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Assimilation of Scatterometer Winds. Ad.Stoffelen@KNMI.nl Manager NWP SAF at KNMI Manager OSI SAF at KNMI PI European OSCAT Cal/Val project Leader KNMI Satellite Winds Group www.knmi.nl/scatterometer. 2. Level 2 Wind Processing. INPUT. INPUT. OUTPUT. OUTPUT. Ambiguity. Ambiguity.
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Assimilation of Scatterometer Winds Ad.Stoffelen@KNMI.nl Manager NWP SAF at KNMI Manager OSI SAF at KNMI PI European OSCAT Cal/Val project Leader KNMI Satellite Winds Group www.knmi.nl/scatterometer
2. Level 2 Wind Processing INPUT INPUT OUTPUT OUTPUT Ambiguity Ambiguity Wind Wind Inversion Inversion Observations Observations Removal Removal Field Field Quality Quality Quality Control Control Monitor
Geophysical Model Function A geophysical model function (GMF) relates ocean surface wind speed and direction to the backscatter cross section measurements. : wind speed ø: wind direction w.r.t. beam view :incidence angle p:polarization λ: microwave wavelength
Inversion • Bayesian approach: • Find closest point on 3D or 4D manifold • The statistical error in finding this point is small and equivalent to a vector error of 0.5 m/s in wind • p(zM |zS ) exp{ - ½(zM - zS)2/noise(z)} • p(zS ) = constant; p(s oS ) ≠constant Stoffelen and Portabella, 2006
Ambiguity removal • Scatterometer inversion produces a set of wind (direction) solutions or ambiguities • Ambiguity removal is performed with spatial filters
0 180 Local minima MLE Solution bands Wind direction (f) Azimuthal diversity • Accounting for local minima, erratic winds are produced • MSS accounts for lack of azimuthal diversity • A relative weight (probability) is derived for every solution • Suitable with a variational filter MSS
Meteorological balance (2D-VAR) Spatial filter: • Mass conservation • Continuity equation 0U = 0 • Vertical motion < horizontal motion • Parameters: • Background error (variance) • Correlation length • Rotation vs divergence Cost function:
Local minima MSS NWP model
MSS Local minima
NOAA MSS @ 25 km 50 km Plots ! Improved coldfront Better Around rain
Remarks • Scatterometer wind retrieval skill depends on viewing geometry • Measurement error characterization is essential, notably for QC and AR • Effective QC is very important for DA • Rain screening is especially relevant for Ku-band • Variational AR accounts for full wind PDF
Data assimilation • The analysis minimizes the costfunction J by varying the controlvariables representing theatmospheric state, e.g., uj , the wind components of wind vector vj, • At every observation point prior knowledge is available on the observed state from a sort-range forecast, called NWP background • JB is a penalty term penalizing differences of, e.g., uj with the NWP background (subscript B) • sB denotes the expected background wind component error • JB differences should be spatially balanced according to our knowledge of the NWP model errros • So, JB determines the spatial consistency of the analysis (i.e., a low pass filter) Lorenc, Q.J.R.Meteorol.Soc., 1988 12
Wind error model p([u,v]SCAT|vB) p([V,f]SCAT|vB) • Error distributions: p(vSCAT|vB) = p(vSCAT|vTrue) p(vTrue|vB) • Combined NWP background and scatterometer error distribution looks like a normal distribution in wind components with rather constant width as a function of wind speed • In speed it is a skew distribution • In direction the width of the distribution depends on speed and the distribution is periodic • Wind component error model clearly simplest 13 Stoffelen, Q.J.R.Meteorol.Soc., 1998
Measurement Noise 5% • s0 noise is uniform in measurement space (~5 % or 0.5 m/s VRMS) • Wind retrieval provides very accurate s0S given s0O , so well-defined p(vS | s0O) 14
Observation error The analysis control variables follow the NWP model spectrum (model balance) Measured scales not represented by the NWP model state are attributed as observation representation error The scatterometer wind vector representation error is about 1.5 m/s In triple collocation scatterometer wind errors on NWP scale are estimated at about 1 m/s vector RMS 15 Vogelzang et al., 2011 NWP SAF Workshop | 14 April 2011
Scatterometer input NWP Scatterometer Observation Representation error p(vS |v) v X v Prob [a.u.] 16
