Applying latent data assimilation to a fluid dynamics problem
Ruijia Yu

TL;DR
This paper introduces a combined approach using dimensionality reduction, deep learning, and data assimilation to improve the accuracy of shallow water predictions, demonstrating promising results for flood and storm forecasting.
Contribution
It presents an integrated methodology that enhances shallow water data prediction accuracy by combining reduced-order modeling, deep learning, and data assimilation techniques.
Findings
Prediction values closely match actual observations.
The approach improves forecast accuracy in shallow water scenarios.
Method shows potential for storm and flood event prediction.
Abstract
Shallow water equations are extensively considered in the domains of oceans, atmospheric modelling, and engineering research (Franca et al., 2022), which play significant roles in floods and tsunami governance. Nonetheless, the accurate prediction of shallow water behaviours is regarded as an arduous undertaking, particularly when confronted with multi-dimensional data and potential errors within the model. To address these challenges and improve the accuracy of forecasts, this study employs an integrated approach, involving dimensionality reduction methods, deep learning architectures, and data assimilation techniques. Indeed, Reduced-order modelling facilitates the conversions of high-dimensional data, extracting important features and attenuating the complexity of problems (Zhong et al., 2023). Subsequently, three different predictive models are utilized to prognosticate shallow…
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Taxonomy
TopicsHydrological Forecasting Using AI · Flood Risk Assessment and Management · Meteorological Phenomena and Simulations
