Short-term power forecasting model for photovoltaic plants based on historical similarity

  1. Monteiro, C. 3
  2. Santos, T. 3
  3. Fernandez-Jimenez, L.A. 1
  4. Ramirez-Rosado, I.J. 2
  5. Terreros Olarte, M. Sonia. 1
  1. 1 Universidad de La Rioja
    info

    Universidad de La Rioja

    Logroño, España

    ROR https://ror.org/0553yr311

  2. 2 Universidad de Zaragoza
    info

    Universidad de Zaragoza

    Zaragoza, España

    ROR https://ror.org/012a91z28

  3. 3 Universidade Do Porto
    info

    Universidade Do Porto

    Oporto, Portugal

    ROR https://ror.org/043pwc612

Revista:
Energies

ISSN: 1996-1073

Año de publicación: 2013

Volumen: 6

Número: 5

Páginas: 2624-2643

Tipo: Artículo

DOI: 10.3390/EN6052624 SCOPUS: 2-s2.0-84880442078 WoS: WOS:000319443200016 GOOGLE SCHOLAR lock_openAcceso abierto editor

Otras publicaciones en: Energies

Repositorio institucional: lock_openAcceso abierto Editor

Resumen

This paper proposes a new model for short-term forecasting of electric energy production in a photovoltaic (PV) plant. The model is called HIstorical SImilar MIning (HISIMI) model; its final structure is optimized by using a genetic algorithm, based on data mining techniques applied to historical cases composed by past forecasted values of weather variables, obtained from numerical tools for weather prediction, and by past production of electric power in a PV plant. The HISIMI model is able to supply spot values of power forecasts, and also the uncertainty, or probabilities, associated with those spot values, providing new useful information to users with respect to traditional forecasting models for PV plants. Such probabilities enable analysis and evaluation of risk associated with those spot forecasts, for example, in offers of energy sale for electricity markets. The results of spot forecasting of an illustrative example obtained with the HISIMI model for a real-life grid-connected PV plant, which shows high intra-hour variability of its actual power output, with forecasting horizons covering the following day, have improved those obtained with other two power spot forecasting models, which are a persistence model and an artificial neural network model. © 2013 by the authors.