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SST Data Used at NOAA Climate Prediction Center (CPC) OI SST of Reynolds

Use of Satellite Retrieved SST at NOAA Climate Prediction Center Pingping Xie and Wanqiu Wang Climate Prediction Center NCEP/NWS/NOAA. SST Data Provide Information Critical to the Assessment, Diagnostics and Prediction of Climate and Its Variability.

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SST Data Used at NOAA Climate Prediction Center (CPC) OI SST of Reynolds

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  1. Use of Satellite Retrieved SSTat NOAA Climate Prediction CenterPingping Xie and Wanqiu WangClimate Prediction CenterNCEP/NWS/NOAA

  2. SST Data Provide Information Critical to the Assessment, Diagnostics and Prediction of Climate and Its Variability • SST Data Used at NOAA Climate Prediction Center (CPC) • OI SST of Reynolds • Reconstructed SST of Smith & Reynolds • Real-Time Global SST of EMC • Multi Platform Merged (MPM) SST (in development)

  3. The Multi Platform Merged (MPM)Sea Surface Temperature Analysis • To construct a high resolution SST analysis over the western hemisphere through combining information from all available sources • Domain: 180o – 30oW; 45oS – 60oN • Resolution: 0.25olat/lon; 3-hourly • Target Period: 2002 – Present • Goals: Resolving diurnal cycle of SST

  4. Algorithm Strategy • Input data: All available in-situ and advanced satellite observations • Quality control:Cross check to ensure data quality • Bias correction: Removal of large-scale/low-frequency bias in satellite observations • OI analysis: Combining SST data from all observations through the Optimal Interpolation (OI)

  5. Input Data • In-situ observations Buoys and ships • Satellite Observations GOES: 3-hourly / clear sky TMI: twice daily / all sky AMSR: twice daily / all sky NOAA16: twice daily / clear sky NOAA17: twice daily / clear sky MODIS: twice daily / clear sky

  6. Quality Control • Raw input data by cross-check to remove outliers that are too cold or warm compared to the median value of all input observations • This process is repeated after bias correction with stricter thresholds • In the OI computation, increment amplitude of each input observation is required not to exceed 1.5K.

  7. PDF Bias Correction • PDF functions are defined for each 1ox1o box and each day using at least 500 matching pairs of satellite and in-situ observations within the last 46-day and within a box co-centric with the target 1ox1o box • A table is then established to give correspondence between the satellite-estimated and the in-situ observed SSTs with the same percentiles in the PDF functions • Bias correction is performed through this correspondence table

  8. Bias Correction for TMI [2004] • Double peaks and over-estimation of high SSTs in the raw TMI retrieval histogram; • Corrected TMI SSTs closer to the in-situ observations;

  9. Optimal Interpolation • First guess is taken as the analysis of the previous step plus climatoligical seasonal and diurnal increment. • Spatial first-guess error correlation follows Gaussian distribution with an e-folding scale of 50 km.

  10. Current Status • Developed prototype algorithm to define the analysis • Produced the test version analysis for 2002 – 2008 • Will re-generate the analysis with revised error statistics and parameters derived from the test version analysis

  11. The MPM 3-hourly SST Sample analysis for 00Z, July 3, 2004

  12. Time Series of 3-Hourly SSTat [109.875oW; 26.125oN] MPM analysis

  13. Mean Diurnal SST (2003-2008) MPM analysis

  14. Comparison with OI and RTG SST SST SST Gradient From OI to RTG to MPM OI • Analyses become finer • Local gradient amplitude becomes larger RTG Chelton and Wentz (2005) showed that SST gradient in OI and RTG is too week. MPM

  15. Wish List • Improved QC for the SST retrievals (removal of cloud contaminated pixels) • Improved calibration / bias correction • Calibration against skin temperature

  16. Thank youfor providing us the SST data !

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