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SUBSPACE-BASED IDENTIFICATION OF INFINITE-DIMENSIONAL MULTIVARIABLE SYSTEMS FROM FREQUENCY-RESPONSE DATA

机译:基于频率响应数据的基于多维空间的无穷维多元系统识别

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摘要

A new identification algorithm which identifies low complexity models of infinite-dimensional systems from equidistant frequency-response data is presented. The new algorithm is a combination of the Fourier transform technique with the recent subspace techniques. Given noise-free data, finite-dimensional systems are exactly retrieved by the algorithm. When noise is present, it is shown that identified models strongly converge to the balanced truncation of the identified system if the measurement errors are covariance bounded. Several conditions are derived on consistency, illustrating the trade-offs in the selection of certain parameters of the algorithm. Two examples are presented which clearly illustrate the good performance of the algorithm. Copyright (C) 1996 Elsevier Science Ltd. [References: 40]
机译:提出了一种新的识别算法,可以从等距频率响应数据中识别出低维系统的低复杂度模型。新算法是傅里叶变换技术与最新子空间技术的结合。给定无噪声数据,该算法可精确检索有限维系统。如果存在噪声,则表明如果测量误差以协方差为界,则所识别的模型会强烈收敛至所识别系统的平衡截断。一致性得出了几个条件,说明了在选择算法某些参数时需要进行的取舍。给出了两个例子,清楚地说明了该算法的良好性能。版权所有(C)1996 Elsevier ScienceLtd。[参考:40]

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