Publication | Closed Access
Factors Influencing Skill Improvements in the ECMWF Forecasting System
116
Citations
19
References
2013
Year
Forecasting MethodologyEngineeringGrowth ModelWeather ForecastingClimate ModelingEcmwf Forecasting SystemEarth ScienceData AssimilationTime Series EconometricsEcmwf Numerical ForecastsProbabilistic ForecastingEconomic ForecastingNumerical Weather PredictionAtmospheric ScienceManagementMeteorologyGeographyPredictive ModelingForecastingClimate Dynamics
Abstract During the past 30 years the skill in ECMWF numerical forecasts has steadily improved. There are three major contributing factors: 1) improvements in the forecast model, 2) improvements in the data assimilation, and 3) the increased number of available observations. In this study the authors are investigating the relative contribution from these three components by using the simple error growth model introduced in a previous study by Lorenz and extended in another study by Dalcher and Kalnay, together with the results from the ECMWF Re-Analysis Interim (ERA-Interim) forecasts where the improvement is only due to an increased number of observations. The authors are also applying the growth model on “lagged” forecast differences in order to investigate the usefulness of the forecast jumpiness as a diagnostic tool for improvements in the forecasts. The main finding is that the main contribution to the reduced forecast error comes from significant initial condition error reductions between 1996 and 2001 together with continuous model improvements. The changes in the available observations contributed to a lesser degree, but the authors note that all the ERA-Interim forecasts are from the satellite era and here the focus is on the midtroposphere in the extratropics. Regarding the jumpiness in the forecasts, this is mainly a function of the error in the initial conditions and is therefore an insufficient tool to investigate improvements in the full forecasting system.
| Year | Citations | |
|---|---|---|
Page 1
Page 1