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Application of a Multi-Scheme Ensemble Prediction System for Wind Power Forecasting in Ireland

Application of a Multi-Scheme Ensemble Prediction System for Wind Power Forecasting in Ireland.

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Application of a Multi-Scheme Ensemble Prediction System for Wind Power Forecasting in Ireland

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  1. Application of aMulti-SchemeEnsemble Prediction Systemfor Wind Power Forecastingin Ireland

  2. WEPROG ApS, DenmarkWeather and Wind Energy PrognosisCorinna Möhrlen, com@weprog.comJess Jørgensen, juj@weprog.comUniversity College Cork, IrelandSustainable Energy Research Group,Department of Civil and Environmental EngineeringSteven Lang, s.lang@ucc.ie Brian Ó Gallachóir, b.ogallachoir@ucc.ieE. McKeogh, e.mckeogh@ucc.ie

  3. INTRODUCTION & RATIONALEENSEMBLE PREDICTION SYSTEMS (EPS)WIND POWER PREDICTION & UNCERTAINTYRESULTS & VALIDATIONCONCLUSIONS

  4. INTRODUCTIONReliable wind power forecasting is vitally important to:* Enable high wind penetration* Decrease costs of balancing power* Maximise CO2 benefit of wind generation* Ensure power system security and stability, particularlyon weakly interconnected grids

  5. IMPORTANCE OF FORECASTING ON IRISH GRID* Total installed generation on network is ~ 6300MW* Maximum demand 4800MW & minimum demand 2000MW* Installed wind generation was 500MW at end of 2005,and an additional 780MW with connection agreements* Further 2700MW applications to connect to grid* Weak interconnection of Republic of Ireland grid with Northern Ireland (NI) grid, and only weak interconnectionof NI with Scotland and the rest of UK.

  6. ‘TRADITIONAL’ WIND POWER FORECASTING * Persistence* Physical models* Statistical models* Hybrid models of the aboveMost rely on input weather forecast datafrom national meteorological services…These deterministic forecasts of wind speed and direction are not usually designed for wind power prediction, and introduce the greatest errors to predicted wind power

  7. ENSEMBLE PREDICTION SYSTEMS (EPS)A group, or ‘ensemble’, of weather forecasts produced in order to quantify the uncertainty of the forecast.Different approaches:* Ensemble Kalman Filter* Singular vector * Breeding vector* Multi-model EPS* Multi-scheme EPS

  8. MULTI-SCHEMEENSEMBLE PREDICTION SYSTEM (MS-EPS)* 75-member, limited area EPS* 75 different Numerical Weather Prediction (NWP)model parameterisations, or ‘schemes’* Each member’s scheme differs in formulation of fast meteorological processes* Multi-scheme method reduces ensemble bias and quantifies forecast uncertainty

  9. BACKGROUND TO DEVELOPMENT OF MS-EPS* Research at UCC since 2000* Operational system launched by WEPROG at Energinet.dk (then Eltra), 2003* Testing in research projects, e.g. Honeymoon, 2003-05* Currently forecasting ~ 20GW wind power* Operating real-time, world-wide by WEPROG* Ongoing research and development by UCC and WEPROG

  10. WEATHER PREDICTION WITH MS-EPS 12 hour Forecast 10m wind speed, UK and Ireland, 23/1/06

  11. WIND POWER PREDICTION MODULEConverts weather forecast to wind power:1 – Calibration Step* ‘Training’ of each ensemble member using historicalpower production data* Direction dependent, time independent power curvesproduced for each ensemble member 2 - Forecast Step* Predict power using directional power curves

  12. WIND POWER PREDICTIONEnerginet.dk - Operational System since 2003 72 hour Wind Power Forecast for Eltra area, Denmark, 12/1/06

  13. IRISH RESULTSValidation against data from Golagh wind farm, Co. Donegal, northwest Ireland (complex terrain, high load factor) Photo courtesy B9 Energy

  14. VALIDATIONError Descriptors:* MAE = mean absolute error* Bias* Standard deviation and RMSEAll normalised to the installed capacity of the wind farm or the aggregate operational area

  15. Golagh Wind Farm Verification 2/1/05 – 1/5/05 ---- Observed power data with 1 hr smoothing

  16. IRISH RESULTSGolagh observed power data is dominated by large fluctuations with amplitude comparable to the EPS spread - similar effects have been observed at Horns Rev: ---- Observed power, raw 15 min data Horns Rev output (from Eltra System Plan 2004)

  17. IRISH RESULTS – Daily Forecasts for Golagh Example 00UTC 48hr forecasts, 2/1/05 – 13/1/05

  18. MS-EPS IS ABLE TO QUANTIFY UNCERTAINTY ---- Observed power data with 1 hr smoothing

  19. QUANTIFICATION OF UNCERTAINTYIS AN IMPORTANT FEATURE OF THE MS-EPS* Physically realistic uncertainty estimate* Grid operators have difficulty dealing with forecasting system which uses single, deterministic weather forecasts from national met services as input to forecasting tool – forecasts can be sometimes ‘way out’* Minimise balancing generation and associated costs* System security is enhanced with better forecasts and information on uncertainty – assists in operating the system during atypical weather events

  20. IRISH RESULTSVariation of forecast quality at Golagh Wind Farm • Error statistics generated from 24-48 hr forecasts • 30m agl model wind speed • Normalised to wind farm capacity of 15MW

  21. IRISH RESULTSVariation of forecast error with forecast length - Golagh Normalised mean absolute error out to 48 hour horizon SOLID __ Statistical best guess Dashed --- Mean Dotted … Best member

  22. COMPARISON WITH DANISH & GERMAN RESULTS* To study any differences between forecasting for single sites and aggregate areas of wind power production* To investigate the effect of geographical dispersion of turbines on forecasting error

  23. RESULTS – Germany / Denmark / Ireland

  24. DISTRIBUTION OF ERRORSFrequency distribution of errors for single sitesand Danish and German aggregate areas

  25. CONCLUSIONS* Golagh and Horns Rev have significant power output fluctuations and higher forecast errorsthan aggregate wind power production areas* Forecast errors appear to increase with increasing load factor, due to increasingatypical weather events and the greater number of hours at turbine cut-off

  26. CONCLUSIONS* Study suggests the prediction error in Ireland will be considerably lower with geographical dispersion of wind farms* Forecasting for individual farms is more difficult and less accurate than aggregatedwind power forecasts

  27. CONCLUSIONS* The Multi-Scheme Ensemble Prediction System offers the possibility to estimate the uncertainty of the forecasts* This provides operators more security when handling wind power and hence enables higher wind penetration

  28. ACKNOWLEDGEMENTSSustainable Energy Ireland:Study funds under RE/W/03/006ESB National Grid:Data provision and support

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