4.6 Article

Recalibration of recurrent neural networks for short -term wind power forecasting

Journal

ELECTRIC POWER SYSTEMS RESEARCH
Volume 190, Issue -, Pages -

Publisher

ELSEVIER SCIENCE SA
DOI: 10.1016/j.epsr.2020.106639

Keywords

Bidirectional LSTM; Deep Learning; Electricity Markets; Recalibration Forecast; Wind Power Prediction

Funding

  1. energy transition funds project BEOWIND
  2. FNRS (Belgian National Fund of Scientific Research)

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This paper focuses on improving the accuracy of day-ahead prediction of onshore wind generation using LSTM networks to efficiently capture complex temporal dynamics. Different techniques for model recalibration during practical utilization are analyzed to continuously refine the prediction tool, and the financial savings from improved forecast accuracy are estimated.
This paper is focused on the day-ahead prediction of the onshore wind generation. This information is indeed published each day, ahead of the market clearing, by European Transmission System Operators (TSOs) to help market actors in their scheduling strategy. In that regard, our first objective is to improve the forecast performance by efficiently capturing the complex temporal dynamics of the wind power using recurrent neural networks. Practically, advanced architectures of Long Short Term Memory (LSTM) networks are implemented and compared. Secondly, in order to continuously refine the prediction tool, different techniques for recalibrating the model during its practical utilization are analyzed. This procedure consists in adjusting the parameters of the neural networks by taking advantage of the new information revealed over time, without the (time-consuming) need to retrain the model from scratch using the whole available dataset. Finally, the financial savings from the improvement of the forecast accuracy are estimated. Outcomes from the Belgian case study show that an optimal model recalibration can significantly improve forecast reliability, thereby decreasing the balancing costs of the system.

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