4.5 Article

One-Day-Ahead Solar Irradiation and Windspeed Forecasting with Advanced Deep Learning Techniques

Journal

ENERGIES
Volume 15, Issue 12, Pages -

Publisher

MDPI
DOI: 10.3390/en15124361

Keywords

artificial intelligence; data mining; machine learning; advanced deep learning; windspeed forecasting; solar irradiation forecasting; increased RES penetration

Categories

Funding

  1. Centre for the study and sustainable exploitation of Marine Biological Recourses (CMBR) by Operational Program Competitiveness, Entrepreneurship and Innovation (NSRF 2014-2020) [5002670]
  2. European Union (European Regional Development Fund)

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The integration of renewable energy sources into power systems is a major concern due to the increasing demand for electric energy. However, the fluctuation in solar irradiation and windspeed makes it difficult to incorporate solar and wind power generation into electricity networks. Therefore, accurate forecasting of solar irradiation and windspeed is crucial for the safe and reliable operation of electrical systems. This study adopts deep learning techniques and compares them with conventional methods for medium-term forecasting, taking into consideration the influence of clouds on solar irradiation and the seasonal similarity of windspeed patterns. The results demonstrate high forecasting performance.
In recent years, demand for electric energy has steadily increased; therefore, the integration of renewable energy sources (RES) at a large scale into power systems is a major concern. Wind and solar energy are among the most widely used alternative sources of energy. However, there is intense variability both in solar irradiation and even more in windspeed, which causes solar and wind power generation to fluctuate highly. As a result, the penetration of RES technologies into electricity networks is a difficult task. Therefore, more accurate solar irradiation and windspeed one-day-ahead forecasting is crucial for safe and reliable operation of electrical systems, the management of RES power plants, and the supply of high-quality electric power at the lowest possible cost. Clouds' influence on solar irradiation forecasting, data categorization per month for successive years due to the similarity of patterns of solar irradiation per month during the year, and relative seasonal similarity of windspeed patterns have not been taken into consideration in previous work. In this study, three deep learning techniques, i.e., multi-head CNN, multi-channel CNN, and encoder-decoder LSTM, were adopted for medium-term windspeed and solar irradiance forecasting based on a real-time measurement dataset and were compared with two well-known conventional methods, i.e., RegARMA and NARX. Utilization of a walk-forward validation forecast strategy was combined, firstly with a recursive multistep forecast strategy and secondly with a multiple-output forecast strategy, using a specific cloud index introduced for the first time. Moreover, the similarity of patterns of solar irradiation per month during the year and the relative seasonal similarity of windspeed patterns in a timeseries measurements dataset for several successive years demonstrates that they contribute to very high one-day-ahead windspeed and solar irradiation forecasting performance.

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