(556c) Data-Driven Screening of Metal-Organic Frameworks for Selective C2 Separations
AIChE Annual Meeting
2024
2024 AIChE Annual Meeting
Separations Division
Molecular and Data Science Modeling of Adsorption
Wednesday, October 30, 2024 - 1:00pm to 1:15pm
The negative impacts of climate change have spurred a flurry of research into lower carbon footprint alternatives across a range of industries, especially the chemical sector. Separation of high-value chemicals is typically the most energy-intensive step in a given process. This is especially true for the separation of ethylene from ethane, which annually accounts for almost 100 million tonnes of CO2 emissions and 0.3% of global primary energy usage. Replacing current cryogenic distillation units with adsorption separation units could enable significant efficiency gains in this process. Metal-organic frameworks (MOFs) are well-suited to this purpose due to their high surfaces and tunable chemical properties; however, the library of possible MOFs is already too large to be experimentally explored. An in silicoscreening method is much more viable. Here, we present a database of experimentally measured pure-component C2isotherms gathered from the literature and develop a machine-learning algorithm to learn MOF structure-performance relationships relating to ethane/ethylene separation. MOFs were featurized using a combination of bulk structural information from Zeo++ and chemical information from revised autocorrelation functions (RACs) on a molecular graph of the structure. Additionally, the model is trained to predict performance across a range of temperatures and pressures, making it more adaptable to varying process constraints. We then apply the model to the full Computation Ready Experimental MOF database and identify the most promising candidates. A MOF that is predicted to exhibit high ethane-selectivity is then synthesized and tested to validate modeling predictions. This work presents an important resource that can be leveraged by other researchers to develop MOFs for C2 separations.