Author/Authors :
Soto-Barajas، نويسنده , , Milton Carlos and Gonzلlez-Martيn، نويسنده , , Ma Inmaculada and Salvador-Esteban، نويسنده , , Javier and Hernلndez-Hierro، نويسنده , , José Miguel and Moreno-Rodilla، نويسنده , , Vidal and Vivar-Quintana، نويسنده , , Ana Ma and Revilla، نويسنده , , M. Isabel and Ortega Salvador، نويسنده , , Iris Lobos and Morَn-Sancho، نويسنده , , Raْl and Curto-Diego، نويسنده , , Belén، نويسنده ,
Abstract :
The present study addresses the prediction of the time of ripening and type of mixtures of milk (cowʹs, eweʹs and goatʹs) in cheeses of varying composition using artificial neural networks (ANN). To accomplish this aim, neural networks were designed using as input data the content of 19 fatty acids obtained with GC-FID of the cheese fat and scores obtained from principal component analysis (PCA) of NIR spectra. The best model of neuronal networks for the identification of the type of mixtures of milk was obtained using the information concerning the fatty acid concentration (80% of correct results in the training phase and 75% in the validation phase). Regarding the information of the near-infrared (NIR) spectra a neural network was designed. The aforesaid neural network predicted the ripening of cheeses with 100% accuracy in both training and in validation.
Keywords :
Ripening time , Classification , fatty acid , Artificial neuronal networks , NIR spectroscopy , cheese