Please use this identifier to cite or link to this item: http://hdl.handle.net/10773/28754
Full metadata record
DC FieldValueLanguage
dc.contributor.authorGalvão, Tiago L. P.pt_PT
dc.contributor.authorNovell-Leruth, Gerardpt_PT
dc.contributor.authorKuznetsova, Alenapt_PT
dc.contributor.authorTedim, Joãopt_PT
dc.contributor.authorGomes, José R. B.pt_PT
dc.date.accessioned2020-06-30T15:35:08Z-
dc.date.issued2020-03-
dc.identifier.issn1932-7447pt_PT
dc.identifier.urihttp://hdl.handle.net/10773/28754-
dc.description.abstractOrganic corrosion inhibitors are playing a crucial role to substitute traditional protective technologies, which have acute toxicity problems associated. However, why some organic compounds inhibit corrosion and others do not, is still not well understood. Therefore, we tested different machine learning (ML) methods to distinguish efficient corrosion inhibitors for aluminum alloys commonly used in aeronautical applications. In this work, we have obtained information that can greatly contribute to automate the search for new and more efficient protective solutions in the future: i) a ML algorithm was selected that is able to classify correctly efficient inhibitors (i.e., with more than 50 % efficiency) and non-inhibitors (i.e. with lower-equal than 50 % efficiency), even when information about different alloys at different pHs is included in the same dataset, which can significantly increase the information available to train the model; ii) new descriptors related to the self-association of the molecules were evaluated, but improvements to the predictive power of the models are limited; iii) average differences concerning the descriptors in this work were identified for inhibitors and non-inhibitors, having the potential to serve as guidelines to select potentially inhibitive molecular systems. This work demonstrates that ML can significantly accelerate research in the field by serving as a tool to perform an initial virtual screen of the molecules.pt_PT
dc.language.isoengpt_PT
dc.publisherAmerican Chemical Societypt_PT
dc.relationUIDB/50011/2020pt_PT
dc.relationUIDP/50011/2020pt_PT
dc.relationPOCI-01-0145-FEDER-030256pt_PT
dc.relationPTDC/QUI-QFI/30256/2017pt_PT
dc.relationPTDC/QEQ-QFI/4719/2014pt_PT
dc.rightsopenAccesspt_PT
dc.rights.urihttp://creativecommons.org/licenses/by-nc-nd/4.0/pt_PT
dc.subjectDensity functional theorypt_PT
dc.subjectMachine Learningpt_PT
dc.subjectCorrosion Inhibitorspt_PT
dc.titleElucidating structure–property relationships in aluminum alloy corrosion inhibitors by machine learningpt_PT
dc.typearticlept_PT
dc.description.versionpublishedpt_PT
dc.peerreviewedyespt_PT
degois.publication.firstPage5624pt_PT
degois.publication.issue10pt_PT
degois.publication.lastPage5635pt_PT
degois.publication.titleThe Journal of Physical Chemistry Cpt_PT
degois.publication.volume124pt_PT
dc.date.embargo2021-03-31-
dc.relation.publisherversionhttps://pubs.acs.org/doi/pdf/10.1021/acs.jpcc.9b09538pt_PT
dc.identifier.doi10.1021/acs.jpcc.9b09538pt_PT
dc.identifier.essn1932-7455pt_PT
Appears in Collections:CICECO - Artigos

Files in This Item:
File Description SizeFormat 
ML_doc.pdf1.86 MBAdobe PDFView/Open


FacebookTwitterLinkedIn
Formato BibTex MendeleyEndnote Degois 

Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.