Acta Polytechnica CTU Proceedings (Oct 2023)

AI-assisted study of auxetic structures

  • Sergej Grednev,
  • Henrik S. Steude,
  • Stefan Bronder,
  • Oliver Niggemann,
  • Anne Jung

DOI
https://doi.org/10.14311/APP.2023.42.0032
Journal volume & issue
Vol. 42

Abstract

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In this study, the viability of using machine learning models to predict stress-strain curves of auxetic structures based on geometry-describing parameters is explored. Given the computational cost and time associated with generating these curves through numerical simulations, a machine learning-based approach promises a more efficient alternative. A range of machine learning models, including Artificial Neural Networks, k-Nearest Neighbors Regression, Support Vector Regression, and XGBoost, is implemented and compared regarding the aptitude to predict stress-strain curves under quasi-static compressive loading. Training data is generated using validated finite element simulations. The performance of these models is rigorously tested on data not seen during training. The Feed-Forward Artificial Neural Network emerged as the most proficient model, achieving a Mean Absolute Percentage Error of 0.367 ± 0.230.

Keywords