通过联合数据库和机器学习发现和设计光学材料

IF 3.3 3区 化学 Q2 CHEMISTRY, PHYSICAL
Victor Trinquet, Matthew Evans, Cameron Hargreaves, Pierre-Paul De Breuck, Gian-Marco Rignanese
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引用次数: 0

摘要

利用密度函数理论和相关方法对材料空间进行组合筛选和引导筛选,提供了大量假定的无机材料,这些材料越来越多地以表格形式出现在开放式数据库中。OPTIMADE API 是一种标准化格式,用于表示晶体结构、其测量和计算属性,以及从远程资源中查询和过滤这些属性的方法。目前,OPTIMADE 联盟涵盖 20 多个数据提供商,通过这种方式可访问 3,000 多万个结构,其中许多结构都是新颖的,最近才由基于机器学习的方法提出。在这项工作中,我们概述了我们为下一代光学材料对这一动态结构库进行非穷尽式筛选的方法。MODNet 是一种基于神经网络的性质预测模型,已被证明在小型材料数据集上表现尤为出色。通过在主动学习和高通量计算相结合的框架内应用 MODNet,我们分离出了一些特定的结构和化学成分,这些结构和化学成分最有可能作为高折射率材料用于进一步的理论计算和实验研究。通过明确使用自动计算、联合数据集整理和机器学习,并将其公开发布,本文介绍的工作流程可以随着新数据库实施 OPTIMADE 和新假设材料的提出而定期重新评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optical materials discovery and design via federated databases and machine learning
Combinatorial and guided screening of materials space with density-functional theory and related approaches has provided a wealth of hypothetical inorganic materials, which are increasingly tabulated in open databases. The OPTIMADE API is a standardised format for representing crystal structures, their measured and computed properties, and the methods for querying and filtering them from remote resources. Currently, the OPTIMADE federation spans over 20 data providers, rendering over 30 million structures accessible in this way, many of which are novel and have only recently been suggested by machine learning-based approaches. In this work, we outline our approach to non-exhaustively screen this dynamic trove of structures for the next-generation of optical materials. By applying MODNet, a neural network-based model for property prediction that has been shown to perform especially well for small materials datasets, within a combined active learning and high-throughput computation framework, we isolate particular structures and chemistries that should be most fruitful for further theoretical calculations and for experimental study as high-refractive-index materials. By making explicit use of automated calculations, federated dataset curation and machine learning, and by releasing these publicly, the workflows presented here can be periodically re-assessed as new databases implement OPTIMADE, and new hypothetical materials are suggested.
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来源期刊
Faraday Discussions
Faraday Discussions 化学-物理化学
自引率
0.00%
发文量
259
期刊介绍: Discussion summary and research papers from discussion meetings that focus on rapidly developing areas of physical chemistry and its interfaces
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