npj 2D Materials and Applications (Apr 2021)

Deep learning model to predict fracture mechanisms of graphene

  • Andrew J. Lew,
  • Chi-Hua Yu,
  • Yu-Chuan Hsu,
  • Markus J. Buehler

DOI
https://doi.org/10.1038/s41699-021-00228-x
Journal volume & issue
Vol. 5, no. 1
pp. 1 – 8

Abstract

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Abstract Understanding fracture is critical to the design of resilient nanomaterials. Molecular dynamics offers a way to study fracture at an atomistic level, but is computationally expensive with limitations of scalability. In this work, we build upon machine-learning approaches for predicting nanoscopic fracture mechanisms including crack instabilities and branching as a function of crystal orientation. We focus on a particular technologically relevant material system, graphene, and apply a deep learning method to the study of such nanomaterials and explore the parameter space necessary for calibrating machine-learning predictions to meaningful results. Our results validate the ability of deep learning methods to quantitatively capture graphene fracture behavior, including its fractal dimension as a function of crystal orientation, and provide promise toward the wider application of deep learning to materials design, opening the potential for other 2D materials.