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Optimal Input Excitation Design for Nonparametric Uncertainty Quantification of Multi-Input Multi-Output Systems

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Optimal Input Excitation Design for Nonparametric Uncertainty Quantification of Multi-Input Multi-Output Systems. / Oveisi, Atta ; Anderson, Ashlee ; Nestorović, Tamara et al.
In: IFAC-PapersOnLine, Vol. 51, No. 15, 2018, p. 114-119.

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Oveisi A, Anderson A, Nestorović T, Montazeri A. Optimal Input Excitation Design for Nonparametric Uncertainty Quantification of Multi-Input Multi-Output Systems. IFAC-PapersOnLine. 2018;51(15):114-119. doi: 10.1016/j.ifacol.2018.09.100

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Oveisi, Atta ; Anderson, Ashlee ; Nestorović, Tamara et al. / Optimal Input Excitation Design for Nonparametric Uncertainty Quantification of Multi-Input Multi-Output Systems. In: IFAC-PapersOnLine. 2018 ; Vol. 51, No. 15. pp. 114-119.

Bibtex

@article{33c0fbeb5f3d4265b2c9338692ae26a9,
title = "Optimal Input Excitation Design for Nonparametric Uncertainty Quantification of Multi-Input Multi-Output Systems",
abstract = "In this paper, the impact of various input excitation scenarios on two different MIMO linear non-parametric modeling schemes is investigated in the frequency-domain. It is intended to provide insight into the optimal experiment design that not only provides the best linear approximation (BLA) of the frequency response functions (FRFs), but also delivers the means for assessing the variance of theestimations. Finding the mathematical representations of the variances in terms of the estimation coherence and noise/nonlinearity contributions are of critical importance for the frequency-domain system identification where the objective function needs to be weighted in the parametrization step. The input excitation signal design is tackled in two cases, i.e., multiple single-reference experiments based on the zero-mean Gaussian and the colored noise signal, the random-phase multisine, the Schroeder multisine, and minimized crest factor multisine; and multi-reference experiments based on the Hadamard matrix, and the so-called orthogonal multisine approach, which additionally examines the couplingbetween the input channels. The time-domain data from both cases are taken into the classical H1 spectral analysis as well as the robust local polynomial method (LPM) to extract the BLAs. The results are applied for data-driven modeling of a flexible beam as a model of a flexible robotic arm.",
keywords = "Modal Analysis, Optimal experiment, Multisine excitation, Uncertainty Modeling",
author = "Atta Oveisi and Ashlee Anderson and Tamara Nestorovi{\'c} and Allahyar Montazeri",
year = "2018",
doi = "10.1016/j.ifacol.2018.09.100",
language = "English",
volume = "51",
pages = "114--119",
journal = "IFAC-PapersOnLine",
issn = "2405-8963",
publisher = "IFAC Secretariat",
number = "15",
note = "18th IFAC Symposium on System Identification ; Conference date: 09-07-2018 Through 11-07-2018",

}

RIS

TY - JOUR

T1 - Optimal Input Excitation Design for Nonparametric Uncertainty Quantification of Multi-Input Multi-Output Systems

AU - Oveisi, Atta

AU - Anderson, Ashlee

AU - Nestorović, Tamara

AU - Montazeri, Allahyar

PY - 2018

Y1 - 2018

N2 - In this paper, the impact of various input excitation scenarios on two different MIMO linear non-parametric modeling schemes is investigated in the frequency-domain. It is intended to provide insight into the optimal experiment design that not only provides the best linear approximation (BLA) of the frequency response functions (FRFs), but also delivers the means for assessing the variance of theestimations. Finding the mathematical representations of the variances in terms of the estimation coherence and noise/nonlinearity contributions are of critical importance for the frequency-domain system identification where the objective function needs to be weighted in the parametrization step. The input excitation signal design is tackled in two cases, i.e., multiple single-reference experiments based on the zero-mean Gaussian and the colored noise signal, the random-phase multisine, the Schroeder multisine, and minimized crest factor multisine; and multi-reference experiments based on the Hadamard matrix, and the so-called orthogonal multisine approach, which additionally examines the couplingbetween the input channels. The time-domain data from both cases are taken into the classical H1 spectral analysis as well as the robust local polynomial method (LPM) to extract the BLAs. The results are applied for data-driven modeling of a flexible beam as a model of a flexible robotic arm.

AB - In this paper, the impact of various input excitation scenarios on two different MIMO linear non-parametric modeling schemes is investigated in the frequency-domain. It is intended to provide insight into the optimal experiment design that not only provides the best linear approximation (BLA) of the frequency response functions (FRFs), but also delivers the means for assessing the variance of theestimations. Finding the mathematical representations of the variances in terms of the estimation coherence and noise/nonlinearity contributions are of critical importance for the frequency-domain system identification where the objective function needs to be weighted in the parametrization step. The input excitation signal design is tackled in two cases, i.e., multiple single-reference experiments based on the zero-mean Gaussian and the colored noise signal, the random-phase multisine, the Schroeder multisine, and minimized crest factor multisine; and multi-reference experiments based on the Hadamard matrix, and the so-called orthogonal multisine approach, which additionally examines the couplingbetween the input channels. The time-domain data from both cases are taken into the classical H1 spectral analysis as well as the robust local polynomial method (LPM) to extract the BLAs. The results are applied for data-driven modeling of a flexible beam as a model of a flexible robotic arm.

KW - Modal Analysis

KW - Optimal experiment

KW - Multisine excitation

KW - Uncertainty Modeling

U2 - 10.1016/j.ifacol.2018.09.100

DO - 10.1016/j.ifacol.2018.09.100

M3 - Journal article

VL - 51

SP - 114

EP - 119

JO - IFAC-PapersOnLine

JF - IFAC-PapersOnLine

SN - 2405-8963

IS - 15

T2 - 18th IFAC Symposium on System Identification

Y2 - 9 July 2018 through 11 July 2018

ER -