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Machine Learning Approach for Prediction and Understanding of Glass-Forming Ability

机译:玻璃形成能力预测与认识机器学习方法

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摘要

The prediction of the glass-forming ability (GFA) by varying the composition of alloys is a challenging problem in glass physics, as well as a problem for industry, with enormous financial ramifications. Although different empirical guides for the prediction of GFA were established over decades, a comprehensive model or approach that is able to deal with as many variables as possible simultaneously for efficiently predicting good glass formers is still highly desirable. Here, by applying the support vector classification method, we develop models for predicting the GFA of binary metallic alloys from random compositions. The effect of different input descriptors on GFA were evaluated, and the best prediction model was selected, which shows that the information related to liquidus temperatures plays a key role in the GFA of alloys. On the basis of this model, good glass formers can be predicted with high efficiency. The prediction efficiency can be further enhanced by improving larger database and refined input descriptor selection. Our findings suggest that machine learning is very powerful and efficient and has great potential for discovering new metallic glasses with good GFA.
机译:通过改变合金组合物的玻璃形成能力(GFA)的预测是玻璃物理学中的一个具有挑战性的问题,以及行业的问题,具有巨大的财务后果。尽管已经建立了用于预测GFA的不同经验指南几十年来,但能够同时处理尽可能多的变量的综合模型或方法仍然是非常理想的。这里,通过应用支持向量分类方法,我们开发用于从随机组合物预测二元金属合金的GFA的模型。评估不同输入描述符对GFA的影响,选择了最佳预测模型,这表明与液相质温相关的信息在合金的GFA中起着关键作用。在该模型的基础上,可以以高效率预测良好的玻璃成型器。通过改善较大的数据库和精细输入描述符选择,可以进一步增强预测效率。我们的研究结果表明,机器学习非常强大,有效,具有良好的GFA享有新的金属眼镜的巨大潜力。

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