SlideShare a Scribd company logo
US Wind Farm Degradation Study:
Getting Under the Hood
Liz Walls, Software Development Lead
& Senior Renewable Energy Engineer
ACP Resource and Technology Workshop
Sept. 8, 2022 Las Vegas. NV
Introduction
• Every year, more and more publicly-available datasets are becoming accessible to the
scientific community.
• Simultaneously, it is becoming increasingly easy to write code to analyze data and work
with big datasets.
• However, even with big data and advanced algorithms, it is still vital to understand and
“know” your data
• How can outliers and issues with methodology lead to wrong conclusions?
• Let’s examine the peer-reviewed paper titled: “How Does Wind Project Performance
Change with Age in the United States?”
Published Paper Overview
• Published in peer-reviewed journal
“Joule” May 2020
• Examined trends in production at
US wind farms of all sizes
• Newer wind farms show less
degradation than older wind farms
• Observed performance drop at year
when production tax credit (PTC)
expires
Looking Under the Hood
• Researchers at LBNL made their dataset publicly available
• January 2001 to December 2017
• Monthly net generation from EIA
• Monthly wind index based on ERA5 wind speed data
• 917 wind farms
• 1 MW to 662 MW in capacity
• Average capacity: 90 MW
• 23% wind farms used in
study ≤ 10 MW
Duplicating Results
• For each wind farm,
• Calculated average yearly capacity
factor (CF) adjusted by wind index
• Calculated ‘performance’ which is
CF normalized to CF achieved in
second year of operation
• Found average performance by year of
operation
• Matched published results quite well
and observed same drop at Year 10
Taking a Different Approach
• Potential issues with methodology:
1. After Year 10, wind farm bin count declines
• When analyzing trends, same group of
items should be included in each bin
2. All wind farms treated the same in average
• Wind farms should be grouped by farm
capacity
• Ideas for revised methodology:
1. Group and analyze wind farms by Year of Operation:
• i) ≥ 10 yrs, ii) ≥ 11 yrs, iii) ≥ 12 yrs, iv) ≥ 13 yrs, v) ≥ 14 yrs
2. Group wind farms by capacity and by COD Year
Results with Modified Approach
• In Year 10, significant drop in
performance for wind farms with ≥
11 years
• But no drop in performance at Year
10 for wind farms with ≥ 13 years of
production
• What’s going on here??
Diving in Deeper
• Diving in deeper:
• In 2006, Suzlon opened a blade manufacturing facility in Minnesota
• In MN, from Feb. to May 2006, Suzlon installed
• 12 - 1 x 1.25 MW turbine projects
• 3 – 8 x 1.25 MW turbine projects
• 10 years into operation, Suzlon derated turbines due to serial defect in blades
• After Year 10, all of the above projects were decommissioned.
• In 2016, Suzlon blade facility was sold to a company who planned to convert it into a
fertilizer plant.
• How would the analysis change if these projects were omitted?
Updated Results with MN Suzlon
Projects Omitted
• With MN Suzlon projects removed
• No drop in performance at Year 10
Taking a Closer Look at Long-Term
Adjustments
• Monthly WI provided by LBNL
• Appears that long-term generation was calculated as average of all months.
• Creates very large swings in monthly WI since monthly production is being
normalized to average annual production.
• Recalculated monthly WI where long-term generation is found on monthly basis
• i.e. January 2010 WI = January 2010 Production / Average January Production
Taking a Closer Look at Long-Term
Adjustments
• With LBNL WI, the long-term corrected monthly CF has very different seasonal trend
than the measured CF
• With ArcVera’s estimated WI, the long-term corrections are more subtle
• Smaller LT correction in high wind months (Apr. to Jun.)
• Larger LT correction in low wind months (Nov. to Feb.)
100 MW+ Wind Farm Degradation by COD
• Isolated wind farms with 100
MW+ installed capacity
• Used updated monthly WI to
correct to long-term
• Calculated average
degradation by COD year
• Steady improvement in farm
degradation since early 00’s.
• Average degradation
hovering around -0.1%.
Closing Thoughts and Next Steps
• Data analysis can be deceiving and can lead to wrong conclusions!
• Important to know your data backwards and forwards
• Try to think of several ways of looking at the data
• Try to disprove your theory
• Be aware of expectation bias!
• Update analysis with new EIA data
• Provided data up to end of 2017
THANK YOU! QUESTIONS?
liz.walls@arcvera.com
Back-up Slides
Results with MN Suzlon Projects Omitted
• With MN Suzlon projects
removed
• No drop at year 10
• Has degradation been
steadily improving with
newer farms?
• How will weighting by wind
farm capacity change the
results?
Results with Weighted Average
• With MN Suzlon projects
removed
• Weighted by wind farm
capacity
• No drop at year 10
• Newer farms showing less
degradation
• What if the Suzlon projects
had been omitted from the
original analysis?

