March 2022 A functional-data approach to the Argo data
Drew Yarger, Stilian Stoev, Tailen Hsing
Author Affiliations +
Ann. Appl. Stat. 16(1): 216-246 (March 2022). DOI: 10.1214/21-AOAS1477

Abstract

The Argo data is a modern oceanography dataset that provides unprecedented global coverage of temperature and salinity measurements in the upper 2000 meters of depth of the ocean. We study the Argo data from the perspective of functional data analysis (FDA). We develop spatiotemporal functional kriging methodology for mean and covariance estimation to predict temperature and salinity at a fixed location as a smooth function of depth. By combining tools from FDA and spatial statistics, including smoothing splines, local regression, and multivariate spatial modeling and prediction, our approach provides advantages over current methodology that consider pointwise estimation at fixed depths. Our approach naturally leverages the irregularly-sampled data in space, time, and depth to fit a space-time functional model for temperature and salinity. The developed framework provides new tools to address fundamental scientific problems involving the entire upper water column of the oceans, such as the estimation of ocean heat content, stratification, and thermohaline oscillation. For example, we show that our functional approach yields more accurate ocean heat content estimates than ones based on discrete integral approximations in pressure. Further, using the derivative function estimates, we obtain a new product of a global map of the mixed layer depth, a key component in the study of heat absorption and nutrient circulation in the oceans. The derivative estimates also reveal evidence for density inversions in areas distinguished by mixing of particularly different water masses.

Funding Statement

The authors acknowledge support from grants DMS-1646108 and DGE-1841052 for Drew Yarger and DMS-1916226 for Stilian Stoev and Tailen Hsing.

Acknowledgments

We would like to thank the physical oceanography group at the Scripps Institution of Oceanography, including Sarah Gille, Lynne Talley, Matt Mazloff, Isabella Rosso, John Gilson, and Dean Roemmich; in addition, we want to thank Mikael Kuusela, Alison Gray, and Donata Giglio for helpful comments on our work. We thank Michael Stein for suggesting to look at the observed monotonicity properties of density. We would also like to thank Moritz Korte-Stapff for his work on the covariance estimation. We finally thank the reviewers and an Associate Editor for important comments and suggestions that substantially improved the quality of the paper.

These data were collected and made freely available by the International Argo Program and the national programs that contribute to it: http://www.argo.ucsd.edu. The Argo Program is part of the Global Ocean Observing System. This research was supported in part through computational resources and services provided by Advanced Research Computing at the University of Michigan, Ann Arbor. This work used the Extreme Science and Engineering Discovery Environment (XSEDE) which is supported by National Science Foundation grant number ACI-1548562 (Towns et al. (2014)). Code for the analyses presented in this paper are available at Yarger (2020b).

Citation

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Drew Yarger. Stilian Stoev. Tailen Hsing. "A functional-data approach to the Argo data." Ann. Appl. Stat. 16 (1) 216 - 246, March 2022. https://doi.org/10.1214/21-AOAS1477

Information

Received: 1 June 2020; Revised: 1 April 2021; Published: March 2022
First available in Project Euclid: 28 March 2022

MathSciNet: MR4400508
zbMATH: 1498.62296
Digital Object Identifier: 10.1214/21-AOAS1477

Keywords: Functional data analysis , Matérn , Oceanography , spatial statistics , splines

Rights: Copyright © 2022 Institute of Mathematical Statistics

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Vol.16 • No. 1 • March 2022
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