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Recursive least squares estimation methods for a class of nonlinear systems based on non-uniform sampling

机译:基于非均匀采样的一类非线性系统递归最小二乘估计方法

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摘要

Many dynamic processes in practice have nonlinear characteristics and must be described by using nonlinear models. It remains to be a challenging problem to build the models of such nonlinear systems and to estimate their parameters. This article studies the parameter estimation problem for a class of Hammerstein-Wiener nonlinear systems based on non-uniform sampling. By means of the auxiliary model identification idea, an auxiliary model-based recursive least squares algorithm is derived for the systems. In order to enhance the computational efficiency, an auxiliary model-based hierarchical least squares algorithm is proposed by utilizing the hierarchical identification principle. The simulation results confirm the effectiveness of the proposed algorithms.
机译:实践中的许多动态过程具有非线性特性,并且必须通过使用非线性模型来描述。 构建这种非线性系统的模型并估算其参数仍有一个具有挑战性的问题。 本文基于非均匀抽样研究了一类Hammerstein-Wiener非线性系统的参数估计问题。 通过辅助模型识别思想,导出基于辅助模型的递归最小二乘算法为系统导出。 为了提高计算效率,通过利用层级识别原理提出基于辅助模型的分层最小二乘算法。 仿真结果证实了所提出的算法的有效性。

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