How to design a reliable ensemble prediction strategy with considering the major uncertainties of a forecasting system is a crucial issue for performing an ensemble forecast. In this study, a new stochastic perturbation technique is developed to improve the prediction skills of El Niño–Southern Oscillation (ENSO) through using an intermediate coupled model. We first estimate and analyze the model uncertainties from the ensemble Kalman filter analysis results through assimilating the observed sea surface temperatures. Then, based on the pre-analyzed properties of model errors, we develop a zero-mean stochastic model-error model to characterize the model uncertainties mainly induced by the missed physical processes of the original model (e.g....
In this study, ensemble predictions were constructed using two realistic ENSO prediction models and ...
Parameter estimation plays an important role in reducing model error and thus is of great significan...
The probabilistic skill of ensemble forecasts for the first month and the first season of the foreca...
The seasonal and interannual predictability of ENSO variability in a version of the Zebiak–Cane coup...
The seasonal and interannual predictability of ENSO variability in a version of the Zebiak–Cane coup...
Several important issues of El Niño-Southern Oscillation (ENSO) predictability were studied using t...
New methods are presented for determining the role of coupled ocean-atmosphere model climate bias on...
Model error is an important source of uncertainty that significantly reduces the accuracy of El Niño...
© 2020 American Meteorological Society.This study assesses the predictive skill of eight North Ameri...
With the objective of tackling the problem of inaccurate long-term El Niño–Southern Oscillation (E...
The finite resolution of general circulation models of the coupled atmosphere-ocean system and the e...
Predicting El Nino Southern Oscillation; comparing prediction skill of dynamical models and statisti...
The Tropical Atmosphere Ocean (TAO) array of moored buoys in the tropical Pacific Ocean is a major s...
An information-theoretic framework is developed to assess the predictability of ENSO complexity, whi...
An extremely simple univariate statistical model called IndOzy was developed to predict El Niño-Sout...
In this study, ensemble predictions were constructed using two realistic ENSO prediction models and ...
Parameter estimation plays an important role in reducing model error and thus is of great significan...
The probabilistic skill of ensemble forecasts for the first month and the first season of the foreca...
The seasonal and interannual predictability of ENSO variability in a version of the Zebiak–Cane coup...
The seasonal and interannual predictability of ENSO variability in a version of the Zebiak–Cane coup...
Several important issues of El Niño-Southern Oscillation (ENSO) predictability were studied using t...
New methods are presented for determining the role of coupled ocean-atmosphere model climate bias on...
Model error is an important source of uncertainty that significantly reduces the accuracy of El Niño...
© 2020 American Meteorological Society.This study assesses the predictive skill of eight North Ameri...
With the objective of tackling the problem of inaccurate long-term El Niño–Southern Oscillation (E...
The finite resolution of general circulation models of the coupled atmosphere-ocean system and the e...
Predicting El Nino Southern Oscillation; comparing prediction skill of dynamical models and statisti...
The Tropical Atmosphere Ocean (TAO) array of moored buoys in the tropical Pacific Ocean is a major s...
An information-theoretic framework is developed to assess the predictability of ENSO complexity, whi...
An extremely simple univariate statistical model called IndOzy was developed to predict El Niño-Sout...
In this study, ensemble predictions were constructed using two realistic ENSO prediction models and ...
Parameter estimation plays an important role in reducing model error and thus is of great significan...
The probabilistic skill of ensemble forecasts for the first month and the first season of the foreca...