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A Visually-Informed Decision-Making Platform for 
Model-based Design of Wind Farms 
Souma Chowdhury#, Ali Mehmani*, Weiyang Tong*, and Achille Messac# 
* Syracuse University, Department of Mechanical and Aerospace Engineering 
# Mississippi State University, Bagley College of Engineering 
Research supported by the NSF Award: CMMI 1437746 
The AIAA Aviation and Aeronautics Forum and Exposition 
June 16 – 20, 2014 Atlanta, Georgia
Wind Farm Design 
Addressing inter & intra-system interactions 
2 
Natural resource 
System 
Environmental 
System 
Power Generation 
System 
Power 
Transmission 
System 
Conditions Design Variables 
• Farm Layout 
• Type(s) of Turbines 
Wind Farm Design 
Objectives/Output 
• Farm Power Generation 
• Annual Energy Production 
• Capacity Factor 
• Cost of Energy 
Other Design Factors 
• Nameplate Capacity 
• Land Area per MW inst. 
• Distribution of Wind 
Speed and Direction 
• Atmospheric Turbulence 
• Wind Shear 
• Topography 
Wake Effects 
A Complex System
Model-based Wind Farm Design: Challenges 
 Owing to the complexity of the system, and the multitude of factors, 
model-based systems design is the de facto standard in wind farm design. 
 Uncertainties are inherent in various forms in this MBSD process, e.g.: 
 Resource uncertainties: The wind resource is naturally uncertain, and the lack of a clear 
understanding/knowledge of the ABL leads to further uncertainties. 
 Model inadequacies: High-fidelity analysis of wind farm flow is extremely expensive 
(30 CPU-hr/simulation), leading to the use of lower-fidelity models in the design process. 
 Unrealistic assumptions: The impact of various natural and design factors is highly 
coupled and their interactions are often not duly accounted for. 
 Existing wind farm layout optimization (WFLO) methods* generally only 
consider certain aspects of resource variations. 
*Mosetti et al., Grady et al., Sisbot et al., OWFLO, Wan et al.; Gonzalez et al., 2010; Chowdhury et al. 2012 
3
4 
Fixed incoming wind speed at 7 m/s Fixed incoming wind speed at 11 m/s 
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0.9 
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Sensitivity Analysis of Array-like Farm Output 
Ambient 
turbulence 
Land area/MW 
installed 
Land aspect ratio 
Jensen model 
first-order index total-order index 
1 
0.9 
0.8 
0.7 
0.6 
0.5 
0.4 
0.3 
0.2 
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Ambient 
turbulence 
Land area/MW 
installed 
Land aspect ratio 
Larsen model 
first-order index total-order index 
Models w/o turbulence 
Models with turbulence 
1 
0.9 
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0.7 
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Ambient 
turbulence 
Land area/MW 
installed 
Land aspect ratio 
Jensen model 
first-order index total-order index 
1 
0.9 
0.8 
0.7 
0.6 
0.5 
0.4 
0.3 
0.2 
0.1 
0 
Ambient 
turbulence 
Land area/MW 
installed 
Land aspect ratio 
Larsen model 
first-order index total-order index 
Weiyang et al. 
IDETC 2013
Sensitivity Analysis of Optimized Farm Output 
(Region II: incoming wind speed 10.35m/s – 12.65 m/s) 
5 
1 
0.9 
0.8 
0.7 
0.6 
0.5 
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1 
0.9 
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0.3 
0.2 
0.1 
0 
Incoming wind 
speed 
Ambient 
turbulence 
Land area/MW 
installed 
Land aspect 
ratio 
Nameplate 
capacity 
Ishihara model 
first-order index total-order index 
1 
0.9 
0.8 
0.7 
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Incoming wind 
speed 
Ambient 
turbulence 
Land area/MW 
installed 
Land aspect 
ratio 
Nameplate 
capacity 
Larsen model 
first-order index total-order index 
0 
Incoming wind 
speed 
Ambient 
turbulence 
Land area/MW 
installed 
Land aspect 
ratio 
Nameplate 
capacity 
Frandsen model 
first-order index total-order index 
0 
Incoming wind 
speed 
Ambient 
turbulence 
Land area/MW 
installed 
Land aspect 
ratio 
Nameplate 
capacity 
Jensen model 
first-order index total-order index 
Weiyang et al. 
IDETC 2013
Visually-Informed Decision-Making Platform 
(VIDMAP) 
Overall Concept 
Considering WFLO frameworks to be comprised of a series of interconnected 
models, we will take an information flow perspective to WFLO to aid informed 
(hence more reliable) decision-making. 
