Petković Marko, Vicent-Luna José Manuel, Menkovski Vlado, Calero Sofía
Eindhoven University of Technology, 5612AZ Eindhoven, Netherlands.
ACS Appl Mater Interfaces. 2024 Oct 2;16(41):56366-75. doi: 10.1021/acsami.4c12198.
The ability to efficiently predict adsorption properties of zeolites can be of large benefit in accelerating the design process of novel materials. The existing configuration space for these materials is wide, while existing molecular simulation methods are computationally expensive. In this work, we propose a model which is 4 to 5 orders of magnitude faster at adsorption properties compared to molecular simulations. To validate the model, we generated data sets containing various aluminum configurations for the MOR, MFI, RHO and ITW zeolites along with their heat of adsorptions and Henry coefficients for CO, obtained from Monte Carlo simulations. The predictions obtained from the Machine Learning model are in agreement with the values obtained from the Monte Carlo simulations, confirming that the model can be used for property prediction. Furthermore, we show that the model can be used for identifying adsorption sites. Finally, we evaluate the capability of our model for generating novel zeolite configurations by using it in combination with a genetic algorithm.
高效预测沸石吸附性能的能力对于加速新型材料的设计过程可能有很大益处。这些材料现有的构型空间很广,而现有的分子模拟方法计算成本很高。在这项工作中,我们提出了一个模型,该模型在吸附性能预测方面比分子模拟快4到5个数量级。为了验证该模型,我们生成了包含MOR、MFI、RHO和ITW沸石各种铝构型的数据集,以及它们从蒙特卡罗模拟获得的CO吸附热和亨利系数。从机器学习模型获得的预测结果与从蒙特卡罗模拟获得的值一致,证实该模型可用于性能预测。此外,我们表明该模型可用于识别吸附位点。最后,我们通过将其与遗传算法结合使用来评估我们的模型生成新型沸石构型的能力。