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首页> 外文期刊>International journal of systems science >Wavelet based non-parametric NARX models for nonlinear input-output system identification
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Wavelet based non-parametric NARX models for nonlinear input-output system identification

机译:基于小波的非参数NARX模型用于非线性输入输出系统识别

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摘要

Wavelet based non-parametric additive NARX models are proposed for nonlinear input-output system identification. By expanding each functional component of the non-parametric NARX model into wavelet multiresolution expansions, the non-parametric estimation problem becomes a linear-in-the-parameters problem, and least-squares-based methods such as the orthogonal forward regression (OFR) approach, coupled with model size determination criteria, can be used to select the model terms and estimate the parameters. Wavelet based additive models, combined with model order determination and variable selection approaches, are capable of handling problems of high dimensionality.
机译:提出了基于小波的非参数加性NARX模型,用于非线性输入输出系统的辨识。通过将非参数NARX模型的每个功能组件扩展为小波多分辨率扩展,非参数估计问题变为参数线性问题和基于最小二乘法的方法,如正交正向回归(OFR)结合模型大小确定标准,可以用于选择模型项和估计参数。基于小波的加性模型与模型顺序确定和变量选择方法相结合,能够处理高维问题。

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