Specific Objectives 
1. To quantify and illustrate the criticality of information exchanged between 
different models (i.e., inter-model sensitivities) in the WFLO process. 
2. To quantify the model-induced uncertainties in the WFLO process. 
6
Presentation Outline 
 Information Flow Perspective to Model-based Systems Design (MBSD) 
 Visually Informed Decision-Making Platform (VIDMAP) 
 Wind Farm Energy Production Modeling 
 Quantifying Input Variability and Model-induced Uncertainties 
 Sensitivity Analysis of Energy Production Model 
 Graphical Illustration of VIDMAP 
 Concluding Remarks 
7
The Information Flow Perspective to MBSD 
8 
A Design Process can be conceived as a flow of information. 
Information 
Criticality 
Information 
Expense 
Information 
Uncertainty
Motivating Approaches from Literature 
 McManus et al., (2005) construct component behavior model to capture faulty 
behavior (for design verification and validation in complex systems design). 
 Allaire et al., (2012) developed a quantitative metric for measuring system 
complexity based on information theory. 
 Otto et al., (2013) elaborated on what challenges mechanical complex design 
faces to reach the level of design automation in the embedded systems domain. 
 Allaire et al., (2013) developed a multifidelity approach for complex systems 
design and analysis to exploit optimally of all available models. 
 Mehmani at al., (2013, 2014) developed a new approach to quantify the 
uncertainty in surrogate models – for effective model selection and multi-fidelity 
optimization. 
 Visualization has been used in the context of multi-attribute/multi-objective 
decision-making (Chiu and Bloebaum, 2009-2010), as well as in the context of 
value–driven design Bertoni et al. (2013-2014). 
9
VIDMAP: Structure 
10 
Uncertainty Quantification 
Quantifying the variability of first-level inputs 
and the uncertainty introduced by the 
upstream models 
Sensitivity Analysis 
Analyzing the sensitivity of downstream 
models to the first-level inputs and the 
upstream model outputs 
Information Visualization 
Visualizing the uncertainty introduced by 
constituent models and inter-model 
sensitivities in the design process
Wind Farm Energy Production Modeling 
11
Wind Farm Energy Production 
Wind farm power 
generation 
12 
 Annual Energy Production (AEP) of a farm is given by: 
 AEP is numerically expressed as: 
 Capacity Factor: 
Probability of 
wind condition
Wind Farm Power Generation: Inflow & Shading 
13 13 
The complex flow in a wind farm is due to turbine-wind interactions. 
A multi-step model is developed to estimate the farm power generation. 
 Rotor averaged velocity derived from the wind shear profile 
Dedicated data More generic 
Cal et al., 2010 
 Wake losses are modeled rank-wise: 
Turbine-j is in the wake of Turbine-i, if and only if 
Considers turbines with differing 
rotor-diameters and hub-heights 
Turbines ranked in order 
of encountering wind 
Modeling 
turbine-wind-turbine 
interactions
Wind Farm Power Generation: Wake Losses 
  
  
  
14 
 Effective velocity of wind approaching Turbine-j:* 
 Accounts for wake merging & partial wake-rotor overlap 
 The power generated by turbine-j: 
 Power generated 
by wind farm: 
Wake model 
  
P P 
Incoming 
wind speed 
Downstream 
spacing 
Radial 
spacing 
GE 2.5MW 
Induction 
factor 
Rotor 
Diameter 
  2 
  
Hub height 
P 
Turbulence 
intensity 
Jensen √ √ √ √ 
Frandsen √ √ √ √ 
Larsen √ √ √ √ √ √ √ 
Ishihara √ √ √ √ √ √ 
2 
3 
4 1 
1 
2 4 g b 
a a 
D 
k k  U 
Wake model: 
At distance s 
downstream 
Novel dynamically-updated 
turbine-adaptive energy loss 
(variable induction factor, a) 
1 
N 
farm j 
j 

VIDMAP: Structure 
15 
Uncertainty Quantification 
Quantifying the variability of first-level inputs 
and the uncertainty introduced by the 
upstream models 
Sensitivity Analysis 
Analyzing the sensitivity of downstream 
models to the first-level inputs and the 
upstream model outputs 
Information Visualization 
Visualizing the uncertainty introduced by 
constituent models and inter-model 
sensitivities in the design process
First-Level Inputs 
 The natural or commercial distributions of the first-level 
inputs are determined, in order to generate samples for: 
 Quantifying the uncertainty in the upstream models 
 Performing the sensitivity analysis 
 Natural Inputs: 
1. Wind Resource – Average Wind Speed (Rayleigh distribution) 
 Design Inputs: 
2. Turbine Array Layout – Land Area/MW installed (7/3 aspect ratio) 
3. Turbine Type – Turbine Features (major manufacturers) 
16
Design Input Variability 
Turbine Features: A sample set of 130 turbines from major 
manufacturers, ranging from 0.6MW to 3.0MW, was created. 
