RL-DAUNCE: Reinforcement Learning-Driven Data Assimilation with Uncertainty-Aware Constrained Ensembles
Pouria Behnoudfar, Nan Chen

TL;DR
RL-DAUNCE introduces a reinforcement learning-based data assimilation method that enforces physical constraints, improves uncertainty quantification, and outperforms traditional methods like EnKF in complex atmospheric phenomena.
Contribution
The paper presents RL-DAUNCE, a novel RL-driven data assimilation framework that incorporates physical constraints and uncertainty quantification with enhanced computational efficiency.
Findings
RL-DAUNCE outperforms standard EnKF in complex atmospheric scenarios.
It effectively enforces physical constraints during assimilation.
RL-DAUNCE captures extreme events and uncertainties better than traditional methods.
Abstract
Machine learning has become a powerful tool for enhancing data assimilation. While supervised learning remains the standard method, reinforcement learning (RL) offers unique advantages through its sequential decision-making framework, which naturally fits the iterative nature of data assimilation by dynamically balancing model forecasts with observations. We develop RL-DAUNCE, a new RL-based method that enhances data assimilation with physical constraints through three key aspects. First, RL-DAUNCE inherits the computational efficiency of machine learning while it uniquely structures its agents to mirror ensemble members in conventional data assimilation methods. Second, RL-DAUNCE emphasizes uncertainty quantification by advancing multiple ensemble members, moving beyond simple mean-state optimization. Third, RL-DAUNCE's ensemble-as-agents design facilitates the enforcement of physical…
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Taxonomy
TopicsMeteorological Phenomena and Simulations · Model Reduction and Neural Networks · Climate variability and models