More Related Content

Similar to ACP R&T_2022 - Presentation - US Wind Farm Degradation Study_Walls.pdf

Woodbury Community Solar Garden Workshop & Developer Fair
Woodbury Community Solar Garden Workshop & Developer FairWoodbury Community Solar Garden Workshop & Developer Fair
Woodbury Community Solar Garden Workshop & Developer FairUniversity of Minnesota
 
DOW Public Meeting Slides 2.5.20
DOW Public Meeting Slides 2.5.20DOW Public Meeting Slides 2.5.20
DOW Public Meeting Slides 2.5.20Heritage Wind
 
Industrial Shift To Renewable Energy Powerpoint Presentation Slides
Industrial Shift To Renewable Energy Powerpoint Presentation SlidesIndustrial Shift To Renewable Energy Powerpoint Presentation Slides
Industrial Shift To Renewable Energy Powerpoint Presentation SlidesSlideTeam
 
DSD-INT 2018 Verification analytics system and Delft3D FEWS integration - Mil...
DSD-INT 2018 Verification analytics system and Delft3D FEWS integration - Mil...DSD-INT 2018 Verification analytics system and Delft3D FEWS integration - Mil...
DSD-INT 2018 Verification analytics system and Delft3D FEWS integration - Mil...Deltares
 
Energy Management 101
Energy Management 101Energy Management 101
Energy Management 101nbutler
 
Electricity peak demand charges overview
Electricity peak demand charges overviewElectricity peak demand charges overview
Electricity peak demand charges overviewstem_marketing
 
Maximizing Power Production for Small Commercial Projects
Maximizing Power Production for Small Commercial ProjectsMaximizing Power Production for Small Commercial Projects
Maximizing Power Production for Small Commercial Projectsallearthrenewables
 
Environmental Markets Association Presentation - Renewable Portfolio Standard...
Environmental Markets Association Presentation - Renewable Portfolio Standard...Environmental Markets Association Presentation - Renewable Portfolio Standard...
Environmental Markets Association Presentation - Renewable Portfolio Standard...gormanjs
 
Hidden opportunities: managing demand for a more sustainable energy infrastru...
Hidden opportunities: managing demand for a more sustainable energy infrastru...Hidden opportunities: managing demand for a more sustainable energy infrastru...
Hidden opportunities: managing demand for a more sustainable energy infrastru...Buildings Alive
 
Solarize Syracuse workshop
Solarize Syracuse workshopSolarize Syracuse workshop
Solarize Syracuse workshopbriandominick
 
Load Forecasting
Load ForecastingLoad Forecasting
Load Forecastinglinsstalex
 
Josefine Selj Oslo Startup Day Climate-KIC February 8th 2017
Josefine Selj Oslo Startup Day Climate-KIC February 8th 2017Josefine Selj Oslo Startup Day Climate-KIC February 8th 2017
Josefine Selj Oslo Startup Day Climate-KIC February 8th 2017Oslo Business Region
 
Bill Haman - Opportunities for Pork Producers: The Rise of Solar Energy
Bill Haman - Opportunities for Pork Producers: The Rise of Solar EnergyBill Haman - Opportunities for Pork Producers: The Rise of Solar Energy
Bill Haman - Opportunities for Pork Producers: The Rise of Solar EnergyJohn Blue
 
Zero energy building
Zero energy buildingZero energy building
Zero energy buildingRaghav Gupta
 
