Hybrid machine learning based scale bridging framework for permeability prediction of fibrous structures
Denis Korolev, Tim Schmidt, Dinesh K. Natarajan, Stefano Cassola, David May, Miro Duhovic, Michael Hinterm\"uller

TL;DR
This paper presents a hybrid machine learning framework that efficiently predicts permeability in fibrous structures across multiple scales, balancing accuracy and computational cost, and introduces PINNs to improve model generalization.
Contribution
It develops a novel hybrid scale-bridging framework combining surrogate models and physics-informed neural networks for permeability prediction.
Findings
SBM achieves near-FRM accuracy with 45-minute simulations
SSM deviates by up to 150% from ground truth
PINNs improve model generalization and reduce data scarcity issues
Abstract
This study introduces a hybrid machine learning-based scale-bridging framework for predicting the permeability of fibrous textile structures. By addressing the computational challenges inherent to multiscale modeling, the proposed approach evaluates the efficiency and accuracy of different scale-bridging methodologies combining traditional surrogate models and even integrating physics-informed neural networks (PINNs) with numerical solvers, enabling accurate permeability predictions across micro- and mesoscales. Four methodologies were evaluated: Single Scale Method (SSM), Simple Upscaling Method (SUM), Scale-Bridging Method (SBM), and Fully Resolved Model (FRM). SSM, the simplest method, neglects microscale permeability and exhibited permeability values deviating by up to 150\% of the FRM model, which was taken as ground truth at an equivalent lower fiber volume content. SUM improved…
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Taxonomy
TopicsEpoxy Resin Curing Processes · Material Properties and Processing · Textile materials and evaluations
