Machine Learning the Electronic Structure of Phase Change Materials

ORAL

Abstract

Machine learning is becoming a powerful tool to complement current computational techniques in solving materials science problems. While first-principles calculations based on Density Functional Theory (DFT) have demonstrated the numerical accuracy required for most nanoelectronics applications, amorphous and polycrystalline systems represent a particular challenge due to their heterogeneity and the associated size of their structural approximants. Tight-binding methods offer the scalability required, but rely on their prior parametrization, a complex tax for multivalent and phase changing materials used in Beyond-Moore computing. In this work, we use machine learning to parameterize a tight-binding ansatz for the electronic structure of complex phase change materials. Using the DFT results for small unit cells of single and multivalent GexSbyTez(0

*This work was supported by the Northwestern University MRSEC under National Science Foundation grant No.~DMR-1720139 (Q.Z., P.D.). Use of the Center for Nanoscale Materials (CNM), an Office of Science user facility, was supported by the U.S. Department of Energy, Office of Science, Office of Basic Energy Sciences, under Contract No. DE-AC02-06CH11357.

Presenters

  • Qunfei Zhou

    • Northwestern University

Authors

  • Qunfei Zhou

    • Northwestern University
  • Suvo Banik

    • University of Illinois Chicago
  • Srilok Srinivasan

    • Argonne National Laboratory
  • Subramanian K Sankaranarayanan

    • University of Illinois, Argonne National
    • University of Illinois Chicago
    • Argonne National Laboratory
  • Pierre Darancet

    • Argonne National Laboratory