An Image-Based Framework for Measuring the Prestress Level in CFRP Laminates: Experimental Validation

Author:

Valença Jónatas1ORCID,Ferreira Cláudia1ORCID,Araújo André G.23ORCID,Júlio Eduardo4ORCID

Affiliation:

1. CERIS, IST-ID, University of Lisbon, 1049-003 Lisboa, Portugal

2. Institute of Systems and Robotics, University of Coimbra, 3030-290 Coimbra, Portugal

3. Ingeniarius, Lda, 4445-147 Porto, Portugal

4. CERIS, IST, University of Lisbon, 1049-001 Lisboa, Portugal

Abstract

Image-based methods have been applied to support structural monitoring, product and material testing, and quality control. Lately, deep learning for compute vision is the trend, requiring large and labelled datasets for training and validation, which is often difficult to obtain. The use of synthetic datasets is often applying for data augmentation in different fields. An architecture based on computer vision was proposed to measure strain during prestressing in CFRP laminates. The contact-free architecture was fed by synthetic image datasets and benchmarked for machine learning and deep learning algorithms. The use of these data for monitoring real applications will contribute towards spreading the new monitoring approach, increasing the quality control of the material and application procedure, as well as structural safety. In this paper, the best architecture was validated during experimental tests, to evaluate the performance in real applications from pre-trained synthetic data. The results demonstrate that the architecture implemented enables estimating intermediate strain values, i.e., within the range of training dataset values, but it does not allow for estimating strain values outside those range. The architecture allowed for estimating the strain in real images with an error ∼0.5%, higher than that obtained with synthetic images. Finally, it was not possible to estimate the strain in real cases from the training performed with the synthetic dataset.

Funder

Agencia de Inovacao

Fundação para a Ciência e Tecnologia

Publisher

MDPI AG

Subject

General Materials Science

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