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Extended least-correlation estimates for errors-in-variables non-linear models

机译:变量误差非线性模型的扩展最小相关估计

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This paper introduces a method of parameter estimation working on errors-in-variables polynomial non-linear models in which all measurements are corrupted by noise. The first step is to develop the linear regression models which are equivalent to polynomial non-linear systems. A main idea is to extend the parameter vector by even-order components of noise and to augment the regression vector by appropriate constants or measurements. Applying the method of least correlation, which has a capability to cope with errors-in-variables linear models, to the equivalent model with extended parameters and augmented regressors yields an extended least-correlation estimator. Analysis shows that, for non-linear systems with third or lower order polynomials, the parameters estimated by the proposed method asymptotically converge to the true values. Numerical examples also support analytical results. Applications of the approach to Volterra models, Hammerstein models and Weiner non-linear systems are included.
机译:本文介绍了一种适用于变量误差多项式非线性模型的参数估计方法,该模型中的所有测量值都被噪声破坏。第一步是开发与多项式非线性系统等效的线性回归模型。一个主要思想是通过噪声的偶数分量扩展参数向量,并通过适当的常数或测量值来增加回归向量。将具有应付变量误差线性模型能力的最小相关方法应用于具有扩展参数和增强回归变量的等效模型,即可得到扩展的最小相关估计器。分析表明,对于具有三阶或更低阶多项式的非线性系统,通过所提出的方法估计的参数渐近收敛于真实值。数值示例也支持分析结果。包括该方法在Volterra模型,Hammerstein模型和W​​einer非线性系统中的应用。

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