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首页> 外文期刊>IEEE Transactions on Signal Processing >Computational Algorithms for Wavelet Identification of Nonlinearities in Hammerstein Systems With Random Inputs
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Computational Algorithms for Wavelet Identification of Nonlinearities in Hammerstein Systems With Random Inputs

机译:具有随机输入的Hammerstein系统中的非线性小波识别的计算算法

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Simple and efficient computational algorithms for nonparametric wavelet-based identification of nonlinearities in Hammerstein systems driven by random signals are proposed. They exploit binary grid interpolations of compactly supported wavelet functions. The main contribution consists in showing how to use the wavelet values from the binary grid together with the fast wavelet algorithms to obtain the practical counterparts of the wavelet-based estimates for irregularly and randomly spaced data, without any loss of the asymptotic accuracy. The convergence and the rates of convergence are examined for the new algorithms and, in particular, conditions for the optimal convergence speed are presented. Efficiency of the algorithms for a finite number of data is also illustrated by means of the computer simulations.
机译:提出了一种简单有效的计算算法,用于基于非参数小波的随机信号驱动的Hammerstein系统中的非线性识别。他们利用紧密支持的小波函数的二进制网格插值。主要贡献在于展示了如何使用二进制网格中的小波值以及快速小波算法来获得不规则和随机间隔数据的基于小波的估计的实际对应物,而不会损失渐近精度。研究了新算法的收敛性和收敛速度,尤其给出了最佳收敛速度的条件。还通过计算机仿真说明了有限数据的算法效率。

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