Key points are not available for this paper at this time.
Being able to accurately predict the generation of Renewable Energy Sources (RES), such as photovoltaic and wind generation, can provide valuable information for various stakeholders, including grid operator, energy producers, and consumers. Deep Learning (DL) provided powerful tools for this goal. However, it is not trivial to leverage data from multiple countries to improve forecasting accuracy due to distribution shift phenomena that are often involved. Adaptive normalization approaches have recently emerged as an effective tool for tackling such difficulties. These formulations, despite their very promising results in classification tasks, often face challenges in (auto)regressive tasks, especially when combined with recent powerful DL architectures. To overcome this limitation we introduce a novel residual-based adaptive normalization layer that is capable of re-introducing the information discarded during the normalization process to the forecasting model. The proposed method enables the use of data that are generated by different distributions but expresses the same phenomenon, allowing for exploiting additional data sources, e.g., multiple countries, when training DL models, leading to significant improvements in forecasting accuracy. • We propose a novel Residual Adaptive Input Normalization method for RES forecasting. • The proposed method overcomes limitations of existing approaches. • We demonstrate the ability of the proposed method to handle multi-country data. • We demonstrate consistent improvements on RES forecasting using the proposed method. • The proposed method is data-efficient and can work effectively in various scenarios.
Passalis et al. (Tue,) studied this question.