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Comparativo de redes neuronales y maquinas de soporte vectorial en la predicción del tiempo de maduración de queso tipo suizo: una aplicación de espectroscopia dieléctrica

Translated title of the contribution: Comparison of neural networks and support vector machines for predicting the ripening time of Swiss type cheese: a dielectric spectroscopy application
  • Wilson Castro
  • , Yuleyci Cieza
  • , Marta Castro-Giraldez
  • , Pedro J. Fito
  • , Tony Chuquizuta
  • Universidad Nacional de Trujillo
  • Polytechnic University of Valencia
  • Universidad Nacional Autónoma de Chota

Research output: Chapter in Book/Report/Conference proceedingConference contributionpeer-review

Abstract

Cheese ripening, due to the biochemical changes it generates, impacts quality and marketability; therefore, the development of evaluation methods is of interest. Indeed, noninvasive techniques, such as dielectric spectroscopy, are of particular interest, especially when coupled with chemometric techniques, and their further study is necessary. Therefore, it was proposed to compare models based on artificial neural networks (ANN) and support vector machines (SVM) coupled with dielectric profiles to predict cheese ripening time. For this purpose, vacuum-packed Swiss cheese samples were stored at 10°C for ripening. Their dielectric profiles were extracted every 15 days in the radiofrequency range of [0.04 - 1.00] MHz. The profiles were preprocessed to express them in terms of e and”e””; to build the complete regression models based on ANN and SVM, the relevant variables were first identified. With these variables, optimized models were then developed. All models were trained by splitting the data as follows: 70 % for calibration and 30 % for validation. This process was repeated thirty times, and in each iteration, the corresponding statistical metrics (R2, RMSE) were calculated. The implemented models achieved, on average, R2 values greater than 80 % and RMSE below 10. The results show the feasibility of predicting the ripening time of Swiss cheeses using dielectric spectroscopy coupled with chemometric tools; likewise, for this case, ANN were slightly superior to SVM.

Translated title of the contributionComparison of neural networks and support vector machines for predicting the ripening time of Swiss type cheese: a dielectric spectroscopy application
Original languageSpanish
Title of host publicationApplications in Software Engineering - Proceedings of the 14th International Conference on Software Process Improvement, CIMPS 2025
EditorsMirna A. Munoz Mata, Jezreel Mejia Miranda, Claudia Maria del Pilar Zapata del Rio, Lizbeth A. Hernandez-Gonzalez
PublisherInstitute of Electrical and Electronics Engineers Inc.
Pages159-167
Number of pages9
ISBN (Electronic)9798331580483
DOIs
StatePublished - 2025
EventApplications in Software Engineering - 14th International Conference on Software Process Improvement, CIMPS 2025 - Lima, Peru
Duration: 15 Oct 202517 Oct 2025

Publication series

NameApplications in Software Engineering - Proceedings of the 14th International Conference on Software Process Improvement, CIMPS 2025

Conference

ConferenceApplications in Software Engineering - 14th International Conference on Software Process Improvement, CIMPS 2025
Country/TerritoryPeru
CityLima
Period15/10/2517/10/25

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