La importancia del dato en la simulación fluidodinámica de plataformas flotantes para energías renovables marinas
- Jesús María Blanco 1
- Ángela Bernardini 2
- Lander Galera Calero 1
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1
Universidad del País Vasco/Euskal Herriko Unibertsitatea
info
Universidad del País Vasco/Euskal Herriko Unibertsitatea
Lejona, España
- 2 NAITEC
ISSN: 0422-2784
Datum der Publikation: 2022
Titel der Ausgabe: Economía del dato
Nummer: 423
Seiten: 53-66
Art: Artikel
Andere Publikationen in: Economía industrial
Zusammenfassung
Este artículo trata sobre la relevancia de la calidad de los datos, en su aplicación a la eólica marina flotante, una de las tecnologías offshore más prometedoras. La acción de las olas afecta en gran medida al rendimiento de la turbina, aumentando su coste de energía nivelado. Se propone un modelo para investigar su comportamiento, el cual tiene un coste computacional prohibitivo debido a la ingente cantidad de datos a tratar, por lo que se optó por una solución de computación en la nube
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