Variance-Reduction Methods for Monte Carlo Simulation of Radiation Transport

No Thumbnail Available

Date

2021-10-27

Authors

Garcia-Pareja, Salvador
Lallena, Antonio M.
Salvat, Francesc

Advisors

Journal Title

Journal ISSN

Volume Title

Publisher

Frontiers media sa
Metrics
Google Scholar
Export

Research Projects

Organizational Units

Journal Issue

Abstract

After a brief description of the essentials of Monte Carlo simulation methods and the definition of simulation efficiency, the rationale for variance-reduction techniques is presented. Popular variance-reduction techniques applicable to Monte Carlo simulations of radiation transport are described and motivated. The focus is on those techniques that can be used with any transport code, irrespective of the strategies used to track charged particles; they operate by manipulating either the number and weights of the transported particles or the mean free paths of the various interaction mechanisms. The considered techniques are 1) splitting and Russian roulette, with the ant colony method as builder of importance maps, 2) exponential transform and interaction-forcing biasing, 3) Woodcock or delta-scattering method, 4) interaction forcing, and 5) proper use of symmetries and combinations of different techniques. Illustrative results from analog simulations (without recourse to variance-reduction) and from variance-reduced simulations of various transport problems are presented.

Description

MeSH Terms

DeCS Terms

CIE Terms

Keywords

Monte Carlo simulation, statistical uncertainties, variance-reduction methods, splitting and Russian roulette, ant colony algorithms, interaction forcing, delta scattering, Ant colony algorithm, Shielding calculations, Electron, Code, Penelope, Particle, Photon

Citation