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首页> 外文期刊>Bulletin of the American Physical Society >APS -APS March Meeting 2017 - Event - Discovery of Novel Oxides Using Machine Learning and First-Principles Calculations
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APS -APS March Meeting 2017 - Event - Discovery of Novel Oxides Using Machine Learning and First-Principles Calculations

机译:APS -APS 2017年3月会议-活动-使用机器学习和第一性原理计算发现新型氧化物

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摘要

Oxide materials are used for a variety of technologically relevant applications such as solid oxide fuel cell, water splitting and transparent conductors. Up until now, mostly binary and simple ternary oxides have been carefully synthesized and characterized. As a result, there are opportunities to discover new, more complex and more efficient materials for numerous applications. As the number of possible compounds is prohibitively large to explore entirely experimentally or via first-principles calculations, we use machine learning to reduce the number of compositions to be calculated via more costly methods such as density functional theory (DFT). We show that this approach reduces significantly the time spent calculating unstable compounds, allowing the exploration of larger structures and wider chemical spaces. The machine learning-aided DFT approach presented in this work also showcases a reliable framework enabling the acceleration of materials discovery.
机译:氧化物材料用于各种与技术相关的应用,例如固体氧化物燃料电池,水分解和透明导体。到目前为止,大多数二元和简单的三元氧化物已经被仔细合成和表征。结果,就有机会发现适用于多种应用的新型,更复杂和更有效的材料。由于可能的化合物数量过大,无法完全通过实验或通过第一性原理计算进行探索,因此我们使用机器学习来减少通过更昂贵的方法(例如密度泛函理论(DFT))计算的组成数量。我们表明,这种方法大大减少了计算不稳定化合物所花费的时间,从而允许探索更大的结构和更宽的化学空间。这项工作中介绍的机器学习辅助DFT方法还展示了一个可靠的框架,可以加速材料发现。

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