PhD Summer School 2018
Venue at DTU Risø Campus 11-15 June 2018
This 4.5-day summer school will focus on advances in remote sensing techniques useful in wind energy. The themes to be covered are development, instrument configuration, signal processing, data analysis and applications of various remote sensing instruments including LIDAR and SAR both ground- and satellite-based instruments. Applied use includes wind resource mapping, wind profiling, power curve, wind loads, turbulence, and wind turbine control. Theoretical aspects of scattering and atmospheric boundary-layer characteristics relevant in remote sensing for wind energy will also be covered. Practical experiments will demonstrate remote sensing methodologies, and advantages and limitations will be discussed.
Organizers:
Charlotte Bay Hasager (chair), Alfredo Pena, Ebba Dellwik, Jakob Mann, Merete Badger, Michael Courtney, Mikael Sjöholm, Nikola Vasiljevic, Paula Gómez, Torben Krogh Mikkelsen, Tobias Ahsbahs, Nikolas Angelou, Elliot Simon
Lecturers:
• Dr. Senior Scientist Alfredo Peña, DTU Wind Energy, Denmark
• Dr. Senior Scientist Charlotte Bay Hasager, DTU Wind Energy, Denmark
• Dr. David Schlipf, University of Stuttgart, Germany
• Dr. Senior Scientist, Ebba Dellwik, DTU Wind Energy, Denmark
• Associate Professor, Henning Skriver, DTU Space, Denmark
• Professor Jakob Mann, DTU Wind Energy, Denmark
• Dr. Jean-Pierre Cariou, Leosphere, France
• Dr. Senior Scientist Merete Badger, DTU Wind Energy, Denmark
• Dr. Senior Scientist Michael Courtney, DTU Wind Energy, Denmark
• Dr. Senior Scientist Mikael Sjöholm, DTU Wind Energy, Denmark
• Dr. Scott Wylie, ZephIR Lidar, United Kingdom
• Dr. Scientist Nikola Vasiljevic, DTU Wind Energy, Denmark
• Dr. Senior Wind Energy Analyst Nicolai Nygaard, DONG Energy, Denmark
• Dr. Senior Development Engineer Paula Gómez, DTU Wind Energy, Denmark
• Professor Søren Larsen DTU Wind Energy, Denmark
• Professor Torben Mikkelsen, DTU Wind Energy, Denmark
Secretary: Camilla Brix Olsen
We plan hands-on exercises. Please bring your laptop.
Credits:
Credits for the course are 2.5 ECTS.
This includes 34 hours of preparation time studying the recommended reading:
Chapter 3 Climatological and meteorological aspects of predicting offshore wind energy
Chapter 4: Atmospheric turbulence
Chapter 5 Introduction to continuous-wave
Chapter 6 Pulsed lidars
Chapter 9 Lidars and wind turbine control
Chapter 10 Lidars and wind profiles
in Compendium of the PhD Summer School: Remote Sensing for Wind Energy available at http://orbit.dtu.dk/files/111814239/DTU_Wind_Energy_Report_E_0084.pdf
Chapter 2 Measurement methodologies for wind energy based on ground-level remote sensing in Sven-Erik Gryning, Torben Mikkelsen, Christophe Baehr, Alain Dabas, Paula Gomez, Ewan O’Connor, Lucie Rottner, Mikael Sjöholm, Irene Suomi, Nikola Vasiljevic: Renewable Energy Forecasting 1st Edition Elsevier. https://www.elsevier.com/books/renewable-energy-forecasting/kariniotakis/978-0-08-100504-0
Chapter 4 A time-space synchronization of coherent Doppler scanning lidars for 3D measurements of wind fields in Vasiljevic, N 2014, A time-space synchronization of coherent Doppler scanning lidars for 3D measurements of wind fields. Ph.D. thesis, DTU Wind Energy. DTU Wind Energy PhD, no. 0027(EN) http://orbit.dtu.dk/en/publications/a-timespace-synchronization-of-coherent-doppler-scanning-lidars-for-3d-measurements-of-wind-fields(e2519d99-5846-4651-947d-38c287452366).html
Airborne lidar at https://en.wikipedia.org/wiki/Lidar#Airborne_lidar
Boudreault, L-E., Bechmann, A., Taryainen, L., Klemedtsson, L., Shendryk, I., & Dellwik, E. (2015). A LiDAR method of canopy structure retrieval for wind modeling of heterogeneous forests. Agricultural and Forest Meteorology, 201, 86-97. DOI: 10.1016/j.agrformet.2014.10.014
Dagestad, K. F., Horstmann, J., Mouche, A., Perrie, W., Shen, H., Zhang, B., ... & Badger, M. (2012). Wind retrieval from synthetic aperture radar - an overview. In 4th SAR Oceanography Workshop (SEASAR 2012).
