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    Por favor, use este identificador para citar o enlazar este ítem: https://hdl.handle.net/10259/11609

    Título
    Semi-supervised techniques to address the scarcity of experimental data: a case study of single point incremental forming
    Autor
    Maestro Prieto, José AlbertoAutoridad UBU Orcid
    Romero, Pablo E.
    Ramírez Sanz, José MiguelAutoridad UBU Orcid
    Bustillo Iglesias, AndrésAutoridad UBU Orcid
    Publicado en
    Journal of Intelligent Manufacturing. 2025
    Editorial
    Springer
    Fecha de publicación
    2025-10
    ISSN
    0956-5515
    DOI
    10.1007/s10845-025-02704-3
    Abstract
    A lack of experimental data can be especially critical in new manufacturing processes. Although experimental datasets for industrial processes are reported in various research works, their lack of homogeneity complicates any fitting with conventional numerical models. Artificial Intelligence (AI) models can be an optimal alternative to extract useful information from those unconnected datasets, while generating models that can help explain the hidden patterns within datasets and interpret the predictions of the model for final users. Moreover, an AI algorithm that could be trained with limited labeled datasets would be in high demand, as it could effectively lower implementation costs. Semi-Supervised Learning (SSL) techniques might therefore be a promising solution to respond to industrial demand for the analysis of manufacturing processes. In this research, the use of SSL techniques is proposed in a case study of surface quality prediction in single point incremental forming, a promising new manufacturing technique. Datasets were extracted from the existing bibliography to generate a 234-instance dataset with 4 different industrial specifications of roughness. The best results were obtained using a semi-supervised Co-Training algorithm. Semi-supervised methods systematically improved the results obtained with the reference supervised methods, although statistical significance has not been mainly achieved due to the limited dataset size. The results obtained with the unbalanced dataset were very promising for its industrial implementation with an extended training dataset optimized for the range of process conditions of each end-user.
    Palabras clave
    Single point incremental forming
    SPIF
    Surface roughness
    Semi-supervised learning
    Multiple data sources
    Materia
    Procesos de fabricación
    Manufacturing processes
    Inteligencia artificial
    Artificial intelligence
    URI
    https://hdl.handle.net/10259/11609
    Versión del editor
    https://doi.org/10.1007/s10845-025-02704-3
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