One of the most crucial prerequisites for effective wind power planning and operation in power systems is precise wind speed forecasting. Highly random fluctuations of wind influenced by the conditions of the atmosphere, weather and terrain result in difficulties of forecasting regardless of whether it is short-term or long-term. The current study has developed a method to model wind speed data predictions with dependence on seasonal wind variations over a particular time frame, usually a year, in the form of a Weibull distribution model with an artificial neural network (ANN). As a result, the essential dependencies between the wind speed and seasonal weather variation are exploited. The proposed model utilizes the ANN to predict the wind ...
In this study, wind speed was modeled by linear regression (LR), nonlinear regression (NLR) and arti...
In traditional artificial neural networks (ANN) models, the relative importance of the individual me...
This work proposes hybrid models combining time-series models (using linear functions) and artificia...
One of the most crucial prerequisites for effective wind power planning and operation in power syste...
In this paper, a new method is developed to model the wind speed data that is considered as a functi...
The growing concerns regarding the depletion of oil/gas reserves and global warming have made it ine...
Abstract- Wind speed forecasting is an essential prerequisite for the planning, operation, and maint...
This paper presents a method for the medium-long-term wind speed prediction based on spatiotemporal ...
Prediction is one of the most important techniques in determining the resulting wind speed. The deci...
In this study, artificial neural networks (ANNs) were applied to predict the mean monthly wind speed...
Abstract—Long-term forecasting of wind speed has become a research hot spot in many different areas ...
The need to deliver accurate predictions of renewable energy generation has long been recognized by ...
Accurate modeling of wind speed profile is crucial as the wind speed dynamics are non-deterministic,...
The nonlinearity and the chaotic fluctuations in the wind speed pattern are the reasons of inaccurat...
In this paper a time series prediction of wind speed with artificial neural networks is presented. ...
In this study, wind speed was modeled by linear regression (LR), nonlinear regression (NLR) and arti...
In traditional artificial neural networks (ANN) models, the relative importance of the individual me...
This work proposes hybrid models combining time-series models (using linear functions) and artificia...
One of the most crucial prerequisites for effective wind power planning and operation in power syste...
In this paper, a new method is developed to model the wind speed data that is considered as a functi...
The growing concerns regarding the depletion of oil/gas reserves and global warming have made it ine...
Abstract- Wind speed forecasting is an essential prerequisite for the planning, operation, and maint...
This paper presents a method for the medium-long-term wind speed prediction based on spatiotemporal ...
Prediction is one of the most important techniques in determining the resulting wind speed. The deci...
In this study, artificial neural networks (ANNs) were applied to predict the mean monthly wind speed...
Abstract—Long-term forecasting of wind speed has become a research hot spot in many different areas ...
The need to deliver accurate predictions of renewable energy generation has long been recognized by ...
Accurate modeling of wind speed profile is crucial as the wind speed dynamics are non-deterministic,...
The nonlinearity and the chaotic fluctuations in the wind speed pattern are the reasons of inaccurat...
In this paper a time series prediction of wind speed with artificial neural networks is presented. ...
In this study, wind speed was modeled by linear regression (LR), nonlinear regression (NLR) and arti...
In traditional artificial neural networks (ANN) models, the relative importance of the individual me...
This work proposes hybrid models combining time-series models (using linear functions) and artificia...