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Ice Profile Classification
          Based on ISO 12494


                      Presented by:
            Matthew Wadham-Gagnon


                         2012-02-12
                    WinterWind 2013
Co-authors

Dominic Bolduc, TCE, QC, Canada

Bruno Boucher, TCE, QC, Canada

Amélie Camion, Repower Systems Inc, QC, Canada

Jens Petersen, Repower Systems SE, Germany

Hannes Friedrich, Repower Systems SE, Germany




                         2
Content

• Introduction to TCE

• Motivation

• Methodology
   – Measurement Campaign

   – Ice profile classification using ISO 12494

• Example of data for one icing event

• Summary for winter 2011-2012

• Conclusions/Further work
TCE infrastructure location
                                 TCE R&D wind farm

                    TCE office




                 Over 900MW in operation


             4
TCE R&D Wind Farm
• Two 2.05 MW Repower
  MM92 CCV wind turbines

• Located in Riviere-au-
  Renard, Québec, Canada

• Icing & complex terrain

• Commissionned in March
  2010

• Research, development
  and technology transfer
  projects involving
  northern climates and
  complex terrain.



                                     5
                             www.eolien.qc.ca
TCE 126m Met Mast

    Compliant with
     CSA-S37-01

(DLC: 40 mm of ice
       and 57 m/s)




                     6
TCE 126m Met Mast
•   5 levels of unheated class 1
    anemometers

•   3 levels of heated anemometers

•   2 levels of heated and unheated
    wind vanes

•   Ceilometer to detect cloud
    height

•   4 levels of thermometers

•   Hygrometer

1Hz data acquisition in Osisoft PI


                                      7
TCE Micro Grid




           8
   www.eolien.qc.ca
TCE Micro Grid




           9
   www.eolien.qc.ca
Infrastructure Topographic Layout



                projected




    projected




                  10
Objective/Motivations
What:
• Quantify ice load during different icing events




Why:
• To validate and/or improve theoretical ice accretion
  models
• To correlate with meteorological measurements,
  production loss and ice induced vibration
• To evaluate the performance of anti-icing and de-icing
  technologies

                              11
Ice Measurement Campaign

• Ongoing since October 2011
• Intended to continue until at least winter 2013-2014




•   Observations during icing events
•   Remote Cameras
•   Ice throw
•   Meteorological and production data




                              12
Observations - Blades
• Pictures taken from the ground




23 days of observed ice on blades (Winter 2011-2012)


                            13
Observations – Nacelle Weather Mast
• Remote Camera on Nacelle – 5 min intervals

800+ hours of icing on nacelle weather mast (Winter 2011-2012)




                             14
Ice throw
• Shape, size, weight, distance from tower




• 150+ fragments of ice from blades collected to date


                             15
Estimating Ice Load using ISO 12494
• ISO 12494 – for RIME
   – Ice Class (IC) for Rime (R) scale 1 to 10 according to kg/m of ice on
     structure, shape and dimensions of ice varies depending on
     structure size and shape




                                   16
Estimating Ice Load using ISO 12494
• ISO 12494 – for GLAZE (Freezing Rain)
   – Ice Class (IC) for Glaze (G) scale 1 to 6 according to ice thickness




                                   17
Nacelle Weather Mast Load Classification
• Weather mast ice load estimation
   – “D” measured,
   – “L” estimated, higher error but more data




                                                 D




                                  18
Blade Ice Load Classification
• Blade ice load estimation
   – “L” measured
   – “D” estimated
   – Limited amount of pictures covering the duration of an icing event.




