Modular data assimilation for flow prediction
Aytekin \c{C}{\i}b{\i}k, Rui Fang, William Layton

TL;DR
This paper introduces modular, 2-step nudging-based data assimilation algorithms for flow prediction, demonstrating improved stability, predictability, and effectiveness through theoretical results and numerical tests.
Contribution
It develops a novel modular 2-step data assimilation method inspired by Kalman filters, with explicit stability and predictability properties, and integrates turbulence modeling.
Findings
Step 2 can be explicitly rewritten for stability.
Predictability horizons are infinite under certain conditions.
One step reduces error and enhances predictability horizons.
Abstract
This report develops several modular, 2-step realizations (inspired by Kalman filter algorithms) of nudging-based data assimilation Several variants of this algorithm are developed. Three main results are developed. The first is that if , then Step 2 can be rewritten as the explicit step This means Step 2 has the greater stability of an implicit update and the lesser complexity of an explicit analysis step. The second is that the basic result of nudging (that for small enough and …
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Taxonomy
TopicsMeteorological Phenomena and Simulations · Fluid Dynamics and Turbulent Flows · Computational Fluid Dynamics and Aerodynamics
