Abstract

The intelligent choice of extractants and entrainers can improve current mixture separation techniques allowing better efficiency and sustainability of chemical processes that are both used in industry and laboratory practice. The most promising approach is a straightforward comparison of selectivity at infinite dilution between potential candidates. However, selectivity at infinite dilution values are rarely available for most compounds so a theoretical estimation is highly desired. In this study, we suggest a Quantitative Structure–Property Relationship (QSPR) approach to the modelling of the selectivity at infinite dilution of ionic liquids. Additionally, auxiliary models were developed to overcome the potential bias from big activity coefficient at infinite dilution from the solute. Data from SelinfDB database was used as training and internal validation sets in QSPR model development. External validation was done with the data from literature. The selection of the best models was done using decision functions that aim to diminish bias in prediction of the data points associated with the underrepresented ionic liquids or extreme temperatures. The best models were used for the virtual screening for potential azeotrope breakers of aniline + n-dodecane mixture. The subject of screening was a combinatorial library of ionic liquids, created based on the previously unused combinations of cations and anions from SelinfDB and the test set extractants. Both selectivity at infinite dilution and auxiliary models show good performance in the validation. Our models’ predictions were compared to the ones of the COSMO-RS, where applicable, displaying smaller prediction error. The best ionic liquid to extract aniline from n-dodecane was suggested.

Highlights

  • The separation of liquid mixture components is important both in industry and laboratory processes [1]

  • The most common separation method is distillation, it cannot be applied to azeotropes or compounds that decompose at higher temperatures

  • S∞ value is calculated from infinite dilution activity coefficients (IDACs) that are determined via gas chromatography [6]:

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Summary

Introduction

The separation of liquid mixture components is important both in industry and laboratory processes [1]. Extractive distillation can be a good choice in case of azeotrope mixtures [2]. Unstable compounds can be separated through liquid–liquid extraction [3]. Both extraction and extractive distillation require a chemical to act as an extractant/ entrainer. The choice of the extractant is very important, there are limited options for an intelligent selection with no prior experimental knowledge and it is mostly based on the comparison of the dipole moments of the solute, raffinate and extractant [4]. The intelligent entrainer choice for the breaking of the two-component mixture is usually based on the selectivity at infinite dilution ( S∞ ) value for the entrainer [5]. S∞ value is calculated from infinite dilution activity coefficients (IDACs) that are determined via gas chromatography [6]: Klimenko and Carrera J Cheminform (2021) 13:83

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