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A new elastic characterization method for anisotropic bilayer specimens via Bayesian resonant ultrasound spectroscopy

A novel nondestructive method for complete elastic characterization of substrate-coating bilayer specimens with distinct anisotropic layers via resonant ultrasound spectroscopy (RUS) and Bayesian inversion is developed here. Bayesian formulations of the RUS inversion problem—of quantifying elastic p...

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Bibliographic Details
Published in:Ultrasonics 2021-08, Vol.115, p.106455-106455, Article 106455
Main Authors: Goodlet, Brent R., Bales, Ben, Pollock, Tresa M.
Format: Article
Language:English
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Summary:A novel nondestructive method for complete elastic characterization of substrate-coating bilayer specimens with distinct anisotropic layers via resonant ultrasound spectroscopy (RUS) and Bayesian inversion is developed here. Bayesian formulations of the RUS inversion problem—of quantifying elastic properties given a measured list of resonance frequencies recorded from a single, typically small, precisely fabricated, macroscopically homogeneous, linear-elastic specimen—are a recent development. Here we report the first Bayesian formulation of the bilayer problem, and through a series of practical examples, demonstrate novel parameter estimation capabilities of our open-source CmdStan-RUS code. Finding specimen geometry and the number of resonance modes used for inversion strongly govern the ability to retrieve individual elastic moduli. The concept of “invertability” is explored for a range of relevant geometries using virtual specimens that resemble experimental bilayers of plasma sprayed ceramic coatings on single crystal metallic substrates. A range of Bayesian posterior evaluation methods are addressed, particularly considering the large computational cost of the bilayer forward model. Laplace approximation methods are thus developed and implemented for bilayer geometry design space modeling and expedient estimates of parameter uncertainties. Ideal specimen design, different noise models, the influence of prior distributions, dual-likelihood fits incorporating measurements of the bare substrate, and how Bayesian RUS methods differ from traditional RUS optimization are discussed. •Bayesian resonant ultrasound spectroscopy (RUS) is extended to bi-material bilayers.•Nondestructive elastic characterization of hexagonal coatings affixed to a substrate.•Laplace posterior approximations developed for design space modeling and estimation.•Specimen geometry and the modes used for RUS inversion strongly govern invertability.•Fits demonstrated on both virtual and real plasma spray-coated superalloy substrates.
ISSN:0041-624X
1874-9968
DOI:10.1016/j.ultras.2021.106455