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首页> 外文期刊>Journal of Alloys and Compounds: An Interdisciplinary Journal of Materials Science and Solid-state Chemistry and Physics >A two-step fused machine learning approach for the prediction of glass-forming ability of metallic glasses
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A two-step fused machine learning approach for the prediction of glass-forming ability of metallic glasses

机译:预测金属眼镜玻璃形成能力的两步融合机学习方法

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摘要

Metallic glasses (MGs) are often perceived as quintessential structural materials. However, the widespread application of MGs is hindered primarily by their limited glass-forming ability (GFA) for the manufacture of large-scale MGs. In this work, a two-step fused machine learning (ML) approach is proposed, aiming to provide an efficient tactic for the precise prediction of MGs with robust GFA. In our ML framework, alloy compositions are the only required inputs. Moreover, the dataset comprises alloys that can and cannot be cast into MGs. This departs from the conventional ML approach utilizing only a correct set of training data (i.e. alloys that can cast into MGs). The fusion algorithm is also employed to further improve the perfor-mance of ML approach. The critical casting sizes predicted by our ML model are in good agreement with those reported in experiments. This work has extensive implications for the design of bulk MGs with superior GFA.
机译:金属玻璃(MG)通常被认为是典型的结构材料。然而,MGs的广泛应用主要受到其有限的玻璃形成能力(GFA)的阻碍,无法制造大规模MGs。在这项工作中,提出了一种两步融合机器学习(ML)方法,旨在为具有鲁棒GFA的MGs精确预测提供一种有效策略。在我们的ML框架中,合金成分是唯一需要的输入。此外,该数据集包括可以和不能铸造到MGs中的合金。这与传统的ML方法不同,该方法仅使用一组正确的训练数据(即可以铸造到MGs中的合金)。融合算法也被用于进一步提高ML方法的性能。我们的ML模型预测的临界铸件尺寸与实验结果吻合良好。这项工作对具有更高GFA的散装MG的设计具有广泛的意义。

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