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Synergizing Two NWP Models to
Improve Hub-Height Wind Speed
Forecasts
Hong Liu, Ph.D., ORTECH Power
Peter Taylor, Ph.D., Prof., York University
CanWEA 2010, 26th Annual Conference and Exhibition
Montreal, Quebec – November 1, 2010
Synergizing Two NWP Models to Improve
Hub-Height Wind Speed Forecasts
• Drivers
• Methodology
• Evaluation Criteria
• Data Source
• Results
• Discussions
ORTECH Power
• An engineering/consulting firm that
specialized in getting renewable energy
projects completed, from project
management to permitting to financial
analysis onto commissioning.
• ORTECH helps;
– investors buy Wind Farms
– developers build Wind Farms
Drivers
• Two forecast paradigms:
– Statistical
– Physical
• Forecast errors dictated by phase error (Lange, 2003; Liu,
2009 )
• Refined NWP modelling limited by data availability (Giebel,
2003, Yu, et al, 2008, Liu, 2009)
• Ensemble forecasts constrained by computational
resources (Cutler, et al, 2008, Mohrlen, 2004)
• Synergizing outputs from more than 1 NWP model as an
alternative (Marti, 2006, Nielsen et al, 2007)
Methodology (1)
Continental Scale
NWP
Meso-scale NWP
Wind Forecast
On-line Wind /
Power Data
High Resolution
Geography
Nested Meso-scale NWP
Site Specific
Physical Models
Power Model
Wind Farm
Specifications
Power Forecast
MOS
MOS
Statistical Models to Replace:
Physical Downscaling;
Extrapolation of Wind Speed to Hub Height;
Conversion of Wind Speed to Power;
Spatial Upscaling from a Reference Wind Farm; and
MOS.
Methodology (2)
GEM
(15-km)
Forecast
Model
Optimal
Combination
Improved
Forecast
NAM
(12-km)
Forecast
Model
Methodology (3)
Vertical Level k+1
Vertical Level k
(i,j,k+1)
(i,j,k)
(i+4,j+4,k+1)
(i+4,j+4,k)
H
d(i,j)
d(i,j)
Z(i+4,j+4,k+1)
Z(i+4,j+4,k)
(XT,YT)


 N
ji
m
N
ji
m
TT
jid
jid
HjiU
HYXU
,
,
),(
1
),(
),,(
),,(
2
*)11(*1
NAMGEM
NAMGEM
FF
FWFWIF



Methodology (3)
• Relative improvement of combined
forecast (Nielsen et al, 2007):
• Weight on the best of two (Nielsen et al,
2007):
1
12
2
2
1;
1)11(2)11(
1
1

 



 I
IRI
R
IP
1)11(2)11(
)11(1
1 2



IRI
IR
W
Methodology (4)
0%
2%
4%
6%
8%
10%
12%
14%
16%
18%
20%
0.3 0.4 0.5 0.6 0.7 0.8 0.9 1
Correlation (R)
Improvement
0.3
0.4
0.5
0.6
0.7
0.8
0.9
1.0
1.1
1.2
1.3
Weight(W1)
I1=0%
I1=5%
I1=10%
I1=15%
W1(I1=0%)
W1(I1=5%)
W1(I1=10%)
W1(I1=15%)
Evaluation Criteria
• Root Mean Squared Error (RMSE, Lange,2003)
• Improvement
RMSE
N
e
e e
e x x r x x x x
i
i
N
i
pred meas pred meas pred meas

 
    


