Skip to main content
Sign up for general email updates regarding the ATB
The 2023 Electricity ATB is live! Join the webinar to learn what's new. Register to attend or sign up for general email updates.

Land-Based Wind

2023 ATB data for land-based wind are shown above. These projections use bottom-up engineering models in combination with representative 2030 wind turbine and plant technologies. The predicted future technology pathways are based on a series of innovations to overcome transportation challenges, advance wind turbine controls, and apply science-based modeling for next-generation wind turbines. These technology advancements enable economies of scale, balance-of-plant efficiencies, and more-efficient energy extraction for various turbine configurations in different wind resource regimes. Details on the representative 2030 wind turbines characteristics are presented in the Representative Technology section of this page. 

The following chart shows the levelized cost of energy (LCOE) scenario results presented above normalized for comparison with literature projections. 

As a result of intense competition from within as well as among several technologies, including solar PV and natural gas-fired generation, there is substantial focus throughout the global wind industry on driving down costs and increasing performance.

Scenario Descriptions

The 2023 ATB scenarios are different from the methods used in previous editions of the ATB. In prior editions, each scenario for land-based wind assumed one wind turbine technology characterization and projected innovations to overcome transportation challenges, advance wind turbine controls, and increase adoption of science-based modeling. In the 2023 ATB, multiple wind turbine technology configurations are developed separately, which allows for different technologies to be used within each scenario. 

The scenarios now consider four different technology configurations (see the Representative Technology section of this page for details) each with three cost and performance projections:

  • Conservative Cost and Performance Scenario (Conservative Scenario):  Cost and performance trajectories for each technology are based on conservative historical learning rates. Learning rates for capital expenditures vary by technology based on the Moderate Scenario's bottom-up engineering-based cost modeling of each technology in 2030. 
  • Moderate Cost and Performance Scenario (Moderate Scenario):  From 2021 to 2030, cost and performance trajectories for each technology are based on bottom-up scaling relationships and process-based balance-of-system and turbine component cost models for each technology in 2021 and 2030. From 2030 to 2050, cost and performance trajectories for each technology are based on moderate historical learning rates. 
  • Advanced Cost and Performance Scenario (Advanced Scenario): Cost and performance trajectories for each technology are based on aggressive historical learning rates. Learning rates for capital expenditures vary by technology based on the Moderate Scenario's bottom-up engineering-based cost modeling of each technology in 2030. 

The three scenarios are defined by combining bottom-up engineering-based modeling with literature data and learning rates. Calculated learning rates are based on global deployment projections (DNV, 2022) and literature projections are used to inform the Conservative and Advanced scenarios. The scenario definitions are used to estimate current and future cost and performance values over four different representative wind turbine configurations. Details on the wind turbines characteristics are presented in the Representative Technology section of this page.

All three scenarios start with the same cost and performance characteristics in the base year and the projections are generated by linearly interpolating between the base year and updated cost and performance assumptions in two future years: 2030 and 2050. See the table below for a summary of how the cost and performance assumptions vary by scenario in future years; base year assumptions are documented in the Methodology section of this page. 

Summary of Cost and Performance Assumptions and Justifications by Scenario (2030 and 2050)

ParameterConservative Scenario Moderate Scenario Advanced Scenario Justification
Capital expenditures (CAPEX)

Assumes 8% base learning rate in 2030. 

Learning rates vary by technology based on the Moderate Scenario's bottom-up engineering-based cost modeling of each technology in 2030. 

In 2050, CAPEX is back-calculated based on an LCOE learning rate of 10% from 2030 to 2050.

In 2030, wind turbine component, transport, and balance-of-system (BOS) cost are estimated using bottom-up cost models. Technology assumptions include: 

  • Segmented blades longer than 70 m reduce transport costs but increase blade manufacturing and installation costs.
  • Advanced manufacturing reduces blade mass and enables larger rotors.
  • Spiral-welded towers (both factory and on-site manufactured) decrease tower manufacturing costs, and on-site manufacturing removes transportation limits to tower size, thus enabling greater hub heights.
  • Transport costs are lower due to lighter-weight nacelles, fewer tower sections, and segmented blades.
  • BOS innovations include climbing cranes and reduced turbine spacing that is due to wake steering reducing access road costs and collection costs.

