Article, 2024

Bayesian optimization-based prediction of the thermal properties from fatigue test IR imaging of composite coupons

Composites Science and Technology, ISSN 1879-1050, 0266-3538, Volume 248, Page 110439, 10.1016/j.compscitech.2024.110439

Contributors

Demleitner, Martin [1] Albuquerque, Rodrigo Queiroz 0000-0001-9064-4982 (Corresponding author) [1] [2] Sarhadi, Ali 0000-0003-1078-493X (Corresponding author) [3] Ruckdäschel, Holger 0000-0001-5985-2628 (Corresponding author) [1] [2] Eder, Martin Alexander 0000-0002-5306-365X [3]

Affiliations

  1. [1] University of Bayreuth
  2. [NORA names: Germany; Europe, EU; OECD];
  3. [2] Neue Materialien Bayreuth
  4. [NORA names: Germany; Europe, EU; OECD];
  5. [3] Technical University of Denmark
  6. [NORA names: DTU Technical University of Denmark; University; Denmark; Europe, EU; Nordic; OECD]

Abstract

The prediction of the prevailing self-heat transfer parameters of a glass/epoxy composite coupon during fatigue testing in general and the distinction between viscoelastic- and frictional crack growth-related energy dissipation in particular, are not trivial problems. This work investigates the feasibility of predicting the convective film coefficient, the total work loss as well as the ratio between viscoelastic and fracture-induced damping from thermal images using Bayesian optimization in conjunction with 3D FE thermal analysis. To this end, glass fiber/epoxy biax coupons are pre-damaged by means of a drop weight impact machine and subsequently tested under uniaxial tension-tension high cycle fatigue conditions. IR images are taken of the self-heating thermal profile at steady-state conditions. Synthetic surface thermal images are generated by numerical thermal analysis of the damage distribution obtained by μ -CT scanning prior to testing. Bayesian optimization of the aforementioned parameters is conducted by minimizing the loss function between the as-measured and the synthetic IR image. The predicted work-loss is consequently validated against the measured hysteretic response, from which a very good agreement is found.

Keywords

AS measurements, Bayesian optimization, FE thermal analysis, IR images, analysis, coefficient, composite coupons, conditions, conjunction, convective film coefficients, coupons, damage, damage distribution, damping, dissipation, distribution, drop, drop weight impact machine, energy dissipation, fatigue, fatigue conditions, fatigue tests, feasibility, film coefficient, function, glass, high cycle fatigue conditions, hysteretic response, images, impact machine, loss, loss function, machine, numerical thermal analysis, optimization, parameters, pre-damage, prediction, problem, profile, properties, ratio, response, scanning, steady-state conditions, surface thermal imaging, synthetic IR images, test, thermal analysis, thermal images, thermal profile, thermal properties, transfer parameters, work loss

Funders

  • Danish Energy Agency
  • The Velux Foundations

Data Provider: Digital Science