Power Predictor 2.0
Power Predictor 2.0Power Predictor 2.0
Power Predictor 2.0kironc
 
Kirloskar brother ltd. Kirloskarvadi
Kirloskar brother ltd. KirloskarvadiKirloskar brother ltd. Kirloskarvadi
Kirloskar brother ltd. KirloskarvadiSubin Suresh
 

Similar to ACP R&T_2022 - Presentation - US Wind Farm Degradation Study_Walls.pdf (20)

Alternative Energy
Alternative EnergyAlternative Energy
Alternative Energy
 
Woodbury Community Solar Garden Workshop & Developer Fair
Woodbury Community Solar Garden Workshop & Developer FairWoodbury Community Solar Garden Workshop & Developer Fair
Woodbury Community Solar Garden Workshop & Developer Fair
 
DOW Public Meeting Slides 2.5.20
DOW Public Meeting Slides 2.5.20DOW Public Meeting Slides 2.5.20
DOW Public Meeting Slides 2.5.20
 
Industrial Shift To Renewable Energy Powerpoint Presentation Slides
Industrial Shift To Renewable Energy Powerpoint Presentation SlidesIndustrial Shift To Renewable Energy Powerpoint Presentation Slides
Industrial Shift To Renewable Energy Powerpoint Presentation Slides
 
Eskom State of the Power Briefing
Eskom State of the Power BriefingEskom State of the Power Briefing
Eskom State of the Power Briefing
 
DSD-INT 2018 Verification analytics system and Delft3D FEWS integration - Mil...
DSD-INT 2018 Verification analytics system and Delft3D FEWS integration - Mil...DSD-INT 2018 Verification analytics system and Delft3D FEWS integration - Mil...
DSD-INT 2018 Verification analytics system and Delft3D FEWS integration - Mil...
 
Energy Management 101
Energy Management 101Energy Management 101
Energy Management 101
 
Electricity peak demand charges overview
Electricity peak demand charges overviewElectricity peak demand charges overview
Electricity peak demand charges overview
 
Maximizing Power Production for Small Commercial Projects
Maximizing Power Production for Small Commercial ProjectsMaximizing Power Production for Small Commercial Projects
Maximizing Power Production for Small Commercial Projects
 
Environmental Markets Association Presentation - Renewable Portfolio Standard...
Environmental Markets Association Presentation - Renewable Portfolio Standard...Environmental Markets Association Presentation - Renewable Portfolio Standard...
Environmental Markets Association Presentation - Renewable Portfolio Standard...
 
Hidden opportunities: managing demand for a more sustainable energy infrastru...
Hidden opportunities: managing demand for a more sustainable energy infrastru...Hidden opportunities: managing demand for a more sustainable energy infrastru...
Hidden opportunities: managing demand for a more sustainable energy infrastru...
 
Solarize Syracuse workshop
Solarize Syracuse workshopSolarize Syracuse workshop
Solarize Syracuse workshop
 
Load Forecasting
Load ForecastingLoad Forecasting
Load Forecasting
 
Josefine Selj Oslo Startup Day Climate-KIC February 8th 2017
Josefine Selj Oslo Startup Day Climate-KIC February 8th 2017Josefine Selj Oslo Startup Day Climate-KIC February 8th 2017
Josefine Selj Oslo Startup Day Climate-KIC February 8th 2017
 
Bill Haman - Opportunities for Pork Producers: The Rise of Solar Energy
Bill Haman - Opportunities for Pork Producers: The Rise of Solar EnergyBill Haman - Opportunities for Pork Producers: The Rise of Solar Energy
Bill Haman - Opportunities for Pork Producers: The Rise of Solar Energy
 
Poster Board_v8
Poster Board_v8Poster Board_v8
Poster Board_v8
 
Zero energy building
Zero energy buildingZero energy building
Zero energy building
 
Final Project -Hansa Keswani
Final Project -Hansa KeswaniFinal Project -Hansa Keswani
Final Project -Hansa Keswani
 
