Sm-Co ALLOYS COERCIVITY PREDICTION USING STACKING HETEROGENEOUS ENSEMBLE MODEL

IF 1.1 Q3 METALLURGY & METALLURGICAL ENGINEERING Acta Metallurgica Slovaca Pub Date : 2021-12-07 DOI:10.36547/ams.27.4.1173
A. Trostianchyn, Z. Duriagina, I. Izonin, R. Tkachenko, V. Kulyk, O. Pavliuk
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引用次数: 4

Abstract

The use of machine learning tools in modern materials science can significantly reduce the duration and cost of developing new materials and improving the properties of existing ones. This is especially true in studying expensive and strategic importance materials like alloys of rare earth metals, which are used to manufacture high-energy permanent magnets. At the same time, single machine learning algorithms do not always provide the accuracy required to solve a particular applied task. Therefore, the current paper aimed to develop an ensemble model for predicting the magnetic properties of Sm-Co system alloys with high accuracy. Based on literature data, we have collected the dataset of the relationship between phase composition, sample state, crystallographic orientation, microstructure, and magnetic properties. We have compared different machine learning algorithms. A stacking ensemble model was designed based on high-precision machine learning algorithms: Neural Networks, AdaBoost, Gradient Boosting, and Random Forest algorithm. The proposed ensemble scheme showed a significant increase in the accuracy for predicting the magnetic properties of Sm-Co alloys on the example of coercivity.
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用叠加非均匀镶嵌模型预测Sm-Co合金矫顽力
在现代材料科学中使用机器学习工具可以显著减少开发新材料的时间和成本,并改善现有材料的性能。在研究昂贵且具有战略重要性的材料时尤其如此,比如用于制造高能永磁体的稀土金属合金。同时,单个机器学习算法并不总是提供解决特定应用任务所需的准确性。因此,本文旨在建立一种高精度预测Sm-Co系合金磁性能的系综模型。在文献资料的基础上,我们收集了相组成、样品状态、晶体取向、微观结构和磁性能之间关系的数据集。我们比较了不同的机器学习算法。基于高精度机器学习算法:神经网络、AdaBoost、梯度增强和随机森林算法,设计了一个叠加集成模型。以矫顽力为例,所提出的系综方案在预测Sm-Co合金磁性能精度上有显著提高。
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来源期刊
Acta Metallurgica Slovaca
Acta Metallurgica Slovaca METALLURGY & METALLURGICAL ENGINEERING-
CiteScore
2.00
自引率
30.00%
发文量
22
审稿时长
12 weeks
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