Forecast Calibration and Combination: A Simple Bayesian Approach for ENSO
- 1 April 2004
- journal article
- research article
- Published by American Meteorological Society in Journal of Climate
- Vol. 17 (7) , 1504-1516
- https://doi.org/10.1175/1520-0442(2004)017<1504:fcacas>2.0.co;2
Abstract
This study presents a new simple approach for combining empirical with raw (i.e., not bias corrected) coupled model ensemble forecasts in order to make more skillful interval forecasts of ENSO. A Bayesian normal model has been used to combine empirical and raw coupled model December SST Niño-3.4 index forecasts started at the end of the preceding July (5-month lead time). The empirical forecasts were obtained by linear regression between December and the preceding July Niño-3.4 index values over the period 1950–2001. Coupled model ensemble forecasts for the period 1987–99 were provided by ECMWF, as part of the Development of a European Multimodel Ensemble System for Seasonal to Interannual Prediction (DEMETER) project. Empirical and raw coupled model ensemble forecasts alone have similar mean absolute error forecast skill score, compared to climatological forecasts, of around 50% over the period 1987–99. The combined forecast gives an increased skill score of 74% and provides a well-calibrated an... Abstract This study presents a new simple approach for combining empirical with raw (i.e., not bias corrected) coupled model ensemble forecasts in order to make more skillful interval forecasts of ENSO. A Bayesian normal model has been used to combine empirical and raw coupled model December SST Niño-3.4 index forecasts started at the end of the preceding July (5-month lead time). The empirical forecasts were obtained by linear regression between December and the preceding July Niño-3.4 index values over the period 1950–2001. Coupled model ensemble forecasts for the period 1987–99 were provided by ECMWF, as part of the Development of a European Multimodel Ensemble System for Seasonal to Interannual Prediction (DEMETER) project. Empirical and raw coupled model ensemble forecasts alone have similar mean absolute error forecast skill score, compared to climatological forecasts, of around 50% over the period 1987–99. The combined forecast gives an increased skill score of 74% and provides a well-calibrated an...This publication has 44 references indexed in Scilit:
- Long-Lead Prediction of Pacific SSTs via Bayesian Dynamic ModelingJournal of Climate, 2000
- Bayesian Climate Change AssessmentJournal of Climate, 2000
- Present-Day Capabilities of Numerical and Statistical Models for Atmospheric Extratropical Seasonal Simulation and PredictionBulletin of the American Meteorological Society, 1999
- The “normality” of El NiñoGeophysical Research Letters, 1999
- Predictive Skill of Statistical and Dynamical Climate Models in SST Forecasts during the 1997—98 El Niño Episode and the 1998 La Niña OnsetBulletin of the American Meteorological Society, 1999
- On the Difference Between the Classical and Inverse Methods of CalibrationJournal of the Royal Statistical Society Series C: Applied Statistics, 1990
- Multivariate CalibrationJournal of the Royal Statistical Society Series B: Statistical Methodology, 1982
- Estimation of a Linear Function for a Calibration Line; Consideration of a Recent ProposalTechnometrics, 1969
- A Bayesian Approach to Decision Making in Applied MeteorologyJournal of Applied Meteorology, 1962
- The Interpretation of Certain Regression Methods and Their Use in Biological and Industrial ResearchThe Annals of Mathematical Statistics, 1939