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A new hybrid reliability‐based design optimization method under random and interval uncertainties
Author(s) -
Zhang Jinhao,
Gao Liang,
Xiao Mi
Publication year - 2020
Publication title -
international journal for numerical methods in engineering
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.421
H-Index - 168
eISSN - 1097-0207
pISSN - 0029-5981
DOI - 10.1002/nme.6440
Subject(s) - kriging , metamodeling , uncertainty quantification , monte carlo method , sensitivity (control systems) , mathematical optimization , reliability (semiconductor) , interval (graph theory) , projection (relational algebra) , computer science , upper and lower bounds , algorithm , mathematics , engineering , statistics , machine learning , power (physics) , mathematical analysis , physics , quantum mechanics , combinatorics , electronic engineering , programming language
Summary This article proposes a new method for hybrid reliability‐based design optimization under random and interval uncertainties (HRBDO‐RI). In this method, Monte Carlo simulation (MCS) is employed to estimate the upper bound of failure probability, and stochastic sensitivity analysis (SSA) is extended to calculate the sensitivity information of failure probability in HRBDO‐RI. Due to a large number of samples involved in MCS and SSA, Kriging metamodels are constructed to substitute true constraints. To avoid unnecessary computational cost on Kriging metamodel construction, a new screening criterion based on the coefficient of variation of failure probability is developed to judge active constraints in HRBDO‐RI. Then a projection‐outline‐based active learning Kriging is achieved by sequentially select update points around the projection outlines on the limit‐state surfaces of active constraints. Furthermore, the prediction uncertainty of Kriging metamodel is quantified and considered in the termination of Kriging update. Several examples, including a piezoelectric energy harvester design, are presented to test the accuracy and efficiency of the proposed method for HRBDO‐RI.

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