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    Título
    Comparison of artificial neural networks and multiple regression tools applied to near infrared spectroscopy for predicting sensory properties of products from quality labels
    Autor(es)
    Hernández-Jiménez, MiriamUSAL authority ORCID
    Hernández-Ramos, PedroUSAL authority ORCID
    Martínez-Martín, IvánUSAL authority ORCID
    Vivar Quintana, Ana MaríaUSAL authority ORCID
    González Martín, María InmaculadaUSAL authority ORCID
    Revilla Martín, IsabelUSAL authority ORCID
    Palabras clave
    MPLS regression
    ANN
    Dry sausage
    Sensory analysis
    Discrimination analysis
    Análisis sensorial
    Análisis de discriminación
    Clasificación UNESCO
    3309 Tecnología de Los Alimentos
    Fecha de publicación
    2020
    Editor
    Elsevier
    Citación
    Hernández-Jiménez, M., Hernández-Ramos, P., Martínez-Martín, I., Vivar-Quintana, A. M., González-Martín, I., & Revilla, I. (2020). Comparison of artificial neural networks and multiple regression tools applied to near infrared spectroscopy for predicting sensory properties of products from quality labels. Microchemical Journal, 159, 105459-. https://doi.org/10.1016/j.microc.2020.105459
    Resumen
    [EN] In products from quality labels a sensory analysis is obligatory although this is a slow and expensive process. This study examines the prediction of the sensory parameters of chorizo dry-cured sausage by using NIRS technology and the application of chemometric methods such as MPLS (Modified Partial Least Square regression) and ANN (Artificial Neural Networks). The results show that by applying ANN it is possible to predict the 20 sensory parameters analyzed with RSQ values of from 0.61 to 0.92; these values are always higher than those obtained by prediction using MPLS. Moreover, the combination of NIRS and RMS-X residual discrimination allowed the correct classification of 94.4% of the samples according to whether or not they belonged to a certain Quality Label.
    URI
    https://hdl.handle.net/10366/159990
    ISSN
    0026-265X
    DOI
    10.1016/j.microc.2020.105459
    Versión del editor
    https://doi.org/10.1016/j.microc.2020.105459
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    • GAPEC. Artículos [71]
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