Ensemble forecasting of nonlinear systems involves the use of a model to run forward a discrete ensemble (or set) of initial states. Data assimilation techniques tend to focus on estimating the true state of the system, even though model error limits the value of such efforts. This paper argues for choosing the initial ensemble in order to optimise forecasting performance rather than estimate the true state of the system. Density forecasting and choosing the initial ensemble are treated as one problem. Forecasting performance can be quantified by some scoring rule. In the case of the logarithmic scoring rule, theoretical arguments and empirical results are presented. It turns out that, if the underlying noise dominates model error, we can d...
Ensemble forecasting is a technique devised to palliate sensitivity to initial conditions in nonline...
State estimation, or data assimilation as it is often called, is a key component of numerical weathe...
Ensemble prediction systems aim to account for uncertainties of initial conditions and model error. ...
Ensemble forecasting of nonlinear systems involves the use of a model to run forward a discrete ense...
Ensemble forecasting of nonlinear systems involves the use of a model to run forward a discrete ense...
Ensemble simulation propagates a collection of initial states forward in time in a Monte Carlo fashi...
Ensemble simulation propagates a collection of initial states forward in time in a Monte Carlo fashi...
Ensemble simulation propagates a collection of initial states forward in time in a Monte Carlo fashi...
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...
Operational forecasting with simulation models involves the melding of observations and model dynami...
Operational forecasting with simulation models involves the melding of observations and model dynami...
The translation of an ensemble of model runs into a probability distribution is a common task in mod...
One widely accepted measure of the utility of ensemble prediction systems is the rela-tionship betwe...
An ensemble-based data assimilation approach is used to transform old en-semble forecasts with more ...
Ensemble forecasting is a technique devised to palliate sensitivity to initial conditions in nonline...
State estimation, or data assimilation as it is often called, is a key component of numerical weathe...
Ensemble prediction systems aim to account for uncertainties of initial conditions and model error. ...
Ensemble forecasting of nonlinear systems involves the use of a model to run forward a discrete ense...
Ensemble forecasting of nonlinear systems involves the use of a model to run forward a discrete ense...
Ensemble simulation propagates a collection of initial states forward in time in a Monte Carlo fashi...
Ensemble simulation propagates a collection of initial states forward in time in a Monte Carlo fashi...
Ensemble simulation propagates a collection of initial states forward in time in a Monte Carlo fashi...
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...
Operational forecasting with simulation models involves the melding of observations and model dynami...
Operational forecasting with simulation models involves the melding of observations and model dynami...
The translation of an ensemble of model runs into a probability distribution is a common task in mod...
One widely accepted measure of the utility of ensemble prediction systems is the rela-tionship betwe...
An ensemble-based data assimilation approach is used to transform old en-semble forecasts with more ...
Ensemble forecasting is a technique devised to palliate sensitivity to initial conditions in nonline...
State estimation, or data assimilation as it is often called, is a key component of numerical weathe...
Ensemble prediction systems aim to account for uncertainties of initial conditions and model error. ...