Automatic material discovery with desired properties is a fundamental challenge for material sciences. Considerable attention has recently been devoted to generating stable crystal structures. While existing work has shown impressive success on supervised tasks such as property prediction, the progress on unsupervised tasks such as material generation is still hampered by the limited extent to which the equivalent geometric representations of the same crystal are considered. To address this challenge, we propose EMPNN a periodic equivariant message-passing neural network that learns crystal lattice deformation in an unsupervised fashion. Our model equivalently acts on lattice according to the deformation action that must be performed, making it suitable for crystal generation, relaxation and optimisation. We present experimental evaluations that demonstrate the effectiveness of our approach.
翻译:对于材料科学来说,一个根本性的挑战就是自动发现具有预期特性的物质。最近相当重视创造稳定的晶体结构。虽然现有工作在财产预测等监督任务上取得了令人印象深刻的成功,但材料生成等不受监督的任务的进展仍然受到考虑同一晶体等同几何表现的有限程度的阻碍。为了应对这一挑战,我们建议EMPNN建立一个定期的等同信息传递神经网络,以不受监督的方式学习晶体变形。我们的模式根据必须实施的变形行动对衬衣采取类似行动,使之适合水晶生成、放松和优化。我们提出实验性评价,以显示我们的方法的有效性。