Weather forecasting is a challenging time series forecasting problem because of its dynamic, continuous, data-intensive, chaotic and irregular behavior. At present, enormous time series forecasting techniques exist and are widely adapted. However, competitive research is still going on to improve the methods and techniques for accurate forecasting. This research article presents the time series forecasting of the metrological parameter, i.e., temperature with NARX (Nonlinear Autoregressive with eXogenous input) based ANN (Artificial Neural Network). In this research work, several time series dependent Recurrent NARX-ANN models are developed and trained with dynamic parameter settings to find the optimum network model according to its desire...
In this paper, the better model for forecasting Nigeria monthly Precipitation time series data that ...
The mitigation of crop loss due to damaging freezes requires accurate air temperature prediction mod...
This paper studies the advances in time series forecasting models using artificial neural network me...
Weather forecasting is a challenging time series forecasting problem because of its dynamic, continu...
AbstractWeather forecasting has become an important field of research in the last few decades. In mo...
This study aims to determine an automatic forecasting method of univariate time series, using the no...
Weather forecasting is most challenging problem around the world. There are various reason because o...
Weather forecasting is most challenging problem around the world. There are various reason because o...
Abstract. In this work a feed-forward NN based NAR model for forecasting time series is presented. T...
657-666Many practical time series often exhibit trends and seasonal patterns. The traditional stati...
Weather forecasting has been an area of considerable interest among researchers since long. A scient...
During recent decades, several studies have been conducted in the field of weather forecasting provi...
The nonlinear autoregressive network with exogenous input (NARX) is used to perform hourly solar irr...
Global temperature variations between 1861 and 1984 are forecast using regularization network, multi...
Predicting the weather is important for a lot of fields including agriculture, construction and hyd...
In this paper, the better model for forecasting Nigeria monthly Precipitation time series data that ...
The mitigation of crop loss due to damaging freezes requires accurate air temperature prediction mod...
This paper studies the advances in time series forecasting models using artificial neural network me...
Weather forecasting is a challenging time series forecasting problem because of its dynamic, continu...
AbstractWeather forecasting has become an important field of research in the last few decades. In mo...
This study aims to determine an automatic forecasting method of univariate time series, using the no...
Weather forecasting is most challenging problem around the world. There are various reason because o...
Weather forecasting is most challenging problem around the world. There are various reason because o...
Abstract. In this work a feed-forward NN based NAR model for forecasting time series is presented. T...
657-666Many practical time series often exhibit trends and seasonal patterns. The traditional stati...
Weather forecasting has been an area of considerable interest among researchers since long. A scient...
During recent decades, several studies have been conducted in the field of weather forecasting provi...
The nonlinear autoregressive network with exogenous input (NARX) is used to perform hourly solar irr...
Global temperature variations between 1861 and 1984 are forecast using regularization network, multi...
Predicting the weather is important for a lot of fields including agriculture, construction and hyd...
In this paper, the better model for forecasting Nigeria monthly Precipitation time series data that ...
The mitigation of crop loss due to damaging freezes requires accurate air temperature prediction mod...
This paper studies the advances in time series forecasting models using artificial neural network me...