Effects of Seawater on Mechanical Performance of Composite Sandwich Structures: A Machine Learning Framework

Author:

Osa-uwagboe Norman12ORCID,Udu Amadi Gabriel23ORCID,Silberschmidt Vadim V.1ORCID,Baxevanakis Konstantinos P.1ORCID,Demirci Emrah1

Affiliation:

1. Wolfson School of Mechanical, Electrical, and Manufacturing Engineering, Loughborough University, Loughborough LE11 3TU, UK

2. Air Force Research and Development Centre, Nigerian Air Force Base, Kaduna PMB 2104, Nigeria

3. School of Engineering, University of Leicester, Leicester LE1 7RH, UK

Abstract

Sandwich structures made with fibre-reinforced plastics are commonly used in maritime vessels thanks to their high strength-to-weight ratios, corrosion resistance, and buoyancy. Understanding their mechanical performance after moisture uptake and the implications of moisture uptake for their structural integrity and safety within out-of-plane loading regimes is vital for material optimisation. The use of modern methods such as acoustic emission (AE) and machine learning (ML) could provide effective techniques for the assessment of mechanical behaviour and structural health monitoring. In this study, the AE features obtained from quasi-static indentation tests on sandwich structures made from E-glass fibre face sheets with polyvinyl chloride foam cores were employed. Time- and frequency-domain features were then used to capture the relevant information and patterns within the AE data. A k-means++ algorithm was utilized for clustering analysis, providing insights into the principal damage modes of the studied structures. Three ensemble learning algorithms were employed to develop a damage-prediction model for samples exposed and unexposed to seawater and were loaded with indenters of different geometries. The developed models effectively identified all damage modes for the various indenter geometries under different loading conditions with accuracy scores between 86.4 and 95.9%. This illustrates the significant potential of ML for the prediction of damage evolution in composite structures for marine applications.

Funder

Nigerian Air Force

Publisher

MDPI AG

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