论文标题
通过可解释的机器学习的组成特性关系加速粉红色化合物眼镜的设计
Accelerated Design of Chalcogenide Glasses through Interpretable Machine Learning for Composition Property Relationships
论文作者
论文摘要
甲状腺素玻璃具有几种出色的特性,可实现多个地面破坏应用,例如光盘,红外摄像机和热成像系统。尽管这些眼镜的使用无处不在,但这些材料中的组成性质关系仍然知之甚少。 Here, we use a large experimental dataset comprising approx 24000 glass compositions made of 51 distinct elements from the periodic table to develop machine learning models for predicting 12 properties, namely, annealing point, bulk modulus, density, Vickers hardness, Littleton point, Youngs modulus, shear modulus, softening point, thermal expansion coefficient, glass transition temperature, liquidus temperature, and refractive index.到目前为止,这些模型是葡萄干剂玻璃最大的模型。此外,我们使用Shap(基于游戏理论的算法)来解释机器学习算法的输出,通过分析每个元素对属性模型预测的贡献。这为实验者提供了一个强大的工具,可以解释模型预测,从而设计具有目标特性的新玻璃成分。最后,使用这些模型,我们开发了几个玻璃选择图表,可以有助于为各种应用的新型葡萄干剂玻璃的合理设计。
Chalcogenide glasses possess several outstanding properties that enable several ground breaking applications, such as optical discs, infrared cameras, and thermal imaging systems. Despite the ubiquitous usage of these glasses, the composition property relationships in these materials remain poorly understood. Here, we use a large experimental dataset comprising approx 24000 glass compositions made of 51 distinct elements from the periodic table to develop machine learning models for predicting 12 properties, namely, annealing point, bulk modulus, density, Vickers hardness, Littleton point, Youngs modulus, shear modulus, softening point, thermal expansion coefficient, glass transition temperature, liquidus temperature, and refractive index. These models, by far, are the largest for chalcogenide glasses. Further, we use SHAP, a game theory based algorithm, to interpret the output of machine learning algorithms by analyzing the contributions of each element towards the models prediction of a property. This provides a powerful tool for experimentalists to interpret the models prediction and hence design new glass compositions with targeted properties. Finally, using the models, we develop several glass selection charts that can potentially aid in the rational design of novel chalcogenide glasses for various applications.