Surrogate-based variational data assimilation for tidal modelling
Rem-Sophia Mouradi, C\'edric Goeury, Olivier Thual, Fabrice, Zaoui, Pablo Tassi

TL;DR
This paper introduces two surrogate-based variational data assimilation methods for tidal modeling that significantly reduce computational costs while maintaining accuracy, using POD and Polynomial Chaos Expansion to create efficient metamodels.
Contribution
It proposes novel surrogate models, PODEn3DVAR and POD-PCE-3DVAR, for efficient data assimilation in tidal modeling, improving computational efficiency and robustness over classical methods.
Findings
POD-PCE-3DVAR shows superior convergence and robustness.
Both methods reduce computational cost significantly.
Results demonstrate improved performance over classical 3DVAR.
Abstract
Data assimilation (DA) is widely used to combine physical knowledge and observations. It is nowadays commonly used in geosciences to perform parametric calibration. In a context of climate change, old calibrations can not necessarily be used for new scenarios. This raises the question of DA computational cost, as costly physics-based numerical models need to be reanalyzed. Reduction and metamodelling represent therefore interesting perspectives, for example proposed in recent contributions as hybridization between ensemble and variational methods, to combine their advantages (efficiency, non-linear framework). They are however often based on Monte Carlo (MC) type sampling, which often requires considerable increase of the ensemble size for better efficiency, therefore representing a computational burden in ensemble-based methods as well. To address these issues, two methods to replace…
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Taxonomy
TopicsProbabilistic and Robust Engineering Design · Model Reduction and Neural Networks · Meteorological Phenomena and Simulations
