11th EMS meeting 12-16 Sep 2011, Gustiness parameterization in the atmospheric boundary layer Irene Suomi Timo Vihma Sven-Erik Gryning.

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Presentation transcript:

11th EMS meeting Sep 2011, Gustiness parameterization in the atmospheric boundary layer Irene Suomi Timo Vihma Sven-Erik Gryning

11th EMS meeting Sep 2011, Definition Peak gust (or here gust) is the maximum wind speed of short duration (t = 1…3 s) during a sampling period of length T=10min…1h. Gust factor is the ratio of peak gust and mean wind speed:

11th EMS meeting Sep 2011, Motivation large impacts: in Finland typically cut trees/forests, power cuts, broken structures, etc relevant for the wind energy (siting and turbine control) at different heights (~100m) gusts are not (yet) directly available from numerical weather prediction models: parameterizations are needed

11th EMS meeting Sep 2011, Research questions Are gust parameterizations applicable above 10 m height? What kind of a gust parameterization method is optimal (based on observations)?

Overview Observations Gust parameterization methods A new method Results Conclusions and ongoing/future work 11th EMS meeting Sep 2011,

Observations Two weather masts: Isosaari (83m) and Loviisa (143m) One year of data: 4/ /2010, excluding from Isosaari months when sea ice 11th EMS meeting Sep 2011,

7 Observations Loviisa Isosaari 30m 103m 143m 42m 62m 83m

Type A Type B Wieringa (1973, W73) G = f ( U, t, T, z, z 0 ) Woetman-Nielsen and Petersen (2001, WNP01) G = f ( U, u *0, w * ) Wichers Schreur and Geertsema (2008, WSG08) G = f ( U, t, T, z, E ) U = mean wind speed t = gust duration T = sampling period z = height a.g.l. u *0 = surface firction velocity w *0 = convective velocity scale E = turbulent kinetic energy  = potential temperature Brasseur (2001, B01) G = f ( U, z, ,  v, E ) 11th EMS meeting Sep 2011, Gust parameterization methods

A new method (”type A”) From the definition of gust factor: where is the normalized gust. For unstable conditions: and stable conditions: (Gryning et al, 1987) 11th EMS meeting Sep 2011,

Results: Isosaari East/South (marine sector) 11th EMS meeting Sep 2011, OBSW73

11th EMS meeting Sep 2011, OBSWNP01 Results: Isosaari East/South (marine sector)

11th EMS meeting Sep 2011, OBSNew method Results: Isosaari East/South (marine sector)

11th EMS meeting Sep 2011, OBSW73 Results: Isosaari West (”rough” sector)

11th EMS meeting Sep 2011, OBSWNP01 Results: Isosaari West (”rough” sector)

11th EMS meeting Sep 2011, OBSNew method Results: Isosaari West (”rough” sector)

11th EMS meeting Sep 2011, OBSW73 Results: Loviisa North (land sector)

11th EMS meeting Sep 2011, OBSWNP01 Results: Loviisa North (land sector)

11th EMS meeting Sep 2011, OBSNew method Results: Loviisa North (land sector)

Conclusions In marine sector stability did not have significant role Over rough surface, stability had effect, but the method by WNP01 overestimated it, especially in Loviisa with unstable conditions The new method performed best in all cases. But: tuning of normalized gust is needed Ongoing / future work: Normalized gust: g x = f ( t, T, z 0, z, ? ) Test all methods within NWP model framework 11th EMS meeting Sep 2011,

Thank You! 11th EMS meeting Sep 2011,

11th EMS meeting Sep 2011, Acknowledgements The research leading to these results has received funding from the European Research Council under the European Community's 7 th Framework Programme (FP7/ ) / ERC grant agreement number , project PBL-PMES.