Interfacing Geant4, Garfield++ and Degrad for the Simulation of Gaseous Detectors
Dorothea Pfeiffer, Lennert De Keukeleere, Carlos Azevedo, Francesca, Belloni, Stephen Biagi, Vladimir Grichine, Leendert Hayen, Andrei R. Hanu,, Ivana H\v{r}ivn\'a\v{c}ov\'a, Vladimir Ivanchenko, Vladyslav Krylov, Heinrich, Schindler, Rob Veenhof

TL;DR
This paper presents an integrated simulation framework combining Geant4, Garfield++, and Degrad to accurately model ionization and signal formation in gaseous detectors, enabling detailed and versatile detector response simulations.
Contribution
It introduces a novel interface that combines Geant4, Garfield++, and Degrad for comprehensive gaseous detector simulations, including detailed ionization processes and signal generation.
Findings
Successful integration of Geant4 with Garfield++ and Degrad.
Validation of the simulation results against standalone software packages.
Ability to simulate detailed physical processes like shell absorption and Auger cascades.
Abstract
For several years, attempts have been made to interface Geant4 and other software packages with the aim of simulating the complete response of a gaseous particle detector. In such a simulation, Geant4 is always responsible for the primary particle generation and the interactions that occur in the non-gaseous detector material. Garfield++ on the other hand always deals with the drift of ions and electrons, amplification via electron avalanches and finally signal generation. For the ionizing interaction of particles with the gas, different options and physics models exist. The present paper focuses on how to use Geant4, Garfield++ (including its Heed and SRIM interfaces) and Degrad to create the ionization electron-ion pairs in the gas. Software-wise, the proposed idea is to use the Geant4 physics parameterization feature, and to implement a Garfield++ or Degrad based detector simulation…
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