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Parameter estimation and model selection for a class of hysteretic systems using Bayesian inference

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Parameter estimation and model selection for a class of hysteretic systems using Bayesian inference. / Worden, K.; Hensman, J. J.
In: Mechanical Systems and Signal Processing, Vol. 32, 10.2012, p. 153-169.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Worden, K & Hensman, JJ 2012, 'Parameter estimation and model selection for a class of hysteretic systems using Bayesian inference', Mechanical Systems and Signal Processing, vol. 32, pp. 153-169. https://doi.org/10.1016/j.ymssp.2012.03.019

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Vancouver

Worden K, Hensman JJ. Parameter estimation and model selection for a class of hysteretic systems using Bayesian inference. Mechanical Systems and Signal Processing. 2012 Oct;32:153-169. Epub 2012 Apr 12. doi: 10.1016/j.ymssp.2012.03.019

Author

Worden, K. ; Hensman, J. J. / Parameter estimation and model selection for a class of hysteretic systems using Bayesian inference. In: Mechanical Systems and Signal Processing. 2012 ; Vol. 32. pp. 153-169.

Bibtex

@article{a22c952f8ddd48838aa7799c1022975c,
title = "Parameter estimation and model selection for a class of hysteretic systems using Bayesian inference",
abstract = "The aim of this paper is to provide an overview of the possible advantages of adopting a Bayesian approach to nonlinear system identification in structural dynamics. In contrast to identification schemes which estimate maximum likelihood values (or other point estimates) for parameters, the Bayesian scheme discussed here provides information about the complete probability density functions of parameter estimates without adopting restrictive assumptions about their nature. Among other advantages of the Bayesian viewpoint are the abilities to make informed decisions about model selection and also to effectively make predictions over entire classes of models, with each individual model weighted according to its ability to explain the observed data. The approach is illustrated using data from simulated systems, first a Duffing oscillator and then a new application to hysteretic system of the Bouc-Wen type. The modelling and identification of the latter type of system has long presented problems due to the fact that commonly used model structures like the Bouc-Wen model are nonlinear in the parameters, or have unmeasured states, etc. These issues have been dealt with in the past by adopting an optimisation-based approach to the problem; in particular, the differential evolution algorithm has proved very effective. An objective of the current paper is to illustrate how the Bayesian approach provides the same information and more as the optimisation approach; it yields parameter estimates and their associated confidence intervals, but can also provide confidence bounds on model predictions and evidence measures which can be used to select the most appropriate model from a candidate set. A new model selection criterion in this context - the Deviance Information Criterion (DIC) - is presented here.",
keywords = "Bayesian inference, Bouc-Wen hysteresis, Deviance Information Criterion (DIC), Duffing oscillator, Markov Chain Monte Carlo (MCMC), Nonlinear system identification",
author = "K. Worden and Hensman, {J. J.}",
year = "2012",
month = oct,
doi = "10.1016/j.ymssp.2012.03.019",
language = "English",
volume = "32",
pages = "153--169",
journal = "Mechanical Systems and Signal Processing",
issn = "0888-3270",
publisher = "Academic Press Inc.",

}

RIS

TY - JOUR

T1 - Parameter estimation and model selection for a class of hysteretic systems using Bayesian inference

AU - Worden, K.

AU - Hensman, J. J.

PY - 2012/10

Y1 - 2012/10

N2 - The aim of this paper is to provide an overview of the possible advantages of adopting a Bayesian approach to nonlinear system identification in structural dynamics. In contrast to identification schemes which estimate maximum likelihood values (or other point estimates) for parameters, the Bayesian scheme discussed here provides information about the complete probability density functions of parameter estimates without adopting restrictive assumptions about their nature. Among other advantages of the Bayesian viewpoint are the abilities to make informed decisions about model selection and also to effectively make predictions over entire classes of models, with each individual model weighted according to its ability to explain the observed data. The approach is illustrated using data from simulated systems, first a Duffing oscillator and then a new application to hysteretic system of the Bouc-Wen type. The modelling and identification of the latter type of system has long presented problems due to the fact that commonly used model structures like the Bouc-Wen model are nonlinear in the parameters, or have unmeasured states, etc. These issues have been dealt with in the past by adopting an optimisation-based approach to the problem; in particular, the differential evolution algorithm has proved very effective. An objective of the current paper is to illustrate how the Bayesian approach provides the same information and more as the optimisation approach; it yields parameter estimates and their associated confidence intervals, but can also provide confidence bounds on model predictions and evidence measures which can be used to select the most appropriate model from a candidate set. A new model selection criterion in this context - the Deviance Information Criterion (DIC) - is presented here.

AB - The aim of this paper is to provide an overview of the possible advantages of adopting a Bayesian approach to nonlinear system identification in structural dynamics. In contrast to identification schemes which estimate maximum likelihood values (or other point estimates) for parameters, the Bayesian scheme discussed here provides information about the complete probability density functions of parameter estimates without adopting restrictive assumptions about their nature. Among other advantages of the Bayesian viewpoint are the abilities to make informed decisions about model selection and also to effectively make predictions over entire classes of models, with each individual model weighted according to its ability to explain the observed data. The approach is illustrated using data from simulated systems, first a Duffing oscillator and then a new application to hysteretic system of the Bouc-Wen type. The modelling and identification of the latter type of system has long presented problems due to the fact that commonly used model structures like the Bouc-Wen model are nonlinear in the parameters, or have unmeasured states, etc. These issues have been dealt with in the past by adopting an optimisation-based approach to the problem; in particular, the differential evolution algorithm has proved very effective. An objective of the current paper is to illustrate how the Bayesian approach provides the same information and more as the optimisation approach; it yields parameter estimates and their associated confidence intervals, but can also provide confidence bounds on model predictions and evidence measures which can be used to select the most appropriate model from a candidate set. A new model selection criterion in this context - the Deviance Information Criterion (DIC) - is presented here.

KW - Bayesian inference

KW - Bouc-Wen hysteresis

KW - Deviance Information Criterion (DIC)

KW - Duffing oscillator

KW - Markov Chain Monte Carlo (MCMC)

KW - Nonlinear system identification

U2 - 10.1016/j.ymssp.2012.03.019

DO - 10.1016/j.ymssp.2012.03.019

M3 - Journal article

AN - SCOPUS:84865011898

VL - 32

SP - 153

EP - 169

JO - Mechanical Systems and Signal Processing

JF - Mechanical Systems and Signal Processing

SN - 0888-3270

ER -