Machine learning insights into predicting biogas separation in metal-organic frameworks.
Isabel CooleySamuel BoobierJonathan D HirstElena BesleyPublished in: Communications chemistry (2024)
Breakthroughs in efficient use of biogas fuel depend on successful separation of carbon dioxide/methane streams and identification of appropriate separation materials. In this work, machine learning models are trained to predict biogas separation properties of metal-organic frameworks (MOFs). Training data are obtained using grand canonical Monte Carlo simulations of experimental MOFs which have been carefully curated to ensure data quality and structural viability. The models show excellent performance in predicting gas uptake and classifying MOFs according to the trade-off between gas uptake and selectivity, with R 2 values consistently above 0.9 for the validation set. We make prospective predictions on an independent external set of hypothetical MOFs, and examine these predictions in comparison to the results of grand canonical Monte Carlo calculations. The best-performing trained models correctly filter out over 90% of low-performing unseen MOFs, illustrating their applicability to other MOF datasets.
Keyphrases
- metal organic framework
- monte carlo
- carbon dioxide
- machine learning
- anaerobic digestion
- liquid chromatography
- big data
- sewage sludge
- electronic health record
- artificial intelligence
- municipal solid waste
- mass spectrometry
- resistance training
- room temperature
- body composition
- quality improvement
- molecular dynamics simulations
- single cell