An ensemble model integrates forecasts of different models (or different parametrizations of the same model) into one single ensemble forecast. This procedure has different names in the literature and is approached through different philosophies in theory and practice. Previous approaches often weighted forecasts equally or according to their individual skill. Here we present a more meaningful strategy by obtaining weights that maximize the skill of the ensemble. The procedure is based on a multivariate logistic regression and exposes some level of flexibility to emphasize different aspects of seismicity and address different end users. We apply the ensemble strategy to the operational earthquake forecasting system in Italy and demonstrate ...
The translation of an ensemble of model runs into a probability distribution is a common task in mod...
Human forecasters routinely improve upon the output from numerical weather prediction mod-els and of...
An ensemble-based data assimilation approach is used to transform old en-semble forecasts with more ...
This repository is associated with the publication: Herrmann, M. and W. Marzocchi (2023). Maximizi...
The assessment of earthquake forecast models for practical purposes requires more than simply checki...
The assessment of earthquake forecast models for practical purposes requires more than simply checki...
Ensemble forecasting is a modeling approach that combines data sources, models of different types, w...
AbstractMulti-model prediction ensembles show significant ability to improve forecasts. Nevertheless...
This module, the latest in our series on Numerical Weather Prediction, covers the theory and use of ...
A continuing trend in numerical weather prediction (NWP) is the desire for reduced model forecast er...
Our physical understanding of earthquakes, along with our ability to forecast them, is hampered by l...
In this paper the performance of a multimodel ensemble forecast analysis that shows superior forecas...
In this paper the performance of a multimodel ensemble forecast analysis that shows superior forecas...
The most radical change to numerical weather prediction (NWP) during the last decade has been the op...
Ensemble prediction systems aim to account for uncertainties of initial conditions and model error. ...
The translation of an ensemble of model runs into a probability distribution is a common task in mod...
Human forecasters routinely improve upon the output from numerical weather prediction mod-els and of...
An ensemble-based data assimilation approach is used to transform old en-semble forecasts with more ...
This repository is associated with the publication: Herrmann, M. and W. Marzocchi (2023). Maximizi...
The assessment of earthquake forecast models for practical purposes requires more than simply checki...
The assessment of earthquake forecast models for practical purposes requires more than simply checki...
Ensemble forecasting is a modeling approach that combines data sources, models of different types, w...
AbstractMulti-model prediction ensembles show significant ability to improve forecasts. Nevertheless...
This module, the latest in our series on Numerical Weather Prediction, covers the theory and use of ...
A continuing trend in numerical weather prediction (NWP) is the desire for reduced model forecast er...
Our physical understanding of earthquakes, along with our ability to forecast them, is hampered by l...
In this paper the performance of a multimodel ensemble forecast analysis that shows superior forecas...
In this paper the performance of a multimodel ensemble forecast analysis that shows superior forecas...
The most radical change to numerical weather prediction (NWP) during the last decade has been the op...
Ensemble prediction systems aim to account for uncertainties of initial conditions and model error. ...
The translation of an ensemble of model runs into a probability distribution is a common task in mod...
Human forecasters routinely improve upon the output from numerical weather prediction mod-els and of...
An ensemble-based data assimilation approach is used to transform old en-semble forecasts with more ...