Publication:
Combining machine learning and molecular simulations to unlock gas separation potentials of MOF membranes and MOF/polymer MMMs

dc.contributor.departmentDepartment of Chemical and Biological Engineering
dc.contributor.kuauthorHarman, Hilal Dağlar
dc.contributor.kuauthorKeskin, Seda
dc.contributor.kuprofilePhD Student
dc.contributor.kuprofileFaculty Member
dc.contributor.otherDepartment of Chemical and Biological Engineering
dc.contributor.schoolcollegeinstituteGraduate School of Sciences and Engineering
dc.contributor.schoolcollegeinstituteCollege of Engineering
dc.contributor.yokidN/A
dc.contributor.yokid40548
dc.date.accessioned2024-11-09T12:40:11Z
dc.date.issued2022
dc.description.abstractDue to the enormous increase in the number of metal-organic frameworks (MOFs), combining molecular simulations with machine learning (ML) would be a very useful approach for the accurate and rapid assessment of the separation performances of thousands of materials. In this work, we combined these two powerful approaches, molecular simulations and ML, to evaluate MOF membranes and MOF/polymer mixed matrix membranes (MMMs) for six different gas separations: He/H-2, He/N-2, He/CH4, H-2/N-2, H-2/CH4, and N-2/CH4. Single-component gas uptakes and diffusivities were computed by grand canonical Monte Carlo (GCMC) and molecular dynamics (MD) simulations, respectively, and these simulation results were used to assess gas permeabilities and selectivities of MOF membranes. Physical, chemical, and energetic features of MOFs were used as descriptors, and eight different ML models were developed to predict gas adsorption and diffusion properties of MOFs. Gas permeabilities and membrane selectivities of 5249 MOFs and 31,494 MOF/polymer MMMs were predicted using these ML models. To examine the transferability of the ML models, we also focused on computer-generated, hypothetical MOFs (hMOFs) and predicted the gas permeability and selectivity of 1000 hMOF/polymer MMMs. The ML models that we developed accurately predict the uptake and diffusion properties of He, H-2, N-2, and CH(4 )gases in MOFs and will significantly accelerate the assessment of separation performances of MOF membranes and MOF/polymer MMIMs. These models will also be useful to direct the extensive experimental efforts and computationally demanding molecular simulations to the fabrication and analysis of membrane materials offering high performance for a target gas separation.
dc.description.fulltextYES
dc.description.indexedbyWoS
dc.description.indexedbyScopus
dc.description.indexedbyPubMed
dc.description.issue28
dc.description.openaccessYES
dc.description.publisherscopeInternational
dc.description.sponsoredbyTubitakEuEU
dc.description.sponsorshipEuropean Research Council (ERC)
dc.description.sponsorshipEuropean Union (EU)
dc.description.sponsorshipHorizon 2020
dc.description.sponsorshipERC-2017-Starting Grant
dc.description.sponsorshipResearch Innovation Programme
dc.description.sponsorshipCOSMOS
dc.description.volume14
dc.formatpdf
dc.identifier.doi10.1021/acsami.2c08977
dc.identifier.eissn1944-8252
dc.identifier.embargoNO
dc.identifier.filenameinventorynoIR03759
dc.identifier.issn1944-8244
dc.identifier.linkhttps://doi.org/10.1021/acsami.2c08977
dc.identifier.quartileQ1
dc.identifier.scopus2-s2.0-85134854455
dc.identifier.urihttps://hdl.handle.net/20.500.14288/2166
dc.identifier.wos828397400001
dc.keywordsMachine learning
dc.keywordsMixed matrix membrane
dc.keywordsPermeability
dc.keywordsSelectivity
dc.keywordsGas separation
dc.languageEnglish
dc.publisherAmerican Chemical Society (ACS)
dc.relation.grantno756489-COSMOS
dc.relation.urihttp://cdm21054.contentdm.oclc.org/cdm/ref/collection/IR/id/10620
dc.sourceACS Applied Materials and Interfaces
dc.subjectNanoscience and nanotechnology
dc.subjectMaterials science
dc.titleCombining machine learning and molecular simulations to unlock gas separation potentials of MOF membranes and MOF/polymer MMMs
dc.typeJournal Article
dspace.entity.typePublication
local.contributor.authoridN/A
local.contributor.authorid0000-0001-5968-0336
local.contributor.kuauthorHarman, Hilal Dağlar
local.contributor.kuauthorKeskin, Seda
relation.isOrgUnitOfPublicationc747a256-6e0c-4969-b1bf-3b9f2f674289
relation.isOrgUnitOfPublication.latestForDiscoveryc747a256-6e0c-4969-b1bf-3b9f2f674289

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