Nguyen Nghia, Louis Steph-Yves V, Wei Lai, Choudhary Kamal, Hu Ming, Hu Jianjun
Department of Computer Science and Engineering, University of South Carolina, Columbia, South Carolina 29208, United States.
Materials Science and Engineering Division, National Institute of Standards and Technology, Gaithersburg, Maryland 20899, United States.
ACS Omega. 2022 Jul 21;7(30):26641-26649. doi: 10.1021/acsomega.2c02765. eCollection 2022 Aug 2.
Lattice vibrational frequencies are related to many important materials properties such as thermal and electrical conductivity as well as superconductivity. However, computational calculation of vibrational frequencies using density functional theory methods is computationally too demanding for large number of samples in materials screening. Here we propose a deep graph neural network based algorithm for predicting crystal vibrational frequencies from crystal structures. Our algorithm addresses the variable dimension of vibrational frequency spectrum using the zero padding scheme. Benchmark studies on two data sets with 15,000 mixed-structure and 35,552 rhombohedra samples show that the aggregated scores of the prediction reach 0.554 and 0.724. We also evaluate the structural transferability by predicting the vibration frequencies for 239 individual cubic target structures. The scores for more than 40% of the targets are greater than 0.8 and can reach as high as 0.98 for the model trained with mixed samples, while the average mean absolute error is 43.69 Thz showing low transferability across structure types. Our work demonstrates the capability of deep graph neural networks to learn to predict lattice vibration frequency when sufficient number of training samples are available.
晶格振动频率与许多重要的材料特性相关,如热导率、电导率以及超导性。然而,使用密度泛函理论方法对振动频率进行计算对于材料筛选中的大量样本来说计算量过大。在此,我们提出一种基于深度图神经网络的算法,用于从晶体结构预测晶体振动频率。我们的算法使用零填充方案来处理振动频谱的可变维度。对包含15000个混合结构样本和35552个菱面体样本的两个数据集进行的基准研究表明,预测的综合分数分别达到0.554和0.724。我们还通过预测239个单个立方目标结构的振动频率来评估结构可转移性。超过40%的目标分数大于0.8,对于用混合样本训练的模型,分数可高达0.98,而平均平均绝对误差为43.69太赫兹,表明跨结构类型的可转移性较低。我们的工作证明了在有足够数量训练样本的情况下,深度图神经网络有能力学习预测晶格振动频率。