Power Predictor 2.0
Power Predictor 2.0Power Predictor 2.0
Power Predictor 2.0
 
Kirloskar brother ltd. Kirloskarvadi
Kirloskar brother ltd. KirloskarvadiKirloskar brother ltd. Kirloskarvadi
Kirloskar brother ltd. Kirloskarvadi
 

Recently uploaded

GBSN - Biochemistry (Unit 5) Chemistry of Lipids
GBSN - Biochemistry (Unit 5) Chemistry of LipidsGBSN - Biochemistry (Unit 5) Chemistry of Lipids
GBSN - Biochemistry (Unit 5) Chemistry of LipidsAreesha Ahmad
 
biotech-regenration of plants, pharmaceutical applications.pptx
biotech-regenration of plants, pharmaceutical applications.pptxbiotech-regenration of plants, pharmaceutical applications.pptx
biotech-regenration of plants, pharmaceutical applications.pptxANONYMOUS
 
Gliese 12 b: A Temperate Earth-sized Planet at 12 pc Ideal for Atmospheric Tr...
Gliese 12 b: A Temperate Earth-sized Planet at 12 pc Ideal for Atmospheric Tr...Gliese 12 b: A Temperate Earth-sized Planet at 12 pc Ideal for Atmospheric Tr...
Gliese 12 b: A Temperate Earth-sized Planet at 12 pc Ideal for Atmospheric Tr...Sérgio Sacani
 
Circulatory system_ Laplace law. Ohms law.reynaults law,baro-chemo-receptors-...
Circulatory system_ Laplace law. Ohms law.reynaults law,baro-chemo-receptors-...Circulatory system_ Laplace law. Ohms law.reynaults law,baro-chemo-receptors-...
Circulatory system_ Laplace law. Ohms law.reynaults law,baro-chemo-receptors-...muralinath2
 
Structures and textures of metamorphic rocks
Structures and textures of metamorphic rocksStructures and textures of metamorphic rocks
Structures and textures of metamorphic rockskumarmathi863
 
Detectability of Solar Panels as a Technosignature
Detectability of Solar Panels as a TechnosignatureDetectability of Solar Panels as a Technosignature
Detectability of Solar Panels as a TechnosignatureSérgio Sacani
 
PRESENTATION ABOUT PRINCIPLE OF COSMATIC EVALUATION
PRESENTATION ABOUT PRINCIPLE OF COSMATIC EVALUATIONPRESENTATION ABOUT PRINCIPLE OF COSMATIC EVALUATION
PRESENTATION ABOUT PRINCIPLE OF COSMATIC EVALUATIONChetanK57
 
SAMPLING.pptx for analystical chemistry sample techniques
SAMPLING.pptx for analystical chemistry sample techniquesSAMPLING.pptx for analystical chemistry sample techniques
SAMPLING.pptx for analystical chemistry sample techniquesrodneykiptoo8
 
Topography and sediments of the floor of the Bay of Bengal
Topography and sediments of the floor of the Bay of BengalTopography and sediments of the floor of the Bay of Bengal
Topography and sediments of the floor of the Bay of BengalMd Hasan Tareq
 
Hemoglobin metabolism_pathophysiology.pptx
Hemoglobin metabolism_pathophysiology.pptxHemoglobin metabolism_pathophysiology.pptx
Hemoglobin metabolism_pathophysiology.pptxmuralinath2
 
Lab report on liquid viscosity of glycerin
Lab report on liquid viscosity of glycerinLab report on liquid viscosity of glycerin
Lab report on liquid viscosity of glycerinossaicprecious19
 
insect taxonomy importance systematics and classification
insect taxonomy importance systematics and classificationinsect taxonomy importance systematics and classification
insect taxonomy importance systematics and classificationanitaento25
 
Hemoglobin metabolism: C Kalyan & E. Muralinath
Hemoglobin metabolism: C Kalyan & E. MuralinathHemoglobin metabolism: C Kalyan & E. Muralinath
Hemoglobin metabolism: C Kalyan & E. Muralinathmuralinath2
 
Aerodynamics. flippatterncn5tm5ttnj6nmnynyppt
Aerodynamics. flippatterncn5tm5ttnj6nmnynypptAerodynamics. flippatterncn5tm5ttnj6nmnynyppt
Aerodynamics. flippatterncn5tm5ttnj6nmnynypptsreddyrahul
 
