Field assessment of ocean wind stress derived from active and passive microwave sensors

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Field assessment of ocean wind stress derived from active and passive microwave sensors Doug Vandemark, Marc Emond (UNH) Jim Edson (UCONN) Bertrand Chapron (IFREMER)

Motivations Are there 1 st or 2 nd order distinctions between τ and U 10EN_SAT and amongst the OW sensors? Need still exists to address long-standing issue of validating the scatterometer as a wind stress estimator, in large part due to lack of ground truth Desire climate data record Ocean Wind (OW) consistency amongst many different passive & active ocean wind configurations i.e. the remote sensing aspect comes into play Support for interpretation of OW as an area-mean stress and clear methods for moving between U10EN SAT and τ SAT New L-band data (Aquarius/SMAP/CYGNSS) + CFOSAT is/will provide expanded and alternate view of wind-waves & winds Surface current missions envisioned will open another new window

Outline Approach provide some complement to the nominal triplet approaches with in situ stress data density stability drag coefficient surface current A valid assumption,and for all sensors? a = < a C d10en > U 10EN_sat U 10EN_sat = a u* u*

Momentum Flux Met Platforms 2006-2014 Primary sensor 3D 20 Hz sonic anemometer with motion package (Direct Covariance Flux System DCFS) Range of Conditions - marginal sea, tides, short fetch Gulf Stream & fronts Subtropical gyre & swell Hourly data collection for months to years

Ocean wind satellite datasets Scatterometer: o QuikSCAT: 12km (L2 V3 PO.DAAC); o ASCAT-A (L2 KNMI) o OSCAT L2B (PO.DAAC) Radiometer (all V7 RSS): o AMSR-E o AMSR-2 o WINDSAT o SSM/I Altimeter (GDR) o Jason-1 o Jason-2 o Envisat RA-2 o GFO o Saral/AltiKa

Creation of quality-controlled satellite ocean wind stress assessment datasets work in progress Consistent in situ data : use of moored direct covariance momentum flux measurements and consistent data processing for motion correction and data QA/QC Three differing locations to date and coming soon 4 global-node OOI(NSF) mooring + OOI pioneer array data: DOF and wind-wave conditions Satellite matchups performed in consistent manner with latest version wind products, including scatterometer, radiometers and altimeters Open data access for IOVWST Scatterometer Flux Buoy Comparison Datasets Radiometer Flux Buoy Comparison Datasets Mission N Platforms QuikSCAT 821 C,J,S ASCAT-A 710 J,S OSCAT 847 J,S Aquarius 051 S Mission N Platforms SSM/I 4322 C,J,S AMSR-E 0910 C,J WINDSAT 1443 C,J,S AMSR-2 0530 S

CLIMODE examples QuikSCAT N= 560 Windsat N=335

DCFS combined datasets expanding wave conditions CLIMODE Coastal NE - bifurcation in wave climate SPURS I N. Atlantic 24 N

DCFS buoy data quality validating derived heave-derived wave statistics against 2009-2012 colocated waverider (2011 data used here) - Gravity Wave data central to Cd assessment DCFS heave approach needs validation

Satellite winds, wind stress, and near-surface density Wentz (stress working group comm.), Hersbach (2010), Bourassa et al. (2010), Grodsky et al. (2012), Pierson and Donelan (1987) and back to Seasat... The assumption: U10N_SAT is not equal to U10N_insitu when near surface air density changes from some nominal density tied to the GMF a = < a C d10en > U 10EN_sat U 10EN_sat U 10EN_sat / U 10EN_InSitu = [ ρ / <ρ> ] y = 1.13x 0.126 QuikSCAT/Buoy Data filtering: <ρ> @ 20degC, Tair and not SST, U > 3 m/s, and deltau< 3Std, closest Sat match (ρ / <ρ> )

Satellite winds, wind stress, and near-surface air density We expect same should hold in general for the complement of ocean remote sensors (atmospheric BL, not directly the roughness). Do we see the same for the radiometers? Windsat/Buoy Notes: < ρ > @ 20degC U10N > 3 m/s Climode 2005-7 Fine Point? < ρ > likely a function of U for each GMF, higher wind tie to lower pressure and temp. y = 1.26x 0.24 (ρ / <ρ> )

Atmospheric Stability, ocean satellite winds, and equivalent neutral wind Evaluated by many against bulk met and other approaches... many in the room. Difficult to nail down from many angles including from remote sensing side Keller et al., 1989 Vandemark, Edson, and Chapron, 1997 Deviations away from bulk estimation when short waves are concerned?

