Journal
CLIMATE DYNAMICS
Volume 58, Issue 7-8, Pages 2167-2191Publisher
SPRINGER
DOI: 10.1007/s00382-021-05895-6
Keywords
Seasonal forecasts; Temperature; Precipitation; Skill scores; Forecast verification; Mediterranean
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Funding
- European Union [690462]
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This study compared a range of seasonal forecasting systems in predicting temperature and precipitation anomalies over the Mediterranean region, finding that temperature anomalies are better predicted than precipitation anomalies. The Multi-Model Ensemble showed the best performance in predicting precipitation anomalies, while persistence-based methods performed best for temperature anomalies.
This study considers a set of state-of-the-art seasonal forecasting systems (ECMWF, MF, UKMO, CMCC, DWD and the corresponding multi-model ensemble) and quantifies their added value (if any) in predicting seasonal and monthly temperature and precipitation anomalies over the Mediterranean region compared to a simple forecasting method based on the ERA5 climatology (CTRL) or the persistence of the ERA5 anomaly (PERS). This analysis considers two starting dates, May 1st and November 1st and the forecasts at lead times up to 6 months for each year in the period 1993-2014. Both deterministic and probabilistic metrics are employed to derive comprehensive information on the forecast quality in terms of association, reliability/resolution, discrimination, accuracy and sharpness. We find that temperature anomalies are better reproduced than precipitation anomalies with varying spatial patterns across different forecast systems. The Multi-Model Ensemble (MME) shows the best agreement in terms of anomaly correlation with ERA5 precipitation, while PERS provides the best results in terms of anomaly correlation with ERA5 temperature. Individual forecast systems and MME outperform CTRL in terms of accuracy of tercile-based forecasts up to lead time 5 months and in terms of discrimination up to lead time 2 months. All seasonal forecast systems also outperform elementary forecasts based on persistence in terms of accuracy and sharpness.
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