J. Lee , M. Duhovic , D. May , T. Allen , P. Kelly
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引用次数: 0
Abstract
Physics-Informed Neural Networks (PINNs) offer advantages over conventional data-driven machine learning approaches as they are data-free and can make better predictions on unseen data by incorporating physical information in the form of the governing equations. The governing equation for the coupled flow and deformation behaviour in transverse Liquid Composite Moulding processes is used to demonstrate the capabilities of PINNs for process simulation. Parametric solutions of the deformation of a saturated fabric stack under varying applied loading are obtained using the PINN model, showing close agreement with finite element simulations but with significantly shorter computation times. A novel PINN architecture is developed to replace empirical equations for the permeability and compressibility constitutive relations with neural networks trained to fit experimental data. Finally, PINNs are used to analyse transverse permeability measurements, allowing for real-time monitoring of the permeability variation through the thickness, as opposed to the apparent permeability of a hydrodynamically-deformed sample.
期刊介绍:
Composites Part A: Applied Science and Manufacturing is a comprehensive journal that publishes original research papers, review articles, case studies, short communications, and letters covering various aspects of composite materials science and technology. This includes fibrous and particulate reinforcements in polymeric, metallic, and ceramic matrices, as well as 'natural' composites like wood and biological materials. The journal addresses topics such as properties, design, and manufacture of reinforcing fibers and particles, novel architectures and concepts, multifunctional composites, advancements in fabrication and processing, manufacturing science, process modeling, experimental mechanics, microstructural characterization, interfaces, prediction and measurement of mechanical, physical, and chemical behavior, and performance in service. Additionally, articles on economic and commercial aspects, design, and case studies are welcomed. All submissions undergo rigorous peer review to ensure they contribute significantly and innovatively, maintaining high standards for content and presentation. The editorial team aims to expedite the review process for prompt publication.