We compare three approaches for quantifying uncertainty through a measurement equation: the International Organization for Standardization (ISO) Guide to the Expression of Uncertainty in Measurement (GUM), draft GUM Supplement 1 and Bayesian statistics. For illustration, we use a measurement equation for simple linear calibration that includes both Type A and Type B input variables. We consider three scenarios: (i) the measurement equation is linear with one Type B input variable having a normal distribution, (ii) the measurement equation is non-linear with two Type B input variables each having a normal distribution and (iii) the measurement equation is non-linear with two Type B input variables each having a rectangular distribution. We c...
The result of a measurement is only an approximation of the true value and thus is complete only whe...
In performing a measurement, we encounter errors or biases from a number of sources. Such sources in...
Calibration of a torque measuring system – GUM uncertainty evaluation for least-squares versus Bayes...
4 p. : il.Recent work referred to two approaches for doing a Bayesian analysis for simple linear cal...
The Guide to the expression of measurement uncertainty, (GUM, JCGM 100) and its Supplement...
This chapter illustrates basic concepts necessary to justify and understand the uncertainty evaluati...
A recent paper by H. Huang titled “A Unified Theory of Measurement Errors and Uncertainties” propose...
The Guide to the expression of uncertainty in measurement (GUM) requires, “that the results of a mea...
This book fulfills the global need to evaluate measurement results along with the associated uncerta...
This document illustrates good practice in the evaluation of measurement uncertainty. It contains ex...
We propose a new approach to addressing the expression and evaluation of uncertainty in measurement,...
The Guide to the Expression of Uncertainty in Measurement describes a method of evaluating measureme...
The Evaluation of Measurement Data - Guide to the Expression of Uncertainty in Measurement (usually ...
A non-linear function of a sample average is different from the average of that function evaluated ...
In Annex H.5, the Guide to the Evaluation of Uncertainty in Measurement (GUM) [1] recognizes the nec...
The result of a measurement is only an approximation of the true value and thus is complete only whe...
In performing a measurement, we encounter errors or biases from a number of sources. Such sources in...
Calibration of a torque measuring system – GUM uncertainty evaluation for least-squares versus Bayes...
4 p. : il.Recent work referred to two approaches for doing a Bayesian analysis for simple linear cal...
The Guide to the expression of measurement uncertainty, (GUM, JCGM 100) and its Supplement...
This chapter illustrates basic concepts necessary to justify and understand the uncertainty evaluati...
A recent paper by H. Huang titled “A Unified Theory of Measurement Errors and Uncertainties” propose...
The Guide to the expression of uncertainty in measurement (GUM) requires, “that the results of a mea...
This book fulfills the global need to evaluate measurement results along with the associated uncerta...
This document illustrates good practice in the evaluation of measurement uncertainty. It contains ex...
We propose a new approach to addressing the expression and evaluation of uncertainty in measurement,...
The Guide to the Expression of Uncertainty in Measurement describes a method of evaluating measureme...
The Evaluation of Measurement Data - Guide to the Expression of Uncertainty in Measurement (usually ...
A non-linear function of a sample average is different from the average of that function evaluated ...
In Annex H.5, the Guide to the Evaluation of Uncertainty in Measurement (GUM) [1] recognizes the nec...
The result of a measurement is only an approximation of the true value and thus is complete only whe...
In performing a measurement, we encounter errors or biases from a number of sources. Such sources in...
Calibration of a torque measuring system – GUM uncertainty evaluation for least-squares versus Bayes...