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An efficient multiscale surrogate modelling framework for composite materials considering progressive damage based on artificial neural networks

Yan, Shibo; Zou, Xi; Ilkhani, Mohammad; Jones, Arthur

An efficient multiscale surrogate modelling framework for composite materials considering progressive damage based on artificial neural networks Thumbnail


Authors

Shibo Yan

Xi Zou

Arthur Jones



Abstract

© 2020 Elsevier Ltd Modelling of the progressive damage behaviour of large-scale composite structures presents a significant challenge in terms of computational cost. This is due to the detailed description in finite element (FE) models for the materials, i.e., with each unidirectional layer defined as required by the applicability of laminate failure criteria, and numerous iterations required to capture the highly nonlinear behaviour after damage initiation. In this work, we propose a method to accelerate the nonlinear FE analysis by using a pre-computed surrogate model which acts as a general material database representing the nonlinear effective stress-strain relationship and the possible failure information. Developed using artificial neural network algorithms, the framework is separated into an offline training phase and an online application phase. The surrogate model is first trained with a vast number of sampling data obtained from mesoscale unit cell models offline, and then used for online predictions on a macroscale FE model. The prediction accuracy of the surrogate model was examined by comparing the results with conventional FE modelling and good agreement was observed. The presented method enables progressive damage analysis of composite structures with significant savings of the online computational cost. Lastly, the surrogate model is only based on material designs and is reusable for other structures with the same material.

Citation

Yan, S., Zou, X., Ilkhani, M., & Jones, A. (2020). An efficient multiscale surrogate modelling framework for composite materials considering progressive damage based on artificial neural networks. Composites Part B: Engineering, 194, https://doi.org/10.1016/j.compositesb.2020.108014

Journal Article Type Article
Acceptance Date Mar 26, 2020
Online Publication Date Apr 12, 2020
Publication Date Aug 1, 2020
Deposit Date Apr 16, 2020
Publicly Available Date Apr 13, 2021
Journal Composites Part B: Engineering
Print ISSN 1359-8368
Electronic ISSN 1879-1069
Publisher Elsevier
Peer Reviewed Peer Reviewed
Volume 194
DOI https://doi.org/10.1016/j.compositesb.2020.108014
Keywords Mechanical Engineering; Industrial and Manufacturing Engineering; Mechanics of Materials; Ceramics and Composites
Public URL https://nottingham-repository.worktribe.com/output/4298016
Publisher URL https://www.sciencedirect.com/science/article/abs/pii/S1359836820303279?via%3Dihub

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