金属间化合物
氢化物
三元运算
人工神经网络
材料科学
晶体结构预测
晶体结构
氢气储存
焓
热力学
金属
密度泛函理论
计算化学
计算机科学
化学
人工智能
冶金
物理
结晶学
合金
程序设计语言
作者
Katarina Batalović,Jana Radaković,Bojana Paskaš Mamula,Bojana Kuzmanović,Mirjana Medić Ilić
标识
DOI:10.1002/adts.202200293
摘要
Abstract Theoretical tools or structure–property relations that enable the prediction of metal hydrides are of enormous interest in developing new hydrogen storage materials. Density functional theory (DFT) is one such approach that provides accurate hydride formation energies, which, if complemented with vibrational zero‐point energy and other contributions, provides accurate hydride formation enthalpies. However, this approach is time consuming and, therefore, often avoided, hindering the modeling of experimental behavior. The recent implementation of graph neural networks (GNN) in materials science enables fast prediction of crystal formation energy with a DFT accuracy. Starting from the MatErials Graph Network (MEGNet), transfer learning is applied to develop a model for predicting hydride formation enthalpy based on the crystal structure of the starting intermetallic. Excellent accuracy is achieved for Mg‐containing alloys, allowing the screening of the Mg─Ni─M ternary intermetallics. In addition, data containing matching experimental properties and crystal structure of metal hydrides are provided, enabling future development.
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