In 2050, CAPEX is back-calculated based on an LCOE learning rate of 14% from 2030 to 2050.

Assumes 25% base learning rate in 2030.

Learning rates vary by technology based on the Moderate Scenario's bottom-up engineering-based cost modeling of each technology in 2030. 

In 2050, CAPEX is back-calculated based on an LCOE learning rate of 20% from 2030 to 2050.

Various engineering firms have developed modular blade systems. For example, the Nabrajoint (see Nabrawind Technologies) uses a bolted connection between blade modules that can be transported individually and assembled on-site, eliminating the logistics barriers for blade lengths over 70 m; the first full-scale joint in a real blade segment has already been manufactured and tested to demonstrate strength under operative loads.

Current research such as that by the Big Adaptive Rotor project is investigating various rotor configuration, including two-bladed, downwind, and partial pitch technologies. And current research is investigating transportation options for large blades (e.g., airship blades). 

Several advanced steel construction and concrete/steel hybrid tower designs from various design and manufacturing firms are available on the market that enable cost-effective towers at 120 m. One example of an advanced steel construction designed tower is the large-diameter steel tower launched by Vestas in 2014 (Vestas Wind Systems A/S, 2014). In addition, the on-site fabrication of continuous spiral-welded towers has been demonstrated by Keystone Tower Systems, which has also designed optimal high hub-height towers up to 180 m (see Keystone Tower Systems).
Operating expenditures (OPEX)Assumes 5% learning rate for all technologies in 2030 and 2050. OPEX values vary by technology in 2030 and 2050 based on literature estimates that consider economies of scale, resulting in decreasing OPEX as the wind turbine rating increases (Liu and Garcia da Fonseca, 2021)Assumes 20% learning rate for all technologies in 2030 and 2050. The wind industry expects OPEX will decrease as wind turbine rating increases.  
Net capacity factor (NCF)

Gross energy production is derived from power curves for representative wind turbine characteristics.

Assumes no integration of high-fidelity modeling or advanced controls, and limited plant optimization.

Total system losses for all technologies are assumed to be 18% in 2030 and 16% in 2050. 

Gross energy production is derived from power curves for representative wind turbine characteristics.

Assumes increased integration of high-fidelity modeling and advanced controls decreases losses. 

Total system losses for all technologies are assumed to be 13.4% in 2030 and 12% in 2050. 

 

 

 

Gross energy production is derived from power curves for representative wind turbine characteristics.

Assumes all levels of high-fidelity modeling and advanced controls are achieved.

Total system losses for all technologies are assumed to be 10.7% in 2030 and 9.5% in 2050.

Wind industry and national laboratory research and development programs are focused on enabling advanced high-fidelity modeling to capture rotor wake dynamics and full-resolution of rotating blades, assessment of wake development properties from dynamic wind plant control strategies (e.g., yaw, thrust, and tilt), and evaluation of wind plant controls that elevate high system loads and impact system design. The industry continues to advance atmospheric sciences and forecasting, novel sensing technologies and measurement techniques, computer and computational sciences, multiscale and multidisciplinary computational models, digitalization, big data, and information/data science (Dykes et al., 2019)

In general, differences among the technology cost cases reflect different levels of adoption of innovations. Reductions in technology costs reflect the following cost reduction opportunities:

