Authors
Yoojeong Noh, KK Choi, Ikjin Lee, David Gorsich, David Lamb
Publication date
2011/4
Journal
Structural and Multidisciplinary Optimization
Volume
43
Pages
443-458
Publisher
Springer-Verlag
Description
For obtaining a correct reliability-based optimum design, the input statistical model, which includes marginal and joint distributions of input random variables, needs to be accurately estimated. However, in most engineering applications, only limited data on input variables are available due to expensive testing costs. The input statistical model estimated from the insufficient data will be inaccurate, which leads to an unreliable optimum design. In this paper, reliability-based design optimization (RBDO) with the confidence level for input normal random variables is proposed to offset the inaccurate estimation of the input statistical model by using adjusted standard deviation and correlation coefficient that include the effect of inaccurate estimation of mean, standard deviation, and correlation coefficient.
Total citations
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Scholar articles
Y Noh, KK Choi, I Lee, D Gorsich, D Lamb - … Conferences and Computers and Information in …, 2009