Article, 2024

Fatigue damage reconstruction in glass/epoxy composites via thermal analysis and machine learning: A theoretical study

Composite Structures, ISSN 0263-8223, 1879-1085, Volume 331, Page 117855, 10.1016/j.compstruct.2023.117855

Contributors

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

Affiliations

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

Abstract

This study introduces an advanced, non-contact diagnostic tool for structural health monitoring of fatigue damage in fiber/polymer composite materials. The approach combines thermal image recognition of fatigue self-heating hotspots with high-fidelity thermal modeling to quantitatively assess subsurface fatigue damage distributions by machine learning. To this end, artificial thermal images are generated through 3D numerical thermal analysis of an inherent fatigue damage heat source within a glass/epoxy composite, derived from sampling a multivariate Gaussian distribution of microcracks. Subsequently, these synthetic thermal images are employed to train three distinct regression models: a convolutional neural network, a Gaussian processes regressor, and a straightforward least squares model. Various image augmentation techniques are applied to expand the dataset efficiently. All models accurately predict the size of the damage and – most importantly – the maximum temperature within the damage deep inside the composite. The regression methods estimate the diagonal elements of covariance matrix components of the Gaussian distribution, with accuracies ranging from 86% to 99%. The findings presented in this work contribute to establishing a solid foundation for non-destructive subsurface fatigue damage assessment in composite materials, with many practical applications in experimental composites fatigue research.

Keywords

Gaussian distribution, Gaussian process regressor, accuracy, analysis, applications, assessment, augmentation techniques, components, composite materials, composition, convolutional neural network, damage, damage assessment, damage distribution, damage reconstruction, dataset, diagnostic tool, diagonal elements, distribution, distribution of microcracks, fatigue, fatigue damage, fatigue damage assessment, fatigue damage distribution, fatigue research, findings, glass/epoxy composites, health monitoring, heat source, hotspots, image augmentation techniques, images, learning, machine, machine learning, materials, matrix components, maximum temperature, method, microcracks, model, monitoring, multivariate Gaussian distribution, network, neural network, numerical thermal analysis, reconstruction, regression, regression method, regression models, regressors, research, size, source, structural health monitoring, study, subsurface, synthetic thermal images, technique, temperature, theoretical study, thermal analysis, thermal images, thermal model, tools

Funders

  • Danish Energy Agency
  • The Velux Foundations

Data Provider: Digital Science