Publication | Open Access
Autodifferentiable Ensemble Kalman Filters
31
Citations
76
References
2022
Year
State EstimationNonlinear System IdentificationEngineeringMachine LearningData ScienceFiltering TechniqueMultiple Classifier SystemMachine Learning FrameworkSystems EngineeringInverse ProblemsForecastingSignal ProcessingData AssimilationNonlinear Time SeriesEnsemble Algorithm
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 introduces 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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