Data assimilation as a learning tool to infer ordinary differential equation representations of dynamical models

被引:66
作者
Bocquet, Marc [1 ]
Brajard, Julien [2 ,3 ]
Carrassi, Alberto [3 ,4 ]
Bertino, Laurent [3 ]
机构
[1] Univ Paris Est, CEREA, Joint Lab, Ecole Ponts ParisTech & EDF R&D, Champs Sur Marne, France
[2] Sorbonne Univ, CNRS IRD MNHN, LOCEAN, Paris, France
[3] Nansen Environm & Remote Sensing Ctr, Bergen, Norway
[4] Univ Bergen, Geophys Inst, Bergen, Norway
关键词
NEURAL-NETWORK; ENSEMBLE; IDENTIFICATION; PREDICTION; WEATHER; ACCOUNT; SYSTEMS; ERROR;
D O I
10.5194/npg-26-143-2019
中图分类号
P [天文学、地球科学];
学科分类号
07 ;
摘要
Recent progress in machine learning has shown how to forecast and, to some extent, learn the dynamics of a model from its output, resorting in particular to neural networks and deep learning techniques. We will show how the same goal can be directly achieved using data assimilation techniques without leveraging on machine learning software libraries, with a view to high-dimensional models. The dynamics of a model are learned from its observation and an ordinary differential equation (ODE) representation of this model is inferred using a recursive nonlinear regression. Because the method is embedded in a Bayesian data assimilation framework, it can learn from partial and noisy observations of a state trajectory of the physical model. Moreover, a space-wise local representation of the ODE system is introduced and is key to coping with high-dimensional models. It has recently been suggested that neural network architectures could be interpreted as dynamical systems. Reciprocally, we show that our ODE representations are reminiscent of deep learning architectures. Furthermore, numerical analysis considerations of stability shed light on the assets and limitations of the method. The method is illustrated on several chaotic discrete and continuous models of various dimensions, with or without noisy observations, with the goal of identifying or improving the model dynamics, building a surrogate or reduced model, or producing forecasts solely from observations of the physical model.
引用
收藏
页码:143 / 162
页数:20
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