学习晶体学紊乱:材料发现中的桥梁预测与实验。

IF 26.8 1区 材料科学 Q1 CHEMISTRY, MULTIDISCIPLINARY
Konstantin S Jakob, Aron Walsh, Karsten Reuter, Johannes T Margraf
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引用次数: 0

摘要

最近的计算材料发现工作已经导致了大量以前未知的、潜在稳定的无机晶体化合物的预测。特别是,高通量筛选和生成模型都极大地受益于计算资源和可用数据的最新进展。然而,这些努力目前仅限于预测原始晶体材料。因此,许多这些预测不能在实验中实现,而在实验中,动力学效应、缺陷和晶体学紊乱是至关重要的。为了解决这一缺点,目前的工作旨在通过基于机器学习(ML)的分类模型将无序引入计算材料发现中。在无机晶体结构数据库(ICSD)的训练下,这些分类器捕捉晶体无序的化学趋势,并估计由材料项目或材料科学图网络(GNoME)倡议产生的计算数据库中无序的流行程度。这为无序感知计算材料发现工作流程打开了大门,弥合了预测和实验之间的差距。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning Crystallographic Disorder: Bridging Prediction and Experiment in Materials Discovery.

Recent computational materials discovery efforts have led to an enormous number of predictions of previously unknown, potentially stable inorganic, crystalline compounds. In particular, both high-throughput screenings and generative models have benefited tremendously from recent advances in computational resources and available data. However, these efforts are currently limited to predicting pristine crystalline materials. As a consequence, many of these predictions cannot be realized in experiments, where kinetic effects, defects, and crystallographic disorder can be crucial. To address this shortcoming, the current work aims to introduce disorder into computational materials discovery with machine learning (ML) based classification models. Trained on the inorganic crystal structure database (ICSD), these classifiers capture the chemical trends of crystallographic disorder and estimate the prevalence of disorder in computational databases produced by the Materials Project or Graph Networks for Materials Science (GNoME) initiatives. This opens the door toward disorder-aware computational materials discovery workflows, bridging the gap between prediction and experiment.

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来源期刊
Advanced Materials
Advanced Materials 工程技术-材料科学:综合
CiteScore
43.00
自引率
4.10%
发文量
2182
审稿时长
2 months
期刊介绍: Advanced Materials, one of the world's most prestigious journals and the foundation of the Advanced portfolio, is the home of choice for best-in-class materials science for more than 30 years. Following this fast-growing and interdisciplinary field, we are considering and publishing the most important discoveries on any and all materials from materials scientists, chemists, physicists, engineers as well as health and life scientists and bringing you the latest results and trends in modern materials-related research every week.
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