Literature DB >> 26818393

Adsorptive Separation of 1-Butanol from Aqueous Solutions Using MFI- and FER-Type Zeolite Frameworks: A Monte Carlo Study.

Robert F DeJaco1, Peng Bai1, Michael Tsapatsis1, J Ilja Siepmann1.   

Abstract

Anaerobic fermentation can transform carbohydrates to yield a multicomponent mixture comprising mainly of acetone, 1-butanol, and ethanol (ABE) in a typical weight ratio of 3:6:1. Compared to ethanol, 1-butanol, the main product of ABE fermentation, offers significant advantages as a biofuel or a fuel additive. However, the toxicity of 1-butanol for cell cultures requires broth concentrations to be low in 1-butanol (≈1-2 wt %). An energy-efficient recovery method that performs well even at low 1-butanol concentrations is therefore necessary to ensure economic feasibility of the ABE fermentation process. In this work, configurational-bias Monte Carlo simulations in the Gibbs ensemble are performed to probe the adsorption of 1-butanol/water solutions onto all-siliceous zeolites with the framework types MFI and FER. At low solution concentration, the selectivity and capacity for 1-butanol in MFI are larger than those in FER, while the opposite is true for concentrations at or above those of ABE broths. Structural analysis at various loadings sheds light on the different sorbate-sorbate and sorbate-sorbent interactions that govern trends in adsorption in each zeolite.

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Year:  2016        PMID: 26818393     DOI: 10.1021/acs.langmuir.5b04483

Source DB:  PubMed          Journal:  Langmuir        ISSN: 0743-7463            Impact factor:   3.882


  2 in total

1.  Vapor- and Liquid-Phase Adsorption of Alcohol and Water in Silicalite-1 Synthesized in Fluoride Media.

Authors:  Robert F DeJaco; Matheus Dorneles de Mello; Huong Giang T Nguyen; Mi Young Jeon; Roger D van Zee; Michael Tsapatsis; J Ilja Siepmann
Journal:  AIChE J       Date:  2019       Impact factor: 3.993

2.  Deep neural network learning of complex binary sorption equilibria from molecular simulation data.

Authors:  Yangzesheng Sun; Robert F DeJaco; J Ilja Siepmann
Journal:  Chem Sci       Date:  2019-03-18       Impact factor: 9.825

  2 in total

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