 Each turbine is defined in terms of its rotor diameter, hub height, rated power, 
cut-in/cut-out/rated speed, and drivetrain type. 
 LHS is used to prepare the integer-coded sample set of turbine features. 
Land Area/MW Installed: The range is motivated by the reported 
land footprint of US wind farms 1 (34.5 ± 22.4 ha/MW). 
 LHS is used to generate the sample set of land area/MW installed. 
 Assuming a N×N layout of turbines (N=10), with rated power, PR, for each 
sample land area/MW of AMW, the turbine spacing is given by: 
푑푠 = 
1 
푁 − 1 
7 
3 푁푃푅퐴 
1/2 
; 푑푙 = 
1 
푁 − 1 
3 
7 푁푃푅퐴 
1/2 
1 Denholm et al., Technical Report NREL/TP-6A2-45834, NREL, August 2009. 17
Wind Resource Input Variability 
 The distribution of wind resource is defined in terms of the distribution of 
average wind speed (AWS), derived from the US wind map. 
 A normal distribution of the average wind speed, reported by Chowdhury 
et al., (AIAA SDM 2012) is adopted here to generate the AWS samples. 
 For each sample AWS, we generate a Rayleigh wind speed distribution – 
to serve as an input to energy production model. 
18
Quantifying Model Uncertainty 
 High-fidelity estimates of the outputs of the upstream (or 
constituent) models are not readily available, due to 
 lack of data (e.g., vertical wind profile, decade-long met-tower data); 
 Lack of access to data (e.g., proprietary turbine power data); or 
 lack of understanding of the physical systems involved (e.g., ABL). 
 Hence, we have employed different approaches to quantify 
the model-induced uncertainties, such as: 
 quantify the variance in the output of low-fidelity model choices; or 
 Use recorded data from a single site/case to estimate model error. 
19
Uncertainty in Wind Distribution Model 
 Model error is given by the difference between the Rayleigh wind 
distribution estimated using 1-year data and the scaled histogram of the 
actual recorded wind conditions over the subsequent 10 years (a ND site). 
20 
 The output of the wind distribution model, 
for given conditions (U i), is the set of wind 
speed probabilities: 
 The errors in the estimated wind speed 
probabilities are treated as linearly 
dependent random variables. 
 Distribution of the normalized errors gives 
the uncertainty in the wind distribution 
model.
Uncertainty in Wind Shear Model 
 Wind shear in ABL scarcely follows the power law or log law, which are 
typically used in modeling and design. 
Power Law: 
푈 
푈푟 
= 
푧 
푧푟 
훼 
; Log Law: 
푈 
푈푟 
= 
푙푛 푧 푧0 
푙푛 푧푟 푧0 
 Dedicated wind shear data is often lacking in practical wind energy 
projects. LIDAR and SODAR are likely solutions (not yet widely used). 
 Uncertainty is quantified in terms of the distribution of the deviations 
between different implementations of the two models, which rely on local 
surface roughness assumptions (e.g., smooth ground – foot high grass). 
 Output of wind shear model (hub-height wind speed): 
 The deviation is estimated as: 
21
Uncertainty in Turbine Power Response Model 
 The power response of turbines often deviate from that given by the 
manufacturer-reported power curves (e.g., due to atm. stability issues). 
 Since access to actual turbine power response data is limited, we use 
reported data from literature1 to quantify the deviations, and define 
uncertainty as the distribution of these deviations. 
 Output of turbine power response model: 
22 
1Wharton and Lundquist, Environmental 
Research Letters, January 2012
Uncertainty in Wake Model 
 Generally, analytical wake models are used in wind farm layout design. 
 Access to actual field data is limited, and high-fidelity wake models are 
too expensive (e.g., 30 CPU-hrs) to conduct Monte Carlo simulations. 
 Hence, we quantify the uncertainty in the wake model as the deviations in 
the estimates made by the four popular analytical wake models. 
 Two model outputs (wake speed and wake width): 
Wake speed Wake width 
Tong et al., 
23 
ASME IDETC 2013
Uncertainty in the Wake Model 
 The deviations in the wake model outputs are given by 
 Frandsen model is used as the scaling reference. 
 A 10% ambient turbulence intensity is assumed. 
