Predicting Emergent Crystalline Structural Order from Building Block Geometry

ORAL

Abstract

Quantitatively determining how building block attributes drive materials systems to form ordered target crystals is a fundamental challenge. Addressing this challenge is particularly difficult for systems that exhibit emergent order. Here, we combine inverse design with machine learning to construct a model that correctly classifies the emergent, entropy-driven crystallization of more than ten thousand convex polyhedral shapes into a small number of structures with an accuracy of greater than 90% using only two parameters. Our results demonstrate that the emergent, self-assembly of entropic crystals is controlled by a remarkably small number of parameters, and provides a quantitative model for predicting the expected behavior of colloidal self-assembly experiments.

Presenters

  • Yina Geng

    • Univ of Michigan - Ann Arbor

Authors

  • Yina Geng

    • Univ of Michigan - Ann Arbor
  • Greg Van Anders

    • Department of Physics, University of Michigan
    • Univ of Michigan - Ann Arbor
    • Department of Physics, Univ of Michigan - Ann Arbor
    • University Michigan
  • Sharon Glotzer

    • Chemical Engineering, Univ of Michigan - Ann Arbor
    • Univ of Michigan - Ann Arbor
    • Department of Chemical Engineering, University of Michigan - Ann Arbor
    • Department of Chemical Engineering, University of Michigan
    • Chemical Engineering, University of Michigan
    • Department of Chemical Engineering, Univ of Michigan - Ann Arbor