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Non-linear system modelling based on non-parametric identification and linear wavelet estimation of SDP models

机译:基于SDP模型非参数辨识和线性小波估计的非线性系统建模

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摘要

This paper describes a data-based approach to the identification and estimation of non-linear dynamic systems which exploits the concept of a state dependent parameter (SDP) model structure. The major attractive features of the proposed approach are: (1) the initial non-parametric identification of the non-linear system structure using an SDP algorithm based on recursive fixed interval smoothing; (2) a compact parameterization of this initially identified model structure via a linear wavelet functional approximation; and (3) final optimized model structure selection using the predicted residual sums of squares (PRESS) statistic, prior to final parametric optimization using this optimized, parsimonious structure. Two simulation examples are used to demonstrate the proposed approach.
机译:本文介绍了一种基于数据的非线性动态系统识别和估计方法,该方法利用了状态相关参数(SDP)模型结构的概念。该方法的主要吸引力在于:(1)使用基于递归固定间隔平滑的SDP算法对非线性系统结构进行初始非参数识别; (2)通过线性小波函数逼近对该初始识别的模型结构进行紧凑的参数化; (3)在使用此优化的简约结构进行最终参数优化之前,使用预测的残差平方和(PRESS)统计信息进行最终优化的模型结构选择。使用两个仿真示例来演示所提出的方法。

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