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Effects of the autocorrelation matrix generation method on the model-based sinusoidal parameter estimators

机译:自相关矩阵生成方法对基于模型的正弦参数估计的影响

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Although the maximum likelihood method gives the optimum solutions for the parameter estimation problem of sinusoids embedded in noise, it is computationally difficult since it generally requires us to solve nonlinear optimization problems. So some model-based parameter estimators with high frequency resolution property are preferred quite often. In order to find these estimates the first step is usually forming the autocorrelation (AC) matrix. In this work the effects of the method utilized in the generation of the AC matrix on the performance of sinusoidal parameter estimators are investigated. One way of forming the AC matrix is to use a Toeplitz structure with either the biased or the unbiased AC lag estimates as the matrix elements. Another way is to use the so-called "covariance method" in the AC matrix generation. In this method the matrix formed is no longer Toeplitz but it is still symmetric. We can think of the Toeplitz AC matrix as a perturbed version of the non-Toeplitz AC matrix. The differences in the performance of the MUSIC spectral estimator with Toeplitz and non-Toeplitz AC matrix usage is related to the perturbation in the AC matrix estimate. For this purpose the 3 /spl times/ 3 AC matrix is is utilized in the estimation of the frequency of a single sinusoid using the MUSIC frequency estimator. The accuracy of the perturbation analysis is checked with the simulation results. Additionally, the fact that the performance of an estimator with data windowing and Toeplitz AC matrix generation becomes close to the performance of the same estimator with non-Toeplitz AC matrix is shown with simulation studies.
机译:尽管最大似然方法为嵌入噪声嵌入的正弦探测问题提供了最佳解决方案,但是计算地困难,因为它通常要求我们解决非线性优化问题。因此,具有高频分辨率属性的基于模型的参数估计非常优选。为了找到这些估计,第一步通常是形成自相关(AC)矩阵。在这项工作中,研究了在SINURATAL参数估计器的性能上产生AC矩阵中使用的方法的影响。形成AC矩阵的一种方法是使用具有偏置的滴定结构或非偏向的AC LAG估计作为矩阵元件。另一种方法是在交流矩阵生成中使用所谓的“协方差方法”。在该方法中,形成的矩阵不再是烟草,但它仍然是对称的。我们可以将Toeplitz交流矩阵视为非托普利茨交流矩阵的扰动版本。音乐谱估计与Toeplitz和非托普利茨AC矩阵使用性能的差异与AC矩阵估计的扰动有关。为此目的,使用音乐频率估计器估计单个正弦曲线的频率的3 / SPL时间/ 3 AC矩阵。通过模拟结果检查扰动分析的准确性。另外,利用数据窗口和toeplitz交流矩阵生成的估计器的性能变得接近与非托管族矩阵的性能接近具有仿真研究的非卷积态矩阵。

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