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Main Authors: Aryal, Niraj, Zhang, Sheng, Yin, Weiguo, Chern, Gia-Wei
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2409.01523
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author Aryal, Niraj
Zhang, Sheng
Yin, Weiguo
Chern, Gia-Wei
author_facet Aryal, Niraj
Zhang, Sheng
Yin, Weiguo
Chern, Gia-Wei
contents We present a machine learning (ML) method for efficient computation of vibrational thermal expectation values of physical properties from first principles. Our approach is based on the non-perturbative frozen phonon formulation in which stochastic Monte Carlo algorithm is employed to sample configurations of nuclei in a supercell at finite temperatures based on a first-principles phonon model. A deep-learning neural network is trained to accurately predict physical properties associated with sampled phonon configurations, thus bypassing the time-consuming {\em ab initio} calculations. To incorporate the point-group symmetry of the electronic system into the ML model, group-theoretical methods are used to develop a symmetry-invariant descriptor for phonon configurations in the supercell. We apply our ML approach to compute the temperature dependent electronic energy gap of silicon based on density functional theory (DFT). We show that, with less than a hundred DFT calculations for training the neural network model, an order of magnitude larger number of sampling can be achieved for the computation of the vibrational thermal expectation values. Our work highlights the promising potential of ML techniques for finite temperature first-principles electronic structure methods.
format Preprint
id arxiv_https___arxiv_org_abs_2409_01523
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Machine learning approach for vibronically renormalized electronic band structures
Aryal, Niraj
Zhang, Sheng
Yin, Weiguo
Chern, Gia-Wei
Materials Science
Machine Learning
We present a machine learning (ML) method for efficient computation of vibrational thermal expectation values of physical properties from first principles. Our approach is based on the non-perturbative frozen phonon formulation in which stochastic Monte Carlo algorithm is employed to sample configurations of nuclei in a supercell at finite temperatures based on a first-principles phonon model. A deep-learning neural network is trained to accurately predict physical properties associated with sampled phonon configurations, thus bypassing the time-consuming {\em ab initio} calculations. To incorporate the point-group symmetry of the electronic system into the ML model, group-theoretical methods are used to develop a symmetry-invariant descriptor for phonon configurations in the supercell. We apply our ML approach to compute the temperature dependent electronic energy gap of silicon based on density functional theory (DFT). We show that, with less than a hundred DFT calculations for training the neural network model, an order of magnitude larger number of sampling can be achieved for the computation of the vibrational thermal expectation values. Our work highlights the promising potential of ML techniques for finite temperature first-principles electronic structure methods.
title Machine learning approach for vibronically renormalized electronic band structures
topic Materials Science
Machine Learning
url https://arxiv.org/abs/2409.01523