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高通量利用深度生成神经网络发现新型立方晶体材料

High-Throughput Discovery of Novel Cubic Crystal Materials Using Deep Generative Neural Networks.

机构信息

Department of Computer Science and Engineering, University of South Carolina, Columbia, SC, 29201, USA.

Department of Mechanical Engineering, University of South Carolina, Columbia, SC, 29201, USA.

出版信息

Adv Sci (Weinh). 2021 Oct;8(20):e2100566. doi: 10.1002/advs.202100566. Epub 2021 Aug 5.

DOI:10.1002/advs.202100566
PMID:34351707
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC8529451/
Abstract

High-throughput screening has become one of the major strategies for the discovery of novel functional materials. However, its effectiveness is severely limited by the lack of sufficient and diverse materials in current materials repositories such as the open quantum materials database (OQMD). Recent progress in deep learning have enabled generative strategies that learn implicit chemical rules for creating hypothetical materials with new compositions and structures. However, current materials generative models have difficulty in generating structurally diverse, chemically valid, and stable materials. Here we propose CubicGAN, a generative adversarial network (GAN) based deep neural network model for large scale generative design of novel cubic materials. When trained on 375 749 ternary materials from the OQMD database, the authors show that the model is able to not only rediscover most of the currently known cubic materials but also generate hypothetical materials of new structure prototypes. A total of 506 such materials have been verified by phonon dispersion calculation. Considering the importance of cubic materials in wide applications such as solar panels, the GAN model provides a promising approach to significantly expand existing materials repositories, enabling the discovery of new functional materials via screening. The new crystal structures discovered are freely accessible at www.carolinamatdb.org.

摘要

高通量筛选已成为发现新型功能材料的主要策略之一。然而,由于当前材料库(如开放量子材料数据库 (OQMD))中缺乏足够和多样化的材料,其有效性受到严重限制。最近在深度学习方面的进展使得生成策略能够学习隐含的化学规则,从而创建具有新成分和结构的假设材料。然而,当前的材料生成模型在生成结构多样、化学合理和稳定的材料方面存在困难。在这里,我们提出了 CubicGAN,这是一种基于生成对抗网络 (GAN) 的深度神经网络模型,用于大规模生成新型立方材料的设计。在对来自 OQMD 数据库的 375,749 种三元材料进行训练后,作者表明该模型不仅能够重新发现大多数目前已知的立方材料,还能够生成具有新结构原型的假设材料。总共 506 种这样的材料已经通过声子色散计算得到了验证。考虑到立方材料在太阳能电池等广泛应用中的重要性,GAN 模型为显著扩展现有材料库提供了一种很有前途的方法,通过筛选发现新的功能材料。在 www.carolinamatdb.org 上可以免费获取新发现的晶体结构。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6811/8529451/d29bb7ba74af/ADVS-8-2100566-g001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6811/8529451/9d318fb66f97/ADVS-8-2100566-g003.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6811/8529451/c719e4fb7989/ADVS-8-2100566-g005.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6811/8529451/3189f91f9350/ADVS-8-2100566-g004.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6811/8529451/d29bb7ba74af/ADVS-8-2100566-g001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6811/8529451/9d318fb66f97/ADVS-8-2100566-g003.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6811/8529451/c719e4fb7989/ADVS-8-2100566-g005.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6811/8529451/3189f91f9350/ADVS-8-2100566-g004.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6811/8529451/d29bb7ba74af/ADVS-8-2100566-g001.jpg

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