The Analogue Ensemble (AnEn) method enables the reconstruction of meteorological observations or deterministic predictions for a certain variable and station by using data from the same station or from other nearby stations. However, depending on the dimension and granularity of the historical datasets used for the reconstruction, this method may be computationally very demanding even if parallelization is used. In this work, the classical AnEn method is modified so that analogues are determined using K-means clustering. The proposed combined approach allows the use of several predictors in a dependent or independent way. As a result of the flexibility and adaptability of this new approach, it is necessary to define several parameters and a...
In this paper, different post-processing methods are described and evaluated for deterministic and p...
Numerical weather prediction (NWP) models (including mesoscale) have limitations when it comes to de...
This dissertation deals with aspects of sequential data assimilation (in particular ensemble Kalman ...
The Analogue Ensemble (AnEn) method enables the reconstruction of meteorological observations or det...
The Analogue Ensemble (AnEn) method enables the reconstruction of meteorological observations or det...
The reconstruction of meteorological observations or deterministic predictions for a certain variabl...
A hindcast with multiple stations was performed with vari- ous Analog Ensembles (AnEn) algorithms. T...
This study concerns making weather predictions for a location where no data is available, using met...
Weather prediction for locations without or scarce meteorological data available can be attempted by...
The observation of weather states has always been a human need. Our most distant ancestors already ...
The aim of this study is the reconstruction of meteorological data that are missing in a given stati...
The reconstruction or prediction of meteorological records through the Analog Ensemble (AnEn) method...
This paper presents a system to perform large-ensemble climate stochastic forecasts. The system is b...
In this paper we present an application of clustering algorithms for statistical downscaling in shor...
In this paper an application of clustering algorithms for statistical downscaling in short-range wea...
In this paper, different post-processing methods are described and evaluated for deterministic and p...
Numerical weather prediction (NWP) models (including mesoscale) have limitations when it comes to de...
This dissertation deals with aspects of sequential data assimilation (in particular ensemble Kalman ...
The Analogue Ensemble (AnEn) method enables the reconstruction of meteorological observations or det...
The Analogue Ensemble (AnEn) method enables the reconstruction of meteorological observations or det...
The reconstruction of meteorological observations or deterministic predictions for a certain variabl...
A hindcast with multiple stations was performed with vari- ous Analog Ensembles (AnEn) algorithms. T...
This study concerns making weather predictions for a location where no data is available, using met...
Weather prediction for locations without or scarce meteorological data available can be attempted by...
The observation of weather states has always been a human need. Our most distant ancestors already ...
The aim of this study is the reconstruction of meteorological data that are missing in a given stati...
The reconstruction or prediction of meteorological records through the Analog Ensemble (AnEn) method...
This paper presents a system to perform large-ensemble climate stochastic forecasts. The system is b...
In this paper we present an application of clustering algorithms for statistical downscaling in shor...
In this paper an application of clustering algorithms for statistical downscaling in short-range wea...
In this paper, different post-processing methods are described and evaluated for deterministic and p...
Numerical weather prediction (NWP) models (including mesoscale) have limitations when it comes to de...
This dissertation deals with aspects of sequential data assimilation (in particular ensemble Kalman ...