MetNet: A Neural Weather Model for Precipitation Forecasting
Sønderby, Casper Kaae, Espeholt, Lasse, Heek, Jonathan, Dehghani, Mostafa, Oliver, Avital, Salimans, Tim, Agrawal, Shreya, Hickey, Jason, Kalchbrenner, Nal
Weather forecasting is a long standing scientific challenge with direct social and economic impact. The task is suitable for deep neural networks due to vast amounts of continuously collected data and a rich spatial and temporal structure that presents long range dependencies. We introduce MetNet, a neural network that forecasts precipitation up to 8 hours into the future at the high spatial resolution of 1 km$^2$ and at the temporal resolution of 2 minutes with a latency in the order of seconds. MetNet takes as input radar and satellite data and forecast lead time and produces a probabilistic precipitation map. The architecture uses axial self-attention to aggregate the global context from a large input patch corresponding to a million square kilometers. We evaluate the performance of MetNet at various precipitation thresholds and find that MetNet outperforms Numerical Weather Prediction at forecasts of up to 7 to 8 hours on the scale of the continental United States.
Mar-30-2020
- Country:
- North America > United States > District of Columbia > Washington (0.04)
- Genre:
- Research Report (0.40)
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- Technology: