多元素物质和高熵合金中原子相互作用的神经网络预测研究进展

IF 1.1 4区 化学 Q4 CHEMISTRY, PHYSICAL Doklady Physical Chemistry Pub Date : 2022-11-02 DOI:10.1134/S0012501622700026
A. A. Mirzoev, B. R. Gelchinski,  A. A. Rempel
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引用次数: 2

摘要

近年来进入现代科学技术武器库的最令人兴奋的工具之一是机器学习,它可以有效地解决多维函数的近似问题。机器学习在物理和化学领域的发展和应用正在迅速增长。本文综述了利用基于神经网络及其主动机器学习的人工智能预测多元素物质和高熵合金中原子间相互作用的可能性,并对该主题的最新研究进行了全面的概述和分析。该方向的相关性是由于基于密度泛函理论(DFT)的原子量子力学建模在许多情况下很难预测材料的结构和性能,因为随着物体尺寸的增加,计算成本会迅速增加。机器学习方法可以使用可用的DFT计算再现系统的真实粒子间相互作用势,然后,在此基础上,通过分子动力学方法在成倍增加的时空尺度上模拟所需的特性。作为一个起点,我们介绍机器学习原理,算法,描述符和数据库在材料科学。描述了固溶体、高熵合金、含碳、氮、氧的高熵金属化合物以及大块非晶材料中表面势能和原子间相互作用势的设计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Neural Network Prediction of Interatomic Interaction in Multielement Substances and High-Entropy Alloys: A Review

One of the most exciting tools that have entered the arsenal of modern science and technology in recent years is machine learning, which can efficiently solve problems of approximation of multidimensional functions. There is a rapid growth in the development and application of machine learning in physics and chemistry. This review is devoted to the possibilities of predicting interatomic interactions in multielement substances and high-entropy alloys using artificial intelligence based on neural networks and their active machine learning, which provides a comprehensive overview and analysis of recent research on this topic. The relevance of this direction is due to that the prediction of the structure and properties of materials by means of atomistic quantum mechanical modeling based on density functional theory (DFT) is difficult in many cases because of the rapid increase in computational costs with increasing size in accordance with the size of the object. Machine learning methods make it possible to reproduce real interparticle interaction potentials of the system using the available DFT calculations, and then, on their basis, to model the required properties by the molecular dynamics method on a multiply increased spatiotemporal scale. As a starting point, we introduce machine learning principles, algorithms, descriptors, and databases in materials science. The design of the potential energy surface and interatomic interaction potentials in solid solutions, high-entropy alloys, high-entropy metal compounds with carbon, nitrogen, and oxygen, as well as in bulk amorphous materials, is described.

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来源期刊
Doklady Physical Chemistry
Doklady Physical Chemistry 化学-物理化学
CiteScore
1.50
自引率
0.00%
发文量
9
审稿时长
6-12 weeks
期刊介绍: Doklady Physical Chemistry is a monthly journal containing English translations of current Russian research in physical chemistry from the Physical Chemistry sections of the Doklady Akademii Nauk (Proceedings of the Russian Academy of Sciences). The journal publishes the most significant new research in physical chemistry being done in Russia, thus ensuring its scientific priority. Doklady Physical Chemistry presents short preliminary accounts of the application of the state-of-the-art physical chemistry ideas and methods to the study of organic and inorganic compounds and macromolecules; polymeric, inorganic and composite materials as well as corresponding processes. The journal is intended for scientists in all fields of chemistry and in interdisciplinary sciences.
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