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Main Authors: Simavilla, David Nieto, Bonfanti, Andrea, de Beristain, Imanol García, Español, Pep, Ellero, Marco
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2409.07545
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author Simavilla, David Nieto
Bonfanti, Andrea
de Beristain, Imanol García
Español, Pep
Ellero, Marco
author_facet Simavilla, David Nieto
Bonfanti, Andrea
de Beristain, Imanol García
Español, Pep
Ellero, Marco
contents We present a versatile framework that employs Physics-Informed Neural Networks (PINNs) to discover the entropic contribution that leads to the constitutive equation for the extra-stress in rheological models of polymer solutions. In this framework the training of the Neural Network is guided by an evolution equation for the conformation tensor which is GENERIC-compliant. We compare two training methodologies for the data-driven PINN constitutive models: one trained on data from the analytical solution of the Oldroyd-B model under steady-state rheometric flows (PINN-rheometric), and another trained on in-silico data generated from complex flow CFD simulations around a cylinder that use the Oldroyd-B model (PINN-complex). The capacity of the PINN models to provide good predictions are evaluated by comparison with CFD simulations using the underlying Oldroyd-B model as a reference. Both models are capable of predicting flow behavior in transient and complex conditions; however, the PINN-complex model, trained on a broader range of mixed flow data, outperforms the PINN-rheometric model in complex flow scenarios. The geometry agnostic character of our methodology allows us to apply the learned PINN models to flows with different topologies than the ones used for training.
format Preprint
id arxiv_https___arxiv_org_abs_2409_07545
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Hammering at the entropy: A GENERIC-guided approach to learning polymeric rheological constitutive equations using PINNs
Simavilla, David Nieto
Bonfanti, Andrea
de Beristain, Imanol García
Español, Pep
Ellero, Marco
Fluid Dynamics
Soft Condensed Matter
We present a versatile framework that employs Physics-Informed Neural Networks (PINNs) to discover the entropic contribution that leads to the constitutive equation for the extra-stress in rheological models of polymer solutions. In this framework the training of the Neural Network is guided by an evolution equation for the conformation tensor which is GENERIC-compliant. We compare two training methodologies for the data-driven PINN constitutive models: one trained on data from the analytical solution of the Oldroyd-B model under steady-state rheometric flows (PINN-rheometric), and another trained on in-silico data generated from complex flow CFD simulations around a cylinder that use the Oldroyd-B model (PINN-complex). The capacity of the PINN models to provide good predictions are evaluated by comparison with CFD simulations using the underlying Oldroyd-B model as a reference. Both models are capable of predicting flow behavior in transient and complex conditions; however, the PINN-complex model, trained on a broader range of mixed flow data, outperforms the PINN-rheometric model in complex flow scenarios. The geometry agnostic character of our methodology allows us to apply the learned PINN models to flows with different topologies than the ones used for training.
title Hammering at the entropy: A GENERIC-guided approach to learning polymeric rheological constitutive equations using PINNs
topic Fluid Dynamics
Soft Condensed Matter
url https://arxiv.org/abs/2409.07545