Wind Farm Blockage: Searching for Suitable Validation Data

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ENERGY Wind Farm Blockage: Searching for Suitable Validation Data James Bleeg, Mark Purcell, Renzo Ruisi, and Elizabeth Traiger 09 April 2018 1 DNV GL 2014 09 April 2018 SAFER, SMARTER, GREENER

Wind turbine interaction and energy production Fluid dynamic interaction between wind farm turbines changes the power production at each turbine relative to what it would produce in isolation The effect can be large and must be accounted for in energy production assessments (EPAs) The energy production change due to turbine interaction is usually called a wake loss because 2

The wakes-only approach to turbine interaction EPAs almost always assumes that turbine interactions are limited to wakes and their impact on turbines downstream any influence of the turbines on conditions upstream or laterally is ignored. 3

The wakes-only approach to turbine interaction (continued) The wakes-only approach assumes that the highlighted turbine produces the same amount of energy in each of the three situations below. = = We are not aware of any direct evidence substantiating this assumption. 4

Method 5

Data analysis approach Objective: Find out whether and to what degree the wind farm affects the wind speed measured at Mast P Method (high-level) Choose a direction sector where the masts are not waked For this sector, determine the wind speed relationship between Mast P and Mast R before and after the commercial operation date (COD) Key Metric: The percent change in the wind speed ratio between Mast P and Mast R, U P,R 6

DNV GL CFD approach Solver, domain, and boundary conditions STAR-CCM+, steady RANS, k-e, buoyancy included All boundaries, except the ground, are at least 15 km from the wind farm At least five inlet directions simulated at each site, clustered around sector of interest Neutral BL and stable BL, with and without turbines Neutral BL Stable BL Atmospheric stability within and above BL simulated 7 7

DNV GL CFD approach Representing the wind turbines Wind turbines represented with a simple actuator disk Body forces applied based on curves of C t, power, and rotor speed Simulated wind speeds are close to peak C t, where any blockage effect would be maximized 8 8

Results 9

Onshore Wind Farm A 10

rotor diameters Onshore Wind Farm A Description Distance to nearest turbine 87 Turbines in east-west rows 3.2 D between turbines 20 D between rows Simple terrain* Data filtered to between 345 and 15 degrees, 5-9 m/s, at target mast More than a year of data at each mast before and after COD 11 *Max min elevation is 20 m

Onshore Wind Farm A Results Change in wind speed after COD at perimeter mast relative to reference masts Wind farm blockage slows flow approaching from the north U P1,R1 4 U P2,R1 4 DNV GL CFD predicts local blockage to be responsible for a 1.2% slowdown at Mast P2 Colors = % change in hub-height wind speed relative to freestream Measured results were sensitive to choice of reference mast 12

Onshore Wind Farm C 13

rotor diameters Onshore Wind Farm C Description Distance to nearest turbine 100 Turbines in east-west rows 3 D between turbines 13 D between rows Simple terrain* Data filtered to between 345 and 15 degrees, 5-9 m/s, at target mast Less than a year of data at each mast before and after COD 5 months post- COD 14 * Max min elevation is 21 m

Onshore Wind Farm C Results Change in wind speed after COD at target mast relative to reference mast Wind farm blockage slows flow approaching from the north U P5,R8 U P6,R8 DNV GL CFD predicts the wind speed at Mast R8 to be 1.3% less than freestream Colors = % change in hub-height wind speed relative to freestream CFD predicts local blockage to be responsible for a 1.2-1.5% slowdown at Masts P5 and P6 15

Summary of results from the four wind farms (two not shown) Wind-farm-scale blockage is consistently evident in the CFD simulations Measurements point to a slowdown occurring upstream of each wind farm, implying the presence of wind-farm-scale blockage Uncertainty in the U P,R values derived from measured data is probably not a lot smaller than the magnitude of those values; however, the sign of the wind speed change is very consistent i.e. negative for 18 of 19 mast pairs The measured slowdowns are relative to reference masts, but it is not difficult to logically progress to the conclusion that the wind speeds also decrease relative to freestream 16

The implications of wind-farm-scale blockage 17

The wakes-only approach is likely invalid in many cases, resulting in a bias in energy production predictions for the front row of turbines The highlighted turbine is not operating in freestream, undisturbed conditions, as is typically assumed The blockage effect is not limited to just a redistribution of energy production along the first row The sum of the production of the upstream row turbines is very likely to be materially lower than the sum of each of these turbines operating in isolation (i.e. in truly freestream conditions) 18

Prediction bias related to blockage is not limited to the first row Current practice in the wind industry: Wind farm flow models are used to predict wakes The models are tuned to predict the row-by-row variation in energy production Validations are conducted with energy production normalized by production in the upstream row If blockage causes an upstream row to underproduce isolated operation by 2%, approaches that ignore blockage will on average overpredict energy production for the entire wind farm by the same 2%. 19

Turbine interaction losses corresponding to the simulated conditions at the three wind farms (turbines operating at peak C t ) Bias = σ P WO σ P σ P, σ P WO is the sum of the turbine powers converted to represent wakes-only predictions L TI = σ P I σ P σ P I L TI,WO = σ P I σ P WO σ P I L TI,N = L TI L TI,WO Figure 8: Turbine interaction loss and wakes-only prediction bias at three onshore wind farms (A, B, and C) as derived from RANS simulations of the 30 sector centered on 0. L TI,WO is the turbine interaction loss as would be predicted using the wakes-only approach. L TI,N is the neglected portion of the 20 total turbine interaction loss, and Bias is the resulting energy prediction bias. σ P I is ideal power generation for the wind farm (i.e. the sum of each turbine producing as if operating in isolation) η A = 1 L TI

