Article ID Journal Published Year Pages File Type
806261 Reliability Engineering & System Safety 2016 12 Pages PDF
Abstract

•Relevance analysis to quantify the closeness of two models.•Stochastic model reliability metric to integrate multiple validation experiments.•Extend the model reliability metric to deal with multivariate output.•Roll-up formula to integrate calibration, validation, and relevance.

Calibration of model parameters is an essential step in predicting the response of a complicated system, but the lack of data at the system level makes it impossible to conduct this quantification directly. In such a situation, system model parameters are estimated using tests at lower levels of complexity which share the same model parameters with the system. For such a multi-level problem, this paper proposes a methodology to quantify the uncertainty in the system level prediction by integrating calibration, validation and sensitivity analysis at different levels. The proposed approach considers the validity of the models used for parameter estimation at lower levels, as well as the relevance at the lower level to the prediction at the system level. The model validity is evaluated using a model reliability metric, and models with multivariate output are considered. The relevance is quantified by comparing Sobol indices at the lower level and system level, thus measuring the extent to which a lower level test represents the characteristics of the system so that the calibration results can be reliably used in the system level. Finally the results of calibration, validation and relevance analysis are integrated in a roll-up method to predict the system output.

Related Topics
Physical Sciences and Engineering Engineering Mechanical Engineering
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