Machine learning-driven elasticity prediction in advanced inorganic materials via convolutional neural networks
Yujie Liu, Zhenyu Wang, Hang Lei, Guoyu Zhang, Jiawei Xian, Zhibin Gao, Jun Sun, Haifeng Song, Xiangdong Ding

TL;DR
This paper develops convolutional neural network models to accurately predict elastic properties of inorganic crystals, significantly expanding elastic property datasets and aiding material design.
Contribution
It introduces high-accuracy CGCNN models trained on large datasets to predict elastic moduli, enhancing data resources for inorganic materials.
Findings
Achieved mean absolute error <13 in elastic property predictions
Predicted elastic properties for over 80,000 inorganic crystals
Provided open access to a large, enriched elastic property dataset
Abstract
Inorganic crystal materials have broad application potential due to excellent physical and chemical properties, with elastic properties (shear modulus, bulk modulus) crucial for predicting materials' electrical conductivity, thermal conductivity and mechanical properties. Traditional experimental measurement suffers from high cost and low efficiency, while theoretical simulation and graph neural network-based machine learning methods--especially crystal graph convolutional neural networks (CGCNNs)--have become effective alternatives, achieving remarkable results in predicting material elastic properties. This study trained two CGCNN models using shear modulus and bulk modulus data of 10987 materials from the Matbench v0.1 dataset, which exhibit high accuracy (mean absolute error <13, coefficient of determination R-squared close to 1) and good generalization ability. Materials were…
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Taxonomy
TopicsMachine Learning in Materials Science · X-ray Diffraction in Crystallography · Inorganic Chemistry and Materials
