Title of article :
Validation of models with multivariate output
Author/Authors :
Rebba، نويسنده , , Ramesh and Mahadevan، نويسنده , , Sankaran، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Abstract :
This paper develops metrics for validating computational models with experimental data, considering uncertainties in both. A computational model may generate multiple response quantities and the validation experiment might yield corresponding measured values. Alternatively, a single response quantity may be predicted and observed at different spatial and temporal points. Model validation in such cases involves comparison of multiple correlated quantities. Multiple univariate comparisons may give conflicting inferences. Therefore, aggregate validation metrics are developed in this paper. Both classical and Bayesian hypothesis testing are investigated for this purpose, using multivariate analysis. Since, commonly used statistical significance tests are based on normality assumptions, appropriate transformations are investigated in the case of non-normal data. The methodology is implemented to validate an empirical model for energy dissipation in lap joints under dynamic loading.
Keywords :
Bayesian statistics , Hypothesis testing , Model validation , uncertainty , Multivariate analysis
Journal title :
Reliability Engineering and System Safety
Journal title :
Reliability Engineering and System Safety