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2026
Journal Article
Title
Machine learning-enhanced modelling and experimental analysis of foam-core thermoplastic composites produced via pultrusion
Abstract
Foam-core thermoplastic composites manufactured by pultrusion offer lightweight, recyclable structural solutions but require precise control of coupled thermal and curing phenomena to ensure uniform properties. While physics-based models can capture these thermochemical interactions, their computational cost limits their use for rapid prediction and process optimisation. This study presents an integrated experimental–numerical–machine learning framework for foam-core thermoplastic pultrusion using Elium® resin. Cure kinetics are characterised by DSC and incorporated into a validated 3D multiphysics model coupling heat transfer and polymerisation. Microscopy confirms limited resin penetration into the foam surface, forming a mechanical interlocking mechanism at the skin–core interface. A large parametric simulation campaign is used to train machine-learning surrogate models (neural networks, random forests, and gradient boosting), achieving 𝑅² > 0.998 and enabling millisecond-level predictions with over 10⁴× speed-up compared to finiteelement simulations. These surrogates are employed for rapid prediction and process optimisation to identify operating windows that balance throughput, thermal control, energy efficiency, and complete curing.
Author(s)
Open Access
File(s)
Rights
CC BY 4.0: Creative Commons Attribution
Language
English