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An active-learning method based on multi-fidelity Kriging model for structural reliability analysis
by
Zhou, Qi
, Ling, Hao
, Cheng, Yuansheng
, Liu, Jun
, Wu, Fangliang
, Yi, Jiaxiang
in
Accuracy
/ Computational Mathematics and Numerical Analysis
/ Computing costs
/ Engineering
/ Engineering Design
/ Iterative methods
/ Learning
/ Monte Carlo simulation
/ Numerical methods
/ Reliability analysis
/ Reliability engineering
/ Research Paper
/ Structural reliability
/ Teaching methods
/ Theoretical and Applied Mechanics
2021
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An active-learning method based on multi-fidelity Kriging model for structural reliability analysis
by
Zhou, Qi
, Ling, Hao
, Cheng, Yuansheng
, Liu, Jun
, Wu, Fangliang
, Yi, Jiaxiang
in
Accuracy
/ Computational Mathematics and Numerical Analysis
/ Computing costs
/ Engineering
/ Engineering Design
/ Iterative methods
/ Learning
/ Monte Carlo simulation
/ Numerical methods
/ Reliability analysis
/ Reliability engineering
/ Research Paper
/ Structural reliability
/ Teaching methods
/ Theoretical and Applied Mechanics
2021
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Do you wish to request the book?
An active-learning method based on multi-fidelity Kriging model for structural reliability analysis
by
Zhou, Qi
, Ling, Hao
, Cheng, Yuansheng
, Liu, Jun
, Wu, Fangliang
, Yi, Jiaxiang
in
Accuracy
/ Computational Mathematics and Numerical Analysis
/ Computing costs
/ Engineering
/ Engineering Design
/ Iterative methods
/ Learning
/ Monte Carlo simulation
/ Numerical methods
/ Reliability analysis
/ Reliability engineering
/ Research Paper
/ Structural reliability
/ Teaching methods
/ Theoretical and Applied Mechanics
2021
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An active-learning method based on multi-fidelity Kriging model for structural reliability analysis
Journal Article
An active-learning method based on multi-fidelity Kriging model for structural reliability analysis
2021
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Overview
Active-learning surrogate model–based reliability analysis is widely employed in engineering structural reliability analysis to alleviate the computational burden of the Monte Carlo method. To date, most of these methods are built based on the single-fidelity surrogate model, such as the Kriging model. However, the computational burden of constructing a fine Kriging model may be still expensive if the high-fidelity (HF) simulation is extremely time-consuming. To solve this problem, an active-learning method based on the multi-fidelity (MF) Kriging model for structural reliability analysis (abbreviated as AMK-MCS+AEFF), which is an online data-driven method fusing information from different fidelities, is proposed in this paper. First, an augmented expected feasibility function (AEFF) is defined by considering the cross-correlation, the sampling density, and the cost query between HF and low-fidelity (LF) models. During the active-learning process of AMK-MCS+AEFF, both the location and fidelity level of the updated sample can be determined objectively and adaptively by maximizing the AEFF. Second, a new stopping criterion that associates with the estimated relative error is proposed to ensure that the iterative process terminates in a proper iteration. The proposed method is compared with several state-of-the-art methods through three numerical examples and an engineering case. Results show that the proposed method can provide an accurate failure probability estimation with a less computational cost.
Publisher
Springer Berlin Heidelberg,Springer Nature B.V
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