Physics-informed Neural Network-Based Parameter Estimation for Inverse Problems of Capillary Flow in Porous Media
DOI:
https://doi.org/10.70567/rmc.v2.ocsid8518Palabras clave:
Physics-informed neural network, Capillary flow, Boltzmann transformation, JAXResumen
Inverse problems in capillary flow through porous media are central to applications ranging from groundwater hydrology to paper-based microfluidics. These problems typically involve estimating unknown model and physical parameters from limited or noisy data, making them challenging to solve accurately. In this work, we introduce a physics-informed neural network (PINN) model for parameter estimation in capillary flow systems governed by the horizontal Richards’ equation. By incorporating the governing physics directly into the neural network’s loss function, our approach yields solutions that are consistent with both experimental data and the underlying physical principles. Our implementation leverages the JAX ecosystem for high-performance computation, and builds on our custom Fronts packages, which are tailored for modeling and solving capillary front propagation problems. This integration allows for efficient training and seamless incorporation of experimental data to validate our model. We demonstrate the effectiveness of the method through case studies in paper-based microfluidics, highlighting its ability to accurately recover flow parameters without relying on iterative trial-and-error approaches, and demanding considerably lower computation costs. This work illustrates the power of combining physics-based modeling with modern machine learning techniques and showcases JAX as a robust platform for solving real-world inverse problems in porous media flow.
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Derechos de autor 2025 Asociación Argentina de Mecánica Computacional

Esta obra está bajo una licencia internacional Creative Commons Atribución 4.0.
Esta publicación es de acceso abierto diamante, sin ningún tipo de costo para los autores ni los lectores.
Solo se publicarán aquellos resúmenes que han sido aceptados para su publicación y han sido presentados en el congreso de AMCA.

