An Efficient Continuous Data Assimilation Algorithm for the Sabra Shell Model of Turbulence
Nan Chen, Yuchen Li, and Evelyn Lunasin

TL;DR
This paper introduces a computationally efficient continuous data assimilation algorithm for the Sabra shell model of turbulence, accurately capturing nonlinear turbulence features and outperforming existing methods in speed and accuracy.
Contribution
The paper develops a novel continuous data assimilation scheme with closed-form updates, combined with reduced order modeling, specifically tailored for turbulent shell models.
Findings
The scheme accurately captures turbulence intermittency and extreme events.
It outperforms ensemble Kalman filter and nudging in accuracy and efficiency.
Effective for chaotic and turbulent regimes in shell models.
Abstract
Complex nonlinear turbulent dynamical systems are ubiquitous in many areas. Recovering unobserved state variables is an important topic for the data assimilation of turbulent systems. In this article, an efficient continuous in time data assimilation scheme is developed, which exploits closed analytic formulae for updating the unobserved state variables. Therefore, it is computationally efficient and accurate. The new data assimilation scheme is combined with a simple reduced order modeling technique that involves a cheap closure approximation and a noise inflation. In such a way, many complicated turbulent dynamical systems can satisfy the requirements of the mathematical structures for the proposed efficient data assimilation scheme. The new data assimilation scheme is then applied to the Sabra shell model, which is a conceptual model for nonlinear turbulence. The goal is to recover…
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