ML-based identification of the interface regions for coupling local and nonlocal models
Noujoud Nader, Patrick Diehl, Marta D'Elia, Christian Glusa, Serge, Prudhomme

TL;DR
This paper presents a machine learning method using convolutional neural networks to automatically identify interface regions for coupling local and nonlocal models, enhancing accuracy and efficiency in material simulations.
Contribution
It introduces a novel deep learning-based approach for automatic interface detection in local-nonlocal coupling, with two different data input strategies and demonstrated high accuracy on numerical examples.
Findings
Window-based approach achieves 0.96 accuracy.
Deep learning effectively classifies interface regions.
Automates coupling process, improving efficiency.
Abstract
Local-nonlocal coupling approaches combine the computational efficiency of local models and the accuracy of nonlocal models. However, the coupling process is challenging, requiring expertise to identify the interface between local and nonlocal regions. This study introduces a machine learning-based approach to automatically detect the regions in which the local and nonlocal models should be used in a coupling approach. This identification process uses the loading functions and provides as output the selected model at the grid points. Training is based on datasets of loading functions for which reference coupling configurations are computed using accurate coupled solutions, where accuracy is measured in terms of the relative error between the solution to the coupling approach and the solution to the nonlocal model. We study two approaches that differ from one another in terms of the data…
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