Article ID Journal Published Year Pages File Type
7180965 Probabilistic Engineering Mechanics 2016 9 Pages PDF
Abstract
This paper presents a qualitative evaluation method for experimental results. The probabilistic approach in particular can provide substantial information during the evaluation. Therefore, methodology for predicting the uncertainty in the qualitative evaluation of experimental models. An appropriate way to propagate probability density functions through an experimental model is based on the Monte Carlo Method (MCM). The probability distributions are obtained by applying the MCM coupled with appropriate definitions for the total measurement uncertainty. This paper elaborates on the computational aspects of calculating measurement uncertainty of experimental models. The MCM has a higher conversion rate, generates narrower intervals, and produces more stable (evaluation) results. This method should reduce the analytical effort required for complicated or nonlinear models, especially because partial derivatives of the first or higher order (used in providing sensitivity coefficients for the law of propagation of uncertainty) are required. This method thus provides a mathematical and a computational tool for quantifying the uncertainty of models. Moreover, it can be used to improve measurements in order to promote quality and capacity with respect to decision-making.
Related Topics
Physical Sciences and Engineering Engineering Mechanical Engineering
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