Journal article
Adaptive probability analysis using an enhanced hybrid mean value method
Structural and multidisciplinary optimization, Vol.29(2), pp.134-148
02/2005
DOI: 10.1007/s00158-004-0452-6
Abstract
This paper proposes an adaptive probability analysis method that can effectively generate the probability distribution of the output performance function by identifying the propagation of input uncertainty to output uncertainty. The method is based on an enhanced hybrid mean value (HMV+) analysis in the performance measure approach (PMA) for numerical stability and efficiency in search of the most probable point (MPP). The HMV+ method improves numerical stability and efficiency especially for highly nonlinear output performance functions by providing steady convergent behavior in the MPP search. The proposed adaptive probability analysis method approximates the MPP locus, and then adaptively refines this locus using an a posteriori error estimator. Using the fact that probability levels can be easily set a priori in PMA, the MPP locus is approximated using the interpolated moving least-squares method. For refinement of the approximated MPP locus, additional probability levels are adaptively determined through an a posteriori error estimator. The adaptive probability analysis method will determine the minimum number of necessary probability levels, while ensuring accuracy of the approximated MPP locus. Several examples are used to show the effectiveness of the proposed adaptive probability analysis method using the enhanced HMV+ method.
Details
- Title: Subtitle
- Adaptive probability analysis using an enhanced hybrid mean value method
- Creators
- B.D YounK.K ChoiL Du
- Resource Type
- Journal article
- Publication Details
- Structural and multidisciplinary optimization, Vol.29(2), pp.134-148
- DOI
- 10.1007/s00158-004-0452-6
- ISSN
- 1615-147X
- eISSN
- 1615-1488
- Language
- English
- Date published
- 02/2005
- Academic Unit
- Mechanical Engineering
- Record Identifier
- 9984064235102771
Metrics
28 Record Views