24 
Wake speed Wake width
VIDMAP: Structure 
25 
Uncertainty Quantification 
Quantifying the variability of first-level inputs 
and the uncertainty introduced by the 
upstream models 
Sensitivity Analysis 
Analyzing the sensitivity of downstream 
models to the first-level inputs and the 
upstream model outputs 
Information Visualization 
Visualizing the uncertainty introduced by 
constituent models and inter-model 
sensitivities in the design process
Sensitivity Analysis of Energy Production 
 Sensitivity analysis is performed to quantify the sensitivity of the 
energy production model for a 100-turbine wind farm with respect to: 
1. the independent first-level inputs; and 
2. the deviations/errors in the upstream models. 
 To perform sensitivity analysis, the sample set was prepared from: 
26 
Independent first-level inputs 
Normalized errors/deviations in upstream models
Sensitivity Analysis Method 
 We use the Extended Fourier Amplitude of Sensitivity Test (eFAST), 
which is a variance-based global sensitivity analysis method 
 Based on Fourier analysis, the first-order index is defined as the ratio of the 
conditional variance due to each input parameter to the variance of the model 
output 
푆푖 = 
2 
휎푌 푋푖 
2 
휎푌 
 The total-order index estimates the sum of all effects involving the associated 
input parameter 
푆푇푖 = 1 − 
2 
휎푌 푋≠푖 
2 
휎푌 
 We employ the eFAST implementation through the statistical tool, R, 
using a sample set of 20,000 data points. 
27
VIDMAP: Structure 
28 
Uncertainty Quantification 
Quantifying the variability of first-level inputs 
and the uncertainty introduced by the 
upstream models 
Sensitivity Analysis 
Analyzing the sensitivity of downstream 
models to the first-level inputs and the 
upstream model outputs 
Information Visualization 
Visualizing the uncertainty introduced by 
constituent models and inter-model 
sensitivities in the design process
VIDMAP: Illustration 
 Connectors are colored based on 1st order sensitivity indices. 
 Total order indices are dominant, indicating highly coupled impact. 
 Model blocks are colored based on the variance of the model error or 
29 
model deviation.
VIDMAP: Important Observations 
Among the independent inputs, turbine features have the strongest impact. 
The turbine power response model and the wake width estimation model are 
observed to have the strongest impact among model. 
These two models are also associated with the highest degrees of uncertainty. 
30
Concluding Remarks 
 We developed a visualization framework (VIDMAP) for informed 
model-based design of wind farms. 
 Specifically, we quantified and presented a MBSD visualization for: 
1. Inter-model sensitivities and model-input sensitivities; 
2. Model-induced uncertainties. 
 The VIDMAP obtained is found to be uniquely helpful in pointing out: 
 Which models/inputs in the WFLO process have stronger impact on the 
energy production estimates – turbine features, turbine power response 
model, and wake model. 
 Which models have higher degrees of uncertainty - turbine power response 
model, and wake width estimation model. 
31
Future Directions 
 Develop and implement a more standardized quantification of model 
uncertainty, e.g., in comparison to measured data. 
 Develop informed decision-making rules/strategies that directly utilize 
VIDMAP – towards faster and more reliable wind farm design. 
32
Questions 
and 
Comments 
33 
Thank you
Major Challenges: Wind Farm Modeling 
The state of the art (2009) in modeling wind farm energy 
production (for design purposes) does not capture the coupled 
impact of the key natural/design factors at affordable 
computational costs*: 
Prior 
Research 
1. Turbines with differing features (size/power characteristics) are not considered; 
2. Variability of induction factor or energy loss fraction/turbine is not considered; 
3. Coupled variation of wind speed, wind direction, and turbulence intensity not captured 
4. High-fidelity wake models are computational prohibitive: current LES models [NREL SOFWA, 2012] 
ABL over topography 
34/85 
*Mosetti et al., Grady et al., Sisbot et al., OWFLO, Wan et 
al. 
Model Based Systems 
Design 
Integrative Modeling and 
Design of Wind Farms 
Energy-Sustainable Smart 
Buildings 
Reconfigurable Unmanned 
Aerial Vehicles (UAV) 
would need 600 million CPU-hours for optimizing a 25-turbine farm 
5. Current WF energy output models do not account for spatial variations of the boundary layer over the 
site (e.g., due to vegetation cover or topographic variations) 
Different turbine 
sizes available 
CT and energy 
loss varies 
IPCC, 2011; Chowdhury et al., 2013; ETH LEC,
Major Challenges: Wind Farm Design 
The state of art in wind farm layout design makes 
limiting assumptions*: 
1. Selection and siting of turbines are not simultaneously optimized. 
2. The flexibility of installing non-identical turbines on a site is generally lacking. 
3. The extent of the site to be used (land area and shape) and the total nameplate capacity 
are prescribed prior to farm layout design (not quantitatively decided) . 
