Lo Dico Giulia, Nuñez Álvaro Peña, Carcelén Verónica, Haranczyk Maciej
IMDEA Materials Institute C/Eric Kandel 2 28906 Getafe Madrid Spain
Department of Materials Science and Engineering and Chemical Engineering, Universidad Carlos III de Madrid Getafe Spain.
Chem Sci. 2021 Jun 2;12(27):9309-9317. doi: 10.1039/d1sc00816a. eCollection 2021 Jul 14.
Natural porous materials such as nanoporous clays are used as green and low-cost adsorbents and catalysts. The key factors determining their performance in these applications are the pore morphology and surface activity, which are typically represented by properties such as specific surface area, pore volume, micropore content and pH. The latter may be modified and tuned to specific applications through material processing and/or chemical treatment. Characterization of the material, raw or processed, is typically performed experimentally, which can become costly especially in the context of tuning of the properties towards specific application requirements and needing numerous experiments. In this work, we present an application of tree-based machine learning methods trained on experimental datasets to accelerate the characterization of natural porous materials. The resulting models allow reliable prediction of the outcomes of experimental characterization of processed materials ( from 0.78 to 0.99) as well as identification of key factors contributing to those properties through feature importance analysis. Furthermore, the high throughput of the models enables exploration of processing parameter-property correlations and multiobjective optimization of prototype materials towards specific applications. We have applied these methodologies to pinpoint and rationalize optimal processing conditions for clays exploitable in acid catalysis. One of such identified materials was synthesized and tested revealing appreciable acid character improvement with respect to the pristine material. Specifically, it achieved 79% removal of chlorophyll- in acid catalyzed degradation.
天然多孔材料,如纳米多孔粘土,被用作绿色低成本吸附剂和催化剂。决定它们在这些应用中性能的关键因素是孔形态和表面活性,这些通常由比表面积、孔体积、微孔含量和pH值等性质来表示。后者可以通过材料加工和/或化学处理进行改性和调整以适应特定应用。对原始或加工后的材料进行表征通常通过实验进行,这可能成本高昂,尤其是在根据特定应用要求调整性能并需要进行大量实验的情况下。在这项工作中,我们展示了基于树的机器学习方法在实验数据集上的应用,以加速天然多孔材料的表征。所得模型能够可靠地预测加工材料实验表征的结果(从0.78到0.99),并通过特征重要性分析识别对这些性质有贡献的关键因素。此外,模型的高通量使得能够探索加工参数与性能的相关性,并针对特定应用对原型材料进行多目标优化。我们已经应用这些方法来确定并合理化可用于酸催化的粘土的最佳加工条件。其中一种确定的材料被合成并测试,结果表明相对于原始材料,其酸性质有明显改善。具体而言,在酸催化降解中,它实现了79%的叶绿素去除率。