An Alternative Methodology to Compute the Geometric Tortuosity in 2D Porous Media Using the A-Star Pathfinding Algorithm
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MDPI
Materia
Geometric tortuosity Porosity Pathfinding A-star algorithm
Date
2022-04-02Referencia bibliográfica
Espinoza-Andaluz, M.; Pagalo, J.; Ávila, J.; Barzola-Monteses, J. An Alternative Methodology to Compute the Geometric Tortuosity in 2D Porous Media Using the A-Star Pathfinding Algorithm. Computation 2022, 10, 59. [https://doi.org/10.3390/computation10040059]
Sponsorship
ESPOL through the grant number FIMCP-CERA-05-2017Abstract
Geometric tortuosity is an essential characteristic to consider when studying a porous
medium’s morphology. Knowing the material’s tortuosity allows us to understand and estimate
the different diffusion transport properties of the analyzed material. Geometric tortuosity is useful
to compute parameters, such as the effective diffusion coefficient, inertial factor, and diffusibility,
which are commonly found in porous media materials. This study proposes an alternative method to
estimate the geometric tortuosity of digitally created two-dimensional porous media. The porous
microstructure is generated by using the PoreSpy library of Python and converted to a binary matrix
for the computation of the parameters involved in this work. As a first step, porous media are
digitally generated with porosity values from 0.5 to 0.9; then, the geometric tortuosity is determined
using the A-star algorithm. This approach, commonly used in pathfinding problems, improves the
use of computational resources and complies with the theory found in the literature. Based on the
obtained results, the best geometric tortuosity–porosity correlations are proposed. The selection of
the best correlation considers the coefficient of determination value (99.7%) with a confidence interval
of 95%