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Predicting compressive stress-strain behavior of elasto-plastic porous media via morphology-informed neural networks.

Publication ,  Journal Article
Lindqwister, W; Peloquin, J; Dalton, LE; Gall, K; Veveakis, M
Published in: Communications engineering
April 2025

Porous media, ranging from bones to concrete and from batteries to architected lattices, pose difficult challenges in fully harnessing for engineering applications due to their complex and variable structures. Accurate and rapid assessment of their mechanical behavior is both challenging and essential, and traditional methods such as destructive testing and finite element analysis can be costly, computationally demanding, and time consuming. Machine learning (ML) offers a promising alternative for predicting mechanical behavior by leveraging data-driven correlations. However, with such structural complexity and diverse morphology among porous media, the question becomes how to effectively characterize these materials to provide robust feature spaces for ML that are descriptive, succinct, and easily interpreted. Here, we developed an automated methodology to determine porous material strength. This method uses scalar morphological descriptors, known as Minkowski functionals, to describe the porous space. From there, we conduct uniaxial compression experiments for generating material stress-strain curves, and then train an ML model to predict the curves using said morphological descriptors. This framework seeks to expedite the analysis and prediction of stress-strain behavior in porous materials and lay the groundwork for future models that can predict mechanical behaviors beyond compression.

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Published In

Communications engineering

DOI

EISSN

2731-3395

ISSN

2731-3395

Publication Date

April 2025

Volume

4

Issue

1

Start / End Page

73
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Lindqwister, W., Peloquin, J., Dalton, L. E., Gall, K., & Veveakis, M. (2025). Predicting compressive stress-strain behavior of elasto-plastic porous media via morphology-informed neural networks. Communications Engineering, 4(1), 73. https://doi.org/10.1038/s44172-025-00410-9
Lindqwister, W., J. Peloquin, L. E. Dalton, K. Gall, and M. Veveakis. “Predicting compressive stress-strain behavior of elasto-plastic porous media via morphology-informed neural networks.Communications Engineering 4, no. 1 (April 2025): 73. https://doi.org/10.1038/s44172-025-00410-9.
Lindqwister W, Peloquin J, Dalton LE, Gall K, Veveakis M. Predicting compressive stress-strain behavior of elasto-plastic porous media via morphology-informed neural networks. Communications engineering. 2025 Apr;4(1):73.
Lindqwister, W., et al. “Predicting compressive stress-strain behavior of elasto-plastic porous media via morphology-informed neural networks.Communications Engineering, vol. 4, no. 1, Apr. 2025, p. 73. Epmc, doi:10.1038/s44172-025-00410-9.
Lindqwister W, Peloquin J, Dalton LE, Gall K, Veveakis M. Predicting compressive stress-strain behavior of elasto-plastic porous media via morphology-informed neural networks. Communications engineering. 2025 Apr;4(1):73.

Published In

Communications engineering

DOI

EISSN

2731-3395

ISSN

2731-3395

Publication Date

April 2025

Volume

4

Issue

1

Start / End Page

73