Uncertainty analysis of structural output with closed-form expression based on surrogate model

Publikation: Beitrag in FachzeitschriftArtikelForschungPeer-Review

Autoren

Externe Organisationen

  • University of Electronic Science and Technology of China
  • The University of Liverpool
  • Tongji University
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Details

OriginalspracheEnglisch
Aufsatznummer103482
FachzeitschriftProbabilistic Engineering Mechanics
Jahrgang73
Frühes Online-Datum19 Juni 2023
PublikationsstatusVeröffentlicht - Juli 2023

Abstract

Uncertainty analysis (UA) is the process that quantitatively identifies and characterizes the output uncertainty and has a crucial implication in engineering applications. The research of efficient estimation of structural output moments in probability space plays an important part in the UA and has great engineering significance. Given this point, a new UA method based on the Kriging surrogate model related to closed-form expressions for the perception of the estimation of mean and variance is proposed in this paper. The new proposed method is proven effective because of its direct reflection on the prediction uncertainty of the output moments of metamodel to quantify the accuracy level. The estimation can be completed by directly using the redefined closed-form expressions of the model's output mean and variance to avoid excess post-processing computational costs and errors. Furthermore, a novel framework of adaptive Kriging estimating mean (AKEM) is demonstrated for more efficiently reducing uncertainty in the estimation of output moment. In the adaptive strategy of AKEM, a new learning function based on the closed-form expression is proposed. Based on the closed-form expression which modifies the computational error caused by the metamodeling uncertainty, the proposed learning function enables the updating of metamodel to reduce prediction uncertainty efficiently and realize the decrease in computational costs. Several applications are introduced to prove the effectiveness and efficiency of the AKEM compared with a universal adaptive Kriging method. Through the good performance of AKEM, its potential in engineering applications can be spotted.

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Uncertainty analysis of structural output with closed-form expression based on surrogate model. / Chen, Yuan Lv; Shi, Yan; Huang, Hong Zhong et al.
in: Probabilistic Engineering Mechanics, Jahrgang 73, 103482, 07.2023.

Publikation: Beitrag in FachzeitschriftArtikelForschungPeer-Review

Chen YL, Shi Y, Huang HZ, Sun D, Beer M. Uncertainty analysis of structural output with closed-form expression based on surrogate model. Probabilistic Engineering Mechanics. 2023 Jul;73:103482. Epub 2023 Jun 19. doi: 10.1016/j.probengmech.2023.103482
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abstract = "Uncertainty analysis (UA) is the process that quantitatively identifies and characterizes the output uncertainty and has a crucial implication in engineering applications. The research of efficient estimation of structural output moments in probability space plays an important part in the UA and has great engineering significance. Given this point, a new UA method based on the Kriging surrogate model related to closed-form expressions for the perception of the estimation of mean and variance is proposed in this paper. The new proposed method is proven effective because of its direct reflection on the prediction uncertainty of the output moments of metamodel to quantify the accuracy level. The estimation can be completed by directly using the redefined closed-form expressions of the model's output mean and variance to avoid excess post-processing computational costs and errors. Furthermore, a novel framework of adaptive Kriging estimating mean (AKEM) is demonstrated for more efficiently reducing uncertainty in the estimation of output moment. In the adaptive strategy of AKEM, a new learning function based on the closed-form expression is proposed. Based on the closed-form expression which modifies the computational error caused by the metamodeling uncertainty, the proposed learning function enables the updating of metamodel to reduce prediction uncertainty efficiently and realize the decrease in computational costs. Several applications are introduced to prove the effectiveness and efficiency of the AKEM compared with a universal adaptive Kriging method. Through the good performance of AKEM, its potential in engineering applications can be spotted.",
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author = "Chen, {Yuan Lv} and Yan Shi and Huang, {Hong Zhong} and Dong Sun and Michael Beer",
note = "Funding Information: This work is supported by the National Natural Science Foundation of China (Grant 52205252 ), the Natural Science Foundation of Sichuan Province (Grant 2023NSFSC0876 ), and the China Postdoctoral Science Foundation (Grant 2022M710613 ). The corresponding author would also thanks for the support of the Alexander von Humboldt Foundation of Germany . ",
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AU - Chen, Yuan Lv

AU - Shi, Yan

AU - Huang, Hong Zhong

AU - Sun, Dong

AU - Beer, Michael

N1 - Funding Information: This work is supported by the National Natural Science Foundation of China (Grant 52205252 ), the Natural Science Foundation of Sichuan Province (Grant 2023NSFSC0876 ), and the China Postdoctoral Science Foundation (Grant 2022M710613 ). The corresponding author would also thanks for the support of the Alexander von Humboldt Foundation of Germany .

PY - 2023/7

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