AbstractThe need for reliable predictions in environmental modelling is well-known. Particularly, the predicted weather and meteorological information about the future atmospheric state is crucial and necessary for almost all other areas of environmental modelling. Additionally, right decisions to prevent damages and save lives could be taken depending on a reliable meteorological prediction process. Lack and uncertainty of input data and parameters constitute the main source of errors for most of these models. In recent years, evolutionary optimization methods have become popular to solve the input parameter problem of environmental models. We propose a new parallel meteorological prediction scheme that uses evolutionary optimization metho...
The Analogue Method (AM) aims at forecasting a local meteorological variable of interest (the predic...
Amethod called gene-expression programming (GEP), which uses symbolic regression to form a nonlinear...
The last ten years has seen the introduction and rapid growth of a market in weather derivatives, fi...
The need for reliable predictions in environmental modelling is well-known. Particularly, the predic...
AbstractThe need for reliable predictions in environmental modelling is well-known. Particularly, th...
Weather forecasting is complex and not always accurate, moreover, it is generally defined by its ver...
AbstractWeather forecasting is complex and not always accurate, moreover, it is generally defined by ...
Analogue methods (AMs) rely on the hypothesis that similar situations, in terms of atmospheric circu...
Weather systems use extremely complex combinations of mathematical tools for anal-ysis and forecasti...
BACKGROUND In recent years, the price drop in off-the-shelf computer systems has enabled small insti...
Analog methods (AMs) allow for the prediction of local meteorological variables of interest(predicta...
International audienceIn this study, optimal parameter estimations are performed for both physical a...
AbstractWe use genetic programming (GP), a variant of evolutionary computation, to build interpretab...
This dissertation describes research to enhance hydrometeorological forecasts and their application ...
Analog methods (AMs) are statistical downscaling methods often used for precipitation prediction in ...
The Analogue Method (AM) aims at forecasting a local meteorological variable of interest (the predic...
Amethod called gene-expression programming (GEP), which uses symbolic regression to form a nonlinear...
The last ten years has seen the introduction and rapid growth of a market in weather derivatives, fi...
The need for reliable predictions in environmental modelling is well-known. Particularly, the predic...
AbstractThe need for reliable predictions in environmental modelling is well-known. Particularly, th...
Weather forecasting is complex and not always accurate, moreover, it is generally defined by its ver...
AbstractWeather forecasting is complex and not always accurate, moreover, it is generally defined by ...
Analogue methods (AMs) rely on the hypothesis that similar situations, in terms of atmospheric circu...
Weather systems use extremely complex combinations of mathematical tools for anal-ysis and forecasti...
BACKGROUND In recent years, the price drop in off-the-shelf computer systems has enabled small insti...
Analog methods (AMs) allow for the prediction of local meteorological variables of interest(predicta...
International audienceIn this study, optimal parameter estimations are performed for both physical a...
AbstractWe use genetic programming (GP), a variant of evolutionary computation, to build interpretab...
This dissertation describes research to enhance hydrometeorological forecasts and their application ...
Analog methods (AMs) are statistical downscaling methods often used for precipitation prediction in ...
The Analogue Method (AM) aims at forecasting a local meteorological variable of interest (the predic...
Amethod called gene-expression programming (GEP), which uses symbolic regression to form a nonlinear...
The last ten years has seen the introduction and rapid growth of a market in weather derivatives, fi...