The core message of this article is to propose a value-oriented renewable energy forecasting approach that aligns the forecast model training with the objective of minimizing the overall operation costs, rather than solely focusing on statistical accuracy.
This paper proposes a nonparametric end-to-end method for probabilistic forecasting of distributed renewable generation outputs that effectively handles missing data through iterative imputation and end-to-end training.
MATNet proposes a novel self-attention transformer-based architecture for day-ahead PV generation forecasting, combining historical and forecast weather data with PV production data to improve accuracy significantly.