Machine learning based prediction of the electronic structure of quasi-one-dimensional materials under strain
Shashank Pathrudkar, Hsuan Ming Yu, Susanta Ghosh, Amartya S., Banerjee

TL;DR
This paper introduces a machine learning model that accurately predicts the electronic structure of quasi-one-dimensional materials under mechanical strain, incorporating symmetries and atomic relaxations, demonstrated on carbon nanotubes.
Contribution
The novel model efficiently predicts electronic fields of strained nanostructures using minimal data, leveraging symmetry and specialized coordinates for high accuracy.
Findings
Accurately predicts electronic fields with only 120 data points.
Incorporates symmetry and helical coordinates for improved modeling.
Enables low-overhead evaluation of electronic properties.
Abstract
We present a machine learning based model that can predict the electronic structure of quasi-one-dimensional materials while they are subjected to deformation modes such as torsion and extension/compression. The technique described here applies to important classes of materials such as nanotubes, nanoribbons, nanowires, miscellaneous chiral structures and nano-assemblies, for all of which, tuning the interplay of mechanical deformations and electronic fields is an active area of investigation in the literature. Our model incorporates global structural symmetries and atomic relaxation effects, benefits from the use of helical coordinates to specify the electronic fields, and makes use of a specialized data generation process that solves the symmetry-adapted equations of Kohn-Sham Density Functional Theory in these coordinates. Using armchair single wall carbon nanotubes as a prototypical…
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