                                   19
Ice throw Load Classification
• Used to validate blade ice load
   – More accurate measurement
   – Precise time of ice shed unknown



                                        L



                     D
                             h                   W
                                            W’




                                 20
Ice Class Rime 1 (ICR1) – 0 to 0.5 kg/m




                   21
Ice Class Rime 2 (ICR2) – 0.5 to 0.9 kg/m




                    22
Ice Class Rime 3 (ICR3) – 0.9 to 1.6 kg/m




                    23
Ice Class Rime 4 (ICR4) – 1.6 to 2.8 kg/m




                    24
Ice Class Rime 5 (ICR5) – 2.8 to 5.0 kg/m




                    25
Example Icing Event
• April 21 to 23, 2012
• Rime, ICR3 to ICR5




                         26
Meteorological Icing (Ice Sensor)
                    Met. Icing (ice sensor)




1.0

0.8

0.6

0.4

0.2

0.0




                         27
Met. Icing (Cloud Height & Temp.)
                     Met. Icing (ice sensor)                   Met. Icing (CH & T)




                              WEC1 Temp        MMV2 78m T   MMV2 11m Min CH
            14
            12                                                                       140
            10                                                                       120
             8                                                                       100
Temp (oC)




             6
             4                                                                       80
             2                                                                       60
             0                                                                       40
            -2
            -4                                                                       20
            -6                                                                       0




                                                                                     CH (m)
                                                28
Instrumental Icing (WEC unheated anemo)
                    Met. Icing (ice sensor)   Met. Icing (CH & T)   Instr. Icing (WEC2)




           30

           25

           20
WS (m/s)




           15

           10

            5

            0



                                                WS1     WS2




                                                29
Instr. Icing (MMV2 126m unheat anemo)
                Met. Icing (ice sensor)   Met. Icing (CH & T)    Instr. Icing (WEC2)   Instr. Icing (126m)




           35
           30
           25
WS (m/s)




           20
           15
           10
            5
            0



                                                MMV2 126m U     MMV2 126m H




                                                        30
Instr. Icing (MMV2 80m unheat anemo)
                Met. Icing (ice sensor)    Met. Icing (CH & T)         Instr. Icing (WEC2)
                Instr. Icing (126m)        Instr. Icing (78m)




           35
           30
           25
WS (m/s)




           20
           15
           10
            5
            0



                                          MMV2 80m U      MMV2 80m H




                                                 31
Instr. Icing (MMV2 34m unheat anemo)
                Met. Icing (ice sensor)    Met. Icing (CH & T)         Instr. Icing (WEC2)
                Instr. Icing (126m)        Instr. Icing (78m)          Instr. Icing (34m)




           35
           30
           25
WS (m/s)




           20
           15
           10
            5
            0



                                          MMV2 34m U      MMV2 34m H




                                                 32
WEC1 Production Loss
                    Met. Icing (ice sensor)   Met. Icing (CH & T)          Instr. Icing (WEC2)   Instr. Icing (126m)
                    Instr. Icing (78m)        Instr. Icing (34m)           Prod. Loss (WEC1)




             3000

             2500

             2000
Power (kW)




             1500

             1000

              500

                0



                                                                   Power     CPC




                                                                   33
Production Loss (WEC2)
                    Met. Icing (ice sensor)   Met. Icing (CH & T)          Instr. Icing (WEC2)   Instr. Icing (126m)
                    Instr. Icing (78m)        Instr. Icing (34m)           Prod. Loss (WEC1)     Prod. Loss (WEC2)




             3000

             2500

             2000
Power (kW)




             1500

             1000

              500

                0



                                                                   Power     CPC




                                                                   34
Nacelle Weather Mast Ice Load
          Met. Icing (ice sensor)   Met. Icing (CH & T)   Instr. Icing (WEC2)
          Instr. Icing (126m)       Instr. Icing (78m)    Instr. Icing (34m)
          Prod. Loss (WEC1)         Prod. Loss (WEC2)     Nacelle WM




      5

      4

      3
ICR




      2

      1

      0




                                          Met mast




                                         35
Blade Ice Load
          Met. Icing (ice sensor)   Met. Icing (CH & T)     Instr. Icing (WEC2)   Instr. Icing (126m)
          Instr. Icing (78m)        Instr. Icing (34m)      Prod. Loss (WEC1)     Prod. Loss (WEC2)
          Nacelle WM                Observ.




