open access publication

Article, 2024

Machine learned environment-dependent corrections for a spds empirical tight-binding basis

Machine Learning Science and Technology, ISSN 2632-2153, Volume 5, 2, 10.1088/2632-2153/ad4510

Contributors

Soccodato D. 0009-0006-5673-7548 (Corresponding author) [1] Penazzi G. [2] Pecchia A. [3] Phan A.-L. [1] Auf der Maur M. 0000-0002-4815-4485 [1]

Affiliations

  1. [1] Università di Roma Tor Vergata
  2. [NORA names: Italy; Europe, EU; OECD];
  3. [2] Synopsys Denmark
  4. [NORA names: Other Companies; Private Research; Denmark; Europe, EU; Nordic; OECD];
  5. [3] CNR-ISMN
  6. [NORA names: Italy; Europe, EU; OECD]

Abstract

Empirical tight-binding (ETB) methods have become a common choice to simulate electronic and transport properties for systems composed of thousands of atoms. However, their performance is profoundly dependent on the way the empirical parameters were fitted, and the found parametrizations often exhibit poor transferability. In order to mitigate some of the the criticalities of this method, we introduce a novel Δ-learning scheme, called MLΔTB. After being trained on a custom data set composed of ab-initio band structures, the framework is able to correlate the local atomistic environment to a correction on the on-site ETB parameters, for each atom in the system. The converged algorithm is applied to simulate the electronic properties of random GaAsSb alloys, and displays remarkable agreement both with experimental and ab-initio test data. Some noteworthy characteristics of MLΔTB include the ability to be trained on few instances, to be applied on 3D supercells of arbitrary size, to be rotationally invariant, and to predict physical properties that are not exhibited by the training set.

Keywords

III-V materials, antimonides, atomistic simulations, electronic band structure, empirical tight-binding, Δ-learning

Funders

  • European Commission
  • H2020 Marie Skłodowska-Curie Actions
  • Faculty of Science and Engineering, University of Manchester

Data Provider: Elsevier