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Overview of Navy Operational and Research SST Activities

Overview of Navy Operational and Research SST Activities James Cummings Naval Research Laboratory, Monterey, CA Doug May and Bruce McKenzie Naval Oceanographic Office, Stennis Space Center, MS

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Overview of Navy Operational and Research SST Activities

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  1. Overview of Navy Operational and Research SST Activities James Cummings Naval Research Laboratory, Monterey, CA Doug May and Bruce McKenzie Naval Oceanographic Office, Stennis Space Center, MS Sea Surface Temperature Science Team Meeting 8-10 November 2010 Seattle, WA

  2. Talk Outline: • NAVOCEANO SST Activities • SST retrievals • SST uncertainty estimates • SST Analysis Capabilities and Products • NRL SST Activities • aerosol contamination detection and correction • physical SST retrievals • diurnal skin SST model

  3. NAVOCEANO Operational SST Daily Data Counts Total: 26.1 million retrievals/day MetOp-A, N-18, N-19 AVHRR GAC 1.3 million obs MetOp-A AVHRR FRAC 15 million obs N-19 AVHRR LAC 4.5 million obs GOES-West 3.2 million obs GOES-East 2.1 million obs

  4. GHRSST SST Data Daily Data Counts ENVISAT AATSR 18 million obs AQUA AMSRE 5 million obs Total: 25.0 million retrievals/day MSG SEVIRI 2 million obs

  5. NAVOCEANO AVHRR GAC SST Data Latency Data latency is determined from start time of AVHRR GAC orbit to delivery time of processed SST retrievals

  6. Bias and RMSD Errors Relative to Drifting Buoys: NAVOCEANO METOP-A FRAC Improved Daytime Equation DayNight

  7. NAVOCEANO Satellite SST Retrieval Errors Common Set of Drifting Buoy Match-ups used to Compute SST Retrieval Errors Across all Satellites

  8. Data Flow through NCODA System Raw Obs Navy Coupled Ocean Data Assimilation:operational at Navy centers (NAVO, FNMOC) SST: NOAA (GAC, LAC), METOP (GAC, LAC), GOES, MSG, AATSR, AMSR-E, Ship/Buoy Profile Temp/Salt: XBT, CTD, Argo Float, Fixed/Drifting Buoy Altimeter SSH: Jason-1, Jason-2 Sea Ice: SSM/I, SSMIS, AMSR-E Ocean Gliders: T/S profiles Velocity: HF Radar, ADCP, Argo Trajectories, Surface Drifters, Gliders Automated QC w/condition flags Ocean Data QC 3DVAR – simultaneous analysis of 5 ocean variables: temperature, salinity, geopotential, u,v velocity components Innovations 3DVAR Increments Ocean Model Forecast Fields Prediction Errors Adaptive Sampling Guidance First Guess HYCOM or NCOM Sensors NCODA: QC + 3DVAR

  9. Variational Analysis System Components • 3DVAR • Analysis Error • Ensemble Transform • Assimilation Adjoint

  10. Global 2DVAR Assimilation: 9 km grid, 6 hr cycle Sea Ice Navy Contribution to GHRSST http://www.usgodae.org/ftp/outgoing/fnmoc/models/ghrsst/ Sea Ice and SST analysis fields and analysis errors since 2005 Analysis Increments Updated Field SST

  11. Variational Assimilation: Adaptive Data Thinning • high density SST data averaged within spatially varying bins • bins defined by background covariances – more (less) data thinning where length scales are long (short) • takes into account observation error and SST water mass of origin Satellite & In Situ SST Thinned SST Scales 10 km 200 km 10 km Global 2DVAR GHRSST Analysis 6 hr update cycle

  12. Variational Assimilation: Covariances Flow Dependent Land Distance • SST Covariance Options: • flow dependence: correlations stretched and rotated along SST gradients • distance from land: correlations spread along, not across, land boundaries

  13. Yellow Sea, Sea of Japan Atlantic Ocean West Pacific Ocean Tropical Atlantic Ocean Aerosol Plumes Obscure the Ocean Dust is optically active in the IR: elevated plumes appear cold Need to first detect and then correct aerosol contamination of SST retrievals

  14. NAAPS February 2007 Optical Depth Sulfate Dust Smoke Navy Aerosol Analysis Prediction System (NAAPS) Aerosol plume events are episodic, varying in strength, frequency, composition, altitude NAAPS provides time-dependent, spatially varying analyses to track aerosol plumes • global semi-lagrangian aerosol transport model • driven by global NWP model • variational assimilation MODIS and MISR AOD • multiple aerosol types: dust, smoke, sulfate, sea spray • physical processes: • emission from the surface • boundary layer mixing and diffusion • wind dispersion and advection • atmospheric removal by wet and dry deposition

