Sub-seasonal forecasting with a large ensemble of deep-learning weather prediction models
Jonathan A. Weyn, Dale R. Durran, Rich Caruana, Nathaniel, Cresswell-Clay

TL;DR
This paper introduces a computationally efficient deep learning ensemble system for sub-seasonal weather forecasting, capable of producing global six-week forecasts with reasonable accuracy and the spontaneous generation of tropical cyclones.
Contribution
The study presents a novel deep learning ensemble approach for sub-seasonal weather prediction, demonstrating competitive performance with traditional models at extended lead times.
Findings
Ensemble system produces global forecasts in three minutes on a single GPU.
Model forecasts total column water vapor and reasonably predicts Hurricane Irma.
Ensemble skill remains above climatology beyond two weeks, with some competitive performance against ECMWF.
Abstract
We present an ensemble prediction system using a Deep Learning Weather Prediction (DLWP) model that recursively predicts key atmospheric variables with six-hour time resolution. This model uses convolutional neural networks (CNNs) on a cubed sphere grid to produce global forecasts. The approach is computationally efficient, requiring just three minutes on a single GPU to produce a 320-member set of six-week forecasts at 1.4{\deg} resolution. Ensemble spread is primarily produced by randomizing the CNN training process to create a set of 32 DLWP models with slightly different learned weights. Although our DLWP model does not forecast precipitation, it does forecast total column water vapor, and it gives a reasonable 4.5-day deterministic forecast of Hurricane Irma. In addition to simulating mid-latitude weather systems, it spontaneously generates tropical cyclones in a one-year…
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