Geometry and Scaling Laws of Excursion and Iso-sets of Enstrophy and Dissipation in Isotropic Turbulence
Jos\'e Hugo Elsas, Alexander S. Szalay, Charles Meneveau

TL;DR
This paper investigates the geometric scaling properties of high-intensity turbulent flow events using correlation functions, revealing power-law behaviors and complex spatial structures in isotropic turbulence at high Reynolds number.
Contribution
It introduces a novel geometric analysis of excursion and iso-sets in turbulence, demonstrating power-law scaling of correlation functions and uncovering complex spatial coherence patterns.
Findings
Power-law scaling observed in correlation functions of turbulent sets.
Correlation dimension varies with enstrophy and dissipation thresholds.
Joint conditions on flow invariants also exhibit power-law correlations.
Abstract
Motivated by interest in the geometry of high intensity events of turbulent flows, we examine spatial correlation functions of sets where turbulent events are particularly intense. These sets are defined using indicator functions on excursion and iso-value sets. Their geometric scaling properties are analyzed by examining possible power-law decay of their radial correlation function. We apply the analysis to enstrophy, dissipation, and velocity gradient invariants and and their joint spatial distibutions, using data from a direct numerical simulation of isotropic turbulence at . While no fractal scaling is found in the inertial range using box-counting in the finite Reynolds number flow considered here, power-law scaling in the inertial range is found in the radial correlation functions. Thus a geometric characterization in terms of these sets'…
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Taxonomy
TopicsFluid Dynamics and Turbulent Flows · Stochastic processes and financial applications · Complex Systems and Time Series Analysis
