Scientific journal paper
Neural hierarchical interpolation time series for reservoir level multi-horizon forecasting in hydroelectric power plants
Stefano Frizzo Stefenon (Stefenon, S. F.); Laio Oriel Seman (Seman, L. O.); Cristina K. Yamaguchi (Yamaguchi, C. K.); Leandro dos Santos Coelho (Coelho, L. dos S.); Viviana Cocco Mariani (Mariani, V. C.); João P. Matos-Carvalho (Matos-Carvalho, J. P.); Valderi Leithardt (Leithardt, V. R. Q.); et al.
Journal Title
IEEE Access
Year (definitive publication)
N/A
Language
English
Country
United States of America
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(Last checked: 2025-03-30 00:11)

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Abstract
Energy planning in systems heavily influenced by hydroelectric power is based on assessing the availability of water in the future. In Brazil, based on the soil moisture active passive, the National Electricity System Operator defines electricity dispatch concerning a stochastic optimization problem. Currently, machine learning models are an alternative for improving forecasts, and could be a promising solution for predicting reservoir levels at hydroelectric dams. In this paper, neural hierarchical interpolation for time series (NHITS) is applied to improve forecasts and thus help decision-making in the management of electric power systems. The NHITS model achieved a root mean square error of 4.64×10−4 for a 1-hour forecast horizon, and 1.03×10−3 for a 10-hour forecast horizon, being superior to multilayer perceptron (MLP) neural network, long short-term memory (LSTM), convolutional neural network with long shortterm memory (CNN-LSTM), recurrent neural network (RNN), Dilated RNN, temporal convolutional neural (TCN), neural basis expansion analysis for interpretable time series forecasting (N-BEATS), and deep nonparametric time series forecaster (DeepNPTS) deep learning approaches.
Acknowledgements
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Keywords
Energy planning,Hydroelectric power plants,Neural hierarchical interpolation,Time series forecasting
  • Computer and Information Sciences - Natural Sciences
  • Electrical Engineering, Electronic Engineering, Information Engineering - Engineering and Technology
Funding Records
Funding Reference Funding Entity
UIDB/00066/2020 Fundação para a Ciência e a Tecnologia
UIDB/04111/2020 Fundação para a Ciência e a Tecnologia
UID/00408/2025 LASIGE Research Unit
COFAC/ILIND/COPELABS/1/2024 Instituto Lusófono de Investigação e Desenvolvimento

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