氧化锆从头算相变的机器学习潜力

IF 3.2 3区 工程技术 Q2 MECHANICS
Yuanpeng Deng, Chong Wang, Xiang Xu, Hui Li
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引用次数: 0

摘要

氧化锆由于其不同寻常的高机械、电气和热性能组合而广泛应用于航空航天、军事、生物医学和工业领域。然而,由于氧化锆的一阶相变困难且具有强大的能量势垒,其基本相变和临界相变过程一直没有得到很好的研究。在这里,我们以从头算的精度生成了一个机器学习原子间势,以发现氧化锆在环境压力下各种相变背后的机制。机器学习电位精确表征了所有氧化锆同素异形体和液态氧化锆在宽温度范围内的原子相互作用。我们利用增强的采样技术实现了具有挑战性的可逆一阶单斜-四方和立方-液相相变过程。从热力学信息上,我们对马氏体单斜-四方相变的热滞后现象有了更好的理解。基于机器学习势的分子动力学模拟得到的氧化锆相图与实验结果吻合较好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Machine learning potential for Ab Initio phase transitions of zirconia

Machine learning potential for Ab Initio phase transitions of zirconia

Zirconia has been extensively used in aerospace, military, biomedical and industrial fields due to its unusual combination of high mechanical, electrical and thermal properties. However, the fundamental and critical phase transition process of zirconia has not been well studied because of its difficult first-order phase transition with formidable energy barrier. Here, we generated a machine learning interatomic potential with ab initio accuracy to discover the mechanism behind all kinds of phase transition of zirconia at ambient pressure. The machine learning potential precisely characterized atomic interactions among all zirconia allotropes and liquid zirconia in a wide temperature range. We realized the challenging reversible first-order monoclinic-tetragonal and cubic-liquid phase transition processes with enhanced sampling techniques. From the thermodynamic information, we gave a better understanding of the thermal hysteresis phenomenon in martensitic monoclinic-tetragonal transition. The phase diagram of zirconia from our machine learning potential based molecular dynamics simulations corresponded well with experimental results.

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来源期刊
CiteScore
6.20
自引率
2.90%
发文量
545
审稿时长
12 weeks
期刊介绍: An international journal devoted to rapid communications on novel and original research in the field of mechanics. TAML aims at publishing novel, cutting edge researches in theoretical, computational, and experimental mechanics. The journal provides fast publication of letter-sized articles and invited reviews within 3 months. We emphasize highlighting advances in science, engineering, and technology with originality and rapidity. Contributions include, but are not limited to, a variety of topics such as: • Aerospace and Aeronautical Engineering • Coastal and Ocean Engineering • Environment and Energy Engineering • Material and Structure Engineering • Biomedical Engineering • Mechanical and Transportation Engineering • Civil and Hydraulic Engineering Theoretical and Applied Mechanics Letters (TAML) was launched in 2011 and sponsored by Institute of Mechanics, Chinese Academy of Sciences (IMCAS) and The Chinese Society of Theoretical and Applied Mechanics (CSTAM). It is the official publication the Beijing International Center for Theoretical and Applied Mechanics (BICTAM).
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