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Multi-model seasonal forecasts for the wind energy sector

  • Doo Young LeeEmail author
  • Francisco J. Doblas-Reyes
  • Verónica Torralba
  • Nube Gonzalez-Reviriego
Article

Abstract

An assessment of the forecast quality of 10 m wind speed by deterministic and probabilistic verification measures has been carried out using the original raw and two statistical bias-adjusted forecasts in global coupled seasonal climate prediction systems (ECMWF-S4, METFR-S3, METFR-S4 and METFR-S5) for boreal winter (December–February) season over a 22-year period 1991–2012. We follow the standard leave-one-out cross-validation method throughout the work while evaluating the hindcast skills. To minimize the systematic error and obtain more reliable and accurate predictions, the simple bias correction (SBC) which adjusts the systematic errors of model and calibration (Cal), known as the variance inflation technique, methods as the statistical post-processing techniques have been applied. We have also built a multi-model ensemble (MME) forecast assigning equal weights to datasets of each prediction system to further enhance the predictability of the seasonal forecasts. Two MME have been created, the MME4 with all the four prediction systems and MME2 with two better performing systems. Generally, the ECMWF-S4 shows better performance than other individual prediction systems and the MME predictions indicate consistently higher temporal correlation coefficient (TCC) and fair ranked probability skill score (FRPSS) than the individual models. The spatial distribution of significant skill in MME2 prediction is almost similar to that in MME4 prediction. In the aspect of reliability, it is found that the Cal method has more effective improvement than the SBC method. The MME4_Cal predictions are placed in close proximity to the perfect reliability line for both above and below normal categorical events over globe, as compared to the MME2_Cal predictions, due to the increase in ensemble size. To further compare the forecast performance for seasonal variation of wind speed, we have evaluated the skill of the only raw MME2 predictions for all seasons. As a result, we also find that winter season shows better performance than other seasons.

Keywords

Seasonal prediction systems Statistical post-processing Multi-model ensemble 10 m wind speed Forecast verification 

Notes

Acknowledgements

This research was funded by the Spanish Ministry of Economy (MINECO) under the framework of the RESILIENCE project (CGL2013-41055-R). We are grateful to ECMWF and Météo France as the supporting institutions that provide with climate prediction datasets.

Supplementary material

382_2019_4654_MOESM1_ESM.docx (975 kb)
Supplementary material 1 (DOCX 975 KB)

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Copyright information

© Springer-Verlag GmbH Germany, part of Springer Nature 2019

Authors and Affiliations

  1. 1.Earth Sciences DepartmentBarcelona Supercomputing Center (BSC)BarcelonaSpain
  2. 2.Computational Physics and Methods (CCS-2), Computer, Computational, and Statistical Sciences (CCS) DivisionLos Alamos National Laboratory (LANL)Los AlamosUSA
  3. 3.Institució Catalana de Recerca i Estudis Avançats (ICREA)BarcelonaSpain

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