The interest of researchers in different fields of science towards modern soft computing data driven methods for time series forecasting has grown in recent years. Modeling and forecasting hydrometeorological variables is an important step in understanding climate change. The application of modern methods instead of traditional statistical techniques has lead to great improvement in past studies on meteorological time series. In this paper, we employ Support Vector Regression (SVR) and automatic model induction by means of Adaptive Gene Expression Programming (AdaGEP) for modeling and short term forecasting of real world hydrometeorological time series. The investigated time series datasets cover annual, respectively monthly data, on temper...
International audienceTime series forecasting has an important role in many real applications in met...
This study presents support vector machine based model for forecasting the runoff-rainfall events. A...
Long-term prediction of rainfalls is one of the most challenging tasks in stochastic hydrology owing...
Abstract: The precipitations are characterized by important spatial and temporal variation. Model de...
Many efficient forecasting models have been found to fail or show low skill due to the changes in th...
Abstract The simplest way to forecast geophysical processes, an engineering problem with a widely re...
[[abstract]]The support vector regression (SVR) model is a novel forecasting approach and has been s...
Precipitation is a very important topic in weather forecasts. Weather forecasts, especially precipit...
AbstractSensor network technology is becoming more widespread and sophisticated, and devices with ma...
Long-term air temperature prediction is of major importance in a large number of applications, incl...
Weather systems use extremely complex combinations of mathematical tools for anal-ysis and forecasti...
In the present study, gene expression programming (GEP) technique was used to develop one-month ahea...
The last ten years has seen the introduction and rapid growth of a market in weather derivatives, fi...
The use of artificial intelligence (AI) and statistical methods for prediction based on data series ...
In various researches, implementation of meteorological parameters in drought prediction is studied....
International audienceTime series forecasting has an important role in many real applications in met...
This study presents support vector machine based model for forecasting the runoff-rainfall events. A...
Long-term prediction of rainfalls is one of the most challenging tasks in stochastic hydrology owing...
Abstract: The precipitations are characterized by important spatial and temporal variation. Model de...
Many efficient forecasting models have been found to fail or show low skill due to the changes in th...
Abstract The simplest way to forecast geophysical processes, an engineering problem with a widely re...
[[abstract]]The support vector regression (SVR) model is a novel forecasting approach and has been s...
Precipitation is a very important topic in weather forecasts. Weather forecasts, especially precipit...
AbstractSensor network technology is becoming more widespread and sophisticated, and devices with ma...
Long-term air temperature prediction is of major importance in a large number of applications, incl...
Weather systems use extremely complex combinations of mathematical tools for anal-ysis and forecasti...
In the present study, gene expression programming (GEP) technique was used to develop one-month ahea...
The last ten years has seen the introduction and rapid growth of a market in weather derivatives, fi...
The use of artificial intelligence (AI) and statistical methods for prediction based on data series ...
In various researches, implementation of meteorological parameters in drought prediction is studied....
International audienceTime series forecasting has an important role in many real applications in met...
This study presents support vector machine based model for forecasting the runoff-rainfall events. A...
Long-term prediction of rainfalls is one of the most challenging tasks in stochastic hydrology owing...