      5

      4

      3
ICR




      2

      1

      0




                                               Iced Blade    Met mast




                                                      36
Example Icing Event
• April 21 to 23, 2012
• Rime, ICR3 to ICR5




                         37
Power Curve
• Production loss during april 20-23 icing event


             2500




             2000




             1500
Power (kW)




                                                                  Icing Event Data
             1000                                                 Non-iced Production
                                                                  GPC


              500




                0
                    0   5   10       15            20   25   30
                                   WS (m/s)




                                              38
Power Curve
• Power curve estimations based on ice classification and
  production losses of all icing events in Winter 2011-2012

             2500




             2000




             1500
Power (kW)




                                                                Non-iced Prod.
                                                                GPC
             1000
                                                                ICR2&3

                                                                ICR4&5
              500




                0
                    0   5   10     15            20   25   30
                                 WS (m/s)




                                            39
Nacelle Weather Mast Load Classification
• Weather mast occurrence of icing severity over the course
  of the winter




                            40
Winter 2011-2012 in numbers

Meteorological Icing      ~200 hours
Instrumental Icing        ~400 hours
Nacelle WM icing          800+ hours
Ice observed on blades    23 days
Production Loss           ~140 hours
Production Loss (% AEP)   ~1.5%
Hours of ICR2&3           ~300 hours
Hours of ICR4&5           ~100 hours
Hours of Glaze            ~100 hours




                     41
Conclusions
•   Improved understanding of the severity of icing events

•   Measurement Campaign database can be used to validate
    simulation models (e.g. weather, ice accretion)

•   Methodology can be applied to assessing performance of ice
    protection technologies

•   Nacelle weather mast ice severity correlates to blade icing
    severity

•   Duration of weather mast icing generally much longer than
    blade icing

•   How to make measurement of icing severity on blades could
    be more accurate and more frequent?


                                42
Checker board tape
• In order to get a better estimation of blade ice load and
  position along span of blade




                            43
Hub Camera




     44
Ongoing – Automation of Image Analysis

                                 ICR= 5




       In Collaboration with:


                            45
References

IEA Wind Task 19, Expert Group Study on Recommended Practices: 13. Wind Energy Projects in Cold
Climates, 1. Edition 2011

ISO 12494:2001, Atmospehiric Icing of Structures, International Organisation for Standardization, 2001




                                                  46
Thank you, Tack, Danke, Merci!
Matthew Wadham-Gagnon, eng, M.eng
Project Lead
mgagnon@eolien.qc.ca

70, rue Bolduc, Gaspé (Québec) G4X 1G2
Canada
Tél. : +1 418 368-6162

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Ice profile classification - Matthew Wadham-Gagnon

