Machined-learned softness as a structural order parameter for understanding glassy systems

 · Invited

Abstract

All solids flow at high enough applied stress and melt at high enough temperature. Crystalline solids flow and premelt via localized particle rearrangements that occur preferentially at structural defects known as dislocations. The population of dislocations therefore controls both how crystalline solids flow and how they melt. In disordered solids, there is considerable evidence that localized particle rearrangements induced by stress or temperature occur at localized flow defects but all attempts to identify them directly from the structure have failed. Here we describe a an application of machine learning data mining methods to diagnose flow defects, or “soft” particles from their local structural environments. We follow the softness of each particle as it evolves under deformation or temperature. Our results show that machine learning methods can be used to gain a conceptual understanding of glassy dynamics and of plasticity that has not been achieved with conventional approaches.

*This work was supported by the UPenn MRSEC via National Science
Foundation (NSF) Grant NSF-DMR-1720530, by US DOE, Office of Basic Energy Sciences, Division of
Materials Sciences and Engineering Award DE-FG02-05ER46199
and the Simons Foundation Grant 327939.

Presenters

  • Andrea Liu

    • University of Pennsylvania
    • Physics, University of Pennsylvania

Authors

  • Andrea Liu

    • University of Pennsylvania
    • Physics, University of Pennsylvania