  • Continued turbine scaling to higher-megawatt turbines with larger rotors such that the megawatt capacity/swept area decreases, resulting in higher capacity factors for a given location
  • Continued diversification of turbine technology whereby the largest rotor diameter turbines tend to be located in lower wind speed sites, but the number of turbine options for higher wind speed sites increases
  • Introduction of segmented blades, which allows for a common blade base to be married to several segmented blade tips, helping reduce blade production costs
  • Taller towers that result in higher capacity factors for a given site that are due to the wind speed increase with elevation above ground level
  • Improved plant siting and operation to reduce plant-level energy losses, resulting in higher capacity factors
  • Wind turbine technology and plants that are increasingly tailored to and optimized for local site-specific conditions
  • More-efficient operation and maintenance (O&M) procedures combined with more reliable components to reduce annual average fixed operation and maintenance (FOM) costs
  • Continued manufacturing and design efficiencies such that the capital cost per kilowatt decreases with larger turbine components
  • Adoption of a wide range of innovative control, design, and material concepts that facilitate the above high-level trends.

Scenario Assumptions

The cost reduction estimates for the Conservative and Advanced scenarios are derived from the calculated number of doublings for projected global land-based wind deployment projections (DNV, 2022), and they assume an applied learning rate. These assumed values and the calculated percentage reduction for 2030 are summarized in the following tables. The Moderate Scenario estimates are produced from bottom-up engineering-based models and literature estimates. 

Scenario Assumptions for CAPEX (2030)

Scenario2021 Global Installed Capacity (GW)2030 Global Installed Capacity (GW)Global Installed Doublings in 2030Learning Rate (%)Percentage Reduction from 2021 (%)
Conservative Scenario7741,6451.096 (assumed)6.5
Moderate Scenario7741,6451.0914.415.6
Advanced Scenario7741,6451.0918 (assumed)19.6

Scenario Assumptions for OPEX (2030)

Scenario2021 Global Installed Capacity (GW)2030 Global Installed Capacity (GW)Global Installed Doublings in 2030Learning Rate (%)Percentage Reduction from 2021 (%)
Conservative Scenario7741,6451.095 (assumed)5.4
Moderate Scenario7741,6451.091010.9
Advanced Scenario7741,6451.0920 (assumed)21.8

The examples of values presented in these tables are for land-based wind Class 4 Technology 1, which is defined in the Resource Categorization and Representative Technology sections of this page. 

Representative Technology

The 2023 ATB introduces four new representative wind turbine technologies—and departs from assumptions in previous ATB editions—to allow for technology configurations that are more appropriate for each wind resource class (details on wind resource class provided in the Resource Categorization section of this page). We selected these four wind turbine technologies in consultation with industry with the intent of representing the range of technology that we expect to be available in 2030, including a higher specific power machine that would be more suitable for land-constrained sites. The representative near-future (2030) wind turbine characteristics presented in the 2023 ATB are derived from industry expert interviews and literature expectations. Turbine ratings range from 3.3 MW to 8.3 MW, with rotor diameters of 148–196 m, hub heights of 100–140 m, and specific power ratings of 192–275 W/m2. Notably, turbines that are nearly of this scale are commercially available today and are expected to be installed at select sites in the United States in the 2020s. 

See the following table for details on each technology configuration (T1–T4) and how they compare to a 2021 industry-average turbine (Stehly and Duffy, 2022).

Representative Wind Turbine and Plant Characteristics

Parameter2021 Market Average Wind Turbine T1T2T3T4
Turbine rating (MW)368.33.36
Rotor diameter (m)128170196148196
Specific power (W/m2)235264275192199
Hub height (m)94115130100140
Wind plant rating (MW)200200200200200
Number of turbines6734256134

We assume the characteristics for each technology configuration remain constant from 2021 to 2050, and we calculate cost and performance trajectories for each configuration using all three sets of cost and performance assumptions (see the Scenario Descriptions section of this page). The technology configuration that results in the minimum LCOE for a given range of annual average wind speeds (specified using a resource class; see the Resource Categorization section of this page) is the technology configuration that is reported in the ATB for that wind resource class (e.g., at strong wind resource sites, T1 results in the lowest LCOE of any technology; at a low resource site, T4 results in lower LCOE values due to the taller hub height and lower specific power rating; see the Resource Categorization section of this page for details). This departure from turbine technology assumptions in previous ATB editions is intended to allow for turbine configurations that are more appropriate for each wind resource class.  

