基于多保真度神经网络的高熵合金(FeNiCoCrCu)抗拉强度分子动力学预测。

IF 2.5 4区 化学 Q4 BIOCHEMISTRY & MOLECULAR BIOLOGY
Nazib E Elahi Khan Chowdhury, Alif Jawad, Anfalur Rahman, Mohammad Jane Alam Khan
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引用次数: 0

摘要

背景:高熵合金(HEAs)是一类具有优异机械、热学和化学性能的先进材料。FeNiCoCrCu HEA因其优异的抗拉强度、耐腐蚀性和热稳定性而受到特别关注。然而,由于其复杂的结构,对其力学性能的理解和优化是一个重大的挑战。分子动力学(MD)是研究原子尺度特性的一种流行选择,但对于大型多晶系统来说,计算成本很高。机器学习方法作为能够产生准确预测和降低计算成本的替代模型,越来越受到人们的关注。本研究首次应用多保真度物理信息神经网络(MPINN)模型预测FeNiCoCrCu的拉伸强度。本研究生成了不同成分FeNiCoCrCu HEA拉伸强度的大型数据集,并使用它来训练MPINN模型。MPINN模型成功地预测了FeNiCoCrCu在不同成分下的抗拉强度,验证了基于MD数据的MPINN模型在准确预测材料性能方面的有效性。方法:本研究使用LAMMPS进行分子动力学模拟,使用TensorFlow建立和运行机器学习模型。机器学习模型的低保真度(LF)和高保真度(HF)数据分别来自小单晶和大多晶的MD模拟。MD仿真系统使用Atomsk创建,EAM电位用于力场。使用OVITO对仿真进行可视化。MPINN模型利用低频和高频数据之间的线性和非线性关系。在TensorFlow中,机器学习模型使用Adam优化器进行优化,并使用L2正则化来防止过拟合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-fidelity neural network-based prediction of tensile strength of high-entropy alloy (FeNiCoCrCu) using molecular dynamics data.

Context: High-entropy alloys (HEAs) represent a class of advanced materials with superior mechanical, thermal, and chemical properties. FeNiCoCrCu HEA has been of particular interest due to its excellent tensile strength, corrosion resistance, and thermal stability. However, it is a significant challenge to understand and optimize the mechanical properties of such alloys due to the complex structure. Molecular dynamics (MD) is a popular choice in investigating atomic-scale characteristics but is computationally costly for large polycrystal systems. Machine learning approaches have seen growing interest as surrogate models that can produce accurate predictions and lower computational costs. This study demonstrates the first application of Multi-fidelity Physics Informed Neural Network (MPINN) model for predicting the tensile strength of FeNiCoCrCu. This study generates a large dataset of tensile strength for different compositions of FeNiCoCrCu HEA and uses it to train a MPINN model. The MPINN model successfully predicts the tensile strength of FeNiCoCrCu for different compositions and validates the effectiveness of the MD data-enabled MPINN model in making accurate predictions of material properties.

Methods: This study uses LAMMPS for the molecular dynamics simulations and TensorFlow for building and running the machine learning models. The low-fidelity (LF) and high-fidelity (HF) data for the machine learning model are obtained from MD simulations of small single crystals and large polycrystals, respectively. MD simulation systems are created using Atomsk, and EAM potential is used for the forcefield. The simulations are visualized using OVITO. The MPINN model utilizes both linear and non-linear relations between LF and HF data. In TensorFlow, the machine learning model is optimized using the Adam optimizer, and L2 regularization is used to prevent overfitting.

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来源期刊
Journal of Molecular Modeling
Journal of Molecular Modeling 化学-化学综合
CiteScore
3.50
自引率
4.50%
发文量
362
审稿时长
2.9 months
期刊介绍: The Journal of Molecular Modeling focuses on "hardcore" modeling, publishing high-quality research and reports. Founded in 1995 as a purely electronic journal, it has adapted its format to include a full-color print edition, and adjusted its aims and scope fit the fast-changing field of molecular modeling, with a particular focus on three-dimensional modeling. Today, the journal covers all aspects of molecular modeling including life science modeling; materials modeling; new methods; and computational chemistry. Topics include computer-aided molecular design; rational drug design, de novo ligand design, receptor modeling and docking; cheminformatics, data analysis, visualization and mining; computational medicinal chemistry; homology modeling; simulation of peptides, DNA and other biopolymers; quantitative structure-activity relationships (QSAR) and ADME-modeling; modeling of biological reaction mechanisms; and combined experimental and computational studies in which calculations play a major role.
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