2015
DOI: 10.1016/j.apenergy.2015.08.014
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Wind speed forecasting approach using secondary decomposition algorithm and Elman neural networks

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Cited by 262 publications
(70 citation statements)
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“…Li and Liang (2007) carried out a comparison of ElmanNN and RBFNN for flood freeway speed limitation and assumed that the ElmanNN has stronger adaptation and better generalization ability and can build the approximate model more accurately. On the basis of the local feedback network function, the ElmanNN can process the data more precision for nonlinear problem (Liu et al, 2015), which is of great important for the hull resistance prediction. Up to now, hull resistance has been predicted by using radial basis function (RBF) (Huang, Wang, & Yang, 2015;Huang & Yang, 2016), artificial neural networks (Couser, Mason, Mason, Smith, & Konsky, 2004), Holtrop and Mennen's method (Ortigosa, López, & García, 2009), genetic neural network (Chen & Ye, 2009), and BP neural network (Hou, Liu, & Liang, 2016).…”
Section: Introductionmentioning
confidence: 99%
See 1 more Smart Citation
“…Li and Liang (2007) carried out a comparison of ElmanNN and RBFNN for flood freeway speed limitation and assumed that the ElmanNN has stronger adaptation and better generalization ability and can build the approximate model more accurately. On the basis of the local feedback network function, the ElmanNN can process the data more precision for nonlinear problem (Liu et al, 2015), which is of great important for the hull resistance prediction. Up to now, hull resistance has been predicted by using radial basis function (RBF) (Huang, Wang, & Yang, 2015;Huang & Yang, 2016), artificial neural networks (Couser, Mason, Mason, Smith, & Konsky, 2004), Holtrop and Mennen's method (Ortigosa, López, & García, 2009), genetic neural network (Chen & Ye, 2009), and BP neural network (Hou, Liu, & Liang, 2016).…”
Section: Introductionmentioning
confidence: 99%
“…On account of the computer simulation, it can predict and analysis the data by learning, control and identification. Now, it has been applied into different kinds of optimization problems (Hu & Balakrishnan, 2005;Liu & Luo, 2005;Liu, Tian, Liang, & Li, 2015;Puig, Witczak, Nejjari, Quevedo, & Korbicz, 2007;Zhang, 2016). The ElmanNN is a typical multi-layer dynamic recurrent neural network, and it has a stronger global stability and a characteristic of time-varying since adding the contest nodes to the hidden nodes of feed-forward network as time delay operator (Ding, Jia, Su, Xu, & Zhang, 2008).…”
Section: Introductionmentioning
confidence: 99%
“…Physical forecasting methods utilize physical variables to achieve time series forecasting considering a series of meteorological parameters; therefore, they can perform accurate forecasting [7]. However, they always require more complicated computations and incur a considerable cost in time.…”
Section: Physical Forecasting Methodsmentioning
confidence: 99%
“…Statistical methods construct mathematical and statistical models to conduct time series forecasting and offer better real-time performance [7]. Statistical forecasting methods achieve reduced forecasting errors if the input variables are under normal conditions [8].…”
Section: Statistical Forecasting Methodsmentioning
confidence: 99%
“…The ARIMA model was also used by Shukur and Lee [14] to show a hybrid wind speed forecasting model with the Kalman filter and an artificial neural network. Liu et al [15] demonstrated a hybrid approach using the secondary decomposition model and Elman neural networks. Fei [16] used a hybrid method that consists of the empirical mode decomposition and multiple-kernel relevance vector regression technologies.…”
Section: Introductionmentioning
confidence: 99%