Ensemble-Embedding Graph Neural Network for Direct Prediction of Optical Spectra from Crystal Structure
Nguyen Tuan Hung, Ryotaro Okabe, Abhijatmedhi Chotrattanapituk, Mingda, Li

TL;DR
This paper introduces GNNOpt, a graph neural network architecture that efficiently predicts optical spectra from crystal structures, enabling rapid screening of materials for optoelectronic applications with high accuracy.
Contribution
The paper presents a novel equivariance GNN architecture with automatic embedding optimization for predicting optical properties from crystal structures, using a small dataset of 944 materials.
Findings
GNNOpt accurately predicts optical spectra of unseen materials.
The model successfully screens photovoltaic and quantum materials.
First-principles validation confirms high prediction accuracy.
Abstract
Optical properties in solids, such as refractive index and absorption, hold vast applications ranging from solar panels to sensors, photodetectors, and transparent displays. However, first-principles computation of optical properties from crystal structures is a complex task due to the high convergence criteria and computational cost. Recent progress in machine learning shows promise in predicting material properties, yet predicting optical properties from crystal structures remains challenging due to the lack of efficient atomic embeddings. Here, we introduce GNNOpt, an equivariance graph-neural-network architecture featuring automatic embedding optimization. This enables high-quality optical predictions with a dataset of only 944 materials. GNNOpt predicts all optical properties based on the Kramers-Kr{\"o}nig relations, including absorption coefficient, complex dielectric function,…
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Taxonomy
TopicsWater Quality Monitoring and Analysis · Spectroscopy and Chemometric Analyses
