Fremtidens vindenergi en magisters historie på Risø og DTU

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Downloaded from orbit.dtu.dk on: Aug 15, 2018 Fremtidens vindenergi en magisters historie på Risø og DTU Mortensen, Niels Gylling Publication date: 2015 Document Version Peer reviewed version Link back to DTU Orbit Citation (APA): Mortensen, N. G. (2015). Fremtidens vindenergi en magisters historie på Risø og DTU [Sound/Visual production (digital)]. General rights Copyright and moral rights for the publications made accessible in the public portal are retained by the authors and/or other copyright owners and it is a condition of accessing publications that users recognise and abide by the legal requirements associated with these rights. Users may download and print one copy of any publication from the public portal for the purpose of private study or research. You may not further distribute the material or use it for any profit-making activity or commercial gain You may freely distribute the URL identifying the publication in the public portal If you believe that this document breaches copyright please contact us providing details, and we will remove access to the work immediately and investigate your claim.

Fremtidens vindenergi en magisters historie på Risø og DTU Niels G. Mortensen Meteorologisektionen

Oplæg Hvordan havner en naturgeograf på Risø / DTU? Hvad arbejder jeg med inden for vindenergi? Hvordan vi fik samarbejdspartnere og kunder i over 100 lande! Historien om European Wind Atlas og WAsP Hvad skal der egentlig til for at kortlægge verdens vindressourcer? Det har taget over 30 år, men endelig er vi ved at være der! 2 DTU Wind Energy, Technical University of Denmark

Hvordan havner en naturgeograf på Risø og DTU? Og hvad arbejder jeg med inden for vindenergi?

Niels Gylling Mortensen Hvornår Hvor og hvad 1970-72 Rungsted Statsskole Student 1975-85 Geografisk Institut, Københavns Universitet Studerende, instruktor, undervisningsassistent, cand.scient. 1985-96 Forskningscenter Risø, Roskilde Forsker 1992 National Center for Atmospheric Research, Boulder, Colorado Gæsteforsker 1997-2007 Forskningscenter Risø, Roskilde Seniorforsker, tillidsrepræsentant, Risøs bestyrelse (2004-07) 2008- Danmarks Tekniske Universitet, Risø Campus, Roskilde Seniorforsker i DTU Wind Energy 4 DTU Wind Energy, Technical University of Denmark

Niels Gylling Mortensen MSc (Phys. Geography) 1985 from University of Copenhagen 30 years at Risø and DTU, working with meteorological data and sensors, sonic anemometry, boundary layer meteorology, wind climatology and wind atlas, wind resource estimation and siting. Member of the WAsP development team since 1985 Editor of European Wind Atlas (1989), Atlas Vent de l'algérie, Wind Atlas for the Gulf of Suez, Wind Atlas for Egypt, Wind Atlas for NE China (Dongbei), Wind Atlas for South Africa. Consulting services in the European Union, as well as in Cape Verde, Morocco, Algeria, Egypt, India, Indonesia, Greenland, USA and Australia. Teaching at DTU since 2008: courses 46200 and 46300 Teaching commercial (WAsP) courses since 1991 5 DTU Wind Energy, Technical University of Denmark

Typiske arbejdsområder Forskning og udvikling (40%) Programforskning Artikler og rapporter Konferencer + papers Netværk (standardisering) Int. forskningssamarbejder Undervisning (20%) Introduktion til vindenergi Planlægning og udvikling af vindmølleparker DTU efteruddannelse: WAsP standard kursus WAsP online kursus Offshore Wind Energy Technical Course Forskningsbaseret rådgivning European Investment Bank Government of South Africa Province of Western Cape Samarbejde med industrien Energistyrelsen Innovation/kommercielt (40%) Udvikling af WAsP software Udvikling af anden software Virtual Campus Hub (EU) Measnet guidelines og certificering Arbejdsområder generelt Vindkraftmeteorologi Wind resource assessment 6 DTU Wind Energy, Technical University of Denmark

Wind flow over South Africa during 10 days in 2010 Courtesy A. Hahmann, DTU 7 DTU Wind Energy, Technical University of Denmark

The classic problem 8 DTU Wind Energy, Technical University of Denmark

Wind resource assessment Wind provides the income in cost-benefit Investment costs Operation and maintenance costs Electricity production ~ Wind resources Turbine lifetime Discount rate Environmental benefits 10% error on wind speed up to 30% error on energy Power in the wind P = ½ AU 3 C p Wind speed U [m/s] Modelling is necessary and it must be good! 9 DTU Wind Energy, Technical University of Denmark

