Deep Learning the Weather

Many deep learning technologies have been applied to the Earth sciences. Nonetheless, the difficulty in interpreting deep learning results still prevents their applications to studies on climate dynamics. Here, we applied a convolutional neural network to understand El NiƱo–Southern Oscillation (ENSO) dynamics from long-term climate model simulations. The deep learning algorithm successfully predicted ENSO events with a high correlation skill (∼0.82) for a 9-month lead. For interpreting deep learning results beyond the prediction, we present a "contribution map" to estimate how much the grid box and variable contribute to the output and "contribution sensitivity" to estimate how much the output variable is changed to the small perturbation of the input variables.

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