Abstract
Model error is one of the main obstacles to improved accuracy and
reliability in numerical weather prediction (NWP) conducted with
state-of-the-art atmospheric models. To deal with model biases, a
modification of the standard 4D-Var algorithm, called weak-constraint
4D-Var, has been developed where a forcing term is introduced into the
model to correct for the bias that accumulates along the model
trajectory. This approach reduced the temperature bias in the
stratosphere by up to 50% and is implemented in the ECMWF operational
forecasting system.
Despite different origins and
applications, Data Assimilation and Deep Learning are both able to learn
about the Earth system from observations. In this paper, a deep learning
approach for model bias correction is developed using temperature
retrievals from Radio Occultation (RO) measurements. Neural Networks
require a large number of samples to properly capture the relationship
between the temperature first-guess trajectory and the model bias. As
running the IFS data assimilation system for extended periods of time
with a fixed model version and at realistic resolutions is
computationally very expensive, we have chosen to train, the initial
Neural Networks are trained using the ERA5 reanalysis before using
transfer learning on one year of the current IFS model. Preliminary
results show that convolutional neural networks are adequate to estimate
model bias from RO temperature retrievals. The different strengths and
weaknesses of both deep learning and weak constraint 4D-Var are
discussed, highlighting the potential for each method to learn model
biases effectively and adaptively.