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Contributors: A. Troccoli (WEMC), L. Sanger (WEMC), C. Goodess (WEMC), J. Ogonji (WEMC), L. Dubus (WEMC), R. Vautard F Pons (CEA), X. Jin (CEA), G. Levavasseur (CEA), R. Legrand (MF), L. Grigis (MF), S. Martinoni-Lapierre (MF), C. Viel (MF), S. Parey (EDF), B. Oueslati (EDF), Y-M. Saint-Drenan (ASSOCIATION POUR LA RECHERCHE ET LE DEVELOPPEMENT DES METHODES ET PROCESSUS INDUSTRIELS, ARMINES, FRANCE), J. Mendes (MO), J. Osborne (MO), G.Guentchev (MO)

Table of Contents

General

Description

Datasets of Wind Power generation are computed through a simple physical model. Wind Power generation is available as two components:

  1. Wind Power Onshore (WON)
  2. Wind Power Offshore (WOF)

Wind Power capacity factor (CFR), defined as the ratio of actual generation over installed capacity, is calculated at grid point level, considering one single wind turbine type for onshore wind, and one for offshore wind. It is assumed that one turbine is located at each grid point, the turbine type depending only on the grid point type (land or ocean). All turbines are assumed to have a hub height of 100 m. This was not meant to faithfully represent wind farms locations and characteristics, but rather to illustrate the use of C3S indicators. As a consequence, the estimated capacity factors are generally overestimated compared to observed ones as i) the real turbines installed have various characteristics, including lower hub height, lower installed capacity, etc. and ii) our estimation does not take into account turbines' unavailability for maintenance or failures.

WON and WOF are available for three streams:

Historical: This dataset is based on the ERA5 (for GHI and 2 m air temperature) at 0.25° resolution. Averages for NUTS0 (country) and NUTS2 (sub-country) areas are also available.

Seasonal Forecasts: This dataset is currently available for ECMWF System 5, Météo-France ARPEGE System 7 and MetOffice GloSEA5 System 14. Seasonal Forecasts are retrieved from the CDS and are subsequently bias adjusted via quantile mapping. The forecast datasets, 1° resolution, are updated monthly when the raw forecast of each system is available. Averages for NUTS0 (country) are also provided.

Projections: This dataset is available for eleven regional climate model (RCM)/global climate model (GCM) combinations for the EURO-CORDEX project (Table 1) and for two Representative Concentration Pathways (RCP4.5 and RCP8.5). Historical forcing is used from 1979-2005, and RCP forcing from 2006-2100. The original EURO-CORDEX simulations of the needed input variables are retrieved from the producers and are subsequently bias adjusted by applying the Cumulative Distribution Function transform (CDFt) method. Further processing involved interpolation to a standard 0.25° latitude/longitude grid, and averages for NUTS0 (country) and NUTS2 (sub-country) areas are also available.

Units

WON and WOF as capacity factor: unitless, labelled as CFR in the output files. WON and WOF as energy: MWh, labelled as NRG in the output files.

WON and WOF as mean power: MW, labelled as PWR in the output files.

Data will eventually be available via the C3S Energy/CDS demonstrator.

Data format

Gridded data (0.25° for HIST and PROJ, 1° for SEAS): NetCDF NUTS0, NUTS2, MAR0 and MAR1 averages: CSV

Keywords

Wind Power Onshore (WON) and Wind Power Offshore (WOF).

Wind Power, Onshore, Offshore, Capacity Factor, Power, Energy, ENTSO-E, Wind Turbine.

Contact

Dataset coverage

Geographic area

C3S Energy domain is: 26.5° N to 72.5° N by 22.0° W to 45.5° E.

Temporal resolution

Historical: hourly for gridded data. Averages for daily, monthly, seasonal (DJF, MAM, JJA, SON) and annual as NUTS0, NUTS2, MAR0 and MAR1.

Seasonal Forecasts: 6-hour time step (gridded data). Averages for monthly, seasonal (DJF, MAM, JJA, SON) and annual are also computed for NUTS0 and MAR0 mean values.

Projections: 3-hour time step (gridded data). Daily NUTS0, NUTS2, MAR0 and MAR1 averages are also computed.

Time period

Historical: 1979 to present (ca. 1 month behind real time); updated every month based on ERA5T data availability.

