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Validation and Comparison betweenValidation and Comparison between WAsP and Meteodyn Predictions for
a Project in Complex Terraina Project in Complex Terrain
Meteodyn WT users meeting– Paris (France), March 21 and 22, 2011
Gilles Boesch, Wind Project Analystj y
Salim Chemanedji, Senior Project Manager
Martin Hamel, Project ManagerHatch (Montreal), Canada
HatchHatch• Employee-owned, Projects in more than 150 countries
8000 l ld id– 8000 employees worldwide– EPCM, integrated teams, project and construction
managementConsulting process technologies and business– Consulting – process, technologies and business
– Serving mining & metals, infrastructure and energy
• For Wind Power projects:– Wind resource assessment– Geotech engineering, foundation design– Turbine evaluation and selection– Total project and construction management– Interconnection assessment, Electrical engineering– Environmental assessment
2
OverviewOverview
• Review of models• Review of models• Presentation of a test case• Results and comparisonsResults and comparisons• Conclusions and investigations
3
Review of models
4
Why is CFD a good alternative to linear models ?• CFD is now well recognized by the wind• CFD is now well recognized by the wind
community• Overpass linear model limitations for p
complex terrain• Reduce the modelling uncertainty
R d fi i l i k• Reduce financial risks
But CFD must be used with care since itBut CFD must be used with care since it is more complex
5
Why is CFD a good alternative to linear models ?• Some questions remains:• Some questions remains:
– Can we quantify the uncertainty and errors associated to these models ?
– What are the criteria for chosing linear or CFD models ?
– Do CFD models always perform better than linear models ?
Usually difficult to assess because only few meteorological masts are available within a projectmeteorological masts are available within a project
to perform cross-predictions
6
Why is CFD a good lt ti t li d l ?alternative to linear models ?
CFD Models (Meteodyn) Linear Models (WAsP)CFD Models (Meteodyn)• Pros
– Suitable for complex terrainC lib ti f th it
Linear Models (WAsP)• Pros
– Easy and fast computationGood performance in– Calibration of the site
possible (forest, stability, mesh etc.)
– Built-in features (energy, extreme winds turbulence
– Good performance in relatively flat terrain
– Is already a standard
• Consextreme winds, turbulence etc.)
• Cons– Solid expertise needed
C l l ti ti
– High errors for complex terrain
– Calibration is difficult to perform (when possible)
– Calculation time
7
Presentation of a test case
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A test caseA test case
• Comparison between WAsP and• Comparison between WAsP and Meteodyn on a potential project
• Project covers an area of 11km x 8kmj• Equipped with 12 meteorological masts
(recording from 6 months to 6 years of data)data)
• Relatively complex (deep valleys, ridges, rolling mountains)g )
• Mix of coastal and inland areas
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A test caseA test case
• Forest diversity varies among :• Forest diversity, varies among :– Completely logged area (no trees)– 15m high trees– Regrowth
• RIX variations (Ruggedness Index)% of slopes >30% in a 3500m radius– % of slopes >30% in a 3500m radius
– 2 to 25 over the entire project– 2.7 to 22.4 at the meteorological masts
Variety of conditions to evaluate the behavior of the models
10
A test caseA test case
Masts Altitude (m) RIX (%)(m)
M1 540 10.1M2 560 11.0M3 421 22 4M3 421 22.4M4 420 17.9M5 448 15.1M6 521 16 6M6 521 16.6M7 560 8.0M8 433 22.1M9 440 11 8M9 440 11.8M10 665 14.3M11 567 2.7M12 540 12 1M12 540 12.1
11
A test caseA test case
12
A test caseA test case
13
Meteodyn settingsMeteodyn settings
• Topographical information :• Topographical information :– Roughness : 0.6 for trees– Elevation Contour : 5m within project area
• Mesh :– Mapping area covering all met masts
Mesh independency tests (variation of the– Mesh independency tests (variation of the Radius)
– Minimum horizontal resolution : 30m Minim m ertical resol tion 5m– Minimum vertical resolution : 5m
– 3 460 000 cells in the prevailing direction
14
Meteodyn settingsMeteodyn settings
• Model:• Model:– Robust forest model (convergence issues with
the dissipative model)– Near neutral stability class– 30 degrees directional steps
• Data:Data:– Measured data– Quality controlled
At 50m or 60m high– At 50m or 60m high– Extrapolated to long term with standard MCP
method
15
Results and comparisons
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Results – Wind SpeedsResults Wind Speeds
• Cross-Prediction Matrix– Predictors : Synthesis performed with the
« Predictor » mast– Predicted : Wind Speed at the « Predicted Sp
Mast »Predicted
M1 M2 M3 … M12M1 M2 M3 … M12 ic
tor
M1 M1 measured M1 predictsM2
M2 M2 predictsM1 M2 measured
M3 M3 measured
Pred
i M3
… …
M12 M12 measured
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Results - ErrorsResults Errors
• Cross-Prediction Matrix– 12 x 12 matrix = 132 cross predictions– For both WAsP and Meteodyn– No correction is applied to both models output– No correction is applied to both models output– Correction often applied with WAsP because
of wind speed inconsistencies in complex terrainterrain
• Converted into a Relative Error Matrix :
measuredpredicted VVE
−%
• Resulting in 132 relative error values for h di ti
measured
measuredpredicted
VE =%
each cross-prediction
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Results - ErrorsResults Errors
• Absolute errors• Absolute errorsWAsP Meteodyn
Min Error 0.0% 0.0%Max Error 34.0% 14.1%Average 7.1% 4.7%
• On average, Meteodyn reduces the error by 35%.S ti 33 t f 132• Some exceptions : 33 cases out of 132 show better results with WAsP
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Results - ErrorsResults Errors• Generally, errors have the same sign
(positive/negative)
30.0%
40.0%
10.0%
20.0%
ve E
rror
(%)
WAsP
Meteodyn
-10.0%
0.0%Rel
ativ y
• The difference is in the magnitude-20.0%
g
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Results - Errors
Masts Altitude (m) RIX (%)M1 540 10.1M2 560 11.0M3 421 22.4M4 420 17.9M5 448 15.1M6 521 16 6Results Errors
• Comparison at each mast
M6 521 16.6M7 560 8.0M8 433 22.1M9 440 11.8
M10 665 14.3M11 567 2.7M12 540 12.1
• Comparison at each mast
25.0%
Error comparison
15.0%
20.0%
Erro
r)
5.0%
10.0%
Ave
rage
E
WAsP
Meteodyn
0.0%M1 M2 M3 M4 M5 M6 M7 M8 M9 M10 M11 M12
Met Masts
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Results - ErrorsResults Errors
• RIX dependency:– WAsP : Error increase sharply when RIX >
15%– Meteodyn : Error is more constant
20.00%
25.00%
RIX influence on cross-prediction errors
10.00%
15.00%
ge E
rror
(%)
WaspMeteodyn
0.00%
5.00%
0.0 5.0 10.0 15.0 20.0 25.0
Ave
rag
RIX (%)RIX (%)
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Results - ErrorsResults Errors• RIX dependency:
Ri t ti WA P ith ∆RIX– RisØ suggests correcting WAsP with ∆RIX (between 2 masts)
– Correction based on a correlation between E d ∆RIX f h di tiError and ∆RIX for each cross-prediction
– Open question : Can we correct Meteodyn based on the RIX ?
