Bayesian Identification of Elastic Constants in Multi-Directional Laminate from Moir\'e Interferometry Displacement Fields
Christian Gogu (MPE-ENSMSE, LTDS-ENSMSE), W. Yin, Raphael T. Haftka,, Peter G. Ifju, J\'er\^ome Molimard (IFRESIS-ENSMSE, CIS-ENSMSE, STBio-ENSMSE,, LGF-ENSMSE), Rodolphe Le Riche (DEMO-ENSMSE, LIMOS), Alain Vautrin, (MPE-ENSMSE, LTDS-ENSMSE)

TL;DR
This paper demonstrates a Bayesian method to identify all four ply elastic constants of multi-directional laminates using full-field displacement data from moiré interferometry, accounting for uncertainties and correlations.
Contribution
It introduces a Bayesian identification approach combined with POD for efficient, simultaneous estimation of multiple elastic constants from complex displacement fields.
Findings
Identified elastic constants with quantified confidence levels.
Detected significant correlations among the elastic constants.
Compared results with manufacturing specs, noting discrepancies.
Abstract
The ply elastic constants needed for classical lamination theory analysis of multi-directional laminates may differ from those obtained from unidirectional laminates because of three dimensional effects. In addition, the unidirectional laminates may not be available for testing. In such cases, full-field displacement measurements offer the potential of identifying several material properties simultaneously. For that, it is desirable to create complex displacement fields that are strongly influenced by all the elastic constants. In this work, we explore the potential of using a laminated plate with an open-hole under traction loading to achieve that and identify all four ply elastic constants (E 1, E 2, 12, G 12) at once. However, the accuracy of the identified properties may not be as good as properties measured from individual tests due to the complexity of the experiment, the relative…
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