Yang Yujuan, Guo Shuya, Li Shuhua, Wu Yufang, Qiao Zhiwei
Guangzhou Key Laboratory for New Energy and Green Catalysis, School of Chemistry and Chemical Engineering, Guangzhou University, Guangzhou 510006, China.
Nanomaterials (Basel). 2024 Jan 31;14(3):298. doi: 10.3390/nano14030298.
The shape and topology of pores have significant impacts on the gas storage properties of nanoporous materials. Metal-organic frameworks (MOFs) are ideal materials with which to tailor to the needs of specific applications, due to properties such as their tunable structure and high specific surface area. It is, therefore, particularly important to develop descriptors that accurately identify the topological features of MOF pores. In this work, a topological data analysis method was used to develop a topological descriptor, based on the pore topology, which was combined with the Extreme Gradient Boosting (XGBoost) algorithm to predict the adsorption performance of MOFs for methane/ethane/propane. The final results show that this descriptor can accurately predict the performance of MOFs, and the introduction of the topological descriptor also significantly improves the accuracy of the model, resulting in an increase of up to 17.55% in the value of the model and a decrease of up to 46.1% in the RMSE, compared to commonly used models that are based on the structural descriptor. The results of this study contribute to a deeper understanding of the relationship between the performance and structure of MOFs and provide useful guidelines and strategies for the design of high-performance separation materials.
孔的形状和拓扑结构对纳米多孔材料的气体存储性能有显著影响。金属有机框架材料(MOFs)因其结构可调、比表面积高等特性,是满足特定应用需求的理想材料。因此,开发能够准确识别MOF孔拓扑特征的描述符尤为重要。在这项工作中,基于孔拓扑结构,采用拓扑数据分析方法开发了一种拓扑描述符,并将其与极端梯度提升(XGBoost)算法相结合,以预测MOFs对甲烷/乙烷/丙烷的吸附性能。最终结果表明,该描述符能够准确预测MOFs的性能,与基于结构描述符的常用模型相比,拓扑描述符的引入还显著提高了模型的准确性,使模型的 值提高了17.55%,均方根误差(RMSE)降低了46.1%。本研究结果有助于更深入地理解MOFs性能与结构之间的关系,并为高性能分离材料的设计提供有用的指导方针和策略。