Seasonal Forecasts: The hindcasts cover the period 1993-2016 for the three models used by C3S Energy: ECMWF Sys5, Météo-France Sys7 and UK Met Office Sys14. ECMWF has all the month, MTFR SY07 currently covers October to April with the rest of the months to be completed by mid- May 2020 as this is a new system. METO SY14 ranges from June to April (notice that METO SY14 is a rolling release model, hindcast have to be computed each months). The forecasts updated have been run every month from the first month of availability in the current version on the CDS:



Forecast availability

Forecast horizon


ECMWF Sys5

From January 2017

215 days, or 860 six-hourly time steps

MTFR Sys7

From October 2019

211 days, or 844 six-hourly time steps

METO Sys14

From June 2019

215 days, or 860 six-hourly time steps

Projections: 1980 to 2098 (common period), with historical forcing to 2005, then RCP forcing.

Spatial resolution

Historical: 0.25° by 0.25° latitude/longitude, NUTS0 and NUTS2 (onshore), MAR0 and MAR1 (offshore).

Seasonal Forecasts: 1° by 1° latitude/longitude and at country scale. The underlying forecast systems run at different resolutions. Data are also available as averages for more than 30 European countries as NUTS0 areas (onshore) and MAR0 (offshore).

Projections: 0.25° by 0.25° latitude/longitude, NUTS0 and NUTS2 (onshore), MAR0 and MAR1 (offshore)

Lineage statement

Original data source

Energy data: Wind turbines power curves: Wind Power database (commercial) as a broad reference for typical wind turbine; ENTSO-E Power Statistics.

Historical: ERA5

Seasonal Forecasts:

  1. ECMWF seasonal forecast system 5 technical description:
  2. Météo-France seasonal forecast system 7 technical description:
  3. Met Office technical description

Projections: original data come from CORDEX simulations available via the ESGF portal.

Tools used in the production of indicators

R Studio Version 1.1.463 – © 2009-2018 RStudio, Inc. R version 3.6.1 (2019-07-05)
R packages (latest versions): chron, corrr, easyNCDF, fields, glue, lubridate, maptools, ncdf4, raster, readxl, rgdal, rgeos, seas, sf, shapefiles, sp, tidyverse
NCO netCDF Operators version 4.7.5: ncks

Data Quality

The Wind Power CFR data reconstruction quality has been assessed for each individual country over the historical period, using ENTSO-E and some other Transmission System Operators data. Due to the assumptions made, it is not expected that the Wind Power CFR closely resembles the observed one, but its temporal evolution is realistic.

Appendix


Table 1: List of the 11 EURO-CORDEX simulations and the institutes that provided the data.

Short name

Driving GCM

RCM

Contact Institute

Period

HIIC

ECEARTH

HIRAM

Danish Meteorological Institute (DMI)

1951 - 2100

RAIC

ECEARTH

RACMO

Royal Netherlands National Meteorological Institute (KNMI)

1950 - 2100

RCIC

ECEARTH

RCA

Swedish Meteorological and Hydrological Institute (SMHI)

1970 - 2100

RAMO

HADGEM

RACMO

KNMI

1951 - 2098

RCMO

HADGEM

RCA

SMHI

1970 - 2098

ReMO

HADGEM

REGCM

International Centre for Theoretical Physics (ICTP)

1971 - 2099

WRIP

IPSL

WRF 381P

Institute Pierre Simon Laplace (IPSL)

1951 - 2100

RCMP

MPI

RCA

SMHI

1970 - 2100

CCMP

MPI

CCLM

Climate Limited-area Modelling Community

1950 - 2100

HINC

NORESM

HIRAM

Danish Meteorological Institute (DMI)

1951 - 2100

ALCN

CNRM

ALADIN63

CNRM (Centre National de Recherches Meteorologiques, Toulouse 31057, France)

1952 - 2100


This document has been produced in the context of the Copernicus Climate Change Service (C3S).

The activities leading to these results have been contracted by the European Centre for Medium-Range Weather Forecasts, operator of C3S on behalf of the European Union (Delegation agreement signed on 11/11/2014). All information in this document is provided "as is" and no guarantee or warranty is given that the information is fit for any particular purpose.

The users thereof use the information at their sole risk and liability. For the avoidance of all doubt , the European Commission and the European Centre for Medium - Range Weather Forecasts have no liability in respect of this document, which is merely representing the author's view.

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