Deep Learning for Day Forecasts from Sparse Observations
Marcin Andrychowicz, Lasse Espeholt, Di Li, Samier Merchant, Alexander, Merose, Fred Zyda, Shreya Agrawal, Nal Kalchbrenner

TL;DR
MetNet-3 is a neural weather forecasting model that significantly extends prediction lead times and variables, outperforming traditional models up to 24 hours ahead using high-resolution, observation-based data.
Contribution
This paper introduces MetNet-3, a novel neural network that learns from sparse and dense atmospheric observations to produce high-resolution weather forecasts up to 24 hours ahead, surpassing existing neural models.
Findings
MetNet-3 outperforms HRRR and ENS models up to 24 hours.
It predicts precipitation, wind, temperature, and dew point.
The model operates at high spatial and temporal resolutions.
Abstract
Deep neural networks offer an alternative paradigm for modeling weather conditions. The ability of neural models to make a prediction in less than a second once the data is available and to do so with very high temporal and spatial resolution, and the ability to learn directly from atmospheric observations, are just some of these models' unique advantages. Neural models trained using atmospheric observations, the highest fidelity and lowest latency data, have to date achieved good performance only up to twelve hours of lead time when compared with state-of-the-art probabilistic Numerical Weather Prediction models and only for the sole variable of precipitation. In this paper, we present MetNet-3 that extends significantly both the lead time range and the variables that an observation based neural model can predict well. MetNet-3 learns from both dense and sparse data sensors and makes…
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Taxonomy
TopicsMeteorological Phenomena and Simulations · Precipitation Measurement and Analysis · Climate variability and models
