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Abstract(s)
An accurate short-term load forecasting (STLF) is one of the most critical inputs for power
plant units’ planning commitment. STLF reduces the overall planning uncertainty added by the
intermittent production of renewable sources; thus, it helps to minimize the hydrothermal electricity
production costs in a power grid. Although there is some research in the field and even several
research applications, there is a continual need to improve forecasts. This research proposes a
set of machine learning (ML) models to improve the accuracy of 168 h forecasts. The developed
models employ features from multiple sources, such as historical load, weather, and holidays. Of
the five ML models developed and tested in various load profile contexts, the Extreme Gradient
Boosting Regressor (XGBoost) algorithm showed the best results, surpassing previous historical
weekly predictions based on neural networks. Additionally, because XGBoost models are based on
an ensemble of decision trees, it facilitated the model’s interpretation, which provided a relevant
additional result, the features’ importance in the forecasting.
Description
Keywords
Short-term load forecasting Electricity market Machine learning Weekly forecast Electricity
Citation
Publisher
MDPI