4.7 Article

GLISSANDO 3: GLauber Initial-State Simulation AND mOre, ver. 3

期刊

COMPUTER PHYSICS COMMUNICATIONS
卷 245, 期 -, 页码 -

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ELSEVIER
DOI: 10.1016/j.cpc.2019.07.014

关键词

Ultra-relativistic nuclear collisions; Monte Carlo generators; Wounded quarks and nucleons; alpha-clusterization; LHC; RHIC; SPS

资金

  1. [POIG 02.2.00-26-023/08]

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We present ver. 3 of GLISSANDO, a versatile Monte-Carlo generator for Glauber-like models of the initial stages of ultra-relativistic heavy-ion collisions. The present version incorporates the wounded parton model, which is phenomenologically successful in reproducing multiplicities of particle production at the RHIC and the LHC. Within this model, one can study the nucleon substructure fluctuation effects, recently explored in p-A collisions. In addition, the code includes the possibility of investigating collisions of light nuclei, such as He-3 and H-3, or the alpha-clustered Be-7.9, C-12, and O-16, where the deformation of the intrinsic wave function influences the transverse shape of the initial state. The current version, being down-compatible, retains the functionality of the previous releases, such as incorporation of various variants of Glauber-like models, a smooth NN inelasticity profile in the impact parameter obtained from a parameterization of experimental data, fluctuating strength of the entropy deposition, or realistic nuclear distributions of heavy nuclei with deformation. The code can provide output in the format containing the event-by-event source location, which may be further used in modeling the intermediate evolution phase, e.g., with hydrodynamics or transport models. The interface is simplified, such that in the control input file the user may supply only the very basic information, such as the collision energy, the mass numbers of the colliding nuclei, and the model type. GLISSANDO 3 is integrated with the CERN ROOT platform. The package includes numerous illustrative and useful ROOT scripts to compute and plot various results. (C) 2019 Elsevier B.V. All rights reserved.

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