4.7 Article

Reliability-based structural design optimization: hybridized conjugate mean value approach

期刊

ENGINEERING WITH COMPUTERS
卷 37, 期 1, 页码 381-394

出版社

SPRINGER
DOI: 10.1007/s00366-019-00829-7

关键词

Reliability-based design optimization; Performance measure approach; Conjugate gradient analysis; Sufficient descent criterion; Hybrid conjugate mean value

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The study introduces a hybrid conjugate mean value (HCMV) method to enhance efficiency and robustness of RBDO. By dynamically utilizing CGA and AMV with a sufficient descent criterion for convex/concave constraints simplification, HCMV demonstrates superior efficiency and robustness in reliability and RBDO problems compared to other formulations.
The efficiency and robustness of reliability techniques are important in reliability-based design optimization (RBDO). Commonly, advanced mean value (AMV) is utilized in reliability loop of RBDO but unstable solutions using AMV may be obtained for highly concave performance functions. Owing to the challenges of commonly reliability methods, the conjugate gradient analysis (CGA) is proposed as a robust methodology but it shows inefficient results for convex constraints. In this research, hybrid conjugate mean value (HCMV) method is proposed using sufficient condition for the enhancement of efficiency and robustness of RBDO. The CGA and AMV are dynamically utilized for simple solution of convex/concave constraints using sufficient descent criterion in HCMV. The HCMV is used to evaluate the convergence performances and is compared with numerous existing reliability methods through three reliability problems (two concave/convex mathematical examples and one applicable structure) and four RBDO problems. From the numerical results, the HCMV exhibited the better efficiency, and robustness compared to other studied formulations in reliability and RBDO problems.

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