Litcius/Paper detail

Sparse representation for machine learning the properties of defects in 2D materials

N. Kazeev, Abdalaziz Rashid Al-Maeeni, Ignat Romanov, Maxim Faleev, Ruslan Lukin, Alexander Tormasov, A. H. Castro Neto, Kostya S. Novoselov, Pengru Huang, A. Ustyuzhanin

2023npj Computational Materials34 citationsDOIOpen Access PDF

Abstract

Abstract Two-dimensional materials offer a promising platform for the next generation of (opto-) electronic devices and other high technology applications. One of the most exciting characteristics of 2D crystals is the ability to tune their properties via controllable introduction of defects. However, the search space for such structures is enormous, and ab-initio computations prohibitively expensive. We propose a machine learning approach for rapid estimation of the properties of 2D material given the lattice structure and defect configuration. The method suggests a way to represent configuration of 2D materials with defects that allows a neural network to train quickly and accurately. We compare our methodology with the state-of-the-art approaches and demonstrate at least 3.7 times energy prediction error drop. Also, our approach is an order of magnitude more resource-efficient than its contenders both for the training and inference part.

Topics & Concepts

Computer scienceInferenceComputationLattice (music)Artificial neural networkRepresentation (politics)Artificial intelligenceMachine learningComputer engineeringAlgorithmPhysicsLawPolitical sciencePoliticsAcousticsMachine Learning in Materials Science2D Materials and ApplicationsElectronic and Structural Properties of Oxides