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dc.contributor.authorFernandez de Barrena, Telmo
dc.contributor.authorFerrando, Juan Luis
dc.contributor.authorGarcía Gangoiti, Ander
dc.contributor.authorARRAZOLA, PEDRO JOSE
dc.contributor.authorAbete, J.M.
dc.contributor.authorHerrero Villalibre, Diego
dc.date.accessioned2025-05-21T09:18:21Z
dc.date.available2025-05-21T09:18:21Z
dc.date.issued2021
dc.identifier.isbn9783030878689en
dc.identifier.issn2194-5357en
dc.identifier.otherhttps://katalogoa.mondragon.edu/janium-bin/janium_login_opac.pl?find&ficha_no=164433en
dc.identifier.urihttps://hdl.handle.net/20.500.11984/7144
dc.description.abstractIn the last few years, the industry requires to know in real-time the condition of their assets. Acoustic Emission (AE) technique has been widely used to understand the real-time condition of manufacturing processes such as the degree of tool wear or tool breakage. Traditionally, to fulfil that goal, the information extracted from the signal sensors of the machines has been processed with mathematical models. This methodology is changing, and instead of developing complex physical models (where an in-depth knowledge of the system being modelled is required), the current trend is to use Machine Learning (ML) models which are based on previous data . Signal pre-processing and feature extraction is a complex task that usually generates a high amount of predicting variables. Therefore, this paper proposes a methodology to identify the best pre-processing tools, AE features and ML models to characterize cutting condition processes. This methodology is validated identifying cutting conditions in a turning process based on AE signals. To classify the cutting condition with the highest accuracy, several techniques are applied, (including wavelet transform for multiresolution analysis, Recursive Feature Elimination (RFE) technique, different classifiers (Decision Tree (DT), Random Forests (RF), Support Vector Machine (SVM), Gaussian Process (GP), K-Nearest Neighbor (KNN) and Multilayer Perceptron (MLP) classifiers) and different signal segmentation lengths. These techniques were evaluated using the data captured in a turning process when cutting a 19NiMoCr6 steel under pre-established cutting conditions. The best accuracy of predicting the cutting conditions based on AE signals was 99.7%, and it was achieved combining the wavelet packet transform (WPT) with RFE, with a segmentation time of 0.05 s and RF as classifier.es
dc.language.isoengen
dc.publisherSpringer Natureen
dc.rights© 2022 The Author(s)en
dc.subjectMachine learningen
dc.subjectacoustic emissionen
dc.subjectCutting characterizationen
dc.subjectWavelet transformen
dc.subjectRecursive feature eliminationen
dc.titleA novel methodology for the characterization of cutting conditions in turning processes using Machine Learning models and Acoustic Emission Signalsen
dcterms.accessRightshttp://purl.org/coar/access_right/c_abf2en
dcterms.sourceInternational Conference on Soft Computing Models in Industrial and Environmental Applications (SOCO)en
local.contributor.groupMecanizado de alto rendimientoes
local.description.peerreviewedtrueen
local.identifier.doihttps://doi.org/10.1007/978-3-030-87869-6_53en
local.contributor.otherinstitutionhttps://ror.org/0023sah13es
local.contributor.otherinstitutionSidenor I+Des
local.source.details16. Bilbao-Online, 22-24 septiembre 2021en
oaire.format.mimetypeapplication/pdfen
oaire.file$DSPACE\assetstoreen
oaire.resourceTypehttp://purl.org/coar/resource_type/c_c94fen
oaire.versionhttp://purl.org/coar/version/c_ab4af688f83e57aaen
oaire.funderNameGobierno Vasco.en
oaire.fundingStreamElkartek 2020en
oaire.awardNumberKK-2020-00099en
oaire.awardTitleMateriales magnetoactivos multifuncionales para fabricación avanzada e industria inteligente (MMMfavIN)en
oaire.awardURISin informaciónen


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