Calibration of imprecise and inaccurate numerical models considering fidelity and robustness: a multi-objective optimization-based approach

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TitreCalibration of imprecise and inaccurate numerical models considering fidelity and robustness: a multi-objective optimization-based approach
Type de publicationJournal Article
Year of Publication2015
AuteursAtamturktur S, Liu Z, Cogan S, Juang H
JournalSTRUCTURAL AND MULTIDISCIPLINARY OPTIMIZATION
Volume51
Pagination659-671
Date PublishedMAR
Type of ArticleArticle
ISSN1615-147X
Mots-clésExperiment-based model validation, Info-gap decision theory, Info-gap uncertainty model, Nondominated sorting genetic algorithm, Prediction looseness, Self-consistency
Résumé

Traditionally, model calibration is formulated as a single objective problem, where fidelity to measurements is maximized by adjusting model parameters. In such a formulation however, the model with best fidelity merely represents an optimum compromise between various forms of errors and uncertainties and thus, multiple calibrated models can be found to demonstrate comparable fidelity producing non-unique solutions. To alleviate this problem, the authors formulate model calibration as a multi-objective problem with two distinct objectives: fidelity and robustness. Herein, robustness is defined as the maximum allowable uncertainty in calibrating model parameters with which the model continues to yield acceptable agreement with measurements. The proposed approach is demonstrated through the calibration of a finite element model of a steel moment resisting frame.

DOI10.1007/s00158-014-1159-y