An ensemble forecast is a collection of runs of a numerical dynamical model, initialized with perturbed initial conditions. In modern weather prediction for example, ensembles are used to retrieve probabilistic information about future weather conditions. In this contribution, we are concerned with ensemble forecasts of a scalar quantity (say, the temperature at a specific location). We consider the event that the verification is smaller than the smallest, or larger than the largest ensemble member. We call these events outliers. If a K-member ensemble accurately reflected the variability of the verification, outliers should occur with a base rate of 2/(K + 1). In operational forecast ensembles though, this frequency is often found to be hi...
Thesis (Ph. D.)--University of Washington, 2004One measure of the utility of ensemble prediction sys...
Abstract In numerical weather prediction (NWP), ensemble forecasting aims to quantify the flow-depe...
We develop post-processing approaches based on linear regression that make ensemble forecasts more r...
An ensemble forecast is a collection of runs of a numerical dynamical model, initialized with pertur...
An ensemble forecast is a collection of runs of a numerical dynamical model, initialized with pertur...
An ensemble forecast is a collection of runs of a numerical dynamical model, initialized with pertur...
Ensembles are today routinely applied to estimate uncertainty in numerical predictions of complex sy...
The translation of an ensemble of model runs into a probability distribution is a common task in mod...
Ensemble forecasting is widely used in medium-range weather predictions to account for the uncertain...
The self-consistent prediction of nonlinear, potentially chaotic, systems must account for observati...
The self-consistent prediction of nonlinear, potentially chaotic, systems must account for observati...
Ensemble forecasting is a modeling approach that combines data sources, models of different types, w...
The most radical change to numerical weather prediction (NWP) during the last decade has been the op...
The weather is a chaotic system. Small errors in the initial conditions of a forecast grow rapidly, ...
The primary goals of ensemble prediction are the identification of particularly unpredictable situat...
Thesis (Ph. D.)--University of Washington, 2004One measure of the utility of ensemble prediction sys...
Abstract In numerical weather prediction (NWP), ensemble forecasting aims to quantify the flow-depe...
We develop post-processing approaches based on linear regression that make ensemble forecasts more r...
An ensemble forecast is a collection of runs of a numerical dynamical model, initialized with pertur...
An ensemble forecast is a collection of runs of a numerical dynamical model, initialized with pertur...
An ensemble forecast is a collection of runs of a numerical dynamical model, initialized with pertur...
Ensembles are today routinely applied to estimate uncertainty in numerical predictions of complex sy...
The translation of an ensemble of model runs into a probability distribution is a common task in mod...
Ensemble forecasting is widely used in medium-range weather predictions to account for the uncertain...
The self-consistent prediction of nonlinear, potentially chaotic, systems must account for observati...
The self-consistent prediction of nonlinear, potentially chaotic, systems must account for observati...
Ensemble forecasting is a modeling approach that combines data sources, models of different types, w...
The most radical change to numerical weather prediction (NWP) during the last decade has been the op...
The weather is a chaotic system. Small errors in the initial conditions of a forecast grow rapidly, ...
The primary goals of ensemble prediction are the identification of particularly unpredictable situat...
Thesis (Ph. D.)--University of Washington, 2004One measure of the utility of ensemble prediction sys...
Abstract In numerical weather prediction (NWP), ensemble forecasting aims to quantify the flow-depe...
We develop post-processing approaches based on linear regression that make ensemble forecasts more r...