Multimodal 4DVarNets for the reconstruction of sea surface dynamics from SST-SSH synergies
Ronan Fablet, Quentin Febvre, Bertrand Chapron

TL;DR
This paper presents a physics-informed, trainable multimodal inversion scheme called 4DVarNet for reconstructing sea surface dynamics from satellite data, significantly improving accuracy over existing methods.
Contribution
The paper introduces a novel 4DVarNet approach that combines variational formulation with trainable components for multimodal satellite data inversion, enhancing sea surface dynamics reconstruction.
Findings
Achieved over 50% reduction in root mean square error compared to operational products.
Effectively reconstructed fine-scale sea surface dynamics from irregular satellite observations.
Demonstrated applicability to Gulf Stream region with improved space-time scale resolution.
Abstract
Due to the irregular space-time sampling of sea surface observations, the reconstruction of sea surface dynamics is a challenging inverse problem. While satellite altimetry provides a direct observation of the sea surface height (SSH), which relates to the divergence-free component of sea surface currents, the associated sampling pattern prevents from retrieving fine-scale sea surface dynamics, typically below a 10-day time scale. By contrast, other satellite sensors provide higher-resolution observations of sea surface tracers such as sea surface temperature (SST). Multimodal inversion schemes then arise as an appealing strategy. Though theoretical evidence supports the existence of an explicit relationship between sea surface temperature and sea surface dynamics under specific dynamical regimes, the generalization to the variety of upper ocean dynamical regimes is complex. Here, we…
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Taxonomy
TopicsOceanographic and Atmospheric Processes · Meteorological Phenomena and Simulations · Ocean Waves and Remote Sensing