QuikScat (Ku-band) wind with change in MO stability length scale Buoy Only ENW_Scatt: ENW_buoy Conclusions: With present DOF (climode analyses), the quikscat data a) clearly depart from the anemometer 10 m wind b) follow an ENW (e.g. ψ(z/l) of Coare3.5/LKB ) to within a few % c) some possible over and under shoot hinted at for extremes in z/l

Windsat (MF) wind with change in MO stability length scale WINDSAT vs. InSitu

ASCAT-A (12km) wind with change in MO stability length scale ASCAT-A vs. InSitu

Drag Coefficient

Drag Coefficient a = < a C d10en > U 10EN_sat U 10EN_sat U 10EN_sat / U 10EN_InSitu = [ C dn10 / <C dn10 > ] = F (sea state?) WINDSAT-LF QSCAT U = 6 +-/ 1 m/s So a reminder of Air-sea flux issue CdN10 ( z 0 ) = F(u*, u*/cp, ak, mss) + Remote sensing issues:? z 0SCATT ~= z 0Radiom?? z 0L_SCATT ~= z 0Ku_SCATT?

Drag Coefficient WINDSAT-LF QSCAT U = 8 +-/ 1 m/s

TRANSLATING U 10EN_SCATT to τ Scatterometer-derived stress with varied Cd(U_scatt) vs. direct covariance stress - an example using QuikSCAT and the CLIMODE data...

CURRENTS

Scatterometry and currents According to surface layer models, we assume that near surface wind should follow the kinematic boundary condition, i.e.: But: surface current o scatterometer winds are derived from short grav.- capillary wind waves do they obey this form? o the few existing scatterometer wind-current studies focus mostly on the equatorial region o and/or use only climatological currents & winds o or non-surface current measurements (e.g 10m depth) o and don t quantitatively validate the assumption Dickinson et al. 2001; Kara et al. 2007; Kelly et al. 2005; Quilfen et al. 2001

Approach use Gulf of Maine tides http://app2.iris.usm.maine.edu/gulfofmaine-censusdev/wp-content/images/circulation/fig4.jpg

QuikSCAT and buoy wind speed residuals vs. projected current All data - all wind speeds & conditions Slope: -0.83 +- 0.07!= 1:1 weighted LS fit black dashed line indicates y = -x

QuikSCAT - buoy wind speed vs. projected current Conditional filtering: Moderate wind speed & near neutral atmos. stability Slope: 1.0 +- 0.17 weighted LS fit black dashed line indicates y = -x

One Mea Culpa re: ASSCAT-A; Surface currents at C and Ku-band Plagge et al., Examining the impact of surface currents on satellite scatterometer and altimeter ocean winds, doi: http://dx.doi.org/10.1175/jtech-d-12-00017.1, 2012 Orig Conclusion: Unexplained earth- vs. current- relative wind difference between the coastal, 12 and 25 km ASCAT wind product. Hypothesis: to do with resolution/smoothing... Figure from Paper New Result, same time and DOF

Source of error: unknown but tied to a time evolving error in colocation of satellite and buoy data 2009-2011 for 12 and 25 km data New Conclusion: As for Ku-band, we see a trend in earth- vs. currentrelative wind that is similar for all three ASCAT resolution products. No difference between the coastal and 25 km product.

Summary Need exists to further solidify the links between wind stress and ocean satellite winds for all the platforms including scatterometers (C, Ku, L) but also the radiometer and altimeter systems One approach is via direct validation against direct covariance field datasets Validation database in development & input welcome on particular satellite products to ingest open access in next year First results indicate further evidence and estimate uncertainty related to air density and forward steps re: atmospheric stability (more difficult to isolate) Drag coefficient issue most likely to divide the sensors

Some next steps Fold into the stress and CDR working group goals Combination of ASCAT, direct covariance and 7 bulk met buoys in GoMaine region to assess ASCAT under stable MABL condition, for Cd under short fetch, and for SST impacts (e.g. Grodsky et al. 2012) Is there a case for more or more targeted (e.g. process/location) platform deployments? Guidance for triplet, ship or buoy colocation revisits? Expand flux/satellite OW database with known coming DCFS buoy sets including OOI and perhaps SPURS II Expand datafields (Tb, sigma0, wavefield statistics) Thanks to NASA, ESA, and NSF for funding support