A Gaussian Approximation Potential for Amorphous Si:H
Davis Unruh, Reza Vatan Meidanshahi, Stephen M. Goodnick, G\'abor, Cs\'anyi, Gergely T. Zim\'anyi

TL;DR
This paper develops a machine-learned Gaussian approximation potential for amorphous silicon with hydrogen, enabling accurate and efficient large-scale simulations that closely match density functional theory results.
Contribution
The authors extend the Gaussian approximation potential to include hydrogen interactions, significantly improving modeling realism for amorphous Si:H.
Findings
The Si:H GAP achieves DFT-like accuracy in energies, forces, and stresses.
Structural properties of hydrogenated silicon models match experimental data.
Simulation efficiency is improved by several orders of magnitude.
Abstract
Hydrogenation of amorphous silicon (a-Si:H) is critical for reducing defect densities, passivating mid-gap states and surfaces, and improving photoconductivity in silicon-based electro-optical devices. Modelling the atomic scale structure of this material is critical to understanding these processes, which in turn is needed to describe c-Si/a-Si:H heterjunctions that are at the heart of the modern solar cells with world record efficiency. Density functional theory (DFT) studies achieve the required high accuracy but are limited to moderate system sizes a hundred atoms or so by their high computational cost. Simulations of amorphous materials in particular have been hindered by this high cost because large structural models are required to capture the medium range order that is characteristic of such materials. Empirical potential models are much faster, but their accuracy is not…
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Taxonomy
TopicsThin-Film Transistor Technologies · Silicon and Solar Cell Technologies · Machine Learning in Materials Science