NuGOweek 2024 full programme - hosted by Ghent University
NuGOweek 2024 full programme - hosted by Ghent UniversityNuGOweek 2024 full programme - hosted by Ghent University
NuGOweek 2024 full programme - hosted by Ghent Universitypablovgd
 
GEOLOGICAL FIELD REPORT On Kaptai Rangamati Road-Cut Section.pdf
GEOLOGICAL FIELD REPORT  On  Kaptai Rangamati Road-Cut Section.pdfGEOLOGICAL FIELD REPORT  On  Kaptai Rangamati Road-Cut Section.pdf
GEOLOGICAL FIELD REPORT On Kaptai Rangamati Road-Cut Section.pdfUniversity of Barishal
 
Pests of sugarcane_Binomics_IPM_Dr.UPR.pdf
Pests of sugarcane_Binomics_IPM_Dr.UPR.pdfPests of sugarcane_Binomics_IPM_Dr.UPR.pdf
Pests of sugarcane_Binomics_IPM_Dr.UPR.pdfPirithiRaju
 
Pests of Green Manures_Bionomics_IPM_Dr.UPR.pdf
Pests of Green Manures_Bionomics_IPM_Dr.UPR.pdfPests of Green Manures_Bionomics_IPM_Dr.UPR.pdf
Pests of Green Manures_Bionomics_IPM_Dr.UPR.pdfPirithiRaju
 
National Biodiversity protection initiatives and Convention on Biological Di...
National Biodiversity protection initiatives and  Convention on Biological Di...National Biodiversity protection initiatives and  Convention on Biological Di...
National Biodiversity protection initiatives and Convention on Biological Di...PABOLU TEJASREE
 
NuGOweek 2024 Ghent - programme - final version
NuGOweek 2024 Ghent - programme - final versionNuGOweek 2024 Ghent - programme - final version
NuGOweek 2024 Ghent - programme - final versionpablovgd
 

Recently uploaded (20)

GBSN - Biochemistry (Unit 5) Chemistry of Lipids
GBSN - Biochemistry (Unit 5) Chemistry of LipidsGBSN - Biochemistry (Unit 5) Chemistry of Lipids
GBSN - Biochemistry (Unit 5) Chemistry of Lipids
 
biotech-regenration of plants, pharmaceutical applications.pptx
biotech-regenration of plants, pharmaceutical applications.pptxbiotech-regenration of plants, pharmaceutical applications.pptx
biotech-regenration of plants, pharmaceutical applications.pptx
 
Gliese 12 b: A Temperate Earth-sized Planet at 12 pc Ideal for Atmospheric Tr...
Gliese 12 b: A Temperate Earth-sized Planet at 12 pc Ideal for Atmospheric Tr...Gliese 12 b: A Temperate Earth-sized Planet at 12 pc Ideal for Atmospheric Tr...
Gliese 12 b: A Temperate Earth-sized Planet at 12 pc Ideal for Atmospheric Tr...
 
Circulatory system_ Laplace law. Ohms law.reynaults law,baro-chemo-receptors-...
Circulatory system_ Laplace law. Ohms law.reynaults law,baro-chemo-receptors-...Circulatory system_ Laplace law. Ohms law.reynaults law,baro-chemo-receptors-...
Circulatory system_ Laplace law. Ohms law.reynaults law,baro-chemo-receptors-...
 
Structures and textures of metamorphic rocks
Structures and textures of metamorphic rocksStructures and textures of metamorphic rocks
Structures and textures of metamorphic rocks
 
Detectability of Solar Panels as a Technosignature
Detectability of Solar Panels as a TechnosignatureDetectability of Solar Panels as a Technosignature
Detectability of Solar Panels as a Technosignature
 
PRESENTATION ABOUT PRINCIPLE OF COSMATIC EVALUATION
PRESENTATION ABOUT PRINCIPLE OF COSMATIC EVALUATIONPRESENTATION ABOUT PRINCIPLE OF COSMATIC EVALUATION
PRESENTATION ABOUT PRINCIPLE OF COSMATIC EVALUATION
 
