Institut für Physik, Martin-Luther-Universität Halle-Wittenberg, D-06099, Halle, Germany.
CFisUC, Department of Physics, University of Coimbra, Rua Larga, 3004-516, Coimbra, Portugal.
Adv Mater. 2023 Jun;35(22):e2210788. doi: 10.1002/adma.202210788. Epub 2023 Apr 7.
Crystal-graph attention neural networks have emerged recently as remarkable tools for the prediction of thermodynamic stability. The efficacy of their learning capabilities and their reliability is however subject to the quantity and quality of the data they are fed. Previous networks exhibit strong biases due to the inhomogeneity of the training data. Here a high-quality dataset is engineered to provide a better balance across chemical and crystal-symmetry space. Crystal-graph neural networks trained with this dataset show unprecedented generalization accuracy. Such networks are applied to perform machine-learning-assisted high-throughput searches of stable materials, spanning 1 billion candidates. In this way, the number of vertices of the global T = 0 K phase diagram is increased by 30% and find more than ≈150 000 compounds with a distance to the convex hull of stability of less than 50 meV atom . The discovered materials are then accessed for applications, identifying compounds with extreme values of a few properties, such as superconductivity, superhardness, and giant gap-deformation potentials.
最近,晶体图注意力神经网络作为预测热力学稳定性的卓越工具而出现。然而,它们的学习能力和可靠性取决于它们所接受的数据的数量和质量。以前的网络由于训练数据的不均匀性而表现出很强的偏差。在这里,设计了一个高质量的数据集,以在化学和晶体对称性空间中提供更好的平衡。使用该数据集训练的晶体图神经网络显示出前所未有的泛化准确性。这些网络被应用于进行机器学习辅助的高通量稳定材料搜索,涵盖 10 亿个候选者。通过这种方式,全局 T=0 K 相图的顶点数增加了 30%,并发现了超过 ≈150000 种化合物,它们与稳定性凸包的距离小于 50 meV 原子。然后,对这些发现的材料进行应用,确定了一些具有极端值的化合物的特性,如超导性、超硬度和巨大的间隙变形势。