神经网络驱动表征NbTiVZr高熵合金中二元子系统的短程有序与混合焓相互作用的方法

IF 1.5 4区 材料科学 Q4 CHEMISTRY, PHYSICAL Journal of Phase Equilibria and Diffusion Pub Date : 2023-08-23 DOI:10.1007/s11669-023-01055-x
Shanker Kumar, Abhishek Kumar Thakur, Vikas Jindal, Krishna Muralidharan
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引用次数: 0

摘要

近年来,高熵合金(HEA)以其优异的性能和应用表现出了巨大的潜力。HEAs旨在创造一种新型材料,具有传统材料难以实现的一系列有吸引力的特性。在纳米尺度上,短程有序(SRO)对于确定材料的各种性能,如相稳定性等具有重要意义。SRO与相稳定性之间的关系可以通过混合焓来理解。聚类展开(CE)常被用来理解混合焓与SRO参数之间的关系。虽然CE是精确的,但在实践中,CE必须被截断,超过一些最大大小的簇,从而导致截断错误。在这项工作中,作为一种替代方案,我们训练了一个神经网络来理解SRO与NbTiVZr HEA各种二元子系统之间的混合焓之间的关系。对于训练,使用合金理论自动化工具包(ATAT)软件为每个子系统生成大量的结构池及其相应的相关函数(或SRO参数)。第一性原理计算用于确定这些结构的混合焓。利用该数据库对神经网络进行训练,得到的混合焓预测值比相应的CE模型具有较好的准确性。发现神经网络方法可以澄清混合焓与SRO之间的复杂关系,特别是当由于数据库规模较小而导致拟合参数数量有限时。
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A Neural Network Driven Approach for Characterizing the Interplay Between Short Range Ordering and Enthalpy of Mixing of Binary Subsystems in the NbTiVZr High Entropy Alloy

Recently high entropy alloys (HEA) have shown remarkable potential due to their extraordinary properties and applications. HEAs are explored to create a new class of materials with an attractive set of properties that are difficult to achieve by conventional materials. Short-range ordering (SRO) is important in determining various materials properties at nanometer scale, such as phase stability. The relationship between SRO and phase stability can be understood through the enthalpy of mixing. Cluster expansion (CE) is often used to understand the relationship between the enthalpy of mixing and SRO parameters. Although exact, CE must be truncated in practice beyond some maximal-sized cluster, leading to truncation errors. In this work, as an alternative, a neural network is trained to understand the relationship between SRO and enthalpy of mixing among the various binary subsystems of NbTiVZr HEA. For training, a large pool of structures and their corresponding correlation functions (or SRO parameters) are generated using the alloy theoretic automated toolkit (ATAT) software for each subsystem. First-principles calculations are used to determine the enthalpy of mixing of these structures. This database is used to train a neural network and the predicted values of enthalpy of mixing from the trained neural network are found to be reasonably accurate and better than the corresponding CE model. The neural network approach is found to clarify the complex relationship between the enthalpy of mixing and SRO, especially when there is a limitation over the number of fitting parameters due to smaller size of databases.

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来源期刊
Journal of Phase Equilibria and Diffusion
Journal of Phase Equilibria and Diffusion 工程技术-材料科学:综合
CiteScore
2.50
自引率
7.10%
发文量
70
审稿时长
1 months
期刊介绍: The most trusted journal for phase equilibria and thermodynamic research, ASM International''s Journal of Phase Equilibria and Diffusion features critical phase diagram evaluations on scientifically and industrially important alloy systems, authored by international experts. The Journal of Phase Equilibria and Diffusion is critically reviewed and contains basic and applied research results, a survey of current literature and other pertinent articles. The journal covers the significance of diagrams as well as new research techniques, equipment, data evaluation, nomenclature, presentation and other aspects of phase diagram preparation and use. Content includes information on phenomena such as kinetic control of equilibrium, coherency effects, impurity effects, and thermodynamic and crystallographic characteristics. The journal updates systems previously published in the Bulletin of Alloy Phase Diagrams as new data are discovered.
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