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Coupling machine learning with thermodynamic modelling to develop a composition-property model for alkali-activated materials

机译:耦合机学习热力学建模,为碱活性材料开发组成 - 性能模型

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Alkali-activation is one of the most promising routes for utilisation of versatile aluminosilicate resources. However, the variations of chemical compositions in these resources have increased the challenge of designing alkali-activated materials (AAMs) with multiple sources, posing the demand for establishing composition-property correlations that can represent a wide range of AAMs. This study proposes a data-driven approach to develop such composition-property correlations combining machine learning with global sensitivity analysis and thermodynamic modelling. The strength performance of alkali-activated concretes was investigated for a benchmark study (196 data inputs). The impact of the five key chemical compositions, CaO-SiO2-Al2O3-MgO-Na2O, has been assessed. The results show that despite the use of different aluminosilicate precursors, there appear to be coherent connections between bulk binder chemical compositions, phase assemblages, and the performance of AAMs. The composition-property correlations established via machine learning can be used to facilitate the on-demand design of AAMs utilising varying aluminosilicate resources.
机译:碱活化是多才多艺的铝资源利用的最有希望的途径之一。然而,化学成分的在这些资源中的变化增加了设计的碱活化的材料(的AAMs)配有多个源,构成用于建立组合物属性的相关性可以表示宽范围的AAMs的需求的挑战。这项研究提出了一种数据驱动的方法来开发这样的组成,性质关系的机器学习相结合的全局灵敏度分析和热力学模型。碱活化的混凝土的强度性能进行了研究用于基准研究(196个数据输入)。五个关键化学成分的影响,曹硅氧化铝,氧化镁 - 氧化,被评定。结果表明,尽管使用了不同的铝硅酸盐前体的,似乎有散装粘合剂的化学组成,相组合,和空空导弹的性能之间相干连接。通过机器学习建立的组合物属性的相关性可以被用于促进按需设计利用不同硅铝酸盐资源的AAMs的。

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