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ID kaart

oai:arXiv.org:2501.09748

Onderwerp
Astrophysics - Instrumentation and...
Auteur
Mattia, Giancarlo Crocco, Daniele Fuksman, David Melon Bugli, Matteo Berta, Vittoria Puzzoni, Eleonora Mignone, Andrea Vaidya, Bhargav
Categorie

wetenschappen: astrofysica

Jaar

2025

vermelding datum

22-01-2025

Trefwoorden
astrophysical simulations pluto mignone al code pypluto
Metriek

Beschrijving

In recent years, numerical simulations have become indispensable for addressing complex astrophysical problems.

The MagnetoHydroDynamics (MHD) framework represents a key tool for investigating the dynamical evolution of astrophysical plasmas, which are described as a set of partial differential equations that enforce the conservation of mass, momentum, and energy, along with Maxwell's equation for the evolution of the electromagnetic fields.

Due to the high nonlinearity of the MHD equations (regardless of their specifications, e.g., classical/relativistic or ideal/resistive), a general analytical solution is precluded, making the numerical approach crucial.

Numerical simulations usually end up producing large sets of data files and their scientific analysis leans on dedicated software designed for data visualization.

However, in order to encompass all of the code output features, specialized tools focusing on the numerical code may represent a more versatile and built-in tool.

Here, we present PyPLUTO, a Python package tailored for efficient loading, manipulation, and visualization of outputs produced with the PLUTO code (Mignone et al., 2007; Mignone et al., 2012).

PyPLUTO uses memory mapping to optimize data loading and provides general routines for data manipulation and visualization.

PyPLUTO also supports the particle modules of the PLUTO code, enabling users to load and visualize particles, such as cosmic rays (Mignone et al., 2018), Lagrangian (Vaidya et al., 2018), or dust (Mignone et al., 2019) particles, from hybrid simulations.

A dedicated Graphical User Interface (GUI) simplifies the generation of single-subplot figures, making PyPLUTO a powerful yet user-friendly toolkit for astrophysical data analysis.

;Comment: 9 pages, 3 figures.

Submitted to JOSS

Mattia, Giancarlo,Crocco, Daniele,Fuksman, David Melon,Bugli, Matteo,Berta, Vittoria,Puzzoni, Eleonora,Mignone, Andrea,Vaidya, Bhargav, 2025, PyPLUTO: a data analysis Python package for the PLUTO code

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