4.7 Article

Efficient modeling of particle transport through aerosols in GEANT4

Journal

COMPUTER PHYSICS COMMUNICATIONS
Volume 278, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.cpc.2022.108383

Keywords

Stochastic transport; Particle transport; Stochastic media; Aerosol; GEANT4

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This article presents a new method for simulating particle transport through aerosols efficiently. By voxelizing the aerosol and generating 'droplets' voxel-by-voxel only when necessary, significant reductions in simulation time and memory usage can be achieved. The presented model demonstrates a decrease in simulation time of 1-2 orders of magnitude and a decrease in simulation memory of about 1 order of magnitude when compared to the benchmark method.
A new method for efficiently simulating particle transport through explicit realizations of aerosols is presented. By voxelizing the aerosol and lazily generating 'droplets' voxel-by-voxel only when a voxel could have a relevant 'droplet' to the transport at hand, order of magnitude decreases in simulation time and memory can be achieved over other similarly explicit simulations while achieving statistically equivalent results. This is demonstrated in a range of simulations in which 50 MeV protons are shot through aerosols consisting of liquid water droplets with varying radius, number density, and shape. In these simulations, the presented model displays 1 - 2 order of magnitude decreases in simulation time and ~ 1 order of magnitude decrease in simulation memory when compared to the benchmark method; proportionally larger decreases are expected for even larger droplet radii. This increased computational efficiency enables simulation of a range of aerosol-based experiments at levels of accuracy that would previously be prohibitive in time and/or memory. The described method has been included in the simulation software GEANT4, and we hope that it will be a valuable tool for quickly and accurately simulating aerosol-based experiments. (C) 2022 NK Labs, LLC. Published by Elsevier B.V.

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