PACE) model, also called quasi-polynomial model in the literature, was presented as the most general model tractable by HR methods. A subspace-based estimation scheme was recently proposed, derived from the classical ESPRIT algorithm. In this paper, we focus on the performance of this estimator. We first present some asymptotic expansions of the estimated parameters, obtained at the first order under the assumption of a high signal-to-noise ratio (SNR). Then the performance of the generalized ESPRIT algorithm for estimating the parameters of this model is analyzed in terms of bias and variance, and compared to the Cramer-Rao bounds (CRB). This performance is studied in an asymptotic context, and it is proved that the efficiency of undamped single poles estimators is close to the optimality. Moreover, our results show that the best performance is obtained for a proper dimensioning of the data. To illustrate the practical capabilities of the generalized ESPRIT algorithm, we finally propose an application to ARMA filter synthesis, in the context of system conversion from continuous time to discrete time.
机译:高分辨率(HR)方法可为离散频谱提供准确的频率估计。多项式幅度复数指数(PACE)模型(在文献中也称为准多项式模型)被提出为可通过HR方法处理的最通用模型。最近提出了一种基于子空间的估计方案,该方案源自经典的ESPRIT算法。在本文中,我们重点关注该估计量的性能。我们首先介绍在高信噪比(SNR)的假设下在一阶获得的估计参数的一些渐近展开。然后根据偏差和方差分析广义ESPRIT算法的性能,以估计该模型的参数,并将其与Cramer-Rao边界(CRB)进行比较。在渐近环境下研究了该性能,并证明了无阻尼单极点估计器的效率接近最优。此外,我们的结果表明,对数据进行适当的尺寸标注可获得最佳性能。为了说明广义ESPRIT算法的实用功能,我们最终提出了在从连续时间到离散时间的系统转换的背景下,将其应用于ARMA滤波器合成的应用。

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