Bayesian model selection and parameter estimation for fatigue damage progression models in composites
Chiachío, J. and Chiachío, M. and Saxena, A. and Sankararaman, S. and Rus, G. and Goebel, K. (2015) Bayesian model selection and parameter estimation for fatigue damage progression models in composites. International Journal of Fatigue, 70. pp. 361-373. ISSN 0142-1123 (https://doi.org/10.1016/j.ijfatigue.2014.08.003)
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Abstract
A Bayesian approach is presented for selecting the most probable model class among a set of damage mechanics models for fatigue damage progression in composites. Candidate models, that are first parameterized through a Global Sensitivity Analysis, are ranked based on estimated probabilities that measure the extent of agreement of their predictions with observed data. A case study is presented using multi-scale fatigue damage data from a cross-ply carbon–epoxy laminate. The results show that, for this case, the most probable model class among the competing candidates is the one that involves the simplest damage mechanics. The principle of Ockham's razor seems to hold true for the composite materials investigated here since the data-fit of more complex models is penalized, as they extract more information from the data.
ORCID iDs
Chiachío, J. ORCID: https://orcid.org/0000-0003-1243-8694, Chiachío, M., Saxena, A., Sankararaman, S., Rus, G. and Goebel, K.;-
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Item type: Article ID code: 65610 Dates: DateEvent31 January 2015Published21 August 2014Published Online8 August 2014AcceptedSubjects: Technology > Mechanical engineering and machinery
Technology > ManufacturesDepartment: Faculty of Engineering > Naval Architecture, Ocean & Marine Engineering Depositing user: Pure Administrator Date deposited: 02 Oct 2018 11:20 Last modified: 26 Nov 2024 11:09 Related URLs: URI: https://strathprints.strath.ac.uk/id/eprint/65610