This good practice guide (GPG) was written as part of the European Partnership on Metrology (EPM) project “Trustworthy virtual experiments and digital twins” (22DIT01 ViDiT), which has received funding from the European Partnership on Metrology, co-financed from the European Union’s Horizon Europe Research and Innovation Programme and by the Participating States. The aim of this GPG is to describe how to carry out uncertainty evaluation when there are real measurements available in conjunction with a virtual experiment, which models the measurement in a virtual environment. Several methods for uncertainty evaluation are presented and assessed in terms of their properties and limitations. These methods include approaches as documented in the GUM and its supplements, as well as alternative Monte Carlo sampling approaches and methods involving Bayesian inference. These methods will be applied and discussed in terms of three real measurement use cases.
ViDiT (Thu,) studied this question.
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