  • 1. Ice Profile Classification Based on ISO 12494 Presented by: Matthew Wadham-Gagnon 2012-02-12 WinterWind 2013
  • 2. Co-authors Dominic Bolduc, TCE, QC, Canada Bruno Boucher, TCE, QC, Canada Amélie Camion, Repower Systems Inc, QC, Canada Jens Petersen, Repower Systems SE, Germany Hannes Friedrich, Repower Systems SE, Germany 2
  • 3. Content • Introduction to TCE • Motivation • Methodology – Measurement Campaign – Ice profile classification using ISO 12494 • Example of data for one icing event • Summary for winter 2011-2012 • Conclusions/Further work
  • 4. TCE infrastructure location TCE R&D wind farm TCE office Over 900MW in operation 4
  • 5. TCE R&D Wind Farm • Two 2.05 MW Repower MM92 CCV wind turbines • Located in Riviere-au- Renard, Québec, Canada • Icing & complex terrain • Commissionned in March 2010 • Research, development and technology transfer projects involving northern climates and complex terrain. 5 www.eolien.qc.ca
  • 6. TCE 126m Met Mast Compliant with CSA-S37-01 (DLC: 40 mm of ice and 57 m/s) 6
  • 7. TCE 126m Met Mast • 5 levels of unheated class 1 anemometers • 3 levels of heated anemometers • 2 levels of heated and unheated wind vanes • Ceilometer to detect cloud height • 4 levels of thermometers • Hygrometer 1Hz data acquisition in Osisoft PI 7
  • 8. TCE Micro Grid 8 www.eolien.qc.ca
  • 9. TCE Micro Grid 9 www.eolien.qc.ca
  • 10. Infrastructure Topographic Layout projected projected 10
  • 11. Objective/Motivations What: • Quantify ice load during different icing events Why: • To validate and/or improve theoretical ice accretion models • To correlate with meteorological measurements, production loss and ice induced vibration • To evaluate the performance of anti-icing and de-icing technologies 11
  • 12. Ice Measurement Campaign • Ongoing since October 2011 • Intended to continue until at least winter 2013-2014 • Observations during icing events • Remote Cameras • Ice throw • Meteorological and production data 12
  • 13. Observations - Blades • Pictures taken from the ground 23 days of observed ice on blades (Winter 2011-2012) 13
  • 14. Observations – Nacelle Weather Mast • Remote Camera on Nacelle – 5 min intervals 800+ hours of icing on nacelle weather mast (Winter 2011-2012) 14
  • 15. Ice throw • Shape, size, weight, distance from tower • 150+ fragments of ice from blades collected to date 15
  • 16. Estimating Ice Load using ISO 12494 • ISO 12494 – for RIME – Ice Class (IC) for Rime (R) scale 1 to 10 according to kg/m of ice on structure, shape and dimensions of ice varies depending on structure size and shape 16
  • 17. Estimating Ice Load using ISO 12494 • ISO 12494 – for GLAZE (Freezing Rain) – Ice Class (IC) for Glaze (G) scale 1 to 6 according to ice thickness 17
  • 18. Nacelle Weather Mast Load Classification • Weather mast ice load estimation – “D” measured, – “L” estimated, higher error but more data D 18
  • 19. Blade Ice Load Classification • Blade ice load estimation – “L” measured – “D” estimated – Limited amount of pictures covering the duration of an icing event. 19
  • 20. Ice throw Load Classification • Used to validate blade ice load – More accurate measurement – Precise time of ice shed unknown L D h W W’ 20
  • 21. Ice Class Rime 1 (ICR1) – 0 to 0.5 kg/m 21
  • 22. Ice Class Rime 2 (ICR2) – 0.5 to 0.9 kg/m 22
  • 23. Ice Class Rime 3 (ICR3) – 0.9 to 1.6 kg/m 23
  • 24. Ice Class Rime 4 (ICR4) – 1.6 to 2.8 kg/m 24
  • 25. Ice Class Rime 5 (ICR5) – 2.8 to 5.0 kg/m 25
  • 26. Example Icing Event • April 21 to 23, 2012 • Rime, ICR3 to ICR5 26
  • 27. Meteorological Icing (Ice Sensor) Met. Icing (ice sensor) 1.0 0.8 0.6 0.4 0.2 0.0 27
  • 28. Met. Icing (Cloud Height & Temp.) Met. Icing (ice sensor) Met. Icing (CH & T) WEC1 Temp MMV2 78m T MMV2 11m Min CH 14 12 140 10 120 8 100 Temp (oC) 6 4 80 2 60 0 40 -2 -4 20 -6 0 CH (m) 28