 

Resource Categorization

In the 2023 ATB, the cost and performance data for wind technologies are specified for different resource categories that are consistent with those used to represent the full wind resource in the National Renewable Energy Laboratory (NREL) Regional Energy Deployment System (ReEDS) model (Brown et al., 2020). In ATB editions before 2020, these classes were referred to as techno-resource groups (TRGs) and they were designed based on site-specific LCOE by considering, in combination, the wind resource quality (e.g., wind speed) and turbine configuration (e.g., specific power). The TRG methodology is described in Appendix H of the Wind Vision study (DOE, 2015). Starting with the 2020 ATB, the TRG-based classification was replaced with a simpler set of resource wind speed classes that are defined based on only annual mean wind speed. 

For land-based wind, each of the potential wind sites represented in the ReEDS model is associated with one of 10 wind speed classes. The range of annual mean wind speeds, averaged for all years from 2007 through 2013, ranges from 1.72 m/s to 12.89 m/s. To identify the break points that define the 10 wind speed classes within this wind speed range, we specify the percentile of the total wind resource technical potential in capacity terms associated with each class. For example, the top wind speed class (Wind Speed Class 1) is defined based on the mean wind speed range of the top 1% of all potential wind capacity in the contiguous United States. We specify a narrower percentile range for the top classes so that ReEDS has higher-resolution representation for the best sites.

The following table shows the percentile ranges assumed for each resource class as well as the resulting mean wind speed ranges that define each class. We apply these percentiles to a representation of the wind resource using only the most basic exclusions, which are referred to as the "open access" scenario (Lopez et al., 2021) and based on analysis using the Renewable Energy Potential (reV) model (Maclaurin et al., 2019). Although the ReEDS-based analysis and other analyses can and do rely on different resource representations with different exclusion assumptions, the same mean wind speed break points are used for the 10 wind speed classes shown in the table.

The average wind speed varies by project across the United States. Wind Speed Class 4 is indicative of a moderate-quality wind regime and is intended to be a representative wind resource for most wind projects installed in the United States. Wind Speed Class 1 is suggestive of a resource-rich wind resource that is most attractive for wind project development, and Wind Speed Class 10 represents a less favorable wind resource site.

In the 2023 ATB, one technology configuration (see the Representative Technology section of this page) is assigned to each wind speed class selected by the technology configuration with the lowest LCOE within each wind speed class. This method results in technology configuration T1 being selected for Wind Speed Classes 1-7, T2 for Wind Speed Class 8, T3 for Wind Speed Class 9, and T4 for Wind Speed Class 10. Assigning specific wind turbine technologies to different wind classes is expected to represent a more accurate supply curve.  

Land-Based Wind Resource and Technology Classes

Wind Speed ClassRepresentative TechnologyAvg. Wind Speed (m/s)Min. Wind Speed (m/s)Max. Wind Speed (m/s)Wind Speed Range (m/s)Percentile Range
1T1 9.52 9.0112.893.88<1%
2T1 8.87 8.779.010.241%–2%
3T1 8.66 8.578.770.202%–4%
4T1 8.45 8.358.570.224%–8%
5T1 8.20 8.078.350.288%–16%
6T1 7.84 7.628.070.4516%–32%
7T1 7.36 7.107.620.5232%–48%
8T2 6.80 6.537.10.5748%–64%
9T3 6.21 5.906.530.6364%–80%
10T4 5.13 1.725.904.1880%–100%

Values are for wind speeds 110 meters above the ground.

Methodology

This section describes the methodology to estimate base year and future CAPEX, OPEX, and NCF. The base year and future cost and performance estimates assume a 200-MW wind plant, which is consistent with recently installed project sizes (Wiser and Bolinger, 2022). For standardized assumptions, see labor costregional cost variationmaterials cost indexscale of industrypolicies and regulations, and inflation.

