4.7 Article

Simulating galactic outflows with thermal supernova feedback

期刊

出版社

WILEY-BLACKWELL
DOI: 10.1111/j.1365-2966.2012.21704.x

关键词

methods: numerical; ISM: bubbles; ISM: jets and outflows; galaxies: evolution; galaxies: formation; galaxies: ISM

资金

  1. Marie Curie Reintegration Grant [FP7-RG-256573]
  2. Marie Curie Initial Training Network CosmoComp [PITN-GA-2009-238356]

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Cosmological simulations make use of sub-grid recipes for the implementation of galactic winds driven by massive stars because direct injection of supernova energy in thermal form leads to strong radiative losses, rendering the feedback inefficient. We argue that the main cause of the catastrophic cooling is a mismatch between the mass of the gas in which the energy is injected and the mass of the parent stellar population. Because too much mass is heated, the temperatures are too low and the cooling times too short. We use analytic arguments to estimate, as a function of the gas density and the numerical resolution, the minimum heating temperature that is required for the injected thermal energy to be efficiently converted into kinetic energy. We then propose and test a stochastic implementation of thermal feedback that uses this minimum temperature increase as an input parameter and that can be employed in both particle-based and grid-based codes. We use smoothed particle hydrodynamic simulations to test the method on models of isolated disc galaxies in dark matter haloes with total mass 1010 and 1012?h-1?M?. The thermal feedback strongly suppresses the star formation rate and can drive massive, large-scale outflows without the need to turn off radiative cooling temporarily. In accordance with expectations derived from analytic arguments, for sufficiently high resolution the results become insensitive to the imposed temperature jump and also agree with high-resolution simulations employing kinetic feedback.

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