Latent space data assimilation by using deep learning

被引:38
作者
Peyron, Mathis [1 ,2 ,3 ]
Fillion, Anthony [1 ,4 ]
Gurol, Selime [1 ,3 ]
Marchais, Victor [1 ]
Gratton, Serge [1 ,4 ]
Boudier, Pierre [1 ,5 ]
Goret, Gael [2 ]
机构
[1] Artificial & Nat Intelligence Toulouse Inst ANITI, Toulouse, France
[2] Atos BDS R&D AI4Sim, Grenoble, France
[3] CERFACS, 42 Ave Gaspard Coriolis, F-31100 Toulouse, France
[4] Univ Toulouse, UFTMIP, Toulouse, France
[5] NVIDIA, Santa Clara, CA USA
关键词
autoencoders; data assimilation; deep learning; latent space; Lorenz; 96; surrogate model; ENSEMBLE KALMAN SMOOTHER; UNSTABLE SUBSPACE; ADAPTIVE OBSERVATIONS; PART I; FILTER; ERROR; AUTOENCODERS; STANDARD; CYCLE; GAME;
D O I
10.1002/qj.4153
中图分类号
P4 [大气科学(气象学)];
学科分类号
0706 ; 070601 ;
摘要
Performing data assimilation (DA) at low cost is of prime concern in Earth system modeling, particularly in the era of Big Data, where huge quantities of observations are available. Capitalizing on the ability of neural network techniques to approximate the solution of partial differential equations (PDEs), we incorporate deep learning (DL) methods into a DA framework. More precisely, we exploit the latent structure provided by autoencoders (AEs) to design an ensemble transform Kalman filter with model error (ETKF-Q) in the latent space. Model dynamics are also propagated within the latent space via a surrogate neural network. This novel ETKF-Q-Latent (ETKF-Q-L) algorithm is tested on a tailored instructional version of Lorenz 96 equations, named the augmented Lorenz 96 system, which possesses a latent structure that accurately represents the observed dynamics. Numerical experiments based on this particular system evidence that the ETKF-Q-L approach both reduces the computational cost and provides better accuracy than state-of-the-art algorithms such as the ETKF-Q.
引用
收藏
页码:3759 / 3777
页数:19
相关论文
共 50 条
[31]   Effective Characterization of Fractured Media With PEDL: A Deep Learning-Based Data Assimilation Approach [J].
Nan, Tongchao ;
Zhang, Jiangjiang ;
Xie, Yifan ;
Cao, Chenglong ;
Wu, Jichun ;
Lu, Chunhui .
WATER RESOURCES RESEARCH, 2024, 60 (07)
[32]   Deep-learning-based surrogate flow modeling and geological parameterization for data assimilation in 3D subsurface flow [J].
Tang, Meng ;
Liu, Yimin ;
Durlofsky, Louis J. .
COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2021, 376
[33]   Brain tumor detection using deep features in the latent space [J].
Bodapati J.D. ;
Vijay A. ;
Veeranjaneyulu N. .
Ingenierie des Systemes d'Information, 2020, 25 (02) :259-265
[34]   Explainable prediction of electric energy demand using a deep autoencoder with interpretable latent space [J].
Kim, Jin-Young ;
Cho, Sung-Bae .
EXPERT SYSTEMS WITH APPLICATIONS, 2021, 186 (186)
[35]   Physics-constrained deep learning for data assimilation of subsurface transport [J].
Wu, Haiyi ;
Qiao, Rui .
ENERGY AND AI, 2021, 3
[36]   A competitive baseline for deep learning enhanced data assimilation using conditional Gaussian ensemble Kalman filtering [J].
Malik, Zachariah ;
Maulik, Romit .
COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2025, 440
[37]   Using machine learning to correct model error in data assimilation and forecast applications [J].
Farchi, Alban ;
Laloyaux, Patrick ;
Bonavita, Massimo ;
Bocquet, Marc .
QUARTERLY JOURNAL OF THE ROYAL METEOROLOGICAL SOCIETY, 2021, 147 (739) :3067-3084
[38]   Analysing Supercomputer Nodes Behaviour with the Latent Representation of Deep Learning Models [J].
Molan, Martin ;
Borghesi, Andrea ;
Benini, Luca ;
Bartolini, Andrea .
EURO-PAR 2022: PARALLEL PROCESSING, 2022, 13440 :171-185
[39]   Data-driven surrogate model with latent data assimilation: Application to wildfire forecasting [J].
Cheng, Sibo ;
Prentice, I. Colin ;
Huang, Yuhan ;
Jin, Yufang ;
Guo, Yi-Ke ;
Arcucci, Rossella .
JOURNAL OF COMPUTATIONAL PHYSICS, 2022, 464
[40]   USING DEEP LEARNING AND MACHINE LEARNING IN SPACE NETWORK [J].
Shrivastava, Abhudaya ;
Shrivastava, D. P. .
2020 SEVENTH INTERNATIONAL CONFERENCE ON INFORMATION TECHNOLOGY TRENDS (ITT 2020), 2020, :83-88