1
2 1
2
1
2 2
2 2

   
( )
( ) ( )( ( , )) ( ( ) ( ))
(%)(%)
/
/
NAMGEM
NAMGEMcombined
RMSE
RMSERMSE
IP


Data Sources (NWPs)
Data Sources (Measurements)
Onshore Met Masts near Great Lakes
– Site1 (80-m)
– Site2 (60-m)
– Site3 (80-m)
– Site4 (60-m)
Results (Site1)
1
1.5
2
2.5
3
0 3 6 9 12 15 18 21 24 27 30 33 36 39 42 45 48
Forecast Horizon (hr)
RMSE(m/s)
GEM
NAM
GEM+NAM
Results (Site2)
1
1.5
2
2.5
3
0 3 6 9 12 15 18 21 24 27 30 33 36 39 42 45 48
Forecast Horizon (hr)
RMSE(m/s)
GEM
NAM
GEM+NAM
Results (Site3)
1
1.5
2
2.5
3
0 3 6 9 12 15 18 21 24 27 30 33 36 39 42 45 48
Forecast Horizon (hr)
RMSE(m/s)
GEM
NAM
GEM+NAM
Results (Site4)
1
1.5
2
2.5
3
0 3 6 9 12 15 18 21 24 27 30 33 36 39 42 45 48
Forecast Horizon (hr)
RMSE(m/s)
GEM
NAM
GEM+NAM
Results (IP - GEM)
-40%
-30%
-20%
-10%
0%
10%
20%
3 6 9 12 15 18 21 24 27 30 33 36 39 42 45 48
Forecast Horizon (hr)
IP(%RMSE)
Site1
Site2
site3
Site4
Results (IP - NAM)
-40%
-30%
-20%
-10%
0%
10%
20%
3 6 9 12 15 18 21 24 27 30 33 36 39 42 45 48
Forecast Horizon (hr)
IP(%RMSE)
Site1
Site2
site3
Site4
Which forecast is better?
0
2
4
6
8
10
12
14
13/07/2008 0:00 13/07/2008 12:00 14/07/2008 0:00 14/07/2008 12:00 15/07/2008 0:00
Time
WindSpeed(m/s)
Measurement
GEM
NAM
GEM+NAM
Discussions
• Importance of forecast aspects
– Trading
– Unit commitment & scheduling
– O&M
• Next step is to see if this approach could improve the
ramp forecasts
References
• Cutler, N., Kepert, J. D., Outhred, H. R. and MacGill, I. F., 2008,
Characterizing Wind Power Forecast Uncertainty with numerical
Weather Prediction Spatial Fields, Wind Engineering, 32, 509-524.
• Giebel, G., 2003, The State-of-the-Art in Short-Term Prediction of wind
Power - A Literature Overview, Project ANEMOS, Risø National
Laboratory.
• Lange, M., 2003, Analysis of the Uncertainty of Wind Power Predictions,
PhD Thesis, University Oldenburg, Oldenburg, Germany.
• Liu, H., 2009, Wind Speed Forecasting for Wind Energy Applications,
PhD Thesis, York University, Toronto, Ontario, Canada.
• Marti, I., 2006, Evaluation of Advanced Wind Power Forecasting Models
– Results of the Anemos Project, European Wind Energy Conference,
Athens, Greek.
• Mohrlen, C., 2004, Uncertainty in wind energy forecasting, PhD Thesis,
University College Cork, National University of Ireland.
• Nielsen, H. A., Nielsen, T. S. and Madsen H., 2007, Optimal Combination
of wind Power Forecasts, Wind Energy, 10: 471-482
• Yu, W, Plante, A., Chardon, L., Benoit, R., Glazer, A., Tran, L. D.,
Gauthier, F., Petrucci, F., Forcione, A. and Roberge, G., 2008, A Wind
Forecasting System for Application in Wind Power Management –
Results from One-year Real-Time Tests in Quebec, CanWEA 2008
Annual Conference, Vancouver, Canada.
Synergizing Two NWP Models to
Improve Hub-Height Wind Speed
Forecasts
Hong Liu, Ph.D., ORTECH Power
Peter Taylor, Ph.D., Prof., York
University
Thank you
CanWEA 2010, 26th Annual Conference and Exhibition
Montreal, Quebec – November 1, 2010

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Hong Liu CanWEA presentation