Blockage and energy impact, a summary Observations and CFD results at four projects suggest that wind-farm-scale blockage slows approaching flow to a degree that cannot reasonably be neglected Blockage effects likely represent a material bias in energy assessment procedures used throughout the industry There remain gaps in the available empirical record and the uncertainty in this data analysis should not be ignored Two independent analyses of the data have increased confidence in the findings We continue to look for additional field measurements In the meantime, the balance between evidence supporting and contravening the wakes-only approach is now so onesided that its continued use is difficult to justify Opportunity: Accounting for two-way coupling between the atmosphere and the wind farm has the potential to benefit wind farm design, power performance testing, and even wind farm control further driving down cost of energy 21

Validating blockage predictions 22

Measuring blockage effects Wind farm flow modelling and measurement campaigns focus on wakes All wake prediction tools used in the industry are ultimately validated against full-scale field observations More completed prediction tools (i.e. those that also account for blockage) will also require validation Measurements related to blockage are needed 23

Measuring blockage effects How does the production of the highlighted turbine differ when operating in a wind farm as compared to operating in isolation? Not possible to run the experiment Workaround: Measure other blockage effects such as upstream wind speed reduction and production pattern of unwaked turbines If a wind farm flow model predicts these observable effects accurately, it increases confidence in the predictions of the unobservable effects (i.e. wind farm vs. isolated production). 24

Measuring blockage effects Challenge Not aware of any field measurement campaigns focused on blockage effects The wind speed changes due to blockage are generally smaller and vary more gradually as compared with wakes, making the blockage impact harder to observe Potential sources of useful data Wind tunnel Turbine SCADA data Meteorological masts Scanning lidar (preferably, dual) Ideally used in combination 25

Wind tunnel measurements Wind farm blockage is evident in wind tunnel measurements reported in Ebenhoch, et al. A Linearized numerical model of wind-farm flows. Wind Energy 2016 Wind tunnel measurements are useful, but not sufficient Lateral and top walls can influence the blockage Stratification in the atmosphere is likely an important contributor to blockage Will findings scale? Regardless, could be good for validation 26

Turbine SCADA (patterns of production) The observed production patterns for unwaked turbines at Horns Rev are consistent with the possible presence of wind-farm-scale blockage. Insight into the cause is limited and the effect on overall wind farm energy production is unknown. The authors believed the cause to relate to Coriolis and that the wall effects would be AEP neutral. 27 Source: Mitraszewski, et al. Wall effects in offshore wind farms. Torque 2012

Meteorological masts Mast A Mast B At a given site, we need at least one mast near the perimeter and another mast far from the wind farm, with concurrent measurements before and after COD This situation is rare Conclusions are limited to the wind speed at a single location (Mast P) relative to another location (Mast R) The experiment cannot fully isolate the impact of the wind farm Can be a useful complement to turbine SCADA data and scanning lidar 28

Scanning lidar or radar (dual scanners would be nice) Data taken before and after COD needed to better isolate the spatial variation of mean wind speed caused by the wind farm Very useful when combined with multiple upstream masts and turbine SCADA data http://www.maritimejournal.com/news101/ marine-renewable-energy/dual-dopplerradar-project-aims-to-provide-step-changein-wind-resource-measurement 29

Takeaway Blockage needs to be accounted for in wind energy assessments To do so reliably will require measured data for model validation Availability of such data is currently lacking We need measurement campaigns that specifically target blockage effects 30

Thank you for listening James Bleeg james.bleeg@dnvgl.com +44 7860 181323 www.dnvgl.com Innovate UK funded a portion of this work through the SWEPT2 project SAFER, SMARTER, GREENER 31

Onshore Wind Farm B 32

rotor diameters Onshore Wind Farm B Description >80 Turbines in east-west rows 3.0 D between turbines 10 D between rows Moderately complex terrain* Distance to nearest turbine Data filtered to between 345 and 15 degrees and 5-9 m/s, at target mast More than a year of data at each mast before and after COD 33 *Max min elevation is 90 m

Onshore Wind Farm B Results Wind farm blockage slows flow approaching from the north Change in wind speed after COD at perimeter relative to reference masts U P3,R5 7 U P4,R5 7 * Significant blockage apparent well upstream of the wind farm Colors = % change in hub-height wind speed relative to freestream Measured results were sensitive to choice of reference mast

Bias in power curves For a given freestream wind resource, accurate prediction of a turbine s energy production requires (1) a power curve that faithfully represents the turbine s production when operating in isolation and (2) an accurate estimate of how that production changes when the other wind farm turbines are present. This paper focuses on the second requirement; however, blockage may also represent a bias in the first. The industry assumes that the power curves used in EPAs are a function of freestream wind speed, but to the extent that these curves are influenced by and are consistent with PPT (measured) curves, this assumption is very likely false. Freestream The measured curves should be corrected to account for the impact of local blockage from the tested turbine on the PPT mast, as well as for any influence of the wind farm on the wind speed relationship between the PPT mast and the rotor face. The objective is a curve that can accurately predict the production of an isolated turbine operating in a known set of freestream conditions. 35