Unsupervised reconstruction of sea surface currents from ais maritime traffic data using trainable variational models

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Abstract

The estimation of ocean dynamics is a key challenge for applications ranging from climate modeling to ship routing. State-of-the-art methods relying on satellite-derived altimetry data can hardly resolve spatial scales below ~100 km. In this work we investigate the relevance of AIS data streams as a new mean for the estimation of the surface current velocities. Using a physics-informed observation model, we propose to solve the associated the ill-posed inverse problem using a trainable variational formulation. The latter exploits variational auto-encoders coupled with neural ODE to represent sea surface dynamics. We report numerical experiments on a real AIS dataset off South Africa in a highly dynamical ocean region. They support the relevance of the proposed learning-based AIS-driven approach to significantly improve the reconstruction of sea surface currents compared with state-of-the-art methods, including altimetry-based ones.

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Benaïchouche, S., Legoff, C., Guichoux, Y., Rousseau, F., & Fablet, R. (2021). Unsupervised reconstruction of sea surface currents from ais maritime traffic data using trainable variational models. Remote Sensing, 13(16). https://doi.org/10.3390/rs13163162

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