Rotating beam (SeaWinds, OSCAT: mid swath) true • Fixed antennas (ASCAT: inner swath) • Broad MLE minima and closeby multiple ambiguous solutions are complicating scatterometer wind assimilation 17
Scatterometer Data Assimilation Posteriori Wind Probability given a set of measurements Wind domain uncertaintyDu, Dv ~ 1.5 m/s Measurement space noise D ~ 5% (0.2 m/s) 0S = GMF(vS, .. ) Geophysical solution manifold ERS/ASCAT: Manifold in 3D measurement space SeaWinds/NSCAT: Manifold in 4D measurement space Stoffelen&Portabella, 2006
Scatterometer data assimilation • JO is a penalty term penalizingdifferences of the analysis control variables with the observations • Choices: • Direct assimilation of s 0O • Complex error PDFs • Assimilate p(vS | s 0O), like in MSS and 2DVAR • Needs p information • Assimilate ambiguities • Reduces wind solution space to max 4 points • Assimilate selected solution • Reduces wind solution space to one point p(vS | s 0O) Stoffelen & Anderson, Q.J.R.Meteorol.Soc., 1997 19
Direct assimilation of s 0O • s0 noise is narrow leading to accurate wind retrieval • Observation and background wind noise are relatively large leading to complex and skew error PDFs in measurement space • Not compatible with BLUE, higher order statistics needed • Wind assimilation appears simplest y: s0 x: wind • Main uncertainty is in the wind domain 20 Stoffelen, PhD thesis,1998
Assimilate ambiguities v Prob Prob p(vS |v) Ambiguities • Reduces wind solution space to max 4 points (delta functions); solution wind PDF information is lost 21
Assimilate ambiguities Scatterometer wind cost ambiguous wind vectorsolutions ui ,vi provided by wind retrieval procedure and complemented by estimated observation wind error, eu = evStoffelen and Anderson, 1998 • Derive probability Pi from MLE info 22
Assimilate solution “valley” v Prob Prob p(vS |v) MSS • Retains essential wind solution PDF information along the valley of solutions that generally exists • Provides very good approximation to p(v | s 0O) 23 Portabella and Stoffelen, 2004
Scatterometer input NWP Scatterometer Observation from MSS Representation error v • Provides very good approximation to p(v | s 0O) X Prob [a.u.] 24 Portabella and Stoffelen, 2004
Assimilation of ambiguous winds Potentially provides multiple minima in3D/4D-Var Problem is very limitedfor ASCAT 2DVAR tests show <1% of wrong selection May be linearized byselecting one solutionat a time (inner loop) vtrue = (0,3.5) ms-1v2 = -v1 eu/v,O = 2 ms-1 p2 = p1 = .5 eu/v,B = 2 ms-1 <vA> = (0,3.25) ms-1 Monte Carlo simulation, Stoffelen & Anderson, 1997 25
Assimilation of unambiguous winds Prob NWP background Scatterometer wind Analysis [a.u.] 26 • AR by 2DVAR well tested and independent of B • Broad B structure functions provide best AR skill • Assimilation of scatterometer wind product is straightforward • Few spatially correlated outliers due to AR errors, but mainly in dynamic weather
Example Improved 5-day forecasts of tropical cyclone in ECMWF 4D-VAR No ERS Scatterometer With ERS Rita Isaksen & Stoffelen, 2000 27
Another example ASCAT has smaller rain effect Japan Meteorological Agency 28
Gebruik van scatterometers Assimilation ASCAT winds ECMWF from 12/6/’07 Beneficial for U10 analysis Operational okt/nov 2007 (added to QuikScat&ERS) Hans Hersbach & Saleh Abdalla, ECMWF ECMWF analysis vs ENVISAT altimeter wind 29
Underpredicted surge Delfzijl 31/10/’6 18Z 1/11/’06 4Z 30
NWP Impact @ 100 km 29 10 2002 Storm near HIRLAM misses wave; SeaWinds should be beneficial! 31
NWP models miss wave; Next day forecast bust ERS-2 scatterometer wave train; missed by HiRLAM 32
Conclusions ASCAT on board MetOp provides accurate daily global ocean surface winds at high spatial resolution NWP models lack such high resolution MetOp-B due for launch in 2012 probably providing a tandem ASCAT Further information: www.nwpsaf.orgscat@knmi.nl www.osi-saf.org www.knmi.nl/scatterometer 34
Thank you ! 35
Geographical statistics for ASCAT, July 2009 • Rain flag removes stronger winds • for QuikSCAT • There are some regional differences
Lack of cross-isobar flow in NWP • Large effect warm advection • Small effect cold advection QuikSCAT vs model wind dir Stratify w.r.t. Northerly, Southerly wind direction. (Dec 2000 – Feb 2001) • Similar results for NCEP Hans Hersbach, ECMWF (2005) WISE 2004, Reading