Uncertainty quantification & data assimilation

Uncertainty quantification (UQ) focuses on characterizing uncertainty in outputs from computational simulations given uncertainty in parameters, data, and model structure.

Data assimilation (DA) combines measurements and model predictions to obtain accurate estimates of the system state and uncertain parameters; it is central to weather and climate analysis and forecasting.

Data assimilation and uncertainty-aware inference

A project overview covering ensemble and variational data assimilation, physics-informed Gaussian processes, and uncertainty-aware forecasting for atmospheric chemistry and climate variability.

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Selected journal publications

Proceedings / presentations

Technical reports