4. Existing methods do not allow exploration of the important trade-offs among the 
engineering, socio-economic, & environmental objectives of wind farm development. 
5. Existing methods generally pursue decision-making at a single scale of wind power 
generation technology (e.g., blade-scale or turbine-scale or farm-scale) – propagation 
of performance uncertainties and the impact of design-decisions across scales remain 
unexplored. Prior Research 
*Mosetti et al., Grady et al., Sisbot et al., OWFLO, Wan et al.; Gonzalez et al., 2010 
35/85 
Model Based Systems 
Design 
Integrative Modeling and 
Design of Wind Farms 
Energy-Sustainable Smart 
Buildings 
Reconfigurable Unmanned 
Aerial Vehicles (UAV)

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Visually-Informed Decision Platform for Wind Farm Design

  • 1. A Visually-Informed Decision-Making Platform for Model-based Design of Wind Farms Souma Chowdhury#, Ali Mehmani*, Weiyang Tong*, and Achille Messac# * Syracuse University, Department of Mechanical and Aerospace Engineering # Mississippi State University, Bagley College of Engineering Research supported by the NSF Award: CMMI 1437746 The AIAA Aviation and Aeronautics Forum and Exposition June 16 – 20, 2014 Atlanta, Georgia
  • 2. Wind Farm Design Addressing inter & intra-system interactions 2 Natural resource System Environmental System Power Generation System Power Transmission System Conditions Design Variables • Farm Layout • Type(s) of Turbines Wind Farm Design Objectives/Output • Farm Power Generation • Annual Energy Production • Capacity Factor • Cost of Energy Other Design Factors • Nameplate Capacity • Land Area per MW inst. • Distribution of Wind Speed and Direction • Atmospheric Turbulence • Wind Shear • Topography Wake Effects A Complex System
  • 3. Model-based Wind Farm Design: Challenges  Owing to the complexity of the system, and the multitude of factors, model-based systems design is the de facto standard in wind farm design.  Uncertainties are inherent in various forms in this MBSD process, e.g.:  Resource uncertainties: The wind resource is naturally uncertain, and the lack of a clear understanding/knowledge of the ABL leads to further uncertainties.  Model inadequacies: High-fidelity analysis of wind farm flow is extremely expensive (30 CPU-hr/simulation), leading to the use of lower-fidelity models in the design process.  Unrealistic assumptions: The impact of various natural and design factors is highly coupled and their interactions are often not duly accounted for.  Existing wind farm layout optimization (WFLO) methods* generally only consider certain aspects of resource variations. *Mosetti et al., Grady et al., Sisbot et al., OWFLO, Wan et al.; Gonzalez et al., 2010; Chowdhury et al. 2012 3
  • 4. 4 Fixed incoming wind speed at 7 m/s Fixed incoming wind speed at 11 m/s 1 0.9 0.8 0.7 0.6 0.5 0.4 0.3 0.2 0.1 0 Sensitivity Analysis of Array-like Farm Output Ambient turbulence Land area/MW installed Land aspect ratio Jensen model first-order index total-order index 1 0.9 0.8 0.7 0.6 0.5 0.4 0.3 0.2 0.1 0 Ambient turbulence Land area/MW installed Land aspect ratio Larsen model first-order index total-order index Models w/o turbulence Models with turbulence 1 0.9 0.8 0.7 0.6 0.5 0.4 0.3 0.2 0.1 0 Ambient turbulence Land area/MW installed Land aspect ratio Jensen model first-order index total-order index 1 0.9 0.8 0.7 0.6 0.5 0.4 0.3 0.2 0.1 0 Ambient turbulence Land area/MW installed Land aspect ratio Larsen model first-order index total-order index Weiyang et al. IDETC 2013
  • 5. Sensitivity Analysis of Optimized Farm Output (Region II: incoming wind speed 10.35m/s – 12.65 m/s) 5 1 0.9 0.8 0.7 0.6 0.5 0.4 0.3 0.2 0.1 1 0.9 0.8 0.7 0.6 0.5 0.4 0.3 0.2 0.1 0 Incoming wind speed Ambient turbulence Land area/MW installed Land aspect ratio Nameplate capacity Ishihara model first-order index total-order index 1 0.9 0.8 0.7 0.6 0.5 0.4 0.3 0.2 0.1 1 0.9 0.8 0.7 0.6 0.5 0.4 0.3 0.2 0.1 0 Incoming wind speed Ambient turbulence Land area/MW installed Land aspect ratio Nameplate capacity Larsen model first-order index total-order index 0 Incoming wind speed Ambient turbulence Land area/MW installed Land aspect ratio Nameplate capacity Frandsen model first-order index total-order index 0 Incoming wind speed Ambient turbulence Land area/MW installed Land aspect ratio Nameplate capacity Jensen model first-order index total-order index Weiyang et al. IDETC 2013
  • 6. Visually-Informed Decision-Making Platform (VIDMAP) Overall Concept Considering WFLO frameworks to be comprised of a series of interconnected models, we will take an information flow perspective to WFLO to aid informed (hence more reliable) decision-making. Specific Objectives 1. To quantify and illustrate the criticality of information exchanged between different models (i.e., inter-model sensitivities) in the WFLO process. 2. To quantify the model-induced uncertainties in the WFLO process. 6
