An accelerated hybrid data-driven/model-based approach for
poroelasticity problems with multi-fidelity multi-physics data
- URL: http://arxiv.org/abs/2012.00165v1
- Date: Mon, 30 Nov 2020 23:36:05 GMT
- Title: An accelerated hybrid data-driven/model-based approach for
poroelasticity problems with multi-fidelity multi-physics data
- Authors: Bahador Bahmani, WaiChing Sun
- Abstract summary: We present a hybrid model/model-free data-driven approach to solve poroity problems.
To handle the different fidelities of the solid elasticity and fluid hydraulic responses, we introduce a hybridized model.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We present a hybrid model/model-free data-driven approach to solve
poroelasticity problems. Extending the data-driven modeling framework
originated from Kirchdoerfer and Ortiz (2016), we introduce one model-free and
two hybrid model-based/data-driven formulations capable of simulating the
coupled diffusion-deformation of fluid-infiltrating porous media with different
amounts of available data. To improve the efficiency of the model-free data
search, we introduce a distance-minimized algorithm accelerated by a
k-dimensional tree search. To handle the different fidelities of the solid
elasticity and fluid hydraulic constitutive responses, we introduce a
hybridized model in which either the solid and the fluid solver can switch from
a model-based to a model-free approach depending on the availability and the
properties of the data. Numerical experiments are designed to verify the
implementation and compare the performance of the proposed model to other
alternatives.
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