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dc.creatorBotella, Ramon
dc.creatorLo Presti, Davide
dc.creatorVasconcelos, Kamilla
dc.creatorBernatowicz, Kinga
dc.creatorMartínez, Adriana
dc.creatorMiró, Rodrigo
dc.creatorSpecht, Luciano
dc.creatorArámbula Mercado, Edith
dc.creatorMenegusso Pires, Gustavo
dc.creatorPasquini, Emiliano
dc.creatorOgbo, Chibuike
dc.creatorPreti, Francesco
dc.creatorPasetto, Marco
dc.creatorJiménez del Barco Carrión, Ana
dc.creatorRoberto, Antonio
dc.creatorOrešković, Marko
dc.creatorKuna, Kranthi
dc.creatorGuduru, Gurunath
dc.creatorEpps Martin, Amy
dc.creatorCarter, Alan
dc.creatorGiancontieri, Gaspare
dc.creatorAbed, Ahmed
dc.creatorDave, Eshan
dc.creatorTebaldi, Gabriele
dc.date.accessioned2022-04-18T07:37:47Z
dc.date.available2022-04-18T07:37:47Z
dc.date.issued2022
dc.identifier.issn1359-5997
dc.identifier.urihttps://grafar.grf.bg.ac.rs/handle/123456789/2659
dc.description.abstractThis paper describes the development of novel/state-of-art computational framework to accurately predict the degree of binder activity of a reclaimed asphalt pavement sample as a percentage of the indirect tensile strength (ITS) using a reduced number of input variables that are relatively easy to obtain, namely compaction temperature, air voids and ITS. Different machine learning (ML) techniques were applied to obtain the most accurate data representation model. Specifically, three ML techniques were applied: 6th-degree multivariate polynomial regression with regularization, artificial neural network and random forest regression. The three techniques produced models with very similar precision, reporting a mean absolute error ranging from 12.2 to 12.8% of maximum ITS on the test data set. The work presented in this paper is an evolution in terms of data analysis of the results obtained within the interlaboratory tests conducted by Task Group 5 of the RILEM Technical Committee 264 on Reclaimed Asphalt Pavement. Hence, despite it has strong bonds with this framework, this work was developed independently and can be considered as a natural follow-up.sr
dc.language.isoensr
dc.publisherSpringersr
dc.relationinfo:eu-repo/grantAgreement/MESTD/inst-2020/200092/RS//sr
dc.rightsrestrictedAccesssr
dc.sourceMaterials and Structuressr
dc.titleMachine learning techniques to estimate the degree of binder activity of reclaimed asphalt pavementsr
dc.typearticlesr
dc.rights.licenseARRsr
dc.citation.rankM21~
dc.citation.spage112
dc.citation.volume55
dc.identifier.doihttps://doi.org/10.1617/s11527-022-01933-9
dc.type.versionpublishedVersionsr


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