Purely satellite data-driven deep learning forecast of complicated tropical instability waves

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Abstract

Forecasting fields of oceanic phenomena has long been dependent on physical equation-based numerical models. The challenge is that many natural processes need to be considered for understanding complicated phenomena. In contrast, rules of the processes are already embedded in the time-series observation itself. Thus, inspired by largely available satellite remote sensing data and the advance of deep learning technology, we developed a purely satellite data-driven deep learning model for forecasting the sea surface temperature evolution associated with a typical phenomenon: a tropical instability wave. During the testing period of 9 years (2010-2019), our model accurately and efficiently forecasts the sea surface temperature field. This study demonstrates the strong potential of the satellite data-driven deep learning model as an alternative to traditional numerical models for forecasting oceanic phenomena.

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Zheng, G., Li, X., Zhang, R. H., & Liu, B. (2020). Purely satellite data-driven deep learning forecast of complicated tropical instability waves. Science Advances, 6(29). https://doi.org/10.1126/sciadv.aba1482

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