Sistema híbrido para la predicción del funcionamiento de una celda de combustible basada en hidrógeno, empleada en el almacenamiento de energía
- Juan Aurelio Montero-Sousa 1
- Esteban Jove 1
- Jose-Luis Casteleiro-Roca 1
- Héctor Quintián 1
- José Luis Calvo-Rolle 1
- Héctor Aláiz-Moretón 2
- Tomás González-Ayuso 3
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Universidade da Coruña
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Universidad de León
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Centro de Investigaciones Energéticas, Medioambientales y Tecnológicas
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Centro de Investigaciones Energéticas, Medioambientales y Tecnológicas
Madrid, España
- Jose Luis Calvo Rolle (coord.)
- Jose Luis Casteleiro Roca (coord.)
- María Isabel Fernández Ibáñez (coord.)
- Óscar Fontenla Romero (coord.)
- Esteban Jove Pérez (coord.)
- Alberto José Leira Rejas (coord.)
- José Antonio López Vázquez (coord.)
- Vanesa Loureiro Vázquez (coord.)
- María Carmen Meizoso López (coord.)
- Francisco Javier Pérez Castelo (coord.)
- Andrés José Piñón Pazos (coord.)
- Héctor Quintián Pardo (coord.)
- Juan Manuel Rivas Rodríguez (coord.)
- Benigno Rodríguez Gómez (coord.)
- Rafael Alejandro Vega Vega (coord.)
Publisher: Servizo de Publicacións ; Universidade da Coruña
ISBN: 978-84-9749-716-9
Year of publication: 2019
Pages: 200-210
Congress: Jornadas de Automática (40. 2019. Ferrol)
Type: Conference paper
Abstract
Currently, largely due to the rise of the electric vehicle, energy storage systems are becoming agreater need, being both electric batteries and fuel cells, the two most developed technologies in recent years. However, it is not enough just to develop energy storage system, but it is essential to maximize the efficiency of them, in order to take the maximum advantage of the stored energy. To reach this goal, one of the most relevant aspects is to predict with enough accuracy and in advance both the generation and consumption of energy that will be made on the storage device. For this reason, the present research focuses on the development of a hybrid system for modeling a fuel cell using unsupervised learning techniques for clustering combined with regression techniques for modeling. Finally, the models generated on a real dataset, coming from an experimental real generation and storage system of energy by means of a hydrogen cell, are validated obtaining highly satisfactory results.