Qiu Yong, Wang Lei, Chen Letian, Tian Yun, Zhou Zhen, Wu Jianzhong
Interdisciplinary Research Center for Sustainable Energy Science and Engineering (IRC4SE2), School of Chemical Engineering, Zhengzhou University Zhengzhou 450001 Henan China
School of Materials Science and Engineering, Institute of New Energy Material Chemistry, Renewable Energy Conversion and Storage Center (ReCast), Key Laboratory of Advanced Energy Materials Chemistry (Ministry of Education), Nankai University Tianjin 300350 China
Chem Sci. 2025 Aug 28. doi: 10.1039/d5sc04332h.
The diverse combinations of novel building blocks offer a vast design space for hydrogen-bonded organic frameworks (HOFs), rendering them highly promising for gas separation and purification. However, the underlying separation mechanism facilitated by their unique hydrogen-bond networks has not yet been fully understood. In this work, a comprehensive understanding of the separation mechanisms was achieved through an iterative data-driven inverse engineering approach established upon a hypothetical HOF database possessing nearly 110 000 structures created by a materials genomics method. Leveraging a simple yet universal feature extracted from hydrogen bonding information with unambiguous physical meanings, the entire design space was exploited to rapidly identify the optimization route towards novel HOF structures with superior Xe/Kr separation performance (selectivity > 10). This work not only provides the first large-scale HOF database, but also demonstrates the enhanced machine learning interpretability of our model-driven iterative inverse design framework, offering new insights into the rational design of nanoporous materials for gas separation.
新型结构单元的多样组合为氢键有机框架(HOF)提供了广阔的设计空间,使其在气体分离和提纯方面极具潜力。然而,由其独特氢键网络促成的潜在分离机制尚未完全明晰。在这项工作中,通过基于由材料基因组学方法创建的近11万个结构的假设HOF数据库建立的迭代数据驱动逆向工程方法,实现了对分离机制的全面理解。利用从具有明确物理意义的氢键信息中提取的简单通用特征,对整个设计空间进行了探索,以快速确定通往具有卓越Xe/Kr分离性能(选择性>10)的新型HOF结构的优化路线。这项工作不仅提供了首个大规模HOF数据库,还展示了我们模型驱动的迭代逆向设计框架增强的机器学习可解释性,为气体分离纳米多孔材料的合理设计提供了新见解。