Deep learning generative model for crystal structure prediction

IF 9.4 1区 材料科学 Q1 CHEMISTRY, PHYSICAL npj Computational Materials Pub Date : 2024-11-12 DOI:10.1038/s41524-024-01443-y
Xiaoshan Luo, Zhenyu Wang, Pengyue Gao, Jian Lv, Yanchao Wang, Changfeng Chen, Yanming Ma
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Abstract

Recent advances in deep learning generative models (GMs) have created high capabilities in accessing and assessing complex high-dimensional data, allowing superior efficiency in navigating vast material configuration space in search of viable structures. Coupling such capabilities with physically significant data to construct trained models for materials discovery is crucial to moving this emerging field forward. Here, we present a universal GM for crystal structure prediction (CSP) via a conditional crystal diffusion variational autoencoder (Cond-CDVAE) approach, which is tailored to allow user-defined material and physical parameters such as composition and pressure. This model is trained on an expansive dataset containing over 670,000 local minimum structures, including a rich spectrum of high-pressure structures, along with ambient-pressure structures in Materials Project database. We demonstrate that the Cond-CDVAE model can generate physically plausible structures with high fidelity under diverse pressure conditions without necessitating local optimization, accurately predicting 59.3% of the 3547 unseen ambient-pressure experimental structures within 800 structure samplings, with the accuracy rate climbing to 83.2% for structures comprising fewer than 20 atoms per unit cell. These results meet or exceed those achieved via conventional CSP methods based on global optimization. The present findings showcase substantial potential of GMs in the realm of CSP.

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晶体结构预测的深度学习生成模型
深度学习生成模型(GMs)的最新进展为访问和评估复杂的高维数据创造了很高的能力,从而能够高效地浏览广阔的材料配置空间,寻找可行的结构。将这种能力与具有物理意义的数据相结合,构建训练有素的材料发现模型,对于推动这一新兴领域的发展至关重要。在此,我们通过条件晶体扩散变异自动编码器(Cond-CDVAE)方法介绍了一种用于晶体结构预测(CSP)的通用 GM,该方法可根据用户定义的材料和物理参数(如成分和压力)进行定制。该模型在一个包含超过 67 万个局部最小结构的庞大数据集上进行了训练,其中包括材料项目数据库中丰富的高压结构谱和常压结构。我们证明,Cond-CDVAE 模型可以在各种压力条件下生成高保真的物理上可信的结构,而无需进行局部优化,在 800 个结构采样中准确预测了 3547 个未见过的常压实验结构中的 59.3%,而对于每个单元格由少于 20 个原子组成的结构,准确率攀升至 83.2%。这些结果达到或超过了基于全局优化的传统 CSP 方法所取得的结果。本研究结果展示了 GM 在 CSP 领域的巨大潜力。
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来源期刊
npj Computational Materials
npj Computational Materials Mathematics-Modeling and Simulation
CiteScore
15.30
自引率
5.20%
发文量
229
审稿时长
6 weeks
期刊介绍: npj Computational Materials is a high-quality open access journal from Nature Research that publishes research papers applying computational approaches for the design of new materials and enhancing our understanding of existing ones. The journal also welcomes papers on new computational techniques and the refinement of current approaches that support these aims, as well as experimental papers that complement computational findings. Some key features of npj Computational Materials include a 2-year impact factor of 12.241 (2021), article downloads of 1,138,590 (2021), and a fast turnaround time of 11 days from submission to the first editorial decision. The journal is indexed in various databases and services, including Chemical Abstracts Service (ACS), Astrophysics Data System (ADS), Current Contents/Physical, Chemical and Earth Sciences, Journal Citation Reports/Science Edition, SCOPUS, EI Compendex, INSPEC, Google Scholar, SCImago, DOAJ, CNKI, and Science Citation Index Expanded (SCIE), among others.
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