  • 29. Instrumental Icing (WEC unheated anemo) Met. Icing (ice sensor) Met. Icing (CH & T) Instr. Icing (WEC2) 30 25 20 WS (m/s) 15 10 5 0 WS1 WS2 29
  • 30. Instr. Icing (MMV2 126m unheat anemo) Met. Icing (ice sensor) Met. Icing (CH & T) Instr. Icing (WEC2) Instr. Icing (126m) 35 30 25 WS (m/s) 20 15 10 5 0 MMV2 126m U MMV2 126m H 30
  • 31. Instr. Icing (MMV2 80m unheat anemo) Met. Icing (ice sensor) Met. Icing (CH & T) Instr. Icing (WEC2) Instr. Icing (126m) Instr. Icing (78m) 35 30 25 WS (m/s) 20 15 10 5 0 MMV2 80m U MMV2 80m H 31
  • 32. Instr. Icing (MMV2 34m unheat anemo) Met. Icing (ice sensor) Met. Icing (CH & T) Instr. Icing (WEC2) Instr. Icing (126m) Instr. Icing (78m) Instr. Icing (34m) 35 30 25 WS (m/s) 20 15 10 5 0 MMV2 34m U MMV2 34m H 32
  • 33. WEC1 Production Loss Met. Icing (ice sensor) Met. Icing (CH & T) Instr. Icing (WEC2) Instr. Icing (126m) Instr. Icing (78m) Instr. Icing (34m) Prod. Loss (WEC1) 3000 2500 2000 Power (kW) 1500 1000 500 0 Power CPC 33
  • 34. Production Loss (WEC2) Met. Icing (ice sensor) Met. Icing (CH & T) Instr. Icing (WEC2) Instr. Icing (126m) Instr. Icing (78m) Instr. Icing (34m) Prod. Loss (WEC1) Prod. Loss (WEC2) 3000 2500 2000 Power (kW) 1500 1000 500 0 Power CPC 34
  • 35. Nacelle Weather Mast Ice Load Met. Icing (ice sensor) Met. Icing (CH & T) Instr. Icing (WEC2) Instr. Icing (126m) Instr. Icing (78m) Instr. Icing (34m) Prod. Loss (WEC1) Prod. Loss (WEC2) Nacelle WM 5 4 3 ICR 2 1 0 Met mast 35
  • 36. Blade Ice Load Met. Icing (ice sensor) Met. Icing (CH & T) Instr. Icing (WEC2) Instr. Icing (126m) Instr. Icing (78m) Instr. Icing (34m) Prod. Loss (WEC1) Prod. Loss (WEC2) Nacelle WM Observ. 5 4 3 ICR 2 1 0 Iced Blade Met mast 36
  • 37. Example Icing Event • April 21 to 23, 2012 • Rime, ICR3 to ICR5 37
  • 38. Power Curve • Production loss during april 20-23 icing event 2500 2000 1500 Power (kW) Icing Event Data 1000 Non-iced Production GPC 500 0 0 5 10 15 20 25 30 WS (m/s) 38
  • 39. Power Curve • Power curve estimations based on ice classification and production losses of all icing events in Winter 2011-2012 2500 2000 1500 Power (kW) Non-iced Prod. GPC 1000 ICR2&3 ICR4&5 500 0 0 5 10 15 20 25 30 WS (m/s) 39
  • 40. Nacelle Weather Mast Load Classification • Weather mast occurrence of icing severity over the course of the winter 40
  • 41. Winter 2011-2012 in numbers Meteorological Icing ~200 hours Instrumental Icing ~400 hours Nacelle WM icing 800+ hours Ice observed on blades 23 days Production Loss ~140 hours Production Loss (% AEP) ~1.5% Hours of ICR2&3 ~300 hours Hours of ICR4&5 ~100 hours Hours of Glaze ~100 hours 41
  • 42. Conclusions • Improved understanding of the severity of icing events • Measurement Campaign database can be used to validate simulation models (e.g. weather, ice accretion) • Methodology can be applied to assessing performance of ice protection technologies • Nacelle weather mast ice severity correlates to blade icing severity • Duration of weather mast icing generally much longer than blade icing • How to make measurement of icing severity on blades could be more accurate and more frequent? 42
  • 43. Checker board tape • In order to get a better estimation of blade ice load and position along span of blade 43
  • 45. Ongoing – Automation of Image Analysis ICR= 5 In Collaboration with: 45
  • 46. References IEA Wind Task 19, Expert Group Study on Recommended Practices: 13. Wind Energy Projects in Cold Climates, 1. Edition 2011 ISO 12494:2001, Atmospehiric Icing of Structures, International Organisation for Standardization, 2001 46
  • 47. Thank you, Tack, Danke, Merci!
  • 48. Matthew Wadham-Gagnon, eng, M.eng Project Lead mgagnon@eolien.qc.ca 70, rue Bolduc, Gaspé (Québec) G4X 1G2 Canada Tél. : +1 418 368-6162