Data assimilation (DA) combines observations with numerical models to estimate evolving Earth system states for forecasting and monitoring. Machine learning (ML) enables surrogate modeling, pattern recognition and Bayesian inference. These fields are converging: ML accelerates DA, while DA provides uncertainty quantification and physical constraints. Hybrid DA-ML systems are promising, yet challenges persist in generalization, consistency and reproducibility. These approaches are increasingly integrated, shaping next-generation prediction systems and observing networks.
Arcucci, R., Healy, S., Dance, S., Lei, L., Bach, E., Weaver, A.T., et al. (2026). The convergence of machine learning and data assimilation in Earth system science. NPJ ARTIFICIAL INTELLIGENCE., 2026(2), 1-9 [10.1038/s44387-026-00107-0].
The convergence of machine learning and data assimilation in Earth system science
Carrassi, Alberto;
2026
Abstract
Data assimilation (DA) combines observations with numerical models to estimate evolving Earth system states for forecasting and monitoring. Machine learning (ML) enables surrogate modeling, pattern recognition and Bayesian inference. These fields are converging: ML accelerates DA, while DA provides uncertainty quantification and physical constraints. Hybrid DA-ML systems are promising, yet challenges persist in generalization, consistency and reproducibility. These approaches are increasingly integrated, shaping next-generation prediction systems and observing networks.| File | Dimensione | Formato | |
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