Capital Expenditures (CAPEX)

Definition: Wind plant capital expenditures are defined to include items noted in the Components of CAPEX table below.

Base Year: CAPEX associated with the four representative technologies are estimated using bottom-up engineering models for hypothetical wind plants installed in 2021. The Base Year value for each wind speed class is dependent on the selected representative technology (see the Land-Based Wind Resource and Technology Classes table in the Resource Categorization section of this page). In 2022, CAPEX increases from 2021 due to supply chain stress, high commodity prices, and increased logistics costs. These near-term factors are accounted for by applying an average CAPEX multiplier of 15% in 2022 and 10% in 2023, relative to 2021 costs. These inflationary impacts are assumed to recover around 2024 ((IEA, 2022)(Vestas, 2022)(Wood Mackenzie, 2022)). The following chart shows historical CAPEX for land-based wind.

 

Future Years: The technology configurations are used to estimate the total system CAPEX of a theoretical commercial scale (e.g., 200-MW) project. The site-specific design optimization process, which is often reflected in different CAPEX values across wind speed classes, is simplified. In 2030, the CAPEX changes for each of the scenarios (i.e., Conservative, Moderate, and Advanced) and for each turbine. The Conservative Scenario estimates are derived assuming an 8% base learning rate, and the Advanced Scenario assumes a 25% base learning rate. Learning rates vary by technology in the Conservative Scenario and the Advanced Scenario based on the Moderate Scenario's bottom-up engineering-based costs for each technology. The base learning rates are adjusted using a multiplier to account for changes in learning by technology. The multiplier is based on the change in CAPEX from the base year to 2030 for each technology and is normalized by the technology with the highest change in CAPEX, which is T4. The learning rate multipliers for each technology are captured in the table below. In 2050, CAPEX is back-calculated based on an LCOE learning rate of 10%, 14%, and 20% from 2030 to 2050 for the Conservative, Moderate, and Advanced Scenarios, respectively.

The relatively low observed sensitivity to significantly different turbine configurations for a single reference site indicates uncertainty and a need for wind turbine tailoring for varied site conditions. It is generally expected that over the long term, wind turbine designs will be optimized for project-specific site conditions. In the ATB, CAPEX reflects typical plants and does not include differences in regional costs associated with labor, materials, taxes, or system requirements. Project interconnection (i.e., tie line and new/upgrade substation) costs are not included in CAPEX. The related NREL Standard Scenarios use regional CAPEX adjustments. The range of CAPEX demonstrates variation with wind resource in the contiguous United States.

Use the following table to view the components of CAPEX, and how they change with the scenarios.

Components of CAPEX

 

Cost Details by Representative Wind Turbine Technology (2030)

Parameter2021 Market Average Wind Turbine T1T2T3T4
Turbine rating (MW)36.08.33.36.0
Rotor diameter (m)128170196148196
Hub height (m)94115130100140
CAPEX ($/kW)1,0961,150  1,204  1,263  1,536  
Reduction in CAPEX relative to 2021 (%)Not applicable16%19%11%22%
Scaling factor used to vary learning rate by technologyNot applicable0.720.880.491
Learning rate assumed in Conservative Scenario (%)Not applicable6748
Learning Rate assumed in Advanced Scenario (%)Not applicable18221225

CAPEX values reported for Moderate Scenario; the 2021 market average wind turbine is reported for reference only; it is not used as a representative technology for any wind speed classes.

Operation and Maintenance (O&M) Costs

Definition: OPEX represent the all-in fixed and variable expenditures required to operate and maintain a wind plant, including items noted in the Components of O&M Costs table below. For land-based wind, the all-in O&M expenditures is reported in FOM. 

