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Use of offsite data to improve short term wind power ramp forecasting. EWEA 2013. Contents. Background and general forecasting method How can offsite measurements be used? Pattern recognition methods Optimal selection of variables for pattern recognition Impact to ramp forecasts
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Use of offsite data to improve short term wind power ramp forecasting EWEA 2013
Contents • Background and general forecasting method • How can offsite measurements be used? • Pattern recognition methods • Optimal selection of variables for pattern recognition • Impact to ramp forecasts • Conclusions 1
State of the art forecasting methods aim to capture the timing and amplitude of events to a high degree of accuracy. Example Forecast Results Hourly data 24 hours in advance 2
GL Garrad Hassan’s Current Forecasting Method NWP Forecast NWP Forecast Historic SCADA Live SCADA Site geography NWP Forecast • Optimised combination of NWP suppliers • Incorporation of mesoscale models • Regular live feedback from the wind farm • “Learning” Algorithms for: • Meteorology • Power models Suite of Models Climatology Adaptive statistics Time Series Model adaptation Intelligent Model Combination Wind speed forecast Live SCADA Site geography Power model Model adaptation Power forecast 3
How can offsite measurements be used? Traditional NWP Data Assimilation • High resolution mesoscale model (WRF) • GL GH system to process real-time observations (last 6 hours) and perform objective analysis (OA) on the boundary conditions • Forecast accuracy improvement limited by the relative density of measurement points compared to the model domain 4
NWP Data Assimilation (DA) Supplemented with Pattern Recognition: Two Methods Tested • Dynamic Pattern Recognition • Static Pattern Recognition • Trained pattern recognition • Histogram matching • Measurement location • pre-determined • - Untrained pattern • recognition • - Running minimization of • Euclidean distance • - Measurement location • not pre-determined • WRF DA • Pattern • Recognition 5
Pattern Recognition – Static (1) ‘Trained’ search space (pre-defined offline): (3) Compare ‘template’ with search space element-wise: Time (0) Time - 1 Time - 2 Closest pattern to observations WS Z1 WS Z2 Pattern 1 SLP WS Z1 (4) Form histogram out of matching matrix, make forecast from mode: WS Z2 Pattern 2 SLP WS Z1 WS Z2 Pattern 3 SLP This pattern’s wind speed= forecast (2) Prepare ‘template’ (real time observations): Time (0) Time - 1 Time - 2 WS Z1 WS Z2 SLP 6
Pattern Recognition – Dynamic (1) ‘Untrained’ search space (all previous N observations): (3) Vectorize template, compute/store Euclidean distance between all N obs: T(0) T-1 T-2 WS Z1 D(patternn,template) = WS Z2 Pattern 1 SLP WS Z1 … (4) Make forecast from pattern(s) that minimizes Euclidean distance: WS Z2 SLP D(1) = 15.4 D(2) = 12.3 D(3) = 36.5 D(4) = 0.5 … … D(N) = 12.33 WS Z1 Pattern N WS Z2 SLP (2) Prepare ‘template’ (real time observations): This pattern’s wind speed = forecast T(0) T-1 T-2 WS Z1 WS Z2 SLP 7
Range and Diversity of Inputs More Meaningful Pattern Recognition Sea level pressure Patterns = 1% spread Anomaly range: 0.45 2 Hr MAE: 2.57 m/s Surface Temperature Patterns Anomaly range: 5.48 2 Hr MAE: 1.77 m/s Tall Tower Wind Speed Patterns Anomaly range: 8.91 2 Hr MAE: 1.21 m/s 8
Diverse Variables Reduce Error Forecast Error vs. Variable Range 9
Diverse Variables Reduce Error Surface Inputs: Smaller range, Higher error Forecast Error vs. Variable Range Vertically-stratified inputs: Diverse range, Lower error 10
Best Forecasts • Best forecast requires a blend of both applications Forecast Wind Speed MAE (Mean Absolute Error) NWP/DA 3 2 1 0 50/50 MAE (m/s) PATTREC 0 2 4 6 8 10 12 Horizon (hours) 11
Impact to Ramp Forecasts • Time history of forecasts and actual production, showing our original forecasts, and the new best blend of existing forecasting techniques with pattern matching. • The optimum blend showed improvement in ramp forecasting of: • 15% improvement in ramp capture scores • 10% reduction in false alarms • 2% reduction in MAE (Mean Absolute Error) as % of capacity
Conclusions • Use of high fidelity regional offsite data, especially vertically distributed wind speeds, can add value in short term wind and ramp predictions • NWP data assimilation can be rapidly augmented with simple pattern recognition searching for ramp triggers • A priori template pattern matching performs well, but dynamic (rolling) pattern matching is less restrictive and casts a wider net • Anomaly pattern matching works best with variables of higher dynamic range • Surface measurements deviate less per day, towers and profilers offer additional value in this design 12
Jeremy ParkesJeremy.Parkes@gl-garradhassan.comPatrick ShawPatrick.Shaw@gl-garradhassan.com Thank You