Two on step ahead wind speed forecasting models were compared. A univariate model was developed using a linear autoregressive integrated moving average (ARIMA). This method’s performance is well studied for a large number of prediction problems. The other is a multivariate model developed using a nonlinear autoregressive exogenous artificial neural network (NARX). This uses the variables: barometric pressure, air temperature, wind direction and solar radiation or relative humidity, as well as delayed wind speed. Both models were developed from two databases from two sites: an hourly average measurements database from La Mata, Oaxaca, Mexico, and a ten minute average measurements database from Metepec, Hidalgo, Mexico. The main objective was...
Wind farms have a focus role in environmentally friendly energy production. There are short-term est...
Greater incorporation of wind energy into power systems has necessitated the development of accurate...
In traditional artificial neural networks (ANN) models, the relative importance of the individual me...
The nonlinearity and the chaotic fluctuations in the wind speed pattern are the reasons of inaccurat...
This research presents a comparative analysis of wind speed forecasting methods applied to perform 1...
The need to deliver accurate predictions of renewable energy generation has long been recognized by ...
The article aims to predict the wind speed by two artificial neural network’s models. The first mode...
In this study, wind speed was modeled by linear regression (LR), nonlinear regression (NLR) and arti...
The accuracy of wind speed forecasting is important to control, and optimize renewable wind power ge...
Prediction of wind speed in the atmospheric boundary layer is important for wind energy assess-ment,...
Wind serves as natural resources as the solution to minimize global warming and has been commonly us...
A new Wind Speed Forecasting (WSF) model, suitable for a short term 1-24. h forecast horizon, is dev...
Wind energy is one of the most widely used renewable energy sources. Wind power generation is uncert...
Since wind power is directly influenced by wind speed, long-term wind speed forecasting (WSF) plays ...
Wind has been one of the popular renewable energy generation methods in the last decades. Foreknowle...
Wind farms have a focus role in environmentally friendly energy production. There are short-term est...
Greater incorporation of wind energy into power systems has necessitated the development of accurate...
In traditional artificial neural networks (ANN) models, the relative importance of the individual me...
The nonlinearity and the chaotic fluctuations in the wind speed pattern are the reasons of inaccurat...
This research presents a comparative analysis of wind speed forecasting methods applied to perform 1...
The need to deliver accurate predictions of renewable energy generation has long been recognized by ...
The article aims to predict the wind speed by two artificial neural network’s models. The first mode...
In this study, wind speed was modeled by linear regression (LR), nonlinear regression (NLR) and arti...
The accuracy of wind speed forecasting is important to control, and optimize renewable wind power ge...
Prediction of wind speed in the atmospheric boundary layer is important for wind energy assess-ment,...
Wind serves as natural resources as the solution to minimize global warming and has been commonly us...
A new Wind Speed Forecasting (WSF) model, suitable for a short term 1-24. h forecast horizon, is dev...
Wind energy is one of the most widely used renewable energy sources. Wind power generation is uncert...
Since wind power is directly influenced by wind speed, long-term wind speed forecasting (WSF) plays ...
Wind has been one of the popular renewable energy generation methods in the last decades. Foreknowle...
Wind farms have a focus role in environmentally friendly energy production. There are short-term est...
Greater incorporation of wind energy into power systems has necessitated the development of accurate...
In traditional artificial neural networks (ANN) models, the relative importance of the individual me...