Developing an improved crystal graph convolutional neural network framework for accelerated materials discovery

Cheol Woo Park, C. Wolverton
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引用次数: 141

Abstract

The recently proposed crystal graph convolutional neural network (CGCNN) offers a highly versatile and accurate machine learning (ML) framework by learning material properties directly from graph-like representations of crystal structures ("crystal graphs"). Here, we develop an improved variant of the CGCNN model (iCGCNN) that outperforms the original by incorporating information of the Voronoi tessellated crystal structure, explicit 3-body correlations of neighboring constituent atoms, and an optimized chemical representation of interatomic bonds in the crystal graphs. We demonstrate the accuracy of the improved framework in two distinct illustrations: First, when trained/validated on 180,000/20,000 density functional theory (DFT) calculated thermodynamic stability entries taken from the Open Quantum Materials Database (OQMD) and evaluated on a separate test set of 230,000 entries, iCGCNN achieves a predictive accuracy that is significantly improved, i.e., 20% higher than that of the original CGCNN. Second, when used to assist high-throughput search for materials in the ThCr2Si2 structure-type, iCGCNN exhibited a success rate of 31% which is 310 times higher than an undirected high-throughput search and 2.4 times higher than that of the original CGCNN. Using both CGCNN and iCGCNN, we screened 132,600 compounds with elemental decorations of the ThCr2Si2 prototype crystal structure and identified a total of 97 new unique stable compounds by performing 757 DFT calculations, accelerating the computational time of the high-throughput search by a factor of 130. Our results suggest that the iCGCNN can be used to accelerate high-throughput discoveries of new materials by quickly and accurately identifying crystalline compounds with properties of interest.
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开发一种改进的晶体图卷积神经网络框架,用于加速材料发现
最近提出的晶体图卷积神经网络(CGCNN)通过直接从晶体结构的类图表示(“晶体图”)中学习材料特性,提供了一个高度通用和准确的机器学习(ML)框架。在这里,我们开发了一种改进的CGCNN模型(iCGCNN),通过结合Voronoi镶嵌晶体结构的信息,邻近组成原子的显式三体相关性以及晶体图中原子间键的优化化学表示,该模型优于原始模型。我们通过两个不同的例子证明了改进框架的准确性:首先,当对来自开放量子材料数据库(OQMD)的18万/2万个密度泛函理论(DFT)计算的热力学稳定性条目进行训练/验证,并在23万个条目的单独测试集上进行评估时,iCGCNN的预测精度显著提高,即比原始CGCNN高出20%。其次,当用于辅助ThCr2Si2结构型材料的高通量搜索时,iCGCNN的成功率为31%,是无向高通量搜索的310倍,是原始CGCNN的2.4倍。利用CGCNN和iCGCNN,我们筛选了132600个具有ThCr2Si2原型晶体结构元素修饰的化合物,通过757次DFT计算,共鉴定出97个新的独特稳定化合物,将高通量搜索的计算时间提高了130倍。我们的研究结果表明,iCGCNN可以通过快速准确地识别具有感兴趣性质的晶体化合物来加速新材料的高通量发现。
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