Data-Driven Discovery of Gas-Selective Organic Linkers in Metal-Organic Frameworks for the Separation of Ethylene and Ethane.
Mingzheng ZhangQiming XieZhuozheng WangWentao ZhangYawen BoZhiying ZhangHao LiYi LuoQihan GongShunning LiFeng PanPublished in: The journal of physical chemistry letters (2024)
Metal-organic frameworks (MOFs) are potential candidates for gas-selective adsorbents for the separation of an ethylene/ethane mixture. To accelerate material discovery, high-throughput computational screening is a viable solution. However, classical force fields, which were widely employed in recent studies of MOF adsorbents, have been criticized for their failure to cover complicated interactions such as those involving π electrons. Herein, we demonstrate that machine learning force fields (MLFFs) trained on quantum-chemical reference data can overcome this difficulty. We have constructed a MLFF to accurately predict the adsorption energies of ethylene and ethane on the organic linkers of MOFs and discovered that the π electrons from both the ethylene molecule and the aromatic rings in the linkers could substantially influence the selectivity for gas adsorption. Four kinds of MOF linkers are identified as having promise for the separation of ethylene and ethane, and our results could also offer a new perspective on the design of MOF building blocks for diverse applications.
Keyphrases
- metal organic framework
- high throughput
- machine learning
- small molecule
- room temperature
- big data
- liquid chromatography
- single molecule
- mass spectrometry
- molecular dynamics
- wastewater treatment
- electronic health record
- density functional theory
- artificial intelligence
- deep learning
- resistance training
- data analysis
- solid state