SAMPLING.pptx for analystical chemistry sample techniques
SAMPLING.pptx for analystical chemistry sample techniquesSAMPLING.pptx for analystical chemistry sample techniques
SAMPLING.pptx for analystical chemistry sample techniques
 
Topography and sediments of the floor of the Bay of Bengal
Topography and sediments of the floor of the Bay of BengalTopography and sediments of the floor of the Bay of Bengal
Topography and sediments of the floor of the Bay of Bengal
 
Hemoglobin metabolism_pathophysiology.pptx
Hemoglobin metabolism_pathophysiology.pptxHemoglobin metabolism_pathophysiology.pptx
Hemoglobin metabolism_pathophysiology.pptx
 
Lab report on liquid viscosity of glycerin
Lab report on liquid viscosity of glycerinLab report on liquid viscosity of glycerin
Lab report on liquid viscosity of glycerin
 
insect taxonomy importance systematics and classification
insect taxonomy importance systematics and classificationinsect taxonomy importance systematics and classification
insect taxonomy importance systematics and classification
 
Hemoglobin metabolism: C Kalyan & E. Muralinath
Hemoglobin metabolism: C Kalyan & E. MuralinathHemoglobin metabolism: C Kalyan & E. Muralinath
Hemoglobin metabolism: C Kalyan & E. Muralinath
 
Aerodynamics. flippatterncn5tm5ttnj6nmnynyppt
Aerodynamics. flippatterncn5tm5ttnj6nmnynypptAerodynamics. flippatterncn5tm5ttnj6nmnynyppt
Aerodynamics. flippatterncn5tm5ttnj6nmnynyppt
 
NuGOweek 2024 full programme - hosted by Ghent University
NuGOweek 2024 full programme - hosted by Ghent UniversityNuGOweek 2024 full programme - hosted by Ghent University
NuGOweek 2024 full programme - hosted by Ghent University
 
GEOLOGICAL FIELD REPORT On Kaptai Rangamati Road-Cut Section.pdf
GEOLOGICAL FIELD REPORT  On  Kaptai Rangamati Road-Cut Section.pdfGEOLOGICAL FIELD REPORT  On  Kaptai Rangamati Road-Cut Section.pdf
GEOLOGICAL FIELD REPORT On Kaptai Rangamati Road-Cut Section.pdf
 
Pests of sugarcane_Binomics_IPM_Dr.UPR.pdf
Pests of sugarcane_Binomics_IPM_Dr.UPR.pdfPests of sugarcane_Binomics_IPM_Dr.UPR.pdf
Pests of sugarcane_Binomics_IPM_Dr.UPR.pdf
 
Pests of Green Manures_Bionomics_IPM_Dr.UPR.pdf
Pests of Green Manures_Bionomics_IPM_Dr.UPR.pdfPests of Green Manures_Bionomics_IPM_Dr.UPR.pdf
Pests of Green Manures_Bionomics_IPM_Dr.UPR.pdf
 
National Biodiversity protection initiatives and Convention on Biological Di...
National Biodiversity protection initiatives and  Convention on Biological Di...National Biodiversity protection initiatives and  Convention on Biological Di...
National Biodiversity protection initiatives and Convention on Biological Di...
 
NuGOweek 2024 Ghent - programme - final version
NuGOweek 2024 Ghent - programme - final versionNuGOweek 2024 Ghent - programme - final version
NuGOweek 2024 Ghent - programme - final version
 

