Rapid prediction of mechanical properties during composite curing using artificial neural network and multi-objective genetic algorithms

  • Jiang Bo Bai
  • , Guang Yu Bu
  • , Z. Z. Wang*
  • , Peng Cheng Cao
  • , Xue Qin Li
  • , Shuang Xi Guo
  • , Tian Wei Liu
  • *Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

The mechanical properties of prepreg change significantly during the curing process of composite materials. The accurate characterisation of the prepreg's mechanical properties is the basis for predicting the curing deformation of composite materials. Experiments and empirical formulae are current dominant methods for the performance characterisation of unidirectional tape prepregs. However, in practice, they have limitations towards real-time prediction of prepreg mechanical properties. This study proposes a real-time prepreg mechanical property predicting system using its tip deflection in the autoclave. The system comprises two proposed methods: the Genetic Algorithm − Artificial Neural Network model (GA-ANN) and the Auto-encoder with short-cuts model mechanism (AESC). The AESC can achieve a prediction with a minimum mean relative error of 10.11% in 2.5 s. The GA-ANN method can provide more accurate predictions with a minimum mean relative error of 3.84% in 26 s.

Original languageEnglish
Article number118809
JournalComposite Structures
Volume354
DOIs
StatePublished - Jan 2025

Keywords

  • Artificial neural networks
  • Carbon fibres
  • Curing
  • High-temperature properties
  • Mechanical properties

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