2024
DOI: 10.1177/07316844241292694
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Boosting machine learning algorithms for predicting the macroscopic material behavior of continuous fiber reinforced composite

Aiman Tariq,
Ayşe Polat,
Babür Deliktaş

Abstract: Macroscopic mechanical properties of fibrous materials are often characterized by modeling their microscale behavior using micromechanical techniques. This process typically involves using a Representative Volume Element (RVE) and finite element simulations to obtain the macroscopic behavior through homogenization. However, these micromechanical simulations can be computationally demanding, especially for 3D models with discrete material microstructures. This paper uses boosting machine learning algorithms to … Show more

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