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Machine learning the functional form of the superconducting critical temperature

Invited

Abstract

Predicting the critical temperature Tc of superconductors is a difficult task, even for electron-phonon systems. We build on earlier efforts by McMillan [1] and Allen and Dynes [2] to model Tc from various measures of the phonon spectrum and the electron-phonon interaction by using machine learning algorithms. Specifically, we use symbolic regression implemented in the Sure Independence and Sparsifying Operator (SISSO) method [3] to identify new, physically interpretable equations for Tc as a function of a small number of physical quantities. We show that our first model [4], trained using the relatively small Tc < 10K data tested by Allen and Dynes, improves upon the Allen-Dynes fit and can reasonably generalize to superconducting materials with higher Tc such as H3S. To address the limitations of the Allen-Dynes equation arising from their selection of spectral function α2F(ω) shapes, we generate a new dataset using Eliashberg Theory and more α2F(ω) examples, ranging from bimodal Einstein models to calculated spectra of polyhydrides. Furthermore, we explore the use of variational autoencoders to augment the data. By incorporating physical insights and constraints into a data-driven approach, we demonstrate that machine-learning methods can identify the relevant physical quantities and obtain predictive equations using small but high-quality datasets.

[1] W. L. McMillan, Phys. Rev. 167, 331 (1968).
[2] P. B. Allen and R. C. Dynes, Phys. Rev. B12, 905 (1975).
[3] R. Ouyang, S. Curtarolo, E. Ahmetcik, M. Scheffler, and L. M. Ghiringhelli, Phys. Rev. Materials 2, 083802(2018).
[4] S. R. Xie, G. R. Stewart, J. J. Hamlin, P. J. Hirschfeld, and R. G. Hennig, Phys. Rev. B100, 174513 (2019).

Presenters

  • Stephen Raymond Xie

    Department of Materials Science and Engineering, University of Florida, Materials Science and Engineering, University of Florida

Authors

  • Stephen Raymond Xie

    Department of Materials Science and Engineering, University of Florida, Materials Science and Engineering, University of Florida

  • Yundi Quan

    Department of Physics, University of Florida

  • Gregory Randall Stewart

    University of Florida, Department of Physics, University of Florida

  • James Hamlin

    Department of Physics, University of Florida, University of Florida

  • Peter Hirschfeld

    University of Florida, Department of Physics, University of Florida, Physics, University of Florida, univ of Florida

  • Richard Hennig

    University of Florida, Department of Materials Science and Engineering, University of Florida, Materials Science and Engineering, University of Florida