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Título : | Double ensemble system for wind energy forecasting based on generalized autoregressive conditional heteroskedasticity and neural network models with variational mode decomposition |
Autor : | Colmenares, Angel Jianzhou, Wang |
Palabras clave : | Wind speed forecasting time-series analysis conditional heteroskedasticity neural network |
Fecha de publicación : | 20-Apr-2001 |
Editorial : | ENERGY SOURCES, PART A: RECOVERY, UTILIZATION, AND ENVIRONMENTAL EFFECTS |
Citación : | Colmenares, A., & Wang, J. (2021). Double ensemble system for wind energy forecasting based on generalized autoregressive conditional heteroskedasticity and neural network models with variational mode decomposition. Energy Sources Part A Recovery Utilization and Environmental Effects, 1–18. doi:10.1080/15567036.2021.1922550 |
Resumen : | With the steady integration of wind energy into electricity networks, precise
wind speed forecasting is an essential element in the administration and
management of power systems. However, wind energy forecasting research
has focused increasingly on short-term forecasting, leaving aside the challenging
horizons of medium- and long-term predictions. Therefore, this study
proposes a wind speed forecasting methodology based on two types of
ensembles, which addresses the nonlinearity and chaotic behavior of wind
speed using decomposition-based models. With the results of the first
ensemble of 90 ARMA-generalized autoregressive conditional heteroskedasticity
(ARMA-GARCH) models, the second ensemble is established based on
three types of neural networks and learning functions. Finally, we propose
the application of variational mode decomposition (VMD) before or after the
first ensemble. The experimental outcomes lead us to divide the prediction
horizons into two broad groups, those where VMD inclusion did and did not
improve the ensemble results. These horizons are classified as short-term (3,
4, and 5 steps) and mid- and long-term forecast horizons (6, 12, 24, and 48
steps), where the best performance arises with the VMD application after the
first ensemble. The research contributes to the existing literature studying
a wide variety of innovation distribution and optimization methods that can
be implemented with GARCH-type models. Simultaneously, the VMD application
is proposed in a novel way not seen in the literature by applying it to
the predictions already made by other models, in this case, in ensembles of
GARCH-type models. |
URI : | http://hdl.handle.net/10872/23397 |
ISSN : | 1556-7036 |
Aparece en las colecciones: | Artículos Publicados
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