Abstract
Zeolites play numerous important roles in modern petroleum refineries and have the potential to advance the production of fuels and chemical feedstocks from renewable resources. The performance of a zeolite as separation medium and catalyst depends on its framework structure. To date, 213 framework types have been synthesized and >330,000 thermodynamically accessible zeolite structures have been predicted. Hence, identification of optimal zeolites for a given application from the large pool of candidate structures is attractive for accelerating the pace of materials discovery. Here we identify, through a large-scale, multi-step computational screening process, promising zeolite structures for two energy-related applications: the purification of ethanol from fermentation broths and the hydroisomerization of alkanes with 18-30 carbon atoms encountered in petroleum refining. These results demonstrate that predictive modelling and data-driven science can now be applied to solve some of the most challenging separation problems involving highly non-ideal mixtures and highly articulated compounds.
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CITATION STYLE
Bai, P., Jeon, M. Y., Ren, L., Knight, C., Deem, M. W., Tsapatsis, M., & Siepmann, J. I. (2015). Discovery of optimal zeolites for challenging separations and chemical transformations using predictive materials modeling. Nature Communications, 6. https://doi.org/10.1038/ncomms6912
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