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Chemoinformatics-Driven Design of New Physical Solvents for Selective CO Absorption. | LitMetric

Chemoinformatics-Driven Design of New Physical Solvents for Selective CO Absorption.

Environ Sci Technol

TotalEnergies S.E., Exploration Production, Development and Support to Operations, Liquefied Natural Gas - Acid Gas Entity, CCUS R&D Program, Paris 92078, France.

Published: November 2021

The removal of CO from gases is an important industrial process in the transition to a low-carbon economy. The use of selective physical (co-)solvents is especially perspective in cases when the amount of CO is large as it enables one to lower the energy requirements for solvent regeneration. However, only a few physical solvents have found industrial application and the design of new ones can pave the way to more efficient gas treatment techniques. Experimental screening of gas solubility is a labor-intensive process, and solubility modeling is a viable strategy to reduce the number of solvents subject to experimental measurements. In this paper, a chemoinformatics-based modeling workflow was applied to build a predictive model for the solubility of CO and four other industrially important gases (CO, CH, H, and N). A dataset containing solubilities of gases in 280 solvents was collected from literature sources and supplemented with the new data for six solvents measured in the present study. A modeling workflow based on the usage of several state-of-the-art machine learning algorithms was applied to establish quantitative structure-solubility relationships. The best models were used to perform virtual screening of the industrially produced chemicals. It enabled the identification of compounds with high predicted CO solubility and selectivity toward other gases. The prediction for one of the compounds, 4-methylmorpholine, was confirmed experimentally.

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Source
http://dx.doi.org/10.1021/acs.est.1c04092DOI Listing

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