Ensemble decomposition for Lagrangian turbulence: Reynolds number trends and modeling
ORAL
Abstract
Previous work (Bentkamp et al. Nat. Commun. 10:3550, 2019) has shown that Lagrangian statistics in homogeneous isotropic turbulence can be approximately decomposed into Gaussian sub-ensembles by considering statistics conditioned on the squared acceleration coarse-grained over a viscous time scale. In this framework, each sub-ensemble is determined by the conditional Lagrangian velocity autocorrelation function. Using high-fidelity direct numerical simulation (DNS) data, we here explore Reynolds-number trends of the conditional correlation functions. Our evaluation shows that, for short times, the conditional correlation functions can be approximately collapsed for different Reynolds numbers by appropriate rescaling, enabling modeling approaches across Reynolds numbers. We present results on such a model along with comparisons to DNS data.
*Supported by NSF Grant 1953186 and an LRAC award of supercomputer resources at Texas Advanced Computing Center.This project has received funding from the European Research Council (ERC) under the European Union's Horizon 2020 research and innovation programme (Grant agreement No. 101001081).
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Presenters
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Michael Wilczek
- University of Bayreuth, Germany
- University of Bayreuth