A sub-resolution multiphase interstellar medium model of star formation and SNe energy feedback
Giuseppe Murante (INAF- Osservatorio di Torino), Pierluigi Monaco, (Universita' di Trieste), Martina Giovalli (Universita' di Torino), Stefano, Borgani (Universita' di Trieste), Antonaldo Diaferio (Universita' di Torino)

TL;DR
The paper introduces MUPPI, a multi-phase sub-resolution model for star formation and supernova feedback in galaxy simulations, naturally reproducing observed relations and ISM properties without kinetic feedback schemes.
Contribution
MUPPI models each gas particle as a multi-phase system with explicit differential equations, enabling realistic star formation and feedback in galaxy simulations.
Findings
Reproduces the Schmidt-Kennicutt relation in disc galaxies.
Matches observed properties of the interstellar medium.
Provides efficient stellar feedback without kinetic schemes.
Abstract
We present a new multi-phase sub-resolution model for star formation and feedback in SPH numerical simulations of galaxy formation. Our model, called MUPPI (MUlti-Phase Particle Integrator), describes each gas particle as a multi-phase system, with cold and hot gas phases, coexisting in pressure equilibrium, and a stellar component. Cooling of the hot tenuous gas phase feeds the cold gas phase. Stars are formed out of molecular gas with a given efficiency, which scales with the dynamical time of the cold phase. Our prescription for star formation is not based on imposing the Schmidt-Kennicutt relation, which is instead naturally produced by MUPPI. Energy from supernova explosions is deposited partly into the hot phase of the gas particles, and partly to that of neighboring particles. Mass and energy flows among the different phases of each particle are described by a set of ordinary…
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