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New estimation methods for autoregressive process in the presence of white observation noise

机译:白色观察噪声存在自回归过程的新估算方法

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摘要

This paper presents four new methods for estimating the parameters of an autoregressive (AR) process based on observations corrupted by white noise. The first three methods are iterative, while the last one is non-iterative. One method is designed to achieve an unbiased estimation of the AR parameters by undermining the destructive impact of observation noise in terms of utilizing the null space of the AR parameter vector. Another one uses both low- and high-order Yule-Walker equations to construct a constrained least squares optimization problem, in which the variance of observation noise is estimated by alternating between two equations. One more method exploits an approximation which leads to reducing the problem of estimating the AR parameters with arbitrary order p to estimating just two parameters, while the last one estimates the variance of the observation noise using the minimum eigenvalue of the enlarged autocorrelation matrix. The performance of the proposed methods is evaluated in terms of various numerical examples, which demonstrate their superiority in terms of accuracy and robustness against the observation noise compared to state-of-the-art existing methods in most simulation examples. It makes the proposed methods a good fit for practical analysis of data contaminated by observation noise, when AR modeling is applicable, and gives a range of choices of methods for different data analysis situations.
机译:本文介绍了四种新方法,用于估算自回归(AR)过程的参数,基于白噪声损坏的观察结果。前三种方法是迭代的,而最后一个是非迭代的。一种方法旨在通过利用AR参数向量的空空间来破坏观察噪声的破坏性影响来实现AR参数的无偏见估计。另一个人使用低阶和高阶的Yule-Walker方程来构建约束最小二乘优化问题,其中通过在两个方程之间交替来估计观察噪声的变化。还有一种方法利用近似,这导致减少估计AR参数的问题,该方法用任意顺序P估计仅仅是两个参数,而最后一个方法使用放大的自相关矩阵的最小特征值来估计观察噪声的方差。根据各种数值示例评估所提出的方法的性能,这在大多数仿真示例中与最先进的现有方法相比,在对观察噪声的准确性和鲁棒性方面展示了它们的优越性。当AR建模适用时,它使所提出的方法适用于通过观察噪声污染的数据进行污染的数据,并为不同的数据分析情况提供一系列方法选择。

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