The verification of probabilistic forecasts in hydro-climatology is integral to their development, use, and adoption. We propose here a means of utilizing goodness of fit measures for verifying the reliability of probabilistic forecasts. The difficulty in measuring the goodness of fit for a probabilistic prediction or forecast is that predicted probability distributions for a target variable are not stationary in time, meaning one observation alone exists to quantify goodness of fit for each prediction issued. Therefore, we suggest an additional dissociation that can dissociate target information from the other time variant part—the target to be verified in this study is the alignment of observations to the predicted probability distributio...
The translation of an ensemble of model runs into a probability distribution is a common task in mod...
Ensembles are today routinely applied to estimate uncertainty in numerical predictions of complex sy...
International audienceIn numerical weather prediction (NWP), the uncertainty about the future state ...
Probabilistic forecasts are commonly used to communicate uncertainty in the occurrence of hydrometeo...
Forecast verification is important across scientific disciplines, as it provides a framework for eva...
The philosophy of forecast verification is rather different between deterministic and probabilistic ...
When seasonal climate forecasts are expressed probabilistically, it is not possible to answer simple...
We develop a new goodness-of-fit test for validating the performance of probability forecasts. Our t...
The shortage of extreme rainfall data gives substantial uncertainty to design rainfalls and causes p...
Abstract In numerical weather prediction (NWP), ensemble forecasting aims to quantify the flow-depe...
Probabilistic forecasts of variables measured on a categorical or ordinal scale, such as precipitati...
A method for quantifying the uncertainty of hydrological forecasts is proposed. This approach requir...
[1] A method for quantifying the uncertainty of hydrological forecasts is proposed. This approach re...
We develop post-processing approaches based on linear regression that make ensemble forecasts more r...
The standard means of establishing predictive ability in hydrological models is by finding how well ...
The translation of an ensemble of model runs into a probability distribution is a common task in mod...
Ensembles are today routinely applied to estimate uncertainty in numerical predictions of complex sy...
International audienceIn numerical weather prediction (NWP), the uncertainty about the future state ...
Probabilistic forecasts are commonly used to communicate uncertainty in the occurrence of hydrometeo...
Forecast verification is important across scientific disciplines, as it provides a framework for eva...
The philosophy of forecast verification is rather different between deterministic and probabilistic ...
When seasonal climate forecasts are expressed probabilistically, it is not possible to answer simple...
We develop a new goodness-of-fit test for validating the performance of probability forecasts. Our t...
The shortage of extreme rainfall data gives substantial uncertainty to design rainfalls and causes p...
Abstract In numerical weather prediction (NWP), ensemble forecasting aims to quantify the flow-depe...
Probabilistic forecasts of variables measured on a categorical or ordinal scale, such as precipitati...
A method for quantifying the uncertainty of hydrological forecasts is proposed. This approach requir...
[1] A method for quantifying the uncertainty of hydrological forecasts is proposed. This approach re...
We develop post-processing approaches based on linear regression that make ensemble forecasts more r...
The standard means of establishing predictive ability in hydrological models is by finding how well ...
The translation of an ensemble of model runs into a probability distribution is a common task in mod...
Ensembles are today routinely applied to estimate uncertainty in numerical predictions of complex sy...
International audienceIn numerical weather prediction (NWP), the uncertainty about the future state ...