Machine-Learning-Based Composition Analysis of the Stability of V–Cr–Ti Alloys

IF 0.5 Q4 NUCLEAR SCIENCE & TECHNOLOGY
K. Tanabe
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引用次数: 0

Abstract

Machine learning methods allow the prediction of material properties, potentially using only the elemental composition of a molecule or compound, without the knowledge of molecular or crystalline structures. Herein, a composition-based machine learning prediction of the material properties of V–Cr–Ti alloys is demonstrated. Our machine-learning-based prediction of the stability of the V–Cr–Ti alloys is qualitatively consistent with the composition-dependent experimental data of the ductile–brittle transition temperature and swelling. Furthermore, our computational results suggest the existence of a composition region, Cr+Ti ~ 60 wt.%, at a significantly low ductile–brittle transition temperature. This outcome contrasts with a reportedly low Cr+Ti content of less than 10 wt.% in conventional V–Cr–Ti alloys. Machine-learning-based numerical stability prediction is useful for the design and analysis of metal alloys, particularly for multicomponent alloys such as high-entropy alloys, to develop materials for nuclear fusion reactors.
基于机器学习的V-Cr-Ti合金稳定性成分分析
机器学习方法可以预测材料特性,可能只使用分子或化合物的元素组成,而不需要了解分子或晶体结构。本文展示了一种基于成分的机器学习预测V-Cr-Ti合金材料性能的方法。我们基于机器学习的V-Cr-Ti合金稳定性预测与成分相关的韧脆转变温度和膨胀实验数据在质量上是一致的。此外,我们的计算结果表明,在极低的韧脆转变温度下,存在Cr+Ti ~ 60 wt.%的成分区域。这一结果与传统V-Cr-Ti合金中Cr+Ti含量低于10 wt.%形成对比。基于机器学习的数值稳定性预测对于金属合金的设计和分析,特别是对于多组分合金,如高熵合金,用于核聚变反应堆材料的开发是有用的。
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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来源期刊
CiteScore
1.30
自引率
0.00%
发文量
56
期刊介绍: The Journal of Nuclear Engineering and Radiation Science is ASME’s latest title within the energy sector. The publication is for specialists in the nuclear/power engineering areas of industry, academia, and government.
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