
Consistency in Monte Carlo Uncertainty Analyses
Author(s) -
Benjamin F. Jamroz,
Dylan F. Williams
Publication year - 2020
Publication title -
metrologia
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.637
H-Index - 79
eISSN - 1681-7575
pISSN - 0026-1394
DOI - 10.1088/1681-7575/aba5aa
Subject(s) - monte carlo method , consistency (knowledge bases) , statistical physics , computer science , econometrics , statistics , mathematics , physics , artificial intelligence
The Monte Carlo method is an established tool that is often used to evaluate the uncertainty of measurements. For computationally challenging problems, Monte Carlo uncertainty analyses are typically distributed across multiple processes on a multi-node cluster or supercomputer. Additionally, results from previous uncertainty analyses are often used in further analyses in a sequential manner. To accurately capture the uncertainty of the output quantity of interest, Monte Carlo sample distributions must be treated consistently, using reproducible replicates, throughout the entire analysis. We highlight the need for and importance of consistent Monte Carlo methods in distributed and sequential uncertainty analyses, recommend an implementation to achieve the needed consistency in these complicated analyses, and discuss methods to evaluate the accuracy of implementations.