Energy demand prediction for the implementation of an energy tariff emulator to trigger demand response in buildings

Sarah Noyé, Unai Saralegui, Raphael Rey, Miguel Angel Anton, Ander Romero

Producción científica: Contribución a una revistaArtículorevisión exhaustiva

1 Cita (Scopus)
1 Descargas (Pure)

Resumen

Buildings are key actors of the electrical gird. As such they have an important role to play in grid stabilization, especially in a context where renewable energies are mandated to become an increasingly important part of the energy mix. Demand response provides a mechanism to reduce or displace electrical demand to better match electrical production. Buildings can be a pool of flexibility for the grid to operate more efficiently. One of the ways to obtain flexibility from building managers and building users is the introduction of variable energy prices which evolve depending on the expected load and energy generation. In the proposed scenario, the wholesale energy price of electricity, a load prediction, and the elasticity of consumers are used by an energy tariff emulator to predict prices to trigger end user flexibility. In this paper, a cluster analysis to classify users is performed and an aggregated energy prediction is realised using Random Forest machine learning algorithm.
Idioma originalInglés
Número de artículo05025
Páginas (desde-hasta)5025
Número de páginas1
PublicaciónE3S Web of Conferences
Volumen111
DOI
EstadoPublicada - 13 ago 2019
Evento13th REHVA World Congress, CLIMA 2019 - Bucharest, Rumanía
Duración: 26 may 201929 may 2019

Palabras clave

  • Renewable energies
  • Building
  • Variable energy prices
  • Energy tariff emulator
  • Random Forest machine learning algorithm

Project and Funding Information

  • Project ID
  • info:eu-repo/grantAgreement/EC/H2020/768614/EU/Integrating Real-Intelligence in Energy Management Systems enabling Holistic Demand Response Optimization in Buildings and Districts/HOLISDER
  • Funding Info
  • This paper is part of a project that has received funding_x000D_ from the European Union’s Horizon 2020 research and_x000D_ innovation programme under grant agreement No_x000D_ 768614. This paper reflects only the author´s views and_x000D_ neither the Agency nor the Commission are responsible_x000D_ for any use that may be made of the information contained_x000D_ therein.

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