Herramientas de modelización y análisis para la movilidad eléctrica

Casos de uso a nivel urbano

Autores/as

DOI:

https://doi.org/10.62161/sauc.v11.6017

Palabras clave:

Transporte, Vehículos eléctricos, Movilidad eléctrica, Flexibilidad, Datos, Vehículo a red, Modelos, Herramientas digitales, DLR-MobilityLab

Resumen

La integración de los sectores del transporte y la electricidad representa tanto un reto como una oportunidad para el sistema energético europeo. Por un lado, se necesitan grandes cantidades de electricidad para alimentar los vehículos eléctricos, lo que exige una predicción más precisa de la demanda, tanto a corto plazo como a futuro. Por otro lado, el uso de la tecnología Vehicle-to-Grid puede proporcionar servicios a la red. El diseño, la gestión y la planificación de la infraestructura requieren sofisticadas herramientas basadas en datos. Este documento destaca una selección de las herramientas existentes del DLR (Centro Aeroespacial Alemán) desarrolladas para el modelado y el análisis del sector de la movilidad eléctrica integrada.

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Publicado

2025-12-01

Cómo citar

Ravanbach, B., & Anderson, J. E. (2025). Herramientas de modelización y análisis para la movilidad eléctrica: Casos de uso a nivel urbano. Street Art & Urban Creativity, 11(7), 305–327. https://doi.org/10.62161/sauc.v11.6017

Número

Sección

Monográfico SmartCityExpo