Enhancing material behavior discovery using embedding-oriented Physically-Guided Neural Networks with Internal Variables
Rub\'en Mu\~noz-Sierra, Manuel Doblar\'e, Jacobo Ayensa-Jim\'enez

TL;DR
This paper enhances Physically Guided Neural Networks with internal variables by introducing scalable surrogate decoders and transfer learning, enabling efficient, accurate, and robust material behavior discovery from observable data.
Contribution
It proposes scalable decoder alternatives and transfer learning strategies to improve PGNNIV performance on high-dimensional data, addressing previous limitations.
Findings
Successfully identifies constitutive state equations from observable data
Improves robustness to noise and reduces overfitting
Significantly decreases computational demands
Abstract
Physically Guided Neural Networks with Internal Variables are SciML tools that use only observable data for training and and have the capacity to unravel internal state relations. They incorporate physical knowledge both by prescribing the model architecture and using loss regularization, thus endowing certain specific neurons with a physical meaning as internal state variables. Despite their potential, these models face challenges in scalability when applied to high-dimensional data such as fine-grid spatial fields or time-evolving systems. In this work, we propose some enhancements to the PGNNIV framework that address these scalability limitations through reduced-order modeling techniques. Specifically, we introduce alternatives to the original decoder structure using spectral decomposition, POD, and pretrained autoencoder-based mappings. These surrogate decoders offer varying…
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