Journal of Marine Science and Engineering (May 2022)

Global Gridded Argo Dataset Based on Gradient-Dependent Optimal Interpolation

  • Chunling Zhang,
  • Danyang Wang,
  • Zenghong Liu,
  • Shaolei Lu,
  • Chaohui Sun,
  • Yongliang Wei,
  • Mingxing Zhang

DOI
https://doi.org/10.3390/jmse10050650
Journal volume & issue
Vol. 10, no. 5
p. 650

Abstract

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The international Argo Program was launched at the turn of the millennium. It has since collected over 2 million vertical profiles of temperature and salinity from the upper 2000 m of the global ocean. Gridded interpolation is a technology that gives full play to the advantages of these profiles because they are scattered. This study develops a global gridded Argo dataset, called GDCSM-Argo, by using an improved gradient-dependent correlation scale method. The dataset is theoretically verified, its error-related statistics are recorded, and it is compared with other datasets to establish its reliability. The results show that the maximum mean RMSEs are 0.8 °C for temperature and 0.1 for salinity, and more than 90% of the analysis results are reliable under the statistical probability of 95%. Not only can GDCSM-Argo adequately preserve large-scale signals in the ocean but also retain more mesoscale features than other gridded Argo datasets. Preliminary applications also verify that GDCSM-Argo can systematically describe the spatio-temporal features of multiple elements in the global ocean, and is a useful tool in many areas of research.

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