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Nonparametric identification of a Wiener system using a stochastic excitation of arbitrarily unknown spectrum

机译:使用任意未知频谱的随机激励对维纳系统进行非参数识别

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A Wiener system consists of two sequential sub-systems: (ⅰ) a linear, dynamic, time-invariant, asymptotically stable sub-system, followed by (ⅱ) a nonlinear, static (i.e. memoryless), invertible sub-system. Both sub-systems will be identified non-parametrically in this paper, based on observations at only the overall Wiener system's input and output without any observation of any internal signal inter-connecting the two sub-systems, and without any prior parametric assumption on either sub-system. This proposed estimation allows the input to be temporally correlated, with a mean/variance/ spectrum that are a priori unknown (instead of being white and zero-mean, as in much of the relevant literature). Moreover, the nonlinear sub-system's input and output may be corrupted additively by Gaussian noises of non-zero means and unknown variances. For the above-described set-up, this paper is first in the open literature (to the best of the present authors' knowledge) to estimate the linear dynamic sub-system non-para-metrically. This presently proposed linear system estimator is analytically proved as asymptotically unbiased and consistent. Moreover, the proposed nonlinear sub-system's estimate is assured of invertibility (unlike earlier methods), asymptotic unbiasedness, and pointwise consistence. Furthermore, both sub-systems' estimates' finite-sample convergence is also derived analytically. Monte Carlo simulations verify the efficacy of the proposed estimators and the correctness of the derived convergence rates.
机译:Wiener系统由两个顺序子系统组成:(ⅰ)线性,动态,时不变,渐近稳定子系统,然后是(ⅱ)非线性,静态(即无记忆)可逆子系统。本文将仅基于整个维纳系统的输入和输出进行观察,而不会观察到任何将两个子系统相互连接的内部信号,也无需对任何一个进行任何参数化假设子系统。该提议的估计允许输入在时间上相关,并且具有先验未知的均值/方差/频谱(而不是在许多相关文献中为白色和零均值)。此外,非线性子系统的输入和输出可能会因非零均值和未知方差的高斯噪声而加总破坏。对于上述设置,本文首先在公开文献中(据本作者所知),以非参数方式估计线性动态子系统。目前提出的线性系统估计量经分析证明是渐近无偏的和一致的。此外,所提出的非线性子系统的估计具有可逆性(不同于早期方法),渐近无偏性和逐点一致性。此外,还通过分析得出了两个子系统的估计的有限样本收敛性。蒙特卡洛模拟验证了提出的估计器的有效性以及导出的收敛速度的正确性。

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