首页> 外文期刊>Journal of molecular modeling >An adaptive design approach for defects distribution modeling in materials from first-principle calculations
【24h】

An adaptive design approach for defects distribution modeling in materials from first-principle calculations

机译:第一原理计算中材料缺陷分布建模的自适应设计方法

获取原文
获取原文并翻译 | 示例
获取外文期刊封面目录资料

摘要

Designing and understanding the mechanism of non-stoichiometric materials with enhanced properties is challenging, both experimentally and even computationally, due to the large number of chemical spaces and their distributions through the material. In the current work, it is proposed a Machine Learning approach coupled with the Efficient Global Optimization (EGO) method-an Adaptive Design (AD)-to model local defects in materials from first-principle calculations. Our method takes into account the smallest sample set as possible, envisioning the material defect structure relationship with target properties for new insights. As an example, the AD framework allows us to study the stability and the structure of the modified goethite (Fe0.875Al0.125OOH) by considering a proper defect distribution, from first-principle calculations. The chemical space search for the modified goethite was evaluated by starting from different sizes and configurations of the samples as well as different surrogate models (ANN and Gaussian Process; GP), acquisition functions, and descriptors. Our results show that the same local solution of several defect arrangements in Fe0.875Al0.125OOH is found regardless of the initial sample and regression model. This indicates the efficiency of our search method. We also discuss the role of the descriptors in the accelerated global search for defects in material modeling. We conclude that the AD method applied in material defects is a successful approach in automating the search within huge chemical spaces from first-principle calculations by considering small samples. This method can be applied to mechanistic elucidation of non-stoichiometric materials, solid solutions, alloys, and Schottky and Frenkel defects, essential for material design and discovery.
机译:设计和理解具有增强性能的非化学计量材料的机制是具有挑战性的,两者都是在实验甚至计算上的,由于大量的化学空间及其通过材料的分布。在当前的工作中,提出了一种机器学习方法,其与高效的全局优化(EGO)方法 - 一种自适应设计(AD) - 从第一原理计算中的材料中的局部缺陷模型。我们的方法考虑了尽可能最小的样本,设想与新见解的目标属性的材料缺陷结构关系。作为示例,广告框架使我们能够通过考虑适当的缺陷分布来研究修改的鹅料(FE0.875AL0.125OOH)的稳定性和结构。通过从样本的不同尺寸和配置以及不同的代理模型(ANN和高斯过程; GP),获取功能和描述符来评估修改的鹅料的化学空间搜索。我们的结果表明,无论初始样本和回归模型如何,都会发现相同的本地缺陷安排解决方案.875AL0.125OOH。这表明我们的搜索方法的效率。我们还讨论了描述符在加速的全球搜索对材料建模中的缺陷中的作用。我们得出结论,在材料缺陷中应用的广告方法是通过考虑小样本来自动化巨大化学空间内搜索的成功方法。该方法可应用于非化学计量,固体溶液,合金和肖特基和弗雷克斯缺陷的机械阐明,对材料设计和发现是必不可少的。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号