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dc.contributor.authorIslam, Kamrul
dc.contributor.authorGeem, Zong Woo
dc.contributor.authorBEKDAŞ, GEBRAİL
dc.contributor.authorKim, Sanghun
dc.contributor.authorCakiroglu, Celal
dc.date.accessioned2022-07-04T14:06:24Z
dc.date.available2022-07-04T14:06:24Z
dc.date.issued2022
dc.identifier.citationCakiroglu C., Islam K., BEKDAŞ G., Kim S., Geem Z. W. , "Interpretable Machine Learning Algorithms to Predict the Axial Capacity of FRP-Reinforced Concrete Columns", MATERIALS, cilt.15, sa.8, 2022
dc.identifier.issn1996-1944
dc.identifier.othervv_1032021
dc.identifier.otherav_68270efc-8934-4a29-9edd-195090b5782e
dc.identifier.urihttp://hdl.handle.net/20.500.12627/183115
dc.identifier.urihttps://avesis.istanbul.edu.tr/api/publication/68270efc-8934-4a29-9edd-195090b5782e/file
dc.identifier.urihttps://doi.org/10.3390/ma15082742
dc.description.abstractFiber-reinforced polymer (FRP) rebars are increasingly being used as an alternative to steel rebars in reinforced concrete (RC) members due to their excellent corrosion resistance capability and enhanced mechanical properties. Extensive research works have been performed in the last two decades to develop predictive models, codes, and guidelines to estimate the axial load-carrying capacity of FRP-RC columns. This study utilizes the power of artificial intelligence and develops an alternative approach to predict the axial capacity of FRP-RC columns more accurately using data-driven machine learning (ML) algorithms. A database of 117 tests of axially loaded FRP-RC columns is collected from the literature. The geometric and material properties, column shape and slenderness ratio, reinforcement details, and FRP types are used as the input variables, while the load-carrying capacity is used as the output response to develop the ML models. Furthermore, the input-output relationship of the ML model is explained through feature importance analysis and the SHapely Additive exPlanations (SHAP) approach. Eight ML models, namely, Kernel Ridge Regression, Lasso Regression, Support Vector Machine, Gradient Boosting Machine, Adaptive Boosting, Random Forest, Categorical Gradient Boosting, and Extreme Gradient Boosting, are used in this study for capacity prediction, and their relative performances are compared to identify the best-performing ML model. Finally, predictive equations are proposed using the harmony search optimization and the model interpretations obtained through the SHAP algorithm.
dc.language.isoeng
dc.subjectPhysical Sciences
dc.subjectSurfaces and Interfaces
dc.subjectSurfaces, Coatings and Films
dc.subjectMetalurji ve Malzeme Mühendisliği
dc.subjectYoğun Madde 1:Yapısal, Mekanik ve Termal Özellikler
dc.subjectFizikokimya
dc.subjectTemel Bilimler
dc.subjectMühendislik ve Teknoloji
dc.subjectCondensed Matter Physics
dc.subjectPhysical and Theoretical Chemistry
dc.subjectGeneral Chemistry
dc.subjectGeneral Materials Science
dc.subjectChemistry (miscellaneous)
dc.subjectElectronic, Optical and Magnetic Materials
dc.subjectStatistical and Nonlinear Physics
dc.subjectMaterials Chemistry
dc.subjectMetals and Alloys
dc.subjectKİMYA, FİZİKSEL
dc.subjectKimya
dc.subjectTemel Bilimler (SCI)
dc.subjectMALZEME BİLİMİ, MULTIDISCIPLINARY
dc.subjectMalzeme Bilimi
dc.subjectMühendislik, Bilişim ve Teknoloji (ENG)
dc.subjectMETALURJİ VE METALURJİ MÜHENDİSLİĞİ
dc.subjectFİZİK, UYGULAMALI
dc.subjectFizik
dc.subjectFİZİK, YOĞUN MADDE
dc.titleInterpretable Machine Learning Algorithms to Predict the Axial Capacity of FRP-Reinforced Concrete Columns
dc.typeMakale
dc.relation.journalMATERIALS
dc.contributor.departmentTürk-Alman Üniversitesi , ,
dc.identifier.volume15
dc.identifier.issue8
dc.contributor.firstauthorID3416986


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