Litcius/Paper detail

Global Gridded Argo Dataset Based on Gradient-Dependent Optimal Interpolation

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

2022Journal of Marine Science and Engineering16 citationsDOIOpen Access PDF

Abstract

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.

Topics & Concepts

ArgoMesoscale meteorologyInterpolation (computer graphics)Scale (ratio)Temperature salinity diagramsMeteorologyEnvironmental scienceClimatologyComputer scienceSalinityGeologyGeographyCartographyArtificial intelligenceOceanographyMotion (physics)Oceanographic and Atmospheric ProcessesOcean Waves and Remote SensingGeophysics and Gravity Measurements