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Improved (non-)parametric identification of dynamic systems excited by periodic signals-The multivariate case

机译:周期性信号激励的动态系统的改进(非)参数识别-多元情况

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摘要

Recently [1] a method has been developed to suppress nonparametrically the noise (and system) transients (leakage errors) in frequency response function and noise (co-)variance estimates of single-input, single-output systems excited by periodic signals. This paper extends the results of [ 1 ] to multiple-input, multiple-output systems where all inputs and outputs are disturbed by noise (i.e. an errors-in-variables framework). Two methods are presented: the first starts from multiple experiments with uncorrelated sets of inputs, and makes no assumption about the frequency response matrix (FRM); while the second only requires one single experiment, but assumes that the FRM can locally be approximated by a polynomial. Both methods estimate simultaneously the FRM, the noise level, and the level of the nonlinear distortions. For lightly damped systems, the proposed methods either significantly reduce the experiment duration or, for a given measurement time, significantly increase the frequency resolution of the FRM estimate. If the noise (and/or system) transients are the dominant error sources, then the proposed methods also significantly reduce the covariance matrix of the FRM estimates. The use of the nonparametric noise covariance estimates for parametric transfer function modelling is also discussed in detail.
机译:最近[1]已经开发出一种方法来非参数地抑制频率响应函数中的噪声(和系统)瞬变(泄漏误差)和周期信号激励的单输入单输出系统的噪声(协方差)估计。本文将[1]的结果扩展到多输入多输出系统,其中所有输入和输出都受到噪声(即变量误差框架)的干扰。提出了两种方法:第一种方法是从输入不相关的多个实验开始,并且不对频率响应矩阵(FRM)进行任何假设。而第二个只需要一个实验,但是假设FRM可以通过多项式局部近似。两种方法同时估计FRM,噪声水平和非线性失真的水平。对于轻阻尼系统,建议的方法要么显着缩短实验持续时间,要么在给定的测量时间下显着提高FRM估算的频率分辨率。如果噪声(和/或系统)瞬变是主要的误差源,则所提出的方法还可以显着减少FRM估计的协方差矩阵。还详细讨论了将非参数噪声协方差估计用于参数传递函数建模。

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