A great job on a good day 10 DTU Wind Energy, Technical University of Denmark

Samarbejdspartnere og kunder i over 100 lande! European Wind Atlas og WAsP programmet

Wind atlas methodology Challenge Extrapolate wind climatologies from masts to wind turbines Solution: flow modelling (WAsP) Input data Wind climatology Terrain elevation Land cover Sheltering obstacles Results Wind climate estimation Wind turbine production Wind farm annual yield Wind resource mapping 12 DTU Wind Energy, Technical University of Denmark

Wind atlas methodology 13 DTU Wind Energy, Technical University of Denmark

The world according to WAsP WAsP software since 1987 4500+ licensed users by now WAsP also in WindFarmer (DNV-GL) and WindPRO (EMD) + Wind Farm (ReSoft) Political boundaries according to Golden Software's WORLD.GSB 110 countries and territories National wind atlases Regional and local studies 14 DTU Wind Energy, Technical University of Denmark

WAsP courses WAsP courses since 1991 101 courses held by now More than 1500 users trained Political boundaries according to Golden Software's WORLD.GSB WAsP course venues 25 countries 15 DTU Wind Energy, Technical University of Denmark

WAsP certified users WAsP certification since 2001 More than 230 certified users Certified users 29 countries Political boundaries according to Golden Software's WORLD.GSB 16 DTU Wind Energy, Technical University of Denmark

Wind predictions around a mast 17 DTU Wind Energy, Technical University of Denmark

Wind farm Annual Energy Production (AEP) 18 DTU Wind Energy, Technical University of Denmark

The goal wind resource and uncertainty maps 19 DTU Wind Energy, Technical University of Denmark

Kortlægning af verdens vindressourcer Det har taget over 30 år, men endelig er vi ved at være der!

A history of wind atlases 1979 Wind Atlas for Denmark European wind atlas project (1981-) WAsP software released (1987) 1989 European Wind Atlas (EU12) Atlas Vent de l Algérie (1991) Wind Atlas for the Gulf of Suez (1996) 1999 Wind resource map for Denmark Wind Atlas for Cape Verde (2002) Wind Atlas for Egypt (2006) 2009 Wind atlas for Dongbei, China Wind Atlas for South Africa (2014) Global wind atlas project (2015) 2019 Wind resource map for the World (Time for retirement?) 21 DTU Wind Energy, Technical University of Denmark

Average winds around the world Courtesy A. Hahmann 22 DTU Wind Energy, Technical University of Denmark

Elevation map of the world High-resolution elevation and land cover from airplanes, space shuttle Endeavour and satellite observations. 23 DTU Wind Energy, Technical University of Denmark

Land cover map of the world 24 DTU Wind Energy, Technical University of Denmark

Global wind resource mapping methodology Downscaling from global reanalysis data, verification and use Global Regional Local G Global wind resources 200 km resolution 5 km resolution ~ 1 m resolution Mesoscale modelling Microscale modelling 25 DTU Wind Energy, Technical University of Denmark

Microscale vs. mesoscale: effect of resolution KAMM/WAsP wind resource map Wind farm of 5 x 2 MW turbines Grid cell size Estimated AEP 20 m 55 GWh 5120 m 39 GWh 26 DTU Wind Energy, Technical University of Denmark

South African wind resource (wind speed @ 100 m) Namibia Lesotho South Africa 27 DTU Wind Energy, Technical University of Denmark DM fyraftensmøde om vindenergi 15.04.2015

Verification of methodology in South Africa Wind speed Slope: 102% Spread: 5.9% Energy yield Slope: 105% Spread: 12% 28 DTU Wind Energy, Technical University of Denmark

Mapping the worlds wind resources quick recap Calculate annual energy production of wind turbine Fundamental challenge is predicting the wind climate Wind flow modelling challenges Temporal scales from 10 min to 20 years (in the future) Spatial scales from 1 meter to 1000+ km Computationally expensive (distributed computing) Wind resources of the world Necessary data and modelling tools now available First global attempt @ 250 m resolution in 2015 at DTU Data in public domain for authorities, planners, investors, developers, power sector, industry, consultants, academia, What s next? Extreme winds Turbulence intensity Other flow characteristics 29 DTU Wind Energy, Technical University of Denmark

Wind flow over Vietnam (two seasons) during 10 days Courtesy A. Hahmann 30 DTU Wind Energy, Technical University of Denmark