  • 7. Presentation Outline  Information Flow Perspective to Model-based Systems Design (MBSD)  Visually Informed Decision-Making Platform (VIDMAP)  Wind Farm Energy Production Modeling  Quantifying Input Variability and Model-induced Uncertainties  Sensitivity Analysis of Energy Production Model  Graphical Illustration of VIDMAP  Concluding Remarks 7
  • 8. The Information Flow Perspective to MBSD 8 A Design Process can be conceived as a flow of information. Information Criticality Information Expense Information Uncertainty
  • 9. Motivating Approaches from Literature  McManus et al., (2005) construct component behavior model to capture faulty behavior (for design verification and validation in complex systems design).  Allaire et al., (2012) developed a quantitative metric for measuring system complexity based on information theory.  Otto et al., (2013) elaborated on what challenges mechanical complex design faces to reach the level of design automation in the embedded systems domain.  Allaire et al., (2013) developed a multifidelity approach for complex systems design and analysis to exploit optimally of all available models.  Mehmani at al., (2013, 2014) developed a new approach to quantify the uncertainty in surrogate models – for effective model selection and multi-fidelity optimization.  Visualization has been used in the context of multi-attribute/multi-objective decision-making (Chiu and Bloebaum, 2009-2010), as well as in the context of value–driven design Bertoni et al. (2013-2014). 9
  • 10. VIDMAP: Structure 10 Uncertainty Quantification Quantifying the variability of first-level inputs and the uncertainty introduced by the upstream models Sensitivity Analysis Analyzing the sensitivity of downstream models to the first-level inputs and the upstream model outputs Information Visualization Visualizing the uncertainty introduced by constituent models and inter-model sensitivities in the design process
  • 11. Wind Farm Energy Production Modeling 11
  • 12. Wind Farm Energy Production Wind farm power generation 12  Annual Energy Production (AEP) of a farm is given by:  AEP is numerically expressed as:  Capacity Factor: Probability of wind condition
  • 13. Wind Farm Power Generation: Inflow & Shading 13 13 The complex flow in a wind farm is due to turbine-wind interactions. A multi-step model is developed to estimate the farm power generation.  Rotor averaged velocity derived from the wind shear profile Dedicated data More generic Cal et al., 2010  Wake losses are modeled rank-wise: Turbine-j is in the wake of Turbine-i, if and only if Considers turbines with differing rotor-diameters and hub-heights Turbines ranked in order of encountering wind Modeling turbine-wind-turbine interactions
  • 14. Wind Farm Power Generation: Wake Losses       14  Effective velocity of wind approaching Turbine-j:*  Accounts for wake merging & partial wake-rotor overlap  The power generated by turbine-j:  Power generated by wind farm: Wake model   P P Incoming wind speed Downstream spacing Radial spacing GE 2.5MW Induction factor Rotor Diameter   2   Hub height P Turbulence intensity Jensen √ √ √ √ Frandsen √ √ √ √ Larsen √ √ √ √ √ √ √ Ishihara √ √ √ √ √ √ 2 3 4 1 1 2 4 g b a a D k k  U Wake model: At distance s downstream Novel dynamically-updated turbine-adaptive energy loss (variable induction factor, a) 1 N farm j j 
  • 15. VIDMAP: Structure 15 Uncertainty Quantification Quantifying the variability of first-level inputs and the uncertainty introduced by the upstream models Sensitivity Analysis Analyzing the sensitivity of downstream models to the first-level inputs and the upstream model outputs Information Visualization Visualizing the uncertainty introduced by constituent models and inter-model sensitivities in the design process
  • 16. First-Level Inputs  The natural or commercial distributions of the first-level inputs are determined, in order to generate samples for:  Quantifying the uncertainty in the upstream models  Performing the sensitivity analysis  Natural Inputs: 1. Wind Resource – Average Wind Speed (Rayleigh distribution)  Design Inputs: 2. Turbine Array Layout – Land Area/MW installed (7/3 aspect ratio) 3. Turbine Type – Turbine Features (major manufacturers) 16