  • 1. Synergizing Two NWP Models to Improve Hub-Height Wind Speed Forecasts Hong Liu, Ph.D., ORTECH Power Peter Taylor, Ph.D., Prof., York University CanWEA 2010, 26th Annual Conference and Exhibition Montreal, Quebec – November 1, 2010
  • 2. Synergizing Two NWP Models to Improve Hub-Height Wind Speed Forecasts • Drivers • Methodology • Evaluation Criteria • Data Source • Results • Discussions
  • 3. ORTECH Power • An engineering/consulting firm that specialized in getting renewable energy projects completed, from project management to permitting to financial analysis onto commissioning. • ORTECH helps; – investors buy Wind Farms – developers build Wind Farms
  • 4. Drivers • Two forecast paradigms: – Statistical – Physical • Forecast errors dictated by phase error (Lange, 2003; Liu, 2009 ) • Refined NWP modelling limited by data availability (Giebel, 2003, Yu, et al, 2008, Liu, 2009) • Ensemble forecasts constrained by computational resources (Cutler, et al, 2008, Mohrlen, 2004) • Synergizing outputs from more than 1 NWP model as an alternative (Marti, 2006, Nielsen et al, 2007)
  • 5. Methodology (1) Continental Scale NWP Meso-scale NWP Wind Forecast On-line Wind / Power Data High Resolution Geography Nested Meso-scale NWP Site Specific Physical Models Power Model Wind Farm Specifications Power Forecast MOS MOS Statistical Models to Replace: Physical Downscaling; Extrapolation of Wind Speed to Hub Height; Conversion of Wind Speed to Power; Spatial Upscaling from a Reference Wind Farm; and MOS.
  • 7. Methodology (3) Vertical Level k+1 Vertical Level k (i,j,k+1) (i,j,k) (i+4,j+4,k+1) (i+4,j+4,k) H d(i,j) d(i,j) Z(i+4,j+4,k+1) Z(i+4,j+4,k) (XT,YT)    N ji m N ji m TT jid jid HjiU HYXU , , ),( 1 ),( ),,( ),,( 2 *)11(*1 NAMGEM NAMGEM FF FWFWIF   
  • 8. Methodology (3) • Relative improvement of combined forecast (Nielsen et al, 2007): • Weight on the best of two (Nielsen et al, 2007): 1 12 2 2 1; 1)11(2)11( 1 1        I IRI R IP 1)11(2)11( )11(1 1 2    IRI IR W
  • 9. Methodology (4) 0% 2% 4% 6% 8% 10% 12% 14% 16% 18% 20% 0.3 0.4 0.5 0.6 0.7 0.8 0.9 1 Correlation (R) Improvement 0.3 0.4 0.5 0.6 0.7 0.8 0.9 1.0 1.1 1.2 1.3 Weight(W1) I1=0% I1=5% I1=10% I1=15% W1(I1=0%) W1(I1=5%) W1(I1=10%) W1(I1=15%)
  • 10. Evaluation Criteria • Root Mean Squared Error (RMSE, Lange,2003) • Improvement RMSE N e e e e x x r x x x x i i N i pred meas pred meas pred meas           1 2 1 2 1 2 2 2 2      ( ) ( ) ( )( ( , )) ( ( ) ( )) (%)(%) / / NAMGEM NAMGEMcombined RMSE RMSERMSE IP  
  • 12. Data Sources (Measurements) Onshore Met Masts near Great Lakes – Site1 (80-m) – Site2 (60-m) – Site3 (80-m) – Site4 (60-m)
  • 13. Results (Site1) 1 1.5 2 2.5 3 0 3 6 9 12 15 18 21 24 27 30 33 36 39 42 45 48 Forecast Horizon (hr) RMSE(m/s) GEM NAM GEM+NAM
  • 14. Results (Site2) 1 1.5 2 2.5 3 0 3 6 9 12 15 18 21 24 27 30 33 36 39 42 45 48 Forecast Horizon (hr) RMSE(m/s) GEM NAM GEM+NAM
  • 15. Results (Site3) 1 1.5 2 2.5 3 0 3 6 9 12 15 18 21 24 27 30 33 36 39 42 45 48 Forecast Horizon (hr) RMSE(m/s) GEM NAM GEM+NAM
  • 16. Results (Site4) 1 1.5 2 2.5 3 0 3 6 9 12 15 18 21 24 27 30 33 36 39 42 45 48 Forecast Horizon (hr) RMSE(m/s) GEM NAM GEM+NAM
  • 17. Results (IP - GEM) -40% -30% -20% -10% 0% 10% 20% 3 6 9 12 15 18 21 24 27 30 33 36 39 42 45 48 Forecast Horizon (hr) IP(%RMSE) Site1 Site2 site3 Site4
  • 18. Results (IP - NAM) -40% -30% -20% -10% 0% 10% 20% 3 6 9 12 15 18 21 24 27 30 33 36 39 42 45 48 Forecast Horizon (hr) IP(%RMSE) Site1 Site2 site3 Site4
  • 19. Which forecast is better? 0 2 4 6 8 10 12 14 13/07/2008 0:00 13/07/2008 12:00 14/07/2008 0:00 14/07/2008 12:00 15/07/2008 0:00 Time WindSpeed(m/s) Measurement GEM NAM GEM+NAM
  • 20. Discussions • Importance of forecast aspects – Trading – Unit commitment & scheduling – O&M • Next step is to see if this approach could improve the ramp forecasts
  • 21. References • Cutler, N., Kepert, J. D., Outhred, H. R. and MacGill, I. F., 2008, Characterizing Wind Power Forecast Uncertainty with numerical Weather Prediction Spatial Fields, Wind Engineering, 32, 509-524. • Giebel, G., 2003, The State-of-the-Art in Short-Term Prediction of wind Power - A Literature Overview, Project ANEMOS, Risø National Laboratory. • Lange, M., 2003, Analysis of the Uncertainty of Wind Power Predictions, PhD Thesis, University Oldenburg, Oldenburg, Germany. • Liu, H., 2009, Wind Speed Forecasting for Wind Energy Applications, PhD Thesis, York University, Toronto, Ontario, Canada. • Marti, I., 2006, Evaluation of Advanced Wind Power Forecasting Models – Results of the Anemos Project, European Wind Energy Conference, Athens, Greek. • Mohrlen, C., 2004, Uncertainty in wind energy forecasting, PhD Thesis, University College Cork, National University of Ireland. • Nielsen, H. A., Nielsen, T. S. and Madsen H., 2007, Optimal Combination of wind Power Forecasts, Wind Energy, 10: 471-482 • Yu, W, Plante, A., Chardon, L., Benoit, R., Glazer, A., Tran, L. D., Gauthier, F., Petrucci, F., Forcione, A. and Roberge, G., 2008, A Wind Forecasting System for Application in Wind Power Management – Results from One-year Real-Time Tests in Quebec, CanWEA 2008 Annual Conference, Vancouver, Canada.
  • 22. Synergizing Two NWP Models to Improve Hub-Height Wind Speed Forecasts Hong Liu, Ph.D., ORTECH Power Peter Taylor, Ph.D., Prof., York University Thank you CanWEA 2010, 26th Annual Conference and Exhibition Montreal, Quebec – November 1, 2010