A comparison of combined data assimilation and machine learning methods for offline and online model error correction

07/23/2021
by   Alban Farchi, et al.
0

Recent studies have shown that it is possible to combine machine learning methods with data assimilation to reconstruct a dynamical system using only sparse and noisy observations of that system. The same approach can be used to correct the error of a knowledge-based model. The resulting surrogate model is hybrid, with a statistical part supplementing a physical part. In practice, the correction can be added as an integrated term (i.e. in the model resolvent) or directly inside the tendencies of the physical model. The resolvent correction is easy to implement. The tendency correction is more technical, in particular it requires the adjoint of the physical model, but also more flexible. We use the two-scale Lorenz model to compare the two methods. The accuracy in long-range forecast experiments is somewhat similar between the surrogate models using the resolvent correction and the tendency correction. By contrast, the surrogate models using the tendency correction significantly outperform the surrogate models using the resolvent correction in data assimilation experiments. Finally, we show that the tendency correction opens the possibility to make online model error correction, i.e. improving the model progressively as new observations become available. The resulting algorithm can be seen as a new formulation of weak-constraint 4D-Var. We compare online and offline learning using the same framework with the two-scale Lorenz system, and show that with online learning, it is possible to extract all the information from sparse and noisy observations.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/25/2022

Online model error correction with neural networks in the incremental 4D-Var framework

Recent studies have demonstrated that it is possible to combine machine ...
research
09/30/2020

A study on using image based machine learning methods to develop the surrogate models of stamp forming simulations

In the design optimization of metal forming, it is increasingly signific...
research
05/08/2023

Statistical Variational Data Assimilation

This paper is a contribution in the context of variational data assimila...
research
10/23/2020

Using machine learning to correct model error in data assimilation and forecast applications

The idea of using machine learning (ML) methods to reconstruct the dynam...
research
10/29/2019

Deep Learning Emulation of Multi-Angle Implementation of Atmospheric Correction (MAIAC)

New generation geostationary satellites make solar reflectance observati...
research
09/30/2022

A forensic analysis of the Google Home: repairing compressed data without error correction

This paper provides a detailed explanation of the steps taken to extract...

Please sign up or login with your details

Forgot password? Click here to reset