Unpublished conference/Abstract (Scientific congresses and symposiums)
Presentation of a deep learning-based multi-output quantile forecasting of PV generation
Dumas, Jonathan
2020Montefiore AI Meetings 16/11/2020
 

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Presentation of the paper Deep learning-based multi-output quantile forecasting of PV generation
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Keywords :
Quantile forecasting; probabilistic PV forecasting; deep learning; LSTM; multi-output forecasting; encoder- decoder
Abstract :
[en] The paper develops probabilistic PV forecasters by taking advantage of recent breakthroughs in deep learning. A tailored forecasting tool, named encoder-decoder, is implemented to compute intraday multi-output PV quantiles forecasts in order to efficiently capture the time correlation. Quantile regression, a non-parametric approach, is selected as it assumes no prior knowledge of the probabilistic forecasting distribution. The case study is composed of PV production monitored on site at the university of Liège (ULiège), Belgium. The weather forecasts from the regional climate model provided by the Laboratory of Climatology of the university of Liège are used as inputs of the deep learning models. The quality of the forecasts are quantitatively assessed by the continuous ranked probability and winkler scores. The results indicate this architecture improves the forecast quality and is computationally efficient to be incorporated in an intraday decision making tool for robust optimization.
Disciplines :
Computer science
Energy
Author, co-author :
Dumas, Jonathan  ;  Université de Liège - ULiège > Dép. d'électric., électron. et informat. (Inst.Montefiore) > Smart-Microgrids
Language :
English
Title :
Presentation of a deep learning-based multi-output quantile forecasting of PV generation
Publication date :
16 November 2020
Event name :
Montefiore AI Meetings 16/11/2020
Event date :
16/11/2020
By request :
Yes
References of the abstract :
ULiège orbi: http://hdl.handle.net/2268/252357
Available on ORBi :
since 13 November 2020

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