26–27 Feb 2020
RMIB
Europe/Brussels timezone

Neural Networks for Postprocessing Ensemble Weather Forecasts

Not scheduled
20m
Conference Room (RMIB)

Conference Room

RMIB

Ringlaan 3 B-1180 Brussels Belgium

Speaker

Sebastian Lerch (Karlsruhe Institute of Technology)

Description

Ensemble weather predictions require statistical postprocessing of systematic errors to obtain reliable and accurate probabilistic forecasts. Traditionally, this is accomplished with distributional regression models in which the parameters of a predictive distribution are estimated from a training period. We propose a flexible alternative based on neural networks that can incorporate nonlinear relationships between arbitrary predictor variables and forecast distribution parameters that are automatically learned in a data-driven way rather than requiring prespecified link functions. In a case study of 2-m temperature forecasts at surface stations in Germany, the neural network approach significantly outperforms benchmark postprocessing methods while being computationally more affordable. Key components to this improvement are the use of auxiliary predictor variables and station-specific information with the help of embeddings. Furthermore, the trained neural network can be used to gain insight into the importance of meteorological variables, thereby challenging the notion of neural networks as uninterpretable black boxes.

Primary author

Sebastian Lerch (Karlsruhe Institute of Technology)

Co-author

Dr Stephan Rasp (Technical University of Munich)

Presentation materials

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