  • 17. Design Input Variability Turbine Features: A sample set of 130 turbines from major manufacturers, ranging from 0.6MW to 3.0MW, was created.  Each turbine is defined in terms of its rotor diameter, hub height, rated power, cut-in/cut-out/rated speed, and drivetrain type.  LHS is used to prepare the integer-coded sample set of turbine features. Land Area/MW Installed: The range is motivated by the reported land footprint of US wind farms 1 (34.5 ± 22.4 ha/MW).  LHS is used to generate the sample set of land area/MW installed.  Assuming a N×N layout of turbines (N=10), with rated power, PR, for each sample land area/MW of AMW, the turbine spacing is given by: 푑푠 = 1 푁 − 1 7 3 푁푃푅퐴 1/2 ; 푑푙 = 1 푁 − 1 3 7 푁푃푅퐴 1/2 1 Denholm et al., Technical Report NREL/TP-6A2-45834, NREL, August 2009. 17
  • 18. Wind Resource Input Variability  The distribution of wind resource is defined in terms of the distribution of average wind speed (AWS), derived from the US wind map.  A normal distribution of the average wind speed, reported by Chowdhury et al., (AIAA SDM 2012) is adopted here to generate the AWS samples.  For each sample AWS, we generate a Rayleigh wind speed distribution – to serve as an input to energy production model. 18
  • 19. Quantifying Model Uncertainty  High-fidelity estimates of the outputs of the upstream (or constituent) models are not readily available, due to  lack of data (e.g., vertical wind profile, decade-long met-tower data);  Lack of access to data (e.g., proprietary turbine power data); or  lack of understanding of the physical systems involved (e.g., ABL).  Hence, we have employed different approaches to quantify the model-induced uncertainties, such as:  quantify the variance in the output of low-fidelity model choices; or  Use recorded data from a single site/case to estimate model error. 19
  • 20. Uncertainty in Wind Distribution Model  Model error is given by the difference between the Rayleigh wind distribution estimated using 1-year data and the scaled histogram of the actual recorded wind conditions over the subsequent 10 years (a ND site). 20  The output of the wind distribution model, for given conditions (U i), is the set of wind speed probabilities:  The errors in the estimated wind speed probabilities are treated as linearly dependent random variables.  Distribution of the normalized errors gives the uncertainty in the wind distribution model.
  • 21. Uncertainty in Wind Shear Model  Wind shear in ABL scarcely follows the power law or log law, which are typically used in modeling and design. Power Law: 푈 푈푟 = 푧 푧푟 훼 ; Log Law: 푈 푈푟 = 푙푛 푧 푧0 푙푛 푧푟 푧0  Dedicated wind shear data is often lacking in practical wind energy projects. LIDAR and SODAR are likely solutions (not yet widely used).  Uncertainty is quantified in terms of the distribution of the deviations between different implementations of the two models, which rely on local surface roughness assumptions (e.g., smooth ground – foot high grass).  Output of wind shear model (hub-height wind speed):  The deviation is estimated as: 21
  • 22. Uncertainty in Turbine Power Response Model  The power response of turbines often deviate from that given by the manufacturer-reported power curves (e.g., due to atm. stability issues).  Since access to actual turbine power response data is limited, we use reported data from literature1 to quantify the deviations, and define uncertainty as the distribution of these deviations.  Output of turbine power response model: 22 1Wharton and Lundquist, Environmental Research Letters, January 2012
  • 23. Uncertainty in Wake Model  Generally, analytical wake models are used in wind farm layout design.  Access to actual field data is limited, and high-fidelity wake models are too expensive (e.g., 30 CPU-hrs) to conduct Monte Carlo simulations.  Hence, we quantify the uncertainty in the wake model as the deviations in the estimates made by the four popular analytical wake models.  Two model outputs (wake speed and wake width): Wake speed Wake width Tong et al., 23 ASME IDETC 2013
  • 24. Uncertainty in the Wake Model  The deviations in the wake model outputs are given by  Frandsen model is used as the scaling reference.  A 10% ambient turbulence intensity is assumed. 24 Wake speed Wake width
  • 25. VIDMAP: Structure 25 Uncertainty Quantification Quantifying the variability of first-level inputs and the uncertainty introduced by the upstream models Sensitivity Analysis Analyzing the sensitivity of downstream models to the first-level inputs and the upstream model outputs Information Visualization Visualizing the uncertainty introduced by constituent models and inter-model sensitivities in the design process
  • 26. Sensitivity Analysis of Energy Production  Sensitivity analysis is performed to quantify the sensitivity of the energy production model for a 100-turbine wind farm with respect to: 1. the independent first-level inputs; and 2. the deviations/errors in the upstream models.  To perform sensitivity analysis, the sample set was prepared from: 26 Independent first-level inputs Normalized errors/deviations in upstream models
