A New Method to Predict Damage to Composite Structures Using Convolutional Neural Networks

Author:

Mezeix Laurent1,Rivas Ainhoa Soldevila2,Relandeau Antonin2,Bouvet Christophe3ORCID

Affiliation:

1. Faculty of Engineering, Burapha University, 169 Long-Hard Bangsaen Road, Chonburi 20131, Thailand

2. INSA Toulouse, 135 Avenue de Rangueil, CEDEX 4, 31077 Toulouse, France

3. INSA/ISAE-SUPAERO/IMT Mines Albi/UPS, Institut Clément Ader (CNRS UMR 5312), Université de Toulouse, 10 av. E. Belin, CEDEX 4, 31055 Toulouse, France

Abstract

To reduce the cost of developing composite aeronautical structures, manufacturers and university researchers are increasingly using “virtual testing” methods. Then, finite element methods (FEMs) are intensively used to calculate mechanical behavior and to predict the damage to fiber-reinforced polymer (FRP) composites under impact loading, which is a crucial design aspect for aeronautical composite structures. But these FEMs require a lot of knowledge and a significant number of IT resources to run. Therefore, artificial intelligence could be an interesting way of sizing composites in terms of impact damage tolerance. In this research, the authors propose a methodology and deep learning-based approach to predict impact damage to composites. The data are both collected from the literature and created using an impact simulation performed using an FEM. The data augmentation method is also proposed to increase the data number from 149 to 2725. Firstly, a CNN model is built and optimized, and secondly, an aggregation of two CNN architectures is proposed. The results show that the use of an aggregation of two CNNs provides better performance than a single CNN. Finally, the aggregated CNN model prediction demonstrates the potential for CNN models to accelerate composite design by showing a 0.15 mm precision for all the length measurements, an average delaminated surface error of 56 mm2, and an error rate of 7% for the prediction of the presence of delamination.

Publisher

MDPI AG

Subject

General Materials Science

Reference63 articles.

1. Investigation of the high and very high cycle fatigue behaviour of continuous fibre reinforced plastics by conventional and ultrasonic fatigue testing;Flore;Compos. Sci. Technol.,2017

2. Silberschmidt, V.V. (2016). Dynamic Deformation, Damage and Fracture in Composite Materials and Structures, Woodhead Publishing.

3. A model of low-velocity impact damage of composite plates subjected to Compression-After-Impact (CAI) testing;Rozylo;Compos. Struct.,2017

4. Damage tolerance of an impacted composite laminate;Dubary;Compos. Struct.,2018

5. Morteau, E., and Fualdesairbus, C. (2006, January 19–21). Damage Tolerance Philosophy. Proceedings of the FAA Workshop for Composite Damage Tolerance and Maintenances, Chicago, IL, USA.

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