4.6 Article

Solar Irradiance Forecasting with Transformer Model

Journal

APPLIED SCIENCES-BASEL
Volume 12, Issue 17, Pages -

Publisher

MDPI
DOI: 10.3390/app12178852

Keywords

transformer; solar irradiance; weather; renewable energy; sequence-to-sequence prediction; correlations; NASA POWER

Funding

  1. Cultural and Educational Grant Agency MSVVaS SR [KEGA 012UCM-4/2021]
  2. Slovak Research and Development Agency [APVV-17-0116]

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This paper extends the attention mechanism of the Transformer deep neural network model and combines spatiotemporal properties in solar irradiance prediction. The predicted results are included in the input data and achieve better results than competing methods.
Solar energy is one of the most popular sources of renewable energy today. It is therefore essential to be able to predict solar power generation and adapt energy needs to these predictions. This paper uses the Transformer deep neural network model, in which the attention mechanism is typically applied in NLP or vision problems. Here, it is extended by combining features based on their spatiotemporal properties in solar irradiance prediction. The results were predicted for arbitrary long-time horizons since the prediction is always 1 day ahead, which can be included at the end along the timestep axis of the input data and the first timestep representing the oldest timestep removed. A maximum worst-case mean absolute percentage error of 3.45% for the one-day-ahead prediction was obtained, which gave better results than the directly competing methods.

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