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Bias-eliminating least-squares identification of errors-in-variables models with mutually correlated noises

机译:具有相互关联的噪声的变量误差模型的偏差消除最小二乘识别

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摘要

This paper proposes a bias-eliminating least-squares (BELS) approach for identifying linear dynamic errors-in-variables (EIV) models whose input and output are corrupted by additive white noise. The method is based on an iterative procedure involving, at each step, the estimation of both the system parameters and the noise variances. The proposed identification algorithm differs from previous BELS algorithms in two aspects. First, the input and output noises are allowed to be mutually correlated, and second, the estimation of the noise covariances is obtained by exploiting the statistical properties of the equation error of the EIV model.
机译:本文提出了一种消除偏最小二乘(BELS)的方法来识别输入和输出受到加性白噪声破坏的线性动态变量误差(EIV)模型。该方法基于迭代过程,该迭代过程在每个步骤都涉及系统参数和噪声方差的估计。所提出的识别算法在两个方面与先前的BELS算法不同。首先,允许输入和输出噪声相互关联,其次,通过利用EIV模型的方程误差的统计属性来获得噪声协方差的估计。

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