计算机科学
晶体结构预测
化学空间
Crystal(编程语言)
生成模型
概率逻辑
人工智能
生成语法
机器学习
算法
晶体结构
生物系统
理论计算机科学
统计物理学
化学
物理
结晶学
生物
药物发现
程序设计语言
生物化学
作者
Albert H. Sultanov,Jean-Claude Crivello,Tabea Rebafka,Nataliya Sokolovska
标识
DOI:10.1021/acs.jcim.3c00969
摘要
The discovery of new functional and stable materials is a big challenge due to its complexity. This work aims at the generation of new crystal structures with desired properties, such as chemical stability and specified chemical composition, by using machine learning generative models. Compared with the generation of molecules, crystal structures pose new difficulties arising from the periodic nature of the crystal and from the specific symmetry constraints related to the space group. In this work, score-based probabilistic models based on annealed Langevin dynamics, which have shown excellent performance in various applications, are adapted to the task of crystal generation. The novelty of the presented approach resides in the fact that the lattice of the crystal cell is not fixed. During the training of the model, the lattice is learned from the available data, whereas during the sampling of a new chemical structure, two denoising processes are used in parallel to generate the lattice along with the generation of the atomic positions. A multigraph crystal representation is introduced that respects symmetry constraints, yielding computational advantages and a better quality of the sampled structures. We show that our model is capable of generating new candidate structures in any chosen chemical system and crystal group without any additional training. To illustrate the functionality of the proposed method, a comparison of our model to other recent generative models based on descriptor-based metrics is provided.
科研通智能强力驱动
Strongly Powered by AbleSci AI