...
首页> 外文期刊>NPJ Materials Degradation >Can a simple topological-constraints-based model predict the initial dissolution rate of borosilicate and aluminosilicate glasses?
【24h】

Can a simple topological-constraints-based model predict the initial dissolution rate of borosilicate and aluminosilicate glasses?

机译:基于简单的拓扑约束的模型可以预测硼硅酸盐和铝硅酸盐玻璃的初始溶解速率吗?

获取原文
           

摘要

Tuning glass composition to obtain targeted properties generally relies on empirical approaches. However, a deep understanding of the physical and chemical mechanisms linking glass composition to its structure and properties would enable developing reliable predictive models. Indeed, although empirical models are usually able to interpolate composition–property relationships within a given compositional envelope, they often fail at extrapolating predictions far from their training domain. Here, as an alternative route to empirical models, we show that a structural descriptor based on the number of topological constraints per atom can be used to predict the initial dissolution rate of aluminosilicate and borosilicate glasses after being parameterized on different families of glasses (specific series of borosilicate glasses). Sixteen glasses belonging to these families were studied and their initial dissolution rates were determined at 90 °C and pH90 °C = 9, covering rates spanning over 5 orders of magnitude. The model based on topological constraints was trained based on seven select borosilicate glasses (R2 = 0.997) and used to predict the dissolution rate of nine additional borosilicate and aluminosilicate glasses. We show that, provided that corrections are made for high alkali content glasses that dissolve incongruently (preferential release of Na), the model gives reasonable predictions, even far from its training domain.
机译:调整玻璃组合物以获得靶向性质通常依赖于经验方法。然而,深入了解将玻璃组合物连接到其结构和性质的物理和化学机制将能够开发可靠的预测模型。实际上,尽管经验模型通常能够在给定的组成包络内插入构成性质关系,但它们经常在远处的预测远离其训练领域的推断。这里,作为经验模型的替代路线,我们表明,基于每种原子的拓扑约束的数量的结构描述符可用于预测在不同玻璃(特定系列)上参数化之后硅铝酸盐和硼硅酸盐玻璃的初始溶出速率(具体系列硼硅酸盐玻璃)。研究了属于这些家庭的十六块眼镜,并在90℃和pH90°C = 9时测定它们的初始溶解速率,覆盖跨越5次数量级的速率。基于拓扑约束的模型基于七个选择硼硅酸盐玻璃(R2 = 0.997)培训并用于预测九个另外的硼硅酸盐和硅铝酸盐玻璃的溶出速率。我们表明,只要对溶解不一致的高碱含量玻璃(优先释放NA)的校正,甚至远离其训练领域,该模型也可以提供合理的预测。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号