001032241 001__ 1032241 001032241 005__ 20250804115242.0 001032241 0247_ $$2doi$$a10.1038/s41529-024-00529-8 001032241 0247_ $$2datacite_doi$$a10.34734/FZJ-2024-06088 001032241 0247_ $$2WOS$$aWOS:001345098600001 001032241 037__ $$aFZJ-2024-06088 001032241 082__ $$a530 001032241 1001_ $$0P:(DE-Juel1)188821$$aHu, Yang$$b0$$ufzj 001032241 245__ $$aA data-driven strategy for phase field nucleation modeling 001032241 260__ $$a[London]$$bMacmillan Publishers Limited, part of Springer Nature$$c2024 001032241 3367_ $$2DRIVER$$aarticle 001032241 3367_ $$2DataCite$$aOutput Types/Journal article 001032241 3367_ $$0PUB:(DE-HGF)16$$2PUB:(DE-HGF)$$aJournal Article$$bjournal$$mjournal$$s1750754937_31806 001032241 3367_ $$2BibTeX$$aARTICLE 001032241 3367_ $$2ORCID$$aJOURNAL_ARTICLE 001032241 3367_ $$00$$2EndNote$$aJournal Article 001032241 520__ $$aWe propose a data-driven strategy for parameter selection in phase field nucleation models using machine learning and apply it to oxide nucleation in Fe-Cr alloys. A grand potential-based phase field model, incorporating Langevin noise, is employed to simulate oxide nucleation and benchmarked against the Johnson-Mehl-Avrami-Kolmogorov model. Three independent parameters in the phase field simulations (Langevin noise strength, numerical grid discretization and critical nucleation radius) are identified as essential for accurately modeling the nucleation behavior. These parameters serve as input features for machine learning classification and regression models. The classification model categorizes nucleation behavior into three nucleation density regimes, preventing invalid nucleation attempts in simulations, while the regression model estimates the appropriate Langevin noise strength, significantly reducing the need for time-consuming trial-and-error simulations. This data-driven approach improves the efficiency of parameter selection in phase field models and provides a generalizable method for simulating nucleation-driven microstructural evolution processes in various materials. 001032241 536__ $$0G:(DE-HGF)POF4-1221$$a1221 - Fundamentals and Materials (POF4-122)$$cPOF4-122$$fPOF IV$$x0 001032241 588__ $$aDataset connected to CrossRef, Journals: juser.fz-juelich.de 001032241 7001_ $$0P:(DE-Juel1)173887$$aWang, Kai$$b1$$eCorresponding author 001032241 7001_ $$0P:(DE-Juel1)130979$$aSpatschek, Robert$$b2$$ufzj 001032241 773__ $$0PERI:(DE-600)2925488-7$$a10.1038/s41529-024-00529-8$$gVol. 8, no. 1, p. 109$$n1$$p109$$tnpj Materials degradation$$v8$$x2397-2106$$y2024 001032241 8564_ $$uhttps://juser.fz-juelich.de/record/1032241/files/s41529-024-00529-8%20%281%29.pdf$$yOpenAccess 001032241 909CO $$ooai:juser.fz-juelich.de:1032241$$pdnbdelivery$$pdriver$$pVDB$$popen_access$$popenaire 001032241 9101_ $$0I:(DE-588b)5008462-8$$6P:(DE-Juel1)188821$$aForschungszentrum Jülich$$b0$$kFZJ 001032241 9101_ $$0I:(DE-588b)5008462-8$$6P:(DE-Juel1)130979$$aForschungszentrum Jülich$$b2$$kFZJ 001032241 9131_ $$0G:(DE-HGF)POF4-122$$1G:(DE-HGF)POF4-120$$2G:(DE-HGF)POF4-100$$3G:(DE-HGF)POF4$$4G:(DE-HGF)POF$$9G:(DE-HGF)POF4-1221$$aDE-HGF$$bForschungsbereich Energie$$lMaterialien und Technologien für die Energiewende (MTET)$$vElektrochemische Energiespeicherung$$x0 001032241 915__ $$0StatID:(DE-HGF)0200$$2StatID$$aDBCoverage$$bSCOPUS$$d2023-08-29 001032241 915__ $$0StatID:(DE-HGF)0160$$2StatID$$aDBCoverage$$bEssential Science Indicators$$d2023-08-29 001032241 915__ $$0StatID:(DE-HGF)1160$$2StatID$$aDBCoverage$$bCurrent Contents - Engineering, Computing and Technology$$d2023-08-29 001032241 915__ $$0LIC:(DE-HGF)CCBY4$$2HGFVOC$$aCreative Commons Attribution CC BY 4.0 001032241 915__ $$0StatID:(DE-HGF)0100$$2StatID$$aJCR$$bNPJ MAT DEGRAD : 2022$$d2023-08-29 001032241 915__ $$0StatID:(DE-HGF)0501$$2StatID$$aDBCoverage$$bDOAJ Seal$$d2023-04-12T15:13:04Z 001032241 915__ $$0StatID:(DE-HGF)0500$$2StatID$$aDBCoverage$$bDOAJ$$d2023-04-12T15:13:04Z 001032241 915__ $$0StatID:(DE-HGF)0113$$2StatID$$aWoS$$bScience Citation Index Expanded$$d2023-08-29 001032241 915__ $$0StatID:(DE-HGF)0700$$2StatID$$aFees$$d2023-08-29 001032241 915__ $$0StatID:(DE-HGF)0150$$2StatID$$aDBCoverage$$bWeb of Science Core Collection$$d2023-08-29 001032241 915__ $$0StatID:(DE-HGF)0510$$2StatID$$aOpenAccess 001032241 915__ $$0StatID:(DE-HGF)0030$$2StatID$$aPeer Review$$bDOAJ : Anonymous peer review$$d2023-04-12T15:13:04Z 001032241 915__ $$0StatID:(DE-HGF)0561$$2StatID$$aArticle Processing Charges$$d2023-08-29 001032241 915__ $$0StatID:(DE-HGF)9905$$2StatID$$aIF >= 5$$bNPJ MAT DEGRAD : 2022$$d2023-08-29 001032241 915__ $$0StatID:(DE-HGF)0300$$2StatID$$aDBCoverage$$bMedline$$d2023-08-29 001032241 915__ $$0StatID:(DE-HGF)0199$$2StatID$$aDBCoverage$$bClarivate Analytics Master Journal List$$d2023-08-29 001032241 920__ $$lyes 001032241 9201_ $$0I:(DE-Juel1)IMD-1-20101013$$kIMD-1$$lWerkstoffstruktur und -eigenschaften$$x0 001032241 980__ $$ajournal 001032241 980__ $$aVDB 001032241 980__ $$aUNRESTRICTED 001032241 980__ $$aI:(DE-Juel1)IMD-1-20101013 001032241 9801_ $$aFullTexts