  • 27. Sensitivity Analysis Method  We use the Extended Fourier Amplitude of Sensitivity Test (eFAST), which is a variance-based global sensitivity analysis method  Based on Fourier analysis, the first-order index is defined as the ratio of the conditional variance due to each input parameter to the variance of the model output 푆푖 = 2 휎푌 푋푖 2 휎푌  The total-order index estimates the sum of all effects involving the associated input parameter 푆푇푖 = 1 − 2 휎푌 푋≠푖 2 휎푌  We employ the eFAST implementation through the statistical tool, R, using a sample set of 20,000 data points. 27
  • 28. VIDMAP: Structure 28 Uncertainty Quantification Quantifying the variability of first-level inputs and the uncertainty introduced by the upstream models Sensitivity Analysis Analyzing the sensitivity of downstream models to the first-level inputs and the upstream model outputs Information Visualization Visualizing the uncertainty introduced by constituent models and inter-model sensitivities in the design process
  • 29. VIDMAP: Illustration  Connectors are colored based on 1st order sensitivity indices.  Total order indices are dominant, indicating highly coupled impact.  Model blocks are colored based on the variance of the model error or 29 model deviation.
  • 30. VIDMAP: Important Observations Among the independent inputs, turbine features have the strongest impact. The turbine power response model and the wake width estimation model are observed to have the strongest impact among model. These two models are also associated with the highest degrees of uncertainty. 30
  • 31. Concluding Remarks  We developed a visualization framework (VIDMAP) for informed model-based design of wind farms.  Specifically, we quantified and presented a MBSD visualization for: 1. Inter-model sensitivities and model-input sensitivities; 2. Model-induced uncertainties.  The VIDMAP obtained is found to be uniquely helpful in pointing out:  Which models/inputs in the WFLO process have stronger impact on the energy production estimates – turbine features, turbine power response model, and wake model.  Which models have higher degrees of uncertainty - turbine power response model, and wake width estimation model. 31
  • 32. Future Directions  Develop and implement a more standardized quantification of model uncertainty, e.g., in comparison to measured data.  Develop informed decision-making rules/strategies that directly utilize VIDMAP – towards faster and more reliable wind farm design. 32
  • 33. Questions and Comments 33 Thank you
  • 34. Major Challenges: Wind Farm Modeling The state of the art (2009) in modeling wind farm energy production (for design purposes) does not capture the coupled impact of the key natural/design factors at affordable computational costs*: Prior Research 1. Turbines with differing features (size/power characteristics) are not considered; 2. Variability of induction factor or energy loss fraction/turbine is not considered; 3. Coupled variation of wind speed, wind direction, and turbulence intensity not captured 4. High-fidelity wake models are computational prohibitive: current LES models [NREL SOFWA, 2012] ABL over topography 34/85 *Mosetti et al., Grady et al., Sisbot et al., OWFLO, Wan et al. Model Based Systems Design Integrative Modeling and Design of Wind Farms Energy-Sustainable Smart Buildings Reconfigurable Unmanned Aerial Vehicles (UAV) would need 600 million CPU-hours for optimizing a 25-turbine farm 5. Current WF energy output models do not account for spatial variations of the boundary layer over the site (e.g., due to vegetation cover or topographic variations) Different turbine sizes available CT and energy loss varies IPCC, 2011; Chowdhury et al., 2013; ETH LEC,
  • 35. Major Challenges: Wind Farm Design The state of art in wind farm layout design makes limiting assumptions*: 1. Selection and siting of turbines are not simultaneously optimized. 2. The flexibility of installing non-identical turbines on a site is generally lacking. 3. The extent of the site to be used (land area and shape) and the total nameplate capacity are prescribed prior to farm layout design (not quantitatively decided) . 4. Existing methods do not allow exploration of the important trade-offs among the engineering, socio-economic, & environmental objectives of wind farm development. 5. Existing methods generally pursue decision-making at a single scale of wind power generation technology (e.g., blade-scale or turbine-scale or farm-scale) – propagation of performance uncertainties and the impact of design-decisions across scales remain unexplored. Prior Research *Mosetti et al., Grady et al., Sisbot et al., OWFLO, Wan et al.; Gonzalez et al., 2010 35/85 Model Based Systems Design Integrative Modeling and Design of Wind Farms Energy-Sustainable Smart Buildings Reconfigurable Unmanned Aerial Vehicles (UAV)