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Autodifferentiable Ensemble Kalman Filters
被引:17
|作者:
Chen, Yuming
[1
]
Sanz-Alonso, Daniel
[1
]
Willett, Rebecca
[1
]
机构:
[1] Univ Chicago, Chicago, IL 60637 USA
来源:
SIAM JOURNAL ON MATHEMATICS OF DATA SCIENCE
|
2022年
/
4卷
/
02期
关键词:
ensemble Kalman filters;
autodifferentiation;
data assimilation;
machine learning;
MONTE-CARLO IMPLEMENTATION;
ERROR COVARIANCE-MATRIX;
DATA ASSIMILATION;
MAXIMUM-LIKELIHOOD;
SEQUENTIAL STATE;
ALGORITHM;
D O I:
10.1137/21M1434477
中图分类号:
O29 [应用数学];
学科分类号:
070104 ;
摘要:
Data assimilation is concerned with sequentially estimating a temporally evolving state. This task, which arises in a wide range of scientific and engineering applications, is particularly challenging when the state is high-dimensional and the state-space dynamics are unknown. This paper intro-duces a machine learning framework for learning dynamical systems in data assimilation. Our auto -differentiable ensemble Kalman filters (AD-EnKFs) blend ensemble Kalman filters for state recovery with machine learning tools for learning the dynamics. In doing so, AD-EnKFs leverage the ability of ensemble Kalman filters to scale to high-dimensional states and the power of automatic differentiation to train high-dimensional surrogate models for the dynamics. Numerical results using the Lorenz -96 model show that AD-EnKFs outperform existing methods that use expectation-maximization or particle filters to merge data assimilation and machine learning. In addition, AD-EnKFs are easy to implement and require minimal tuning.
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页码:801 / 833
页数:33
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