Offshore wind energy resource simulation forced by different reanalyses: Comparison with observed data in the Iberian Peninsula

•Simulated offshore winds were forced by different reanalysis and analysis.•New generation reanalysis are able to improve offshore wind simulation.•ERA-Interim driven simulation showed the lowest wind temporal variability errors.•NCEP-R2 provide the most accurate offshore wind energy production esti...

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Bibliographic Details
Published inApplied energy Vol. 134; pp. 57 - 64
Main Authors Carvalho, D., Rocha, A., Gómez-Gesteira, M., Silva Santos, C.
Format Journal Article
LanguageEnglish
Published Kidlington Elsevier Ltd 01.12.2014
Elsevier
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Summary:•Simulated offshore winds were forced by different reanalysis and analysis.•New generation reanalysis are able to improve offshore wind simulation.•ERA-Interim driven simulation showed the lowest wind temporal variability errors.•NCEP-R2 provide the most accurate offshore wind energy production estimates.•NCEP-FNL and NCEP-GFS can be seen as valid alternatives to traditional reanalyses. Due to the increasing interest in the prospection of potential sites for the installation of offshore wind farms, it becomes important to extend the tests presented on Carvalho et al. (2014) to offshore areas. For that, the WRF model was used to conduct ocean surface wind simulations forced by different initial and boundary conditions (NCEP-R2, ERA-Interim, NCEP-CFSR, NASA-MERRA, NCEP-FNL and NCEP-GFS) aiming to assess which one of these datasets provides the most accurate ocean surface wind simulation and offshore wind energy estimates. Six near surface wind simulations were performed, each one of them forced by a different initial and boundary dataset. Results were evaluated using data collected at five buoys that measure the wind in the Iberian Peninsula region (Galician coast and Gulf of Cádiz). The results show that the simulation driven with ERA-Interim reanalysis provided the lowest errors in terms of offshore wind temporal variability. NCEP-R2 driven simulation showed the lowest offshore wind speed bias, mean wind speed and offshore wind energy production estimates. However, it was the one with the highest errors related to the wind temporal variability. The simulations driven with the NCEP-FNL and NCEP-GFS analyses products also showed interesting results, better than the NCEP-CFSR and NASA-MERRA reanalyses. Based on the results presented in this work and in Carvalho et al. (2014), ERA-Interim reanalysis likely provide the most accurate initial and boundary data to force near-surface wind simulations for the offshore and onshore areas. However, for offshore sites the NCEP-R2 reanalysis seem to provide the most accurate estimation of the potential wind energy production, fact that is of great importance for the wind energy industry. Furthermore, the NCEP-GFS and NCEP-FNL analyses can be considered as valid alternatives to ERA-Interim and NCEP-R2, in particular for cases where reliable forcing data is needed for real-time applications due to their fast availability.
ISSN:0306-2619
1872-9118
DOI:10.1016/j.apenergy.2014.08.018