Abstract
Engineers perform fatigue assessments to support structural integrity management. Given that the purpose of these calculations is linked to problems of decision making under various sources of uncertainty, probabilistic methods are often more useful than deterministic alternatives. Guidance on the direct probabilistic application of procedures in existing industrial standards is currently limited and dependencies between marginal probabilistic models are generally not considered, despite their potential significance being acknowledged. This paper proposes the use of Bayesian data analysis as a flexible and intuitive approach to coherently and consistently account for uncertainty and dependency in fatigue crack growth rate models. Various Bayesian models are established and presented, based on the same data as the existing models in BS 7910 (a widely used industrial standard). The models are compared in terms of their out of sample predictive accuracy, using methods with a basis in information theory and cross-validation. The Bayesian models exhibit an improved performance, with the most accurate predictions resulting from multi-level (hierarchical) models, which account for variation between constituent test datasets and partially pool information.
Original language | English |
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Article number | 107117 |
Journal | Reliability Engineering and System Safety |
Volume | 204 |
ISSN | 0951-8320 |
DOIs | |
Publication status | Published - Dec 2020 |
Bibliographical note
Publisher Copyright:© 2020 Elsevier Ltd
Keywords
- Bayesian data analysis
- BS 7910
- Crack growth rate
- Fatigue
- Hierarchical model
- Model evaluation
- Model uncertainty
- Multi-level model
- Probabilistic model
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Consistent and Coherent Treatment of Uncertainties and Dependencies in Fatigue Crack Growth Calculations Using Multi-Level Bayesian Models
Di Francesco, D. (Creator), Chryssanthoplous, M. (Creator), Faber, M. H. (Creator) & Bharadwaj, U. (Creator), Mendeley Data, 1 Jun 2020
DOI: 10.17632/5c5979pwkr.1, https://data.mendeley.com/datasets/5c5979pwkr
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