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dc.contributor.authorde Arriba Perez, Francisco 
dc.contributor.authorGarcía Méndez, Silvia 
dc.contributor.authorOtero Mosquera, Javier
dc.contributor.authorGonzález Castaño, Francisco Javier 
dc.contributor.authorGil Castiñeira, Felipe Jose 
dc.date.accessioned2024-01-30T11:31:41Z
dc.date.issued2023
dc.identifier.citationIEEE Industrial Electronics Magazine: 2-14 (2023)spa
dc.identifier.issn19324529
dc.identifier.issn19410115
dc.identifier.urihttp://hdl.handle.net/11093/5854
dc.description.abstractNew technologies, such as machine learning (ML), have provided great potential for evaluating industry workflows and automatically generating key performance indicators (KPIs). However, despite established standards for measuring the efficiency of industrial machinery, there is no precise equivalent for workers’ productivity, which would be highly desirable given the lack of a skilled workforce for the next generation of industry workflows. Therefore, an ML solution combining data from manufacturing processes and workers’ performance for that goal is required. Additionally, in recent times intense effort has been devoted to explainable ML approaches that can automatically explain their decisions to a human operator, thus increasing their trustworthiness. We propose to apply explainable ML solutions to differentiate between expert and inexpert workers in industrial workflows, which we validate at a quality assessment industrial workstation. Regarding the methodology used, input data are captured by a manufacturing machine and stored in a NoSQL database. Data are processed to engineer features used in automatic classification and to compute workers’ KPIs to predict their level of expertise (with all classification metrics exceeding 90%). These KPIs and the relevant features in the decisions are textually explained by natural language expansion on an explainability dashboard. These automatic explanations made it possible to infer knowledge from expert workers for inexpert workers. The latter illustrates the interest of research in self-explainable ML for automatically generating insights to improve productivity in industrial workflows.spa
dc.description.sponsorshipXunta de Galicia | Ref. ED481B-2021-118spa
dc.description.sponsorshipXunta de Galicia | Ref. ED481B-2022-093spa
dc.description.sponsorshipXunta de Galicia | Ref. ED431C 2022/04spa
dc.description.sponsorshipXunta de Galicia | Ref. IN852B 2021/16spa
dc.description.sponsorshipAgencia Estatal de Investigación | Ref. PID2020- 116329GB-C21spa
dc.language.isoengspa
dc.publisherIEEE Industrial Electronics Magazinespa
dc.relationinfo:eu-repo/grantAgreement/AEI/Plan Estatal de Investigación Científica y Técnica y de Innovación 2017-2020/PID2020-116329GB-C21/ES/ARISE1: REDES ULTRADENSAS SIN CELDAS (DECK)
dc.rights© 2023, IEEE
dc.titleAutomatic generation of insights from workers’ actions in industrial workflows with explainable machine learning: a proposed architecture with validationeng
dc.typearticlespa
dc.rights.accessRightsopenAccess
dc.identifier.doi10.1109/MIE.2023.3284203
dc.identifier.editorhttps://doi.org/10.1109/MIE.2023.3284203spa
dc.subject.unesco1203.04 Inteligencia Artificialspa
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