http://orbit.dtu.dk/fedora/objects/orbit:124632/datastreams/file_8597009d-84ec-485e-8bfc-6802a8606721/content
GUM: Guide to the Expression of Uncertainty in Measurement
http://www.bipm.org/en/publications/guides/gum.html
Lange, J, Mann, J, Angelou, N, Berg, J, Sjöholm, M& Mikkelsen, TK2016, 'Variations of the Wake Height over the Bolund Escarpment Measured by a Scanning Lidar'Boundary-Layer Meteorology, vol 159, pp. 147–159. DOI:10.1007/s10546-015-0107-8
Larsen, SE 1993, Observing and modelling the planetary boundary layer. in E Raschke & D Jacob (eds), Energy and water cycles in the climate system. Springer-Verlag, Berlin, pp. 365-418. NATO Advanced Study Institute Series I: Global environmental change, 5
Mann, J., et al: Complex terrain experiments in the New European Wind Atlas. Phil. Trans. R. Soc. A, 375, no 2091, 20160101 (2017) 10.1098/rsta.2016.0101
Peña A. (2009) Sensing the wind profile. Risø-PhD-45(EN), Risø National Laboratory for Sustainable Energy, Technical University of Denmark, Roskilde. http://orbit.dtu.dk/fedora/objects/orbit:81302/datastreams/file_3737370/content
Sathe, A, Mann, J, Gottschall, J& Courtney, M2011, 'Can Wind Lidars Measure Turbulence?'Journal of Atmospheric and Oceanic Technology, vol 28, no. 7, pp. 853-868. DOI:10.1175/JTECH-D-10-05004.1
Sathe, A& Mann, J2013, 'A review of turbulence measurements using ground-based wind lidars'Atmospheric Measurement Techniques, vol 6, pp. 3147–3167. DOI:10.5194/amt-6-3147-2013
Sjöholm, M., Angelou, N., Hansen, P., Hansen, K. H., Mikkelsen, T., Haga, S., ... Starsmore, N. (2014). Two Dimensional Rotorcraft Downwash Flow Field Measurements by Lidar-Based Wind Scanners with Agile Beam Steering. Journal of Atmospheric and Oceanic Technology, 31(4), 930-937. DOI: 10.1175/JTECH-D-13-00010.1
Vasiljevic, N., & Courtney, M. (2017). Accuracy of dual-Doppler lidar retrievals of near-shore winds Kgs. Lyngby: Danmarks Tekniske Universitet (DTU). WindEurope Resource Assessment Workshop 2017, Edinburgh, United Kingdom, 16/03/2017
Vasiljević, N.; Lea, G.; Courtney, M.; Cariou, J.-P.; Mann, J.; Mikkelsen, T. Long-Range WindScanner System. Remote Sens. 2016, 8, 896.
Vasiljević, N., Palma, J. M. L. M., Angelou, N., Matos, J.C., Menke, R., Lea, G., Mann, J., Courtney, M., Ribeiro, L.F.,and Gomes, V. M. M. G. C. Perdigão 2015: methodology for atmospheric multi-Doppler lidar experiments. Atmos. Meas. Tech., 10, 3463-3483, 2017
Wagner et al., Accounting for the wind speed shear in wind turbine power performance measurement, Wind Energy. 2011; 14:993–1004. doi: 10.1002/we.509
Wagner et al., Uncertainty of power curve measurement with a two-beam nacelle-mounted lidar. Wind Energy. 2015; 19:1269–1287. doi: 10.1002/we.1897
Cost for participants:
250 euros per PhD students
2000 euros per non-PhD students
Deadline for registration: 15 May 2018
Register for the course (link)
The registration fee covers participation in the summer school, course material and listing of recommended reading, lunches and coffee breaks from Monday to Friday.
Registration DOES NOT include the hotel booking.
