Cao Xiao September, 2013 Wind Power Forecasting. 2 C urrent situation of forecast technology Key technology of forecast Forecast principle of wind power.

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Presentation transcript:

Cao Xiao September, 2013 Wind Power Forecasting

2 C urrent situation of forecast technology Key technology of forecast Forecast principle of wind power Development of forecast technology Content Cooperation with ADB

3 1.The technology has a long history and higher level at abroad. 2.The forecast technology has not been studied in China until The major method :statistic & physical. 4.The monthly RMSE criterion : (short-term) less than 20% , (ultra-short term) less than 15%. C urrent situation of forecast technology

4 Forecast principle of wind power Wind Forecasting Model Statistical & Physical method AWS Real-time Data AWS Historical Data Mast Real-time Data Mast Historical Data Numerical Weather Prediction(NWP) Wind Farm Real-time Data Wind Turbine Historical Data Human-computer Interface Mast Historical Data Power Forecasting Model

5 Forecast principle of wind power Statistic Method: building the relativity between weather element and power output. 1.The different mathematical models could be adopted. 2. The large amount of historical data is needed to conduct training. 3. The regular retraining for the model is needed. Physical Method: calculate wind speed and direction at the hub height. 1.NWP, WT/WasP and so on could be adopted to calculate the wind speed and direction in the surface layer. 2.Boundary conditions are needed.

6 Key technology of forecast Technology of Real-time Weather Date Acquisition Weather element : wind speed/direction, temperature, humidity, air pressure, radiation Height :10/30/70meters and hub height.

7 Key technology of forecast Numerical Weather Prediction: 1.Regard GFS (global forecasting system) as the background field. 2.Based on ADAS (ARPS Data Analysis System). 3.Combine large amount of locally actual measurement data. 4. Debug Mesoscale model WRF. 5.Adopt application technology  output 0-72 hours’ forecast value of wind speed and direction. measurement data ADAS WRF GFS Forecast value data processing server Application Technology detailed forecast value

8 Key technology of forecast Technology of Forecast Modeling : 1.Establish weather forecast model by the combination of statistic and physical methods. 2.Establish power forecast models in accordance with the conditions ( geography and climate features, type and distribution of wind turbine and so on).

9 1 、 The Diversity of Wind Power Forecast Result at Home and Abroad: (1) Distribution of wind power stations  Large scale of collective distribution in China.  More expansive and equal in Europe (2)NWP level  The weather stations are dense distribution in the Europe.  The geographic location Europe lies are beneficial to NWP.  Many commercialized weather service companies in Europe. Development of forecast technology

10 Cooperation with ADB Demand of China Mission of ADB Smart Grid & Reduce CO 2 emission Smart Grid & Reduce CO 2 emission Eliminating Poverty & Environment Sustaining Eliminating Poverty & Environment Sustaining TA7721-PRC: TA7721-PRC: Developing Smart Grid for Efficient Utilization of Renewable Energy TA7721-PRC: TA7721-PRC: Developing Smart Grid for Efficient Utilization of Renewable Energy

11 Integration Scheduling System of Smart Grid (D5000) Information Of Wind Farm Information Of Wind Farm Wind Power Forecast SchedulingScheduling GCAGCA Wind power Control Wind power Control Acceptable Capacity Acceptable Capacity Smart Grid Demonstration Project

12 Wind Power Forecast Result Date: RMSE=8.1% MAE=5.82% Corr=86.86% Rate=96.88% WPF Result of NCGC Error Forecast the Weather Trend Date: RMSE=12.72% MAE=9.77% Corr=74.71% Rate=87.44% Significant improve !

13 Case : Wind Forecasting

14 Case : Wind Power Forecasting

15 Thank you! Cao Xiao Address:No.8 Nanrui Road, Nanjing PRC TEL: FAX: Mobile: