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http://hdl.handle.net/2183/31475 Modelado dinámico del ph en reactores raceway con redes neuronales
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Otálora Berenguel, Pablo
Guzmán Sánchez, José Luis
Gil Vergel, Juan Diego
Berenguel, Manuel
Acién, Gabriel
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Bibliographic citation
Otálora P., Guzman J.L., Diego Gil J., Berenguel M., Acien G. (2022) Modelado dinámico del ph en reactores raceway con redes neuronales. XLIII Jornadas de Automática: libro de actas, pp.575-582. https://doi.org/10.17979/spudc.9788497498418.00575
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Abstract
[Resumen] Este trabajo se centra en el desarrollo de modelos de red neuronal para predicción de pH en fotobiorreactores raceway. Se han obtenido modelos capaces de predecir el valor del pH con un tiempo de muestreo de un minuto y un horizonte de predicción de hasta un día, para fotobiorreactores de aguas residuales o limpias. Los modelos emplean datos relativos a las condiciones climáticas y la operación del reactor. Los resultados obtenidos validan el uso de estas técnicas para el modelado de procesos biológicos, proporcionando modelos precisos, sencillos y de rápida ejecución.
[Abstract] This work focuses on the development of neural network models for pH prediction in raceway photobioreactors. Models for predicting the pH value with a sampling time of one minute and a prediction horizon up to one day have been obtained for wastewater or clean water photobioreactors. The models use data related to climatic conditions and the reactor operation. The results obtained validate the use of these techniques for biological process modeling, providing accurate, simple and fast execution models.
[Abstract] This work focuses on the development of neural network models for pH prediction in raceway photobioreactors. Models for predicting the pH value with a sampling time of one minute and a prediction horizon up to one day have been obtained for wastewater or clean water photobioreactors. The models use data related to climatic conditions and the reactor operation. The results obtained validate the use of these techniques for biological process modeling, providing accurate, simple and fast execution models.
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Atribución-NoComercial-CompartirIgual 4.0 Internacional (CC BY-NC-SA 4.0)
https://creativecommons.org/licenses/by-nc-sa/4.0/deed.es