For further details e-mail Charlotte Hasager at cbha@dtu.dk
Learning objectives:
A student who has met the objectives of the course will be able to:
• To explain basic principles of continuous-wave and pulsed Doppler lidar for wind energy
• To be able to interpret and analyse wind lidar data
• To describe ground-based and nacelle lidar used in power curve measurements
• To explain the basic principles of lidars for wind farm control
• To explain remote sensing techniques for observing turbulence and understand why lidars are not measuring the same turbulence as in-situ sensors
• To describe the capabilities and limitations of continuous-wave and pulsed Doppler lidar for measuring the wind flow over complex terrain
• To list the sensors needed to measure physical parameters related to the wind profile
• To be able to reconstruct orthogonal wind components from line-of-sight speeds
• To understand the main sources of uncertainty that impact lidar accuracy
• To develop a typical measurement plan using remote sensing devices for wind data
• To explain the basic principle of radar for wind and wake
• To gain an overview of meteorological parameters related to the use of wind lidar, aerial lidar and radar
• To understand temporal scales of flow characterization, main methods for wind resource assessment and major differences between on-shore and offshore flow related to wind energy
Time |
Monday 11th June |
Tuesday 12th June |
Wednesday 13th June |
Thursday 14th June |
Friday 15th June |
09:00 – 10:00 |
Welcome and introduction Head of Department Peter Hauge Madsen, Dr. Charlotte Hasager |
Introduction to continuous wave lidar |
Lidars for wind turbine control |
Scanning wind lidars |
Introduction to SAR |
10:00 – 11:00 |
Introduction to remote sensing |
Exercise in continuous wave lidar
Dr. Mike Courtney, Mr. Nikolas Angelou |
Introduction to radar for wind and wake Dr. Nicolai Nygaard |
Lidar in complex terrain |
SAR for wind energy |
11:00 – 12:00 |
Meteorology background Prof. Søren Larsen |
Accuracy of scanning lidarDr. Nikola Vasiljevic |
Exercise lidar dataDr. Mikael Sjöholm, Prof. Jakob Mann |
Exercise in SAR Dr. Merete Badger, Dr. Tobias Ahsbahs |
|
12:00 – 13:00 |
Lunch picnic and walk |
Lunch |
Lunch picnic and walk |
Lunch |
Lunch |
13:00 – 14:00 |
Aerial lidar for surface characterization Dr. Ebba Dellwik |
Pulsed lidars for wind energy |
Exercise how to install a lidarDr. Nikola Vasilievic, Mr. Elliot Simon |
Turbulence |
Lidars and power curves |
14:00 – 15:00 |
Exercise in aerial lidar Dr.Ebba Dellwik |
Exercise in pulsed lidar Dr. Mike Courtney, Mr. Elliot Simon |
Lidars and wind profiles |
Lidars and turbulence |
Summary session Dr. Charlotte Hasager |
15:00 – 16:00 |
Introduction to wind power meteorology Prof. Rebecca Barthelmie |
Demonstration of multiple lidar systems Dr. Mikael Sjöholm, Mr. Nikolas Angelou |
Exercise in lidars and wind profiles Dr. Alfredo Peña, Dr. Nikola Vasiljevic. |
Exercise in lidar and turbulence Prof.Jakob Mann, |
Evaluation and closing Dr. Charlotte Hasager |
16:00 – 17:00 |
Icebreaker reception Head of Section, Dr. Hans E. Jørgensen |
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Evening |
Dinner |
- To explain the basic principles of airborne lidar for land surface characterization
- To explain the principle behind Synthetic Aperture Radar (SAR) wind retrieval over the ocean
You are invited to submit an article to the Special Issue “Remote Sensing of Atmospheric Conditions for Wind Energy Applications” in Remote Sensing. Remote Sensing is an Open Access Journal by MPDI.
Attendees and contributors in the PhD Summer School: Remote Sensing for Wind Energy 2018 may have a discount for well-prepared papers.
Message from the Guest Editors Charlotte Bay Hasager and Mikael Sjöholm:
Dear Colleagues,
We welcome submission on all aspects of remote sensing for wind energy and atmospheric boundary-layer application.
Deadline is September 1st, 2018. For further information please visit http://www.mdpi.com/journal/remotesensing/special_issues/Wind_Energy_RS