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Predicting boron coordination in multicomponent borate and borosilicate glasses using analytical models and machine learning

机译:使用分析模型和机器学习预测多组分硼酸盐和硼硅酸盐玻璃中的硼协调

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摘要

Accurate prediction of boron coordination in multicomponent glasses is critical in glass science and technology as it strongly affects the properties of borate and borosilicate glasses. We have collected a dataset containing 657 glasses from literature with boron coordination values and developed models using analytical functions based on the well accepted Dell, Xiao and Bray model. Good prediction of boron coordination with a R-2 value higher than 0.8 was obtained. The large variation of boron coordination from experiments, originated from sample preparations and characterizations, led to difficulties in obtaining models with better prediction performances. Various machine learning (ML) algorithms were evaluated and a slightly better prediction performance was observed; however, interpretation of the ML models is less straight forward. This study developed various models capable of providing quantitative boron coordination predictions, providing insights into its structural roles in multi component glasses, and suggesting fruitful areas for future research.
机译:准确预测多组分玻璃中的硼配位在玻璃科学和技术中至关重要,因为它强烈影响硼酸盐和硼硅酸盐玻璃的性能。我们从文献中收集了一个包含657个玻璃的数据集,其中含有硼配位值,并基于公认的Dell、Xiao和Bray模型,使用分析函数开发了模型。对硼配位进行了良好的预测,R-2值高于0.8。由于样品制备和表征导致实验中硼配位的巨大变化,因此很难获得具有更好预测性能的模型。对各种机器学习(ML)算法进行了评估,发现其预测性能略好;然而,对ML模型的解释并不那么直截了当。本研究开发了各种模型,能够提供定量的硼配位预测,深入了解其在多组分玻璃中的结构作用,并为未来的研究提出了富有成效的领域。

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