Publication:
Predicting water solubility in ionic liquids using machine learning towards design of hydro-philic/phobic ionic liquids

dc.contributor.coauthorCan, Elif
dc.contributor.coauthorZirhlioglu, I. Gulcin
dc.contributor.coauthorYildirim, Ramazan
dc.contributor.departmentDepartment of Chemical and Biological Engineering
dc.contributor.departmentGraduate School of Sciences and Engineering
dc.contributor.kuauthorJalal, Ahsan
dc.contributor.kuauthorUzun, Alper
dc.contributor.schoolcollegeinstituteCollege of Engineering
dc.contributor.schoolcollegeinstituteGRADUATE SCHOOL OF SCIENCES AND ENGINEERING
dc.date.accessioned2024-11-10T00:07:14Z
dc.date.issued2021
dc.description.abstractIn this work, a database containing the solubility data for water in 16,137 ionic liquids (ILs), which were formed by a combination of the most commonly used 163 cations (in nine groups) and 99 anions, were analyzed using machine learning. The water solubility in ILs was computed by COnductor-like Screening MOdel for Realistic Solvents (COSMO-RS) while the molecular descriptors for the individual cations and anions were determined by semi-empirical PM3 method. Association rule mining, decision tree and multilayer fully connected neural network (a deep learning model) were employed as machine learning techniques. The association rule mining analysis clearly identified the descriptors leading to low water solubility in ILs, while the decision tree analysis provided heuristic rules for the selection of cations and anions to form ILs with low water capacity. The prediction accuracy of fully connected neural network model was also high; even the model constructed from a small fraction of data was successful to predict the water solubility in other ILs in the dataset indicating that the anionic and cationic descriptors used were sufficient to represent the performance of ILs. The classification ability of decision trees was verified by the experimental water solubility data for 49 ILs extracted from 13 published papers in literature; the decision tree model correctly classified the experimental solubility of 46 of these ILs. The deep learning predictions of solubility were also in agreement with the experimental data within the accuracy level of COSMO-RS calculations. It was generally found that the anionic descriptors were more influential to predict the water capacity of ILs, while the cationic descriptors made limited contribution.
dc.description.indexedbyWOS
dc.description.indexedbyScopus
dc.description.openaccessNO
dc.description.publisherscopeInternational
dc.description.sponsoredbyTubitakEuN/A
dc.description.volume332
dc.identifier.doi10.1016/j.molliq.2021.115848
dc.identifier.eissn1873-3166
dc.identifier.issn0167-7322
dc.identifier.quartileQ1
dc.identifier.scopus2-s2.0-85102571565
dc.identifier.urihttps://doi.org/10.1016/j.molliq.2021.115848
dc.identifier.urihttps://hdl.handle.net/20.500.14288/16753
dc.identifier.wos644949400048
dc.keywordsWater solubility in ionic liquids
dc.keywordsWater capacity of ionic liquids
dc.keywordsMachine learning
dc.keywordsDeep learning
dc.keywordsDecision tree
dc.keywordsAssociation rule mining
dc.keywordsAssisted hydrothermal syntheses
dc.keywordsPhotocatalytic activity
dc.keywordsActivity-coefficients
dc.keywordsSulfide solubility
dc.keywordsOxygen reduction
dc.keywordsTio2
dc.keywordsPhotoactivity
dc.keywordsNanoparticles
dc.keywordsPerformance
dc.keywordsElectrodes
dc.language.isoeng
dc.publisherElsevier
dc.relation.ispartofJournal of Molecular Liquids
dc.subjectChemistry
dc.subjectPhysical chemistry
dc.subjectPhysics
dc.titlePredicting water solubility in ionic liquids using machine learning towards design of hydro-philic/phobic ionic liquids
dc.typeJournal Article
dspace.entity.typePublication
local.contributor.kuauthorJalal, Ahsan
local.contributor.kuauthorUzun, Alper
local.publication.orgunit1GRADUATE SCHOOL OF SCIENCES AND ENGINEERING
local.publication.orgunit1College of Engineering
local.publication.orgunit2Department of Chemical and Biological Engineering
local.publication.orgunit2Graduate School of Sciences and Engineering
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