Decomposed-Coordinated Framework With Enhanced Extremum Kriging for Multicomponent Dynamic Probabilistic Failure Analyses

For multicomponent structures enduring dynamic workloads coming from multi-physical fields, safety assessment is significant to guarantee the normal operation of entire structure system. In this paper, an enhanced extremum Kriging-based decomposed coordinated framework (E2K-DCF) is proposed to impro...

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Main Authors: Cheng Lu, Yun-Wen Feng, Cheng-Wei Fei, Siqi Bu
Format: Article
Language:English
Published: IEEE 2019-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8894350/
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spelling doaj-6f28b81f66874a8f8b7604d75e8f4e792021-03-30T00:53:46ZengIEEEIEEE Access2169-35362019-01-01716328716330010.1109/ACCESS.2019.29523588894350Decomposed-Coordinated Framework With Enhanced Extremum Kriging for Multicomponent Dynamic Probabilistic Failure AnalysesCheng Lu0https://orcid.org/0000-0002-5939-1048Yun-Wen Feng1https://orcid.org/0000-0003-4149-6420Cheng-Wei Fei2https://orcid.org/0000-0001-5333-1055Siqi Bu3https://orcid.org/0000-0002-1047-2568School of Aeronautics, Northwestern Polytechnical University, Xi’an, ChinaSchool of Aeronautics, Northwestern Polytechnical University, Xi’an, ChinaDepartment of Aeronautics and Astronautics, Fudan University, Shanghai, ChinaDepartment of Electrical Engineering, The Hong Kong Polytechnic University, Hong KongFor multicomponent structures enduring dynamic workloads coming from multi-physical fields, safety assessment is significant to guarantee the normal operation of entire structure system. In this paper, an enhanced extremum Kriging-based decomposed coordinated framework (E2K-DCF) is proposed to improve the dynamic probabilistic failure analyses of multicomponent structures. In this method, extremum Kriging model (EKM) is developed by introducing Kriging model into extremum response surface method (ERSM) to process the transient response problem and shorten computational burden in dynamic probabilistic failure analyses. Multiple population genetic algorithm (MPGA) is employed to solve maximum likelihood equation (MLE) and find the optimal hyperparameter $\boldsymbol \theta $ in the EKM, which is promising to enhance approximate accuracy; decomposed-coordinated (DC) strategy is used to handle the coordinated relationship of multiple analytical objectives. To validate the proposed E2K-DCF, the probabilistic failure analysis of turbine blisk radial deformation is conducted by comparing with different methods within time domain [0 s, 215 s], considering fluid-thermal-structural interaction. It is revealed that the failure probability of blisk radial deformation is only 0.0022 when the allowable value is $2.5702\times 10^{-3}$ m acquired from real world practice. Compared to the other approaches, this E2K-DCF has obvious advantages in fitting time and accuracy as well as simulation efficiency and accuracy. The results illustrate that the E2K-DCF is effective and applicable in dynamic probabilistic failure analysis. The efforts of this paper provide a novel viewpoint for the transient reliability evaluation of multicomponent structures, which is likely to enrich mechanical reliability theory.https://ieeexplore.ieee.org/document/8894350/E2K-DCFmulticomponent structuremultiple population genetic algorithmprobabilistic failureturbine blisk
collection DOAJ
language English
format Article
sources DOAJ
author Cheng Lu
Yun-Wen Feng
Cheng-Wei Fei
Siqi Bu
spellingShingle Cheng Lu
Yun-Wen Feng
Cheng-Wei Fei
Siqi Bu
Decomposed-Coordinated Framework With Enhanced Extremum Kriging for Multicomponent Dynamic Probabilistic Failure Analyses
IEEE Access
E2K-DCF
multicomponent structure
multiple population genetic algorithm
probabilistic failure
turbine blisk
author_facet Cheng Lu
Yun-Wen Feng
Cheng-Wei Fei
Siqi Bu
author_sort Cheng Lu
title Decomposed-Coordinated Framework With Enhanced Extremum Kriging for Multicomponent Dynamic Probabilistic Failure Analyses
title_short Decomposed-Coordinated Framework With Enhanced Extremum Kriging for Multicomponent Dynamic Probabilistic Failure Analyses
title_full Decomposed-Coordinated Framework With Enhanced Extremum Kriging for Multicomponent Dynamic Probabilistic Failure Analyses
title_fullStr Decomposed-Coordinated Framework With Enhanced Extremum Kriging for Multicomponent Dynamic Probabilistic Failure Analyses
title_full_unstemmed Decomposed-Coordinated Framework With Enhanced Extremum Kriging for Multicomponent Dynamic Probabilistic Failure Analyses
title_sort decomposed-coordinated framework with enhanced extremum kriging for multicomponent dynamic probabilistic failure analyses
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2019-01-01
description For multicomponent structures enduring dynamic workloads coming from multi-physical fields, safety assessment is significant to guarantee the normal operation of entire structure system. In this paper, an enhanced extremum Kriging-based decomposed coordinated framework (E2K-DCF) is proposed to improve the dynamic probabilistic failure analyses of multicomponent structures. In this method, extremum Kriging model (EKM) is developed by introducing Kriging model into extremum response surface method (ERSM) to process the transient response problem and shorten computational burden in dynamic probabilistic failure analyses. Multiple population genetic algorithm (MPGA) is employed to solve maximum likelihood equation (MLE) and find the optimal hyperparameter $\boldsymbol \theta $ in the EKM, which is promising to enhance approximate accuracy; decomposed-coordinated (DC) strategy is used to handle the coordinated relationship of multiple analytical objectives. To validate the proposed E2K-DCF, the probabilistic failure analysis of turbine blisk radial deformation is conducted by comparing with different methods within time domain [0 s, 215 s], considering fluid-thermal-structural interaction. It is revealed that the failure probability of blisk radial deformation is only 0.0022 when the allowable value is $2.5702\times 10^{-3}$ m acquired from real world practice. Compared to the other approaches, this E2K-DCF has obvious advantages in fitting time and accuracy as well as simulation efficiency and accuracy. The results illustrate that the E2K-DCF is effective and applicable in dynamic probabilistic failure analysis. The efforts of this paper provide a novel viewpoint for the transient reliability evaluation of multicomponent structures, which is likely to enrich mechanical reliability theory.
topic E2K-DCF
multicomponent structure
multiple population genetic algorithm
probabilistic failure
turbine blisk
url https://ieeexplore.ieee.org/document/8894350/
work_keys_str_mv AT chenglu decomposedcoordinatedframeworkwithenhancedextremumkrigingformulticomponentdynamicprobabilisticfailureanalyses
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AT chengweifei decomposedcoordinatedframeworkwithenhancedextremumkrigingformulticomponentdynamicprobabilisticfailureanalyses
AT siqibu decomposedcoordinatedframeworkwithenhancedextremumkrigingformulticomponentdynamicprobabilisticfailureanalyses
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