Few-Shot Learning for Prediction of Electricity Consumption Patterns

J García-Sigüenza, JF Vicent, F Llorens-Largo… - Iberian Conference on …, 2023 - Springer
Iberian Conference on Pattern Recognition and Image Analysis, 2023Springer
Deep learning models have achieved extensive popularity due to their capability for
providing an end-to-end solution. But, these models require training a massive amount of
data, which is a challenging issue and not always enough data is available. In order to get
around this problem, a few shot learning methods emerged with the aim to achieve a level of
prediction based only on a small number of data. This paper proposes a few-shot learning
approach that can successfully learn and predict the electricity consumption combining both …
Abstract
Deep learning models have achieved extensive popularity due to their capability for providing an end-to-end solution. But, these models require training a massive amount of data, which is a challenging issue and not always enough data is available. In order to get around this problem, a few shot learning methods emerged with the aim to achieve a level of prediction based only on a small number of data. This paper proposes a few-shot learning approach that can successfully learn and predict the electricity consumption combining both the use of temporal and spatial data. Furthermore, to use all the available information, both spatial and temporal, models that combine the use of Recurrent Neural Networks and Graph Neural Networks have been used. Finally, with the objective of validate the approach, some experiments using electricity data of consumption of thirty-six buildings of the University of Alicante have been conducted.
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