Assessment and Intercomparison of NOAA Daily Optimum Interpolation Sea Surface Temperature (DOISST) Version 2.1

Author:

Huang Boyin1,Liu Chunying12,Freeman Eric13,Graham Garrett4,Smith Tom5,Zhang Huai-Min1

Affiliation:

1. a NOAA National Centers for Environmental Information, Asheville, North Carolina

2. b Riverside Technology, Inc., Asheville, North Carolina

3. c Cooperative Institute for Satellite Earth System Studies, University of Maryland, Asheville, North Carolina

4. d North Carolina Institute for Climate Studies, North Carolina State University, Asheville, North Carolina

5. e NOAA Center for Satellite Applications and Research, College Park, Maryland

Abstract

AbstractThe NOAA Daily Optimum Interpolation Sea Surface Temperature dataset (DOISST) has recently been updated to v2.1 (January 2016–present). Its accuracy may impact the climate assessment, monitoring and prediction, and environment-related applications. Its performance, together with those of seven other well-known sea surface temperature (SST) products, is assessed by comparison with buoy and Argo observations in the global oceans on daily 0.25° × 0.25° resolution from January 2016 to June 2020. These seven SST products are NASA MUR25, GHRSST GMPE, BoM GAMSSA, UKMO OSTIA, NOAA GPB, ESA CCI, and CMC. Our assessments indicate that biases and root-mean-square difference (RMSDs) in reference to all buoys and all Argo floats are low in DOISST. The bias in reference to the independent 10% of buoy SSTs remains low in DOISST, but the RMSD is slightly higher in DOISST than in OSTIA and CMC. The biases in reference to the independent 10% of Argo observations are low in CMC, DOISST, and GMPE; also, RMSDs are low in GMPE and CMC. The biases are similar in GAMSSA, OSTIA, GPB, and CCI whether they are compared against all buoys, all Argo, or the 10% of buoy or 10% of Argo observations, while the RMSDs against Argo observations are slightly smaller than those against buoy observations. These features indicate a good performance of DOISST v2.1 among the eight products, which may benefit from ingesting the Argo observations by expanding global and regional spatial coverage of in situ observations for effective bias correction of satellite data.

Publisher

American Meteorological Society

Subject

Atmospheric Science

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