Variational Data Assimilation with a Learned Inverse Observation Operator
Abstract
Variational data assimilation optimizes for an initial state of a dynamical system such that its evolution fits observational data. The physical model can subsequently be evolved into the future to make predictions. This principle is a cornerstone of large scale forecasting applications such as numerical weather prediction. As such, it is implemented in current operational systems of weather forecasting agencies across the globe. However, finding a good initial state poses a difficult optimization problem in part due to the non-invertible relationship between physical states and their corresponding observations. We learn a mapping from observational data to physical states and show how it can be used to improve optimizability. We employ this mapping in two ways: to better initialize the non-convex optimization problem, and to reformulate the objective function in better behaved physics space instead of observation space. Our experimental results for the Lorenz96 model and a two-dimensional turbulent fluid flow demonstrate that this procedure significantly improves forecast quality for chaotic systems.
Cite
Text
Frerix et al. "Variational Data Assimilation with a Learned Inverse Observation Operator." International Conference on Machine Learning, 2021.Markdown
[Frerix et al. "Variational Data Assimilation with a Learned Inverse Observation Operator." International Conference on Machine Learning, 2021.](https://mlanthology.org/icml/2021/frerix2021icml-variational/)BibTeX
@inproceedings{frerix2021icml-variational,
title = {{Variational Data Assimilation with a Learned Inverse Observation Operator}},
author = {Frerix, Thomas and Kochkov, Dmitrii and Smith, Jamie and Cremers, Daniel and Brenner, Michael and Hoyer, Stephan},
booktitle = {International Conference on Machine Learning},
year = {2021},
pages = {3449-3458},
volume = {139},
url = {https://mlanthology.org/icml/2021/frerix2021icml-variational/}
}