• Mi Re-Unir
    Búsqueda Avanzada
    JavaScript is disabled for your browser. Some features of this site may not work without it.
    Ver ítem 
    •   Inicio
    • UNIR REVISTAS
    • Revista IJIMAI
    • 2025
    • vol. 9, nº 3, june 2025
    • Ver ítem
    •   Inicio
    • UNIR REVISTAS
    • Revista IJIMAI
    • 2025
    • vol. 9, nº 3, june 2025
    • Ver ítem

    Use of Optimised LSTM Neural Networks Pre-Trained With Synthetic Data to Estimate PV Generation

    Autor: 
    Martínez Comesaña, Miguel
    ;
    Martínez Torres, Javier
    ;
    Javier, Pablo
    ;
    López Gómez, Javier
    Fecha: 
    01/06/2025
    Palabra clave: 
    Genetic Algorithms; LSTM; Optimisation; Pre-Training; PV Power; Synthetic Datasets
    Revista / editorial: 
    UNIR
    Citación: 
    M.Martínez-Comesaña, J. Martínez-Torres, P. Eguía-Oller, J. López-Gómez. Use of Optimised LSTM Neural Networks Pre-Trained With Synthetic Data to Estimate PV Generation, International Journal of Interactive Multimedia and Artificial Intelligence, vol. 9, no. 3, pp. 61-70, 2025, http://dx.doi.org/10.9781/ijimai.2023.11.002
    Tipo de Ítem: 
    article
    URI: 
    https://reunir.unir.net/handle/123456789/19211
    DOI: 
    https://doi.org/10.9781/ijimai.2023.11.002
    Dirección web: 
    https://www.ijimai.org/index.php/ijimai/article/view/241
    Open Access
    Resumen:
    Optimising the use of the photovoltaic (PV) energy is essential to reduce fossil fuel emissions by increasing the use of solar power generation. In recent years, research has focused on physical simulations or artifical intelligence models attempting to increase the accuracy of PV generation predictions. The use of simulated data as pre-training for deep learning models has increased in different fields. The reasons are the higher efficiency in the subsequent training with real data and the possibility of not having real data available. This work presents a methodology, based on an deep learning model optimised with specific techniques and pre-trained with synthetic data, to estimate the generation of a PV system. A case study of a photovoltaic installation with 296 PV panels located in northwest Spain is presented. The results show that the model with proper pre-training trains six to seven times faster than a model without pre-training and three to four times faster than a model pre-trained with non-accurate simulated data. In terms of accuracy and considering a homogeneous training process, all models obtained average relative errors around 12%, except the model with incorrect pre-training which performs worse.
    Mostrar el registro completo del ítem
    Ficheros en el ítem
    icon
    Nombre: Use of Optimised LSTM Neural Networks Pre-Trained With Synthetic Data to Estimate PV Generation.pdf
    Tamaño: 853.9Kb
    Formato: application/pdf
    Ver/Abrir
    Este ítem aparece en la(s) siguiente(s) colección(es)
    • vol. 9, nº 3, june 2025

    Estadísticas de uso

    Año
    2012
    2013
    2014
    2015
    2016
    2017
    2018
    2019
    2020
    2021
    2022
    2023
    2024
    2025
    2026
    Vistas
    0
    0
    0
    0
    0
    0
    0
    0
    0
    0
    0
    0
    0
    0
    4
    Descargas
    0
    0
    0
    0
    0
    0
    0
    0
    0
    0
    0
    0
    0
    0
    0

    Ítems relacionados

    Mostrando ítems relacionados por Título, autor o materia.

    • Use of Optimised LSTM Neural Networks Pre-Trained With Synthetic Data to Estimate PV Generation 

      Martínez-Comesaña, Miguel; Martínez-Torres, Javier; Eguía-Oller, Pablo; López-Gómez, Javier (International Journal of Interactive Multimedia and Artificial Intelligence, 11/2023)
      Optimising the use of the photovoltaic (PV) energy is essential to reduce fossil fuel emissions by increasing the use of solar power generation. In recent years, research has focused on physical simulations or artifical ...
    • Predicting ore content throughout a machine learning procedure – An Sn-W enrichment case study 

      Iglesias Comesaña, Carla; Antunes, Margarida; Albuquerque, Teresa; Martínez Torres, Javier ; Taboada, Javier (Journal of Geochemical Exploration, 01/2020)
      The distribution patterns of trace elements are very useful for predicting mineral deposits occurrence. Machine learning techniques were used for the computation of adequate models in trace elements' prediction. The main ...
    • Obtaining the sGAG distribution profile in articular cartilage color images 

      Iglesias Comesaña, Carla; Luo, Lu; Martínez Torres, Javier ; Taboada, Javier; Pérez, Ignacio (Biomedical Engineering / Biomedizinische Technik, 10/2019)
      The articular cartilage tissue is an essential component of joints as it reduces the friction between the two bones. Its load-bearing properties depend mostly on proteoglycan distribution, which can be analyzed through the ...

    Mi cuenta

    AccederRegistrar

    ¿necesitas ayuda?

    Manual de UsuarioContacto: reunir@unir.net

    Listar

    todo Re-UnirComunidades y coleccionesPor fecha de publicaciónAutoresTítulosPalabras claveTipo documentoTipo de accesoEsta colecciónPor fecha de publicaciónAutoresTítulosPalabras claveTipo documentoTipo de acceso






    Aviso Legal Política de Privacidad Política de Cookies Cláusulas legales RGPD
    © UNIR - Universidad Internacional de La Rioja
     
    Aviso Legal Política de Privacidad Política de Cookies Cláusulas legales RGPD
    © UNIR - Universidad Internacional de La Rioja