Forecasting intraday power output by a set of PV systems using recurrent neural networks and physical covariates


연구 분야: Artificial Intelligence



학회: Neural Computing and Applications


초록

Accurate intraday forecasts of the power output by photovoltaic (PV) systems are critical to improve the operation of energy distribution grids. We describe a neural autoregressive model that aims to perform such intraday forecasts. We build upon a physical, deterministic PV performance model, the output of which is used as covariates in the context of the neural model. In addition, our application data relate to a geographically distributed set of PV systems. We address all PV sites with a single neural model, which embeds the information about the PV site in specific covariates. We use a scale-free approach which relies on the explicit modeling of seasonal effects. Our proposal repurposes a model initially used in the retail sector and discloses a novel truncated Gaussian output distribution. An ablation study and a comparison to alternative architectures from the literature show that the components in the best performing proposed model variant work synergistically to reach a skill score of 15.72% with respect to the physical model, used as a baseline.


Author Profile
Pierrick Bruneau

Luxembourg Institute of Science and Technology 5 Avenue des Hauts-Fourneaux Esch-sur-Alzette 4362 Luxembourg

Andorra
Author Profile
David Fiorelli

Luxembourg Institute of Science and Technology 5 Avenue des Hauts-Fourneaux Esch-sur-Alzette 4362 Luxembourg

Andorra
Author Profile
Christian Braun

Luxembourg Institute of Science and Technology 5 Avenue des Hauts-Fourneaux Esch-sur-Alzette 4362 Luxembourg

Andorra

📄 논문 정보

발행 연도 2024년
인용수 0
출판 국가 Andorra
사이트 Springer
좋아요 수 0

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