Revisiting visualization of spiral states in a wide-gap spherical Couette flow
Isshin Arai, Tomoaki Itano, and Masako Sugihara-Seki

TL;DR
This paper numerically reproduces and analyzes spiral wave visualization in wide-gap spherical Couette flow, clarifying the physical flow structures behind light pattern observations and comparing results with experimental data.
Contribution
It introduces a numerical approach to visualize and analyze spiral waves in spherical Couette flow, linking light patterns to flow structures and dynamics.
Findings
Numerical reproduction of spiral wave images matches experimental visualizations.
Quantitative data on torque and phase velocity of spiral waves.
Insights into the physical quantities corresponding to light and dark patterns.
Abstract
A pioneering study conducted by Egbers and Rath [Acta Mech. 111 pp. 125--140 (1995)] experimentally captured spiral waves to elucidate the transition in the wide-gap spherical Couette flow. However, the physical field quantities of the spiral waves corresponding to light patterns of various intensities, as obtained in the experiment, remain unclear, and we have yet to move beyond the understanding that the reflected light from shear-sensitive flake tracers responds to a flow that appears at the transition. In this study, the experiment to visualize spiral waves using aluminum flakes, as performed by Egbers and Rath, was numerically reproduced by solving the translational and rotational motions of the particles in a spiral wave. First, the spiral wave in a spherical Couette flow with an aspect ratio was numerically calculated using the Newton--Raphson method. Subsequently, the…
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Taxonomy
TopicsMeteorological Phenomena and Simulations · Computational Physics and Python Applications · Complex Systems and Time Series Analysis
