TL;DR
This paper explores the use of Graph Neural Networks to predict buckling behavior in asymmetric columns, introducing a new dataset and analyzing factors affecting model performance in solid mechanics.
Contribution
The study introduces the ABC dataset for buckling prediction, evaluates GNN architectures and data representations, and highlights challenges in modeling emergent mechanical behaviors.
Findings
GNNs can predict buckling direction with good accuracy
Data representation and augmentation significantly impact performance
Modeling emergent behavior remains a complex challenge
Abstract
From designing architected materials to connecting mechanical behavior across scales, computational modeling is a critical tool in solid mechanics. Recently, there has been a growing interest in using machine learning to reduce the computational cost of physics-based simulations. Notably, while machine learning approaches that rely on Graph Neural Networks (GNNs) have shown success in learning mechanics, the performance of GNNs has yet to be investigated on a myriad of solid mechanics problems. In this work, we examine the ability of GNNs to predict a fundamental aspect of mechanically driven emergent behavior: the connection between a column's geometric structure and the direction that it buckles. To accomplish this, we introduce the Asymmetric Buckling Columns (ABC) dataset, a dataset comprised of three sub-datasets of asymmetric and heterogeneous column geometries where the goal is…
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