Rotational dependence of turbulent transport coefficients in global convective dynamo simulations of solar-like stars
J. Warnecke (1), M. J. K\"apyl\"a (1,2), ((1) MPS, (2) ReSoLVE/Aalto)

TL;DR
This study investigates how turbulent transport coefficients in solar-like star dynamos depend on rotation rate, revealing three dynamo regimes and complex effects beyond classical models through numerical simulations.
Contribution
It provides the first detailed analysis of rotation-dependent turbulent transport coefficients and dynamo regimes in global convective simulations of solar-like stars.
Findings
Turbulent transport coefficients vary with rotation, with the $ ext{trace}(oldsymbol{oldsymbol{ ext{α}}})$ increasing as Co$^{0.5}$ and then leveling off.
Different dynamo regimes are identified: $ ext{α}$ and R"adler effects dominate slow rotation, $ ext{α}$ and $ ext{Ω}$ effects for moderate rotation, and $ ext{α}^2$ for rapid rotation.
The study uncovers a variety of dynamo effects beyond the classical $ ext{αΩ}$ mechanism.
Abstract
For moderate and slow rotation, magnetic activity of solar-like stars is observed to strongly depend on rotation. These observations do not yet have a solid explanation in terms of dynamo theory. We aim to find such an explanation by numerically investigated the rotational dependency of dynamo drivers in solar-like stars. We ran semi-global convection simulations of stars with rotation rates from 0 to 30 times the solar value, corresponding to Coriolis numbers, Co, of 0 to 110. We measured the turbulent transport coefficients describing the magnetic field evolution with the help of the test-field method, and compared with the dynamo effect arising from the differential rotation. The trace of the tensor increases for moderate rotation rates with Co and levels off for rapid rotation. This behavior agrees with the kinetic , if one considers the decrease of the…
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