Base Year: The all-in OPEX cost for each representative technology is informed by recent literature ((Liu and Garcia da Fonseca, 2021) and (Wiser et al., 2019)). The Base Year cost is different for each representative technology because O&M costs are expected to vary by wind turbine rating with projections showing lower FOM costs as turbine rating increases. FOM will vary by technology, again due to the differences in turbine rating. The following chart shows OPEX based on wind plant commissioning date (Wiser and Bolinger, 2022).

The historical OPEX values are based on wind turbine technology characteristics installed in each project commission year. Project OPEX reported is for the Moderate Scenario, which assumes a 6-MW wind turbine, and will have lower OPEX estimates than the historical data due to larger wind turbine scale. 

Future Years: Future FOM is assumed to decline by approximately 11% by 2030 in the Moderate Scenario, 5% in the Conservative Scenario (assuming a 5% learning rate), and 22% in the Advanced Scenario (assuming a 20% learning rate). These values are informed by recent OPEX estimates from (Liu and Garcia da Fonseca, 2021) and vary by wind turbine rating, with greater OPEX reductions resulting from larger machine ratings. The ATB does not consider differences in regional FOM costs associated with labor, materials or differences in O&M strategies (e.g., operating the wind plant to maximize tax credits by deferring maintenance activities). 

Use the following table to view the components of O&M.

Components of O&M Costs

 

Cost Details by Representative Wind Turbine Technology (2030)

Parameter2021 Market Average Wind Turbine T1T2T3T4
Turbine rating (MW)368.33.36
Rotor diameter (m)128170196148196
Hub height (m)94115130100140
OPEX ($/kW-year)36.427.0  24.6  35.1  27.0  

OPEX values reported for Moderate Scenario; the 2021 market average wind turbine is reported for reference only, and it is not used as a representative technology for any wind speed classes.

Capacity Factor

Definition: The capacity factor is influenced by the wind plant's generation profile, expected downtime, and energy losses within the plant. The specific power (i.e., ratio of machine rating to rotor swept area) and hub height are design choices that influence the capacity factor. Most installed U.S. wind plants generally align with ATB estimates for performance in Wind Speed Classes 2–7. High wind resource sites associated with Wind Speed Class 1 and very low wind resource sites associated with Wind Speed Classes 8–10 are not as common in the historical data, but the range of observed data encompasses ATB estimates.

Base Year: The base year capacity factors are calculated by generating a power curve for each wind turbine defined in the Representative Technology section of this page and using the Weibull distribution with average wind speeds in each of the appropriate wind speed class (see the Resource Categorization section of this page) to produce the annual energy production. The hub height of each representative wind turbine is taken into consideration by extrapolating the wind speed up or down from the referenced 110-m, above ground level assuming a power law shear exponent of 0.2.

The following chart shows a range of capacity factors based on variation in the resource for wind plants in the contiguous United States and the future capacity factor estimates for the Conservative, Moderate, and Advanced scenarios, which vary by scenario and technology.   

Future Years: The methods for calculating future year net capacity factors are like the methods in the base year. However, technology innovations are assumed to increase wind plant energy capture through advanced controls and reduce total system losses that increase capacity factor for all wind speed classes (Dykes et al., 2017). Turbine rotor diameter, specific power, and hub height can each be traded-off to achieve a given capacity factor, depending on site conditions and costs for pursuing one approach or the other; plant layout and operating strategies that impact losses may also be used to achieve a given capacity factor. The 2023 ATB presents one of many capacity factor improvement pathways for LCOE reduction. 

Performance Details by Representative Wind Turbine Technology (2030)

Parameter2021 Market Average
Wind Turbine 
T1T2T3T4
Turbine rating (MW)368.33.36
Rotor diameter (m)128170196148196
Hub height (m)94115130100140
NCF (%)42.8
(Wind Speed
Class 4)  
47.5
(Wind Speed
Class 4) 
36.3
(Wind Speed
Class 8) 
35.1
(Wind Speed
Class 9) 
27.6
(Wind Speed
Class 10) 

NCF values reported for Moderate Scenario; the 2021 market average wind turbine reported for reference only, and it is not used as a representative technology for any wind speed classes.