ACP R&T_2022 - Presentation - US Wind Farm Degradation Study_Walls.pdf

  • 1. US Wind Farm Degradation Study: Getting Under the Hood Liz Walls, Software Development Lead & Senior Renewable Energy Engineer ACP Resource and Technology Workshop Sept. 8, 2022 Las Vegas. NV
  • 2. Introduction • Every year, more and more publicly-available datasets are becoming accessible to the scientific community. • Simultaneously, it is becoming increasingly easy to write code to analyze data and work with big datasets. • However, even with big data and advanced algorithms, it is still vital to understand and “know” your data • How can outliers and issues with methodology lead to wrong conclusions? • Let’s examine the peer-reviewed paper titled: “How Does Wind Project Performance Change with Age in the United States?”
  • 3. Published Paper Overview • Published in peer-reviewed journal “Joule” May 2020 • Examined trends in production at US wind farms of all sizes • Newer wind farms show less degradation than older wind farms • Observed performance drop at year when production tax credit (PTC) expires
  • 4. Looking Under the Hood • Researchers at LBNL made their dataset publicly available • January 2001 to December 2017 • Monthly net generation from EIA • Monthly wind index based on ERA5 wind speed data • 917 wind farms • 1 MW to 662 MW in capacity • Average capacity: 90 MW • 23% wind farms used in study ≤ 10 MW
  • 5. Duplicating Results • For each wind farm, • Calculated average yearly capacity factor (CF) adjusted by wind index • Calculated ‘performance’ which is CF normalized to CF achieved in second year of operation • Found average performance by year of operation • Matched published results quite well and observed same drop at Year 10
  • 6. Taking a Different Approach • Potential issues with methodology: 1. After Year 10, wind farm bin count declines • When analyzing trends, same group of items should be included in each bin 2. All wind farms treated the same in average • Wind farms should be grouped by farm capacity • Ideas for revised methodology: 1. Group and analyze wind farms by Year of Operation: • i) ≥ 10 yrs, ii) ≥ 11 yrs, iii) ≥ 12 yrs, iv) ≥ 13 yrs, v) ≥ 14 yrs 2. Group wind farms by capacity and by COD Year
  • 7. Results with Modified Approach • In Year 10, significant drop in performance for wind farms with ≥ 11 years • But no drop in performance at Year 10 for wind farms with ≥ 13 years of production • What’s going on here??
  • 8. Diving in Deeper • Diving in deeper: • In 2006, Suzlon opened a blade manufacturing facility in Minnesota • In MN, from Feb. to May 2006, Suzlon installed • 12 - 1 x 1.25 MW turbine projects • 3 – 8 x 1.25 MW turbine projects • 10 years into operation, Suzlon derated turbines due to serial defect in blades • After Year 10, all of the above projects were decommissioned. • In 2016, Suzlon blade facility was sold to a company who planned to convert it into a fertilizer plant. • How would the analysis change if these projects were omitted?
  • 9. Updated Results with MN Suzlon Projects Omitted • With MN Suzlon projects removed • No drop in performance at Year 10
  • 10. Taking a Closer Look at Long-Term Adjustments • Monthly WI provided by LBNL • Appears that long-term generation was calculated as average of all months. • Creates very large swings in monthly WI since monthly production is being normalized to average annual production. • Recalculated monthly WI where long-term generation is found on monthly basis • i.e. January 2010 WI = January 2010 Production / Average January Production
  • 11. Taking a Closer Look at Long-Term Adjustments • With LBNL WI, the long-term corrected monthly CF has very different seasonal trend than the measured CF • With ArcVera’s estimated WI, the long-term corrections are more subtle • Smaller LT correction in high wind months (Apr. to Jun.) • Larger LT correction in low wind months (Nov. to Feb.)
  • 12. 100 MW+ Wind Farm Degradation by COD • Isolated wind farms with 100 MW+ installed capacity • Used updated monthly WI to correct to long-term • Calculated average degradation by COD year • Steady improvement in farm degradation since early 00’s. • Average degradation hovering around -0.1%.
  • 13. Closing Thoughts and Next Steps • Data analysis can be deceiving and can lead to wrong conclusions! • Important to know your data backwards and forwards • Try to think of several ways of looking at the data • Try to disprove your theory • Be aware of expectation bias! • Update analysis with new EIA data • Provided data up to end of 2017 THANK YOU! QUESTIONS? liz.walls@arcvera.com
  • 15. Results with MN Suzlon Projects Omitted • With MN Suzlon projects removed • No drop at year 10 • Has degradation been steadily improving with newer farms? • How will weighting by wind farm capacity change the results?
  • 16. Results with Weighted Average • With MN Suzlon projects removed • Weighted by wind farm capacity • No drop at year 10 • Newer farms showing less degradation • What if the Suzlon projects had been omitted from the original analysis?