  15. Detection Aerosol Contamination: Canonical Variate Analysis • discriminate among groups of SST retrievals contaminated by aerosols and SST retrievals free from aerosols • B = between group and W = within group covariance matrices. Eigenvalues of W-1B and eigenvectors () are the canonical variates. • predictors are AVHRR channel BTs and wavelength dependent NAAPS AOD components (x) projected onto rcanonical variates • SST is classified as contaminated if the Euclidean distance is closest to the contaminated group mean (μj) • group assignment (k) is probabilistic (2)– allows for uncertainties in NAAPS model predictions and satellite IR BTs

  16. Canonical Variate Analysis • applied to NAVO match-up data base for 1-10 July 2010 in tropical Atlantic • four groups defined with different levels of dust loading • first two canonical variates explain 98% of the variance • strong contamination group shows cold SST anomalies relative to buoys

  17. Correction Aerosol Contamination: CRTM Aerosol Module CRTM top-of-atmosphere BTs with and without NAAPS dust NAAPS Dust AOT at 500 nm (0.56 g/m2 extinction) AVHRR/METOP-A Ch5 dust minus clear sky TOA BTs. Nadir view using Navy global NWP model (idealized case). Forward modeling results only, correction algorithm work in progress

  18. Physical Satellite Skin SST Retrievals • incorporates impact of real atmosphere above the SST field • removes atmospheric signals in the data • assumes observed changes in SST BTs are due to 3 atmospheric model state variables: • atmospheric water vapor content • atmospheric temperature • sea surface temperature Two Step Process • CRTM forward modeling: innovations of AVHRR BTs wrt NWP model BTs • CRTM inverse modeling: sensitivities of SST BTs to model state vector and SST BT response to state perturbations

  19. Forward Modeling with CRTM AVHRR Infrared Channels 3 • converts NOGAPS state vector to top of the atmosphere brightness temperatures (TOA BTs ) • predicted AVHRR channels 3-5 TOA BTs from NOGAPS (left) • METOP-A observed channel 5 BTs minus NOGAPS predicted TOA BTs (below) 4 5

  20. Inverse Modeling with CRTM Given BT innovations and sensitivities, solve 3x3 matrix problem: Returns: (1) SST increment - Tsst (2) atmospheric temperature increment - Tatm (3) atmospheric moisture increment - Qatm

  21. Navy NWP Requirements for Physical Skin SST • Skin vs. Bulk • empirical SST algorithms compute bulk SST from drifting buoys • skill limited to latitude / longitude range of buoy observations • unknown sampling depth of drifting buoys (cm to m) • daily averaged bulk SST analysis inadequate for NWP • Navy atmospheric 4D-VAR rejects data from satellite sounding channels that peak at or near the surface • Diurnal SST Cycle • need to resolve ocean diurnal cycle • essential weather variation • required for physical SST assimilation (6-hr update cycle) • diurnal SST influences NWP convection and mixing • affects clouds, low level humidity, visibility, EM/EO propagation • NWP model improvements lead directly to improvements in ocean circulation and wave models

  22. Skin SST Model* Embedded in NOGAPS • forced by NOGAPS heat fluxes, solar radiation, surface stress • called every model time step integrating NWP forcing over time • compared skin SST with bulk SST control • large regional differences found: 4K instantaneous, 1K on average • skin-bulk SST differences persist in warm layers in some locations Link to movie *Zeng, X. and A. Beljaars (2005). Geophys. Res. Lett. 32. *Takaya, Y., J. Bidlot, A. Beljaars, and P. Janssen (2010). J. Geophys. Res. 115.

  23. Summary and Conclusions • Navy Operations: • NOAA/METOP/GOES SST data provider • consistent SSES for all satellite SST observing systems • range of SST assimilation activities: • global, regional, coastal • analysis-only, model based forecasting systems • Navy Research and Development: • physical SST retrieval algorithms • aerosol contamination detection and (eventually) correction • diurnal SST modeling, direct SST radiance assimilation Navy activities encompass many Science Team tasks

  24. END

  25. NAVOCEANO AVHRR Retrieval Process Overview AVHRR and HIRS 1b Input Day/Night Test Solar Zenith Angle Satellite Zenith Angle Test Create Unit Array Visible Cloud Threshold Test (daytime only) Gross Cloud Test Land Test Uniformity Tests SST Intercomparison Test Thin Cirrus Test Low Stratus Test CH4 – CH5 Test Unreasonable SST Test HIRS/Field Test (nighttime only) Aerosol Test (nighttime only) Climatology Test Create SST

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