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Numerical noise due to binning in macroparticle simulations

Numerical noise is an important parameter to minimize to ensure convergence of the macroparticle simulation results. In the context of simulations done for longitudinal beam dynamics studies, the longitudinal line density is usually obtained by binning a macroparticle distribution to compute wake po...

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Autor principal: Lasheen, Alexandre
Lenguaje:eng
Publicado: 2021
Materias:
Acceso en línea:http://cds.cern.ch/record/2798923
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author Lasheen, Alexandre
author_facet Lasheen, Alexandre
author_sort Lasheen, Alexandre
collection CERN
description Numerical noise is an important parameter to minimize to ensure convergence of the macroparticle simulation results. In the context of simulations done for longitudinal beam dynamics studies, the longitudinal line density is usually obtained by binning a macroparticle distribution to compute wake potentials. The noise due to the binning can lead to artificial emittance blow-up or erronously trigger beam instability too early. Convergence studies are presently done empirically, to verify that results are not drastically changing with the number of macroparticles. In this note, an analytical expression for the noise amplitude as a function of the bunch spectrum frequency for a stationary distribution is benchmarked against numerical calculations. The analytical expression is then used to express the relevant scaling laws of the numerical noise and define a basic criterion on the number of macroparticles to use for different cases.
id cern-2798923
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2021
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spelling cern-27989232022-02-01T19:44:23Zhttp://cds.cern.ch/record/2798923engLasheen, AlexandreNumerical noise due to binning in macroparticle simulationsAccelerators and Storage RingsNumerical noise is an important parameter to minimize to ensure convergence of the macroparticle simulation results. In the context of simulations done for longitudinal beam dynamics studies, the longitudinal line density is usually obtained by binning a macroparticle distribution to compute wake potentials. The noise due to the binning can lead to artificial emittance blow-up or erronously trigger beam instability too early. Convergence studies are presently done empirically, to verify that results are not drastically changing with the number of macroparticles. In this note, an analytical expression for the noise amplitude as a function of the bunch spectrum frequency for a stationary distribution is benchmarked against numerical calculations. The analytical expression is then used to express the relevant scaling laws of the numerical noise and define a basic criterion on the number of macroparticles to use for different cases.CERN-ACC-NOTE-2022-0002oai:cds.cern.ch:27989232021-10-18
spellingShingle Accelerators and Storage Rings
Lasheen, Alexandre
Numerical noise due to binning in macroparticle simulations
title Numerical noise due to binning in macroparticle simulations
title_full Numerical noise due to binning in macroparticle simulations
title_fullStr Numerical noise due to binning in macroparticle simulations
title_full_unstemmed Numerical noise due to binning in macroparticle simulations
title_short Numerical noise due to binning in macroparticle simulations
title_sort numerical noise due to binning in macroparticle simulations
topic Accelerators and Storage Rings
url http://cds.cern.ch/record/2798923
work_keys_str_mv AT lasheenalexandre numericalnoiseduetobinninginmacroparticlesimulations