A new particle-based code for Lagrangian stochastic models applied to stellar turbulent convection
J. Philidet, K. Belkacem

TL;DR
This paper introduces a novel particle-based Lagrangian stochastic model for stellar turbulent convection, implemented via a Monte Carlo code, enabling detailed statistical analysis of convection properties in stars.
Contribution
It develops a new formalism using Lagrangian PDF methods for stellar convection, with a Monte Carlo implementation that captures turbulence statistics without closure assumptions.
Findings
Successfully models turbulent pressure and Reynolds stresses.
Provides time-dependent maps of turbulent properties.
Validates implementation against benchmark cases.
Abstract
The inclusion of convection in stellar evolution models lacks realism, especially near convective-radiative interfaces. Furthermore, the interaction of convection with oscillations prevent us from accurately predicting seismic frequencies, and therefore from fully exploiting the asteroseismic data of low-mass stars. We aim to develop a new formalism to model the one-point statistics of stellar convection, to implement it in a new numerical code, and to validate this implementation against benchmark cases. This new formalism is based on Lagrangian Probability Density Function (PDF) methods, where a Fokker-Planck equation for the PDF of particle-based turbulent properties is integrated in time. We then develop a Monte-Carlo implementation of this method, where the flow is represented by a large number of notional particles acting as realisations of the PDF. Notional particles interact…
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