Why does T7 underperform? Individual turbine performance relative to preconstruction estimates.

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Why does T7 underperform? Individual turbine performance relative to preconstruction estimates. P. Stuart, N. Atkinson, A. Clerc, A. Ely, M. Smith, J. Cronin, M. Zhu & T Young. EWEA Technology Workshop Lyon 2-3 July 2012 1

Example Site Overview Moderately complex terrain. 11 multi-megawatt class turbines. Inhomogeneous forest cover 5-20m in height. Two 40m Masts (turbine hub height is 65m, rotor diameter is 82.4m) Mast A Mast B Power Performance Mast T3 2

Post-construction vs. Pre-construction Consider one year of operation... Wind farm performance below pre-construction estimates. Data analysis has eliminated windiness and availability as source of underperformance (these issues will not be discussed here further). Focus on observed variation in production over wind farm and how this compares with the preconstruction predictions. 3

A logical framework for Observed Underperformance E E E 0 P E S W TI SW... Energy Yield Error E = Post Construction Energy Yield E 0 = Pre-construction Energy Yield δe = Energy Yield Error Power Curve Error δp = Error due to turbine not performing as expected in standard inflow. Wind Flow Errors δs = Topo Model (speed up) Error δw = Wake Model Error δsw = Non-linear topo/wake error Non Standard Inflow Errors δti = Turbulence Inflow Error δα = Shear Inflow Error 4

A logical framework for Observed Underperformance: Decomposed Errors E P S W TI SW... Decompose component errors as follows: S S S R B δs R = Random error to wind flow model δs B = Bias error due to wind flow model TI TI TI A E δti A = Change in available energy due to TI δti E = Change in turbine efficiency due to TI A E δα A = Change in available energy due to α δα E = Change in turbine efficiency due to α 5

Power Curve Error Performance in standard inflow covered by IEC Power Performance Test δp AEP > 100% 6

-35-25 -15-5 5 15 25 35 Directional observations Example Speed Up Random Error from Met Mast Data 300 250 200 150 100 50 0 δs R Speed-up error (%) Random error is a source of uncertainty, but on average, across many turbines (and wind farms), it should average to zero. Will manifest as noise in per turbine error analysis. 7

Example Speed Up Bias Error from Met Mast Data δs B Bias No Bias Bias error can average out over wind farm if met mast is half-way up hill However even if wind farm error is zero, errors will still be visible per turbine. Unclear why bias is seen on some sites and not others? 8

Non-standard inflow errors TI TI TI A E A E Turbine power curves are typically measured in standard inflow conditions e.g. TI = 10-12% and α = 0.15 0.2. What happens if TI = 18% and α = 0.45? The above terms will manifest as a change in the turbine power curve, for two possible reasons? δti A and δα A describe change in available/apparent energy e.g. Albers method for effect of 10minute averaging of non-linear power curve. δti E and δα E describe possible change in efficiency (aerodynamic, mechanical or electrical) in non-standard inflow. 9

Mean Wind Speed TI A Power Curve Correction: Numerical Study Non-standard TI correction: impact on yield for different mean wind speeds and turbulence intensities... Turbulence Intensity 1-2% predicted underperformance at high TI and high mean wind speed. 10

Correlation of Error Terms Hypothesis: non-standard inflow is associated with regions of large topo and wake model errors. Consequence: non-standard wind flow errors correlate with topo and wake errors. Wind Turbine A: low topo error, low wake error and standard inflow. A B Turbine B: larger topo error, larger wake error and larger non-standard inflow error. Real world situations allow errors to add coherently i.e. bad turbines can be really bad turbines. 11

Example Site Individual Turbine Performance Speed Up Bias Error? Plot error in yield vs. predicted terrain effect δs B? T7 40% underproduction Correlation between predicted terrain effect and error in energy yield. 12

Example Site Individual Turbine Performance Increase roughness & CFD? Increasing Site also modelled roughness using orography CFD, including model a canopy improves model. agreement. δs B? T7 25% underproduction Roughness CFD and increased roughness from orography default model 0.04m in to very 2m, close potentially agreement. more representative of the site (tree height up to 20m). 13

Effect of non-standard inflow? Still an error in the predictions; other causes high shear? δα? Power Performance Turbine T3 δti? T7 25% underproduction Increasing Shear (and turbulence) Strong correlation between high α/ti and error in energy yield predictions? 14

Effect of non-standard inflow? (It seems not!) If power performance error due to non-standard inflow is cause of under performance then observed power curved should appear distorted... T3 0% underproduction T7 25% underproduction Nacelle power curve indicates non-standard inflow errors are relatively small (on this project) i.e. δα 0% and δti 0% 15

Why does T7 underperform? Conclusions so far for this example site (other sites may be different): E P S??? W TI SW... 16

Wakes T7 has 25% underproduction, could this be explained by wakes? δw δsw The predicted wake loss is 10%, could the wake model error really explain 25% underperformance? Is there a non-linear interaction of the wake and terrain that could be captured by a CFD model? More work needed! 17

Directional Power Ratio: T7 vs. T3 Largest error in Easterly winds, upwind trees? Power Ratio when T3 is between 9.5-10.5 m/s when all turbines are operational. 18

Non-Neutral Flow Modelling: Coupled Mesoscale and CFD Coupled Mesoscale-CFD models help understand impact of stability effects. Example Site (Ireland) Comparison Site (Turkey) 19

Conclusions: So Why Does T7 Underperform? E P S??? W TI SW... For this particular site: Power performance errors (δp, δti and δα) don t appear significant. Speed Up error important, but probably doesn t explain everything. Wake model errors need further investigation. Possibly other sources of error not identified. Relatively low lower tip hub height (24m) may make this site more sensitive to model errors. Other sites with different atmospheric conditions and turbine types are likely to be different! Care must be taken to how lessons learnt are applied to preconstruction estimates. 20

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