Using existing Argo trajectories to statistically predict future float positions with a transition matrix

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Date
2023-09-01
Authors
Chamberlain, Paul
Talley, Lynne D.
Mazloff, Matthew R.
van Sebille, Erik
Gille, Sarah T.
Tucker, Tyler
Scanderbeg, Megan
Robbins, Pelle
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DOI
10.1175/jtech-d-22-0070.1
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Keywords
Ocean
Advection
Lagrangian circulation/transport
Large-scale motions
Buoy observations
Statistical forecasting
Abstract
The Argo array provides nearly 4000 temperature and salinity profiles of the top 2000 m of the ocean every 10 days. Still, Argo floats will never be able to measure the ocean at all times, everywhere. Optimized Argo float distributions should match the spatial and temporal variability of the many societally important ocean features that they observe. Determining these distributions is challenging because float advection is difficult to predict. Using no external models, transition matrices based on existing Argo trajectories provide statistical inferences about Argo float motion. We use the 24 years of Argo locations to construct an optimal transition matrix that minimizes estimation bias and uncertainty. The optimal array is determined to have a 2° × 2° spatial resolution with a 90-day time step. We then use the transition matrix to predict the probability of future float locations of the core Argo array, the Global Biogeochemical Array, and the Southern Ocean Carbon and Climate Observations and Modeling (SOCCOM) array. A comparison of transition matrices derived from floats using Argos system and Iridium communication methods shows the impact of surface displacements, which is most apparent near the equator. Additionally, we demonstrate the utility of transition matrices for validating models by comparing the matrix derived from Argo floats with that derived from a particle release experiment in the Southern Ocean State Estimate (SOSE).
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Author Posting. © American Meteorological Society, 2023. This article is posted here by permission of American Meteorological Society for personal use, not for redistribution. The definitive version was published in Chamberlain, P., Talley, L. D., Mazloff, M., van Sebille, E., Gille, S. T., Tucker, T., Scanderbeg, M., & Robbins, P. (2023). Using existing Argo trajectories to statistically predict future float positions with a transition matrix. Journal of Atmospheric and Oceanic Technology, 40(9), 1083-1103, https://doi.org/10.1175/jtech-d-22-0070.1.
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Chamberlain, P., Talley, L. D., Mazloff, M., van Sebille, E., Gille, S. T., Tucker, T., Scanderbeg, M., & Robbins, P. (2023). Using existing Argo trajectories to statistically predict future float positions with a transition matrix. Journal of Atmospheric and Oceanic Technology, 40(9), 1083-1103.
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