y = 0.5552xR² = 0.6345
10 0%
20.0%
30.0%
40.0%
%)
Error vs dRIX - Meteodyn
y = 1.0632xR² = 0.7025
10 0%
20.0%
30.0%
40.0%
%)
Error vs dRIX - Wasp
-30.0%
-20.0%
-10.0%
0.0%
10.0%
‐30.0% ‐20.0% ‐10.0% 0.0% 10.0% 20.0% 30.0%Erro
r (%
-30.0%
-20.0%
-10.0%
0.0%
10.0%
‐30.0% ‐20.0% ‐10.0% 0.0% 10.0% 20.0% 30.0%
Erro
r (%
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∆RIX (%) ∆RIX (%)
Results - ErrorsResults Errors• RIX dependency:
E i h ∆RIX i– Error increases when ∆RIX increases– Error and ∆RIX seem to be correlating– The slope is lower for Meteodyn
Meteodyn is less sensitive to site topography differences
y = 0.5552xR² = 0.6345
10 0%
20.0%
30.0%
40.0%
%)
Error vs dRIX - Meteodyn
y = 1.0632xR² = 0.7025
10 0%
20.0%
30.0%
40.0%
%)
Error vs dRIX - Wasp
-30.0%
-20.0%
-10.0%
0.0%
10.0%
‐30.0% ‐20.0% ‐10.0% 0.0% 10.0% 20.0% 30.0%Erro
r (%
-30.0%
-20.0%
-10.0%
0.0%
10.0%
‐30.0% ‐20.0% ‐10.0% 0.0% 10.0% 20.0% 30.0%
Erro
r (%
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∆RIX (%) ∆RIX (%)
Results - UncertaintyResults Uncertainty
• 11 estimates of wind speed for each mast11 estimates of wind speed for each mast• Uncertainty is estimated with the standard
deviation of the errors
Masts UncertaintyWAsP
UncertaintyMeteodyn
UncertaintyReduction RIX (%)
M1 4 6% 2 4% 1 9 10 1M1 4.6% 2.4% 1.9 10.1
M2 4.4% 3.1% 1.4 11.0
M3 7.8% 3.1% 2.5 22.4
M4 4.2% 2.5% 1.7 17.9
M5 2.9% 2.7% 1.1 15.1
M6 2.8% 2.7% 1.0 16.66 2.8% 2.7% 1.0 6 6
M7 4.7% 3.5% 1.4 8.0
M8 5.7% 3.4% 1.7 22.1
M9 3.0% 2.3% 1.3 11.8
M10 4.2% 2.8% 1.5 14.3
M11 4.8% 3.1% 1.5 2.7
M12 3.4% 2.5% 1.4 12.1
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Results - UncertaintyResults Uncertainty
Caracterize the repeatability of an• Caracterize the repeatability of an estimate
• Uncertainty can be reduced on average y gby 1.5 when using Meteodyn.
• No trend with regards to the RIX• The separation distance is more
important regarding the uncertainty
Numbers are site-specific and must be considered with care !
26
Conclusions and investigationsinvestigations
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ConclusionsConclusions
• For this project Meteodyn shows better• For this project, Meteodyn shows better results for error and uncertainty compared to WAsP
• Significant advantages :– Cost reduction : Need for less meteorological
masts per projectmasts per project– Financial risks reduction : Lower uncertainty
increases P75 or P99 value
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ConclusionsConclusions
• However :• However :– WAsP results are without any correction which
is often performed (like RIX correction for example)example)
– Results are specific to this site– Some cases are better predicted with WAsP– Other projects with lower RIX show equivalent
results between both models
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ConclusionsConclusions• Further investigations and questions :
– How do they compare when correcting WAsP y gwith the RIX ?
– Can we correct Meteodyn’s results in a certain way ? (RIX or other)
– Why does WAsP better predict the wind speed at some points ?
• Mesh refinement ?• Forest model ?• Roughness ?
– What are the criteria for defining a terrain inWhat are the criteria for defining a terrain in terms of complexity (use of WAsP vs Meteodyn) ?
– How many met tower should we use inHow many met tower should we use in complex terrain ?
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