Structures in magnetohydrodynamic turbulence: detection and scaling
Vadim M. Uritsky, Annick Pouquet, Duane Rosenberg, Pablo D. Mininni,, and Eric Donovan

TL;DR
This paper analyzes the statistical properties of structures in 3D magnetohydrodynamic turbulence using cluster analysis, revealing scaling laws, self-organized criticality features, and turbulence-driven intermittency.
Contribution
It introduces a systematic cluster analysis method for MHD turbulence structures and compares their properties across different initial conditions and Reynolds numbers.
Findings
Structures exhibit similar scaling laws across different snapshots and flows.
Self-organized criticality features are identified in the dissipative range.
Inertial range scaling suggests turbulence dynamics dominate over criticality.
Abstract
We present a systematic analysis of statistical properties of turbulent current and vorticity structures at a given time using cluster analysis. The data stems from numerical simulations of decaying three-dimensional (3D) magnetohydrodynamic turbulence in the absence of an imposed uniform magnetic field; the magnetic Prandtl number is taken equal to unity, and we use a periodic box with grids of up to 1536^3 points, and with Taylor Reynolds numbers up to 1100. The initial conditions are either an X-point configuration embedded in 3D, the so-called Orszag-Tang vortex, or an Arn'old-Beltrami-Childress configuration with a fully helical velocity and magnetic field. In each case two snapshots are analyzed, separated by one turn-over time, starting just after the peak of dissipation. We show that the algorithm is able to select a large number of structures (in excess of 8,000) for each…
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