Reduced order modelling of air puff test for corneal material characterisation
Maklad, Osama ORCID: https://orcid.org/0000-0001-6893-2654 and Hao, Muting
(2025)
Reduced order modelling of air puff test for corneal material characterisation.
In: Code of Conduct for NFFDy Summer Programme, 8th July – 16th August 2024, University of Leeds.
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49674 MAKLAD_Reduced_Order_Modelling_Of_Air_Puff_Test_For_Corneal_Material_Characterisation_(AAM)_2024.pdf - Accepted Version Download (4MB) | Preview |
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Abstract
Models of the fluid-structure interaction (FSI) model for the air puff test were analysed. Using Abaqus, the air puff test is applied to eyes with varying biomechanical parameters, such as material properties, corneal thickness, and radius. A reduced order model of the air puff (a turbulent impinging jet) has been acquired to decrease simulation time from 48 hours for the FSI model to approximately 12 minutes for the finite element analysis (FEA) model alone. To further accelerate simulations and improve model accuracy, Physics-Informed Neural Networks (PINNs) will be integrated with the reduced-order model. This hybrid approach will help expand the model to a larger dataset, enhancing intraocular pressure (IOP) estimation accuracy and the corneal material properties algorithm through inverse FEA. Additionally, a neural network (NN) framework with embedded Gaussian-modulated waveforms is proposed to model the pressure and deformation distributions on the corneal surface as functions of spatial and temporal parameters. By learning the relationship between corneal biomechanical inputs such as Corneal Central Thickness (CCT), Intraocular Pressure (IOP), and baseline properties, and the governing coefficients of pressure and deformation, the network accurately reconstructs the result that matches well with the high-fidelity CFD data. This approach can quickly capture the distribution of pressure and deformation. It can also provide insights into the distinct spatial and temporal dynamics of pressure and deformation, giving a more comprehensive understanding of fluid-structure interaction phenomena in the air puff test.
Item Type: | Conference or Conference Paper (Paper) |
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Uncontrolled Keywords: | air puff test, Intraocular Pressure (IOP), ocular biomechanics, Fluid-Structure Interaction (FSI), reduced order modelling, Machine Learning (ML), Gradient Boosting Regressor (GBR) |
Subjects: | Q Science > Q Science (General) T Technology > T Technology (General) |
Faculty / School / Research Centre / Research Group: | Faculty of Engineering & Science Faculty of Engineering & Science > School of Engineering (ENG) |
Related URLs: | |
Last Modified: | 11 Feb 2025 09:37 |
URI: | http://gala.gre.ac.uk/id/eprint/49674 |
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