Publication | Closed Access
Data-Driven Models for the Spatio-Temporal Interpolation of Satellite-Derived SST Fields
44
Citations
30
References
2017
Year
Earth ObservationEngineeringSatellite-derived Sst FieldsOceanographyEarth ScienceData AssimilationData ScienceGaussian Process PriorsSatellite ImagingGeodesyGeostationary OrbitGeographyEarth Observation DataRadarSatellite-derived ProductsAnalog Data AssimilationRemote SensingSatellite MeteorologySpace GeodesySpatio-temporal Model
Satellite-derived products are of key importance for the high-resolution monitoring of the ocean surface on a global scale. Due to the sensitivity of spaceborne sensors to the atmospheric conditions as well as the associated spatio-temporal sampling, ocean remote sensing data may be subject to high-missing data rates. The spatio-temporal interpolation of these data remains a key challenge to deliver L4 gridded products to end-users. Whereas operational products mostly rely on model-driven approaches, especially optimal interpolation based on Gaussian process priors, the availability of large-scale observation and simulation datasets calls for the development of novel data-driven models. This study investigates such models. We extend the recently introduced analog data assimilation to high-dimensional spatio-temporal fields using a multiscale patch-based decomposition. Using an observing system simulation experiment for sea surface temperature, we demonstrate the relevance of the proposed data-driven scheme for the real missing data patterns of the high-resolution infrared METOP sensor. It has resulted in a significant improvement w.r.t. state-of-the-art techniques in terms of interpolation error (about 50% of relative gain) and spectral characteristics for horizontal scales smaller than 100 km. We further discuss the key features and parameterizations of the proposed data-driven approach as well as its relevance with respect to classical interpolation techniques.
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