References

The following references are specific to this page; for all references in this ATB, see References.

DNV. “Energy Transition Outlook 2022.” DNV, 2022. https://store.veracity.com/energy-transition-outlook.

Liu, Daniel, and Leila Garcia da Fonseca. “2021 O&M Economics and Cost Data for Onshore Wind Power Markets.” Wood Mackenzie, May 2021. https://www.woodmac.com/reports/power-markets-oandm-economics-and-cost-data-for-onshore-wind-power-markets-2021-497998/.

Dykes, Katherine, Paul Veers, Eric Lantz, Hannele Holttinen, Ola Carlson, Aidan Tuohy, Anna Maria Sempreviva, et al. “Results of IEA Wind TCP Workshop on a Grand Vision for Wind Energy Technology.” International Energy Agency, April 2019. https://doi.org/10.2172/1508509.

Stehly, Tyler, and Patrick Duffy. “2021 Cost of Wind Energy Review.” Golden, CO: National Renewable Energy Laboratory, December 2022. https://www.nrel.gov/docs/fy23osti/84774.pdf.

Brown, Maxwell, Wesley Cole, Kelly Eurek, Jon Becker, David Bielen, Ilya Chernyakhovskiy, Stuart Cohen, et al. “Regional Energy Deployment System (ReEDS) Model Documentation: Version 2019.” Golden, CO: National Renewable Energy Laboratory, March 2020. https://doi.org/10.2172/1606151.

DOE. “Wind Vision: A New Era for Wind Power in the United States.” Washington, D.C.: U.S. Department of Energy, 2015. https://doi.org/10.2172/1220428.

Lopez, Anthony, Trieu Mai, Eric Lantz, Dylan Harrison-Atlas, Travis Williams, and Galen Maclaurin. “Land Use and Turbine Technology Influences on Wind Potential in the United States.” Energy 223, no. 120044 (2021): 1–14. https://doi.org/10.1016/j.energy.2021.120044.

Maclaurin, Galen, Nick Grue, Anthony Lopez, and Donna Heimiller. “The Renewable Energy Potential (ReV) Model: A Geospatial Platform for Technical Potential and Supply Curve Modeling.” Golden, CO: National Renewable Energy Laboratory, September 2019. https://doi.org/10.2172/1563140.

Wiser, Ryan, and Mark Bolinger. “Land-Based Wind Market Report: 2022 Edition.” Technical. U.S. Department of Energy, August 2022. https://www.energy.gov/sites/default/files/2022-08/land_based_wind_market_report_2202.pdf.

IEA. “Impact of High Commodity Price Scenario on Forecast Total Investment Costs and CAPEX, Onshore Wind and Utility-Scale PV, 2015-2026,” October 26, 2022. https://www.iea.org/data-and-statistics/charts/impact-of-high-commodity-price-scenario-on-forecast-total-investment-costs-and-capex-onshore-wind-and-utility-scale-pv-2015-2026.

Wood Mackenzie. “Wood Mac US Power and Renewables Competitiveness Report.” Wood Mackenzie, 2022. https://www.woodmac.com/.

Wiser, Ryan, Mark Bolinger, and Eric Lantz. “Assessing Wind Power Operating Costs in the United States: Results from a Survey of Wind Industry Experts.” Renewable Energy Focus 30, no. September 2019 (2019): 46–57. https://doi.org/10.1016/j.ref.2019.05.003.

Dykes, Katherine, Maureen Hand, Tyler Stehly, Paul Veers, Mike Robinson, Eric Lantz, and Richard Tusing. “Enabling the SMART Wind Power Plant of the Future Through Science-Based Innovation.” Technical Report. Golden, CO: National Renewable Energy Laboratory, 2017. https://doi.org/10.2172/1378902.

Section
Issue Type
Problem Text
Suggestion