Deep learning for post-processing global probabilistic forecasts on sub-seasonal time scales
Nina Horat, Sebastian Lerch

TL;DR
This paper introduces convolutional neural network-based post-processing methods to improve global probabilistic sub-seasonal weather forecasts, outperforming existing models and providing well-calibrated uncertainty quantification.
Contribution
It presents novel CNN-based post-processing techniques that operate on spatial fields to enhance sub-seasonal probabilistic forecasts, demonstrating superior performance over ECMWF and climatology.
Findings
Post-processing models outperform ECMWF forecasts.
Models produce well-calibrated probabilistic predictions.
Approaches improve forecast skill across variables and lead times.
Abstract
Sub-seasonal weather forecasts are becoming increasingly important for a range of socio-economic activities. However, the predictive ability of physical weather models is very limited on these time scales. We propose several post-processing methods based on convolutional neural networks to improve sub-seasonal forecasts by correcting systematic errors of numerical weather prediction models. Our post-processing models operate directly on spatial input fields and are therefore able to retain spatial relationships and to generate spatially homogeneous predictions. They produce global probabilistic tercile forecasts for biweekly aggregates of temperature and precipitation for weeks 3-4 and 5-6. In a case study based on a public forecasting challenge organized by the World Meteorological Organization, our post-processing models outperform recalibrated forecasts from the European Centre for…
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Taxonomy
TopicsMeteorological Phenomena and Simulations · Climate variability and models · Hydrological Forecasting Using AI
