Publication

Hyperautomation Artificial Intelligence

2007 Integration of Possibility-Based Optimization and Robust Design for Epistemic Uncertainty

본문

Journal
Journal of Mechanical Design
Author
Byeng D. Youn*, Kyung K. Choi, Liu Du, and David Gorsich
Date
2007-08
Citation Index
SCIE (IF: 2.9, Rank: 29.2%)
Vol./ Page
Vol. 129, No. 8, pp. 876-882
Year
2007
File
Integration of Possibility-Based Optimization and Robust Design for Epistemic Uncertainty.pdf (455.9K) 0회 다운로드 DATE : 2024-04-30 10:43:02

Abstract


In practical engineering applications, there exist two different types of uncertainties: aleatory and epistemic uncertainties. This study attempts to develop a robust design optimization with epistemic uncertainty. For epistemic uncertainties, a possibility-based design optimization improves the failure rate, while a robust design optimization minimizes the product quality loss. In general, product quality loss is described using the first two statistical moments for aleatory uncertainty: mean and standard deviation. However, there is no metric for product quality loss defined when having epistemic uncertainty. This paper first proposes a new metric for product quality loss with epistemic uncertainty, and then a possibility-based robust design optimization. For numerical efficiency and stability, an enriched performance measure approach is employed for possibility-based robust design optimization, and the maximal possibility search is used for a possibility analysis. Three different types of robust objectives are considered for possibility-based robust design optimization: smaller-the-better type (S-Type), larger-the-better type (L-Type), and nominal-the-better type (N-Type). Examples are used to demonstrate the effectiveness of possibility-based robust design optimization using the proposed metric for product quality loss with epistemic uncertainty.