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一种面向多保真Kriging模型结构可靠性分析的主动学习方法

杜尊峰 樊涛 姜登耀

中国机械工程2026,Vol.37Issue(2):428-441,14.
中国机械工程2026,Vol.37Issue(2):428-441,14.DOI:10.3969/j.issn.1004-132X.2026.02.018

一种面向多保真Kriging模型结构可靠性分析的主动学习方法

A New Active Learning Method for Structural Reliability Analysis of Multi-fidelity Kriging Models

杜尊峰 1樊涛 2姜登耀1

作者信息

  • 1. 天津大学水利工程智能建设与运维全国重点实验室,天津,300354
  • 2. 航空工业第一飞机设计研究院,西安,710089
  • 折叠

摘要

Abstract

A structural reliability method was proposed based on multi-fidelity Kriging modeling with active learning,which determined the computational and spatial locations of sample points during each itera-tion through a three-stage selection.Firstly,the optimal set of sample points was determined by ensemble multiple learning functions.Secondly,the computational locations of the sample points were determined by the proposed BES(beneficial effect strategy).Finally,the spatial locations of the sample points were deter-mined from the optimal set of sample points by applying Bootstrap sampling method.The effectiveness and efficiency of the method was demonstrated by two numerical examples and one practical engineering ex-ample.Compared with the current advanced multi-fidelity model structure reliability method,when the fi-delity of the model is lower,the computational failure may be effectively avoided,which shows the ad-vanced and better applicability of the method.

关键词

结构可靠性/主动学习/多保真Kriging模型/保真度选择策略

Key words

structural reliability/active learning/multi-fidelity Kriging model/fidelity selection strat-egy

分类

信息技术与安全科学

引用本文复制引用

杜尊峰,樊涛,姜登耀..一种面向多保真Kriging模型结构可靠性分析的主动学习方法[J].中国机械工程,2026,37(2):428-441,14.

基金项目

国家自然科学基金(51109158,U2106223) (51109158,U2106223)

国家重点研发计划(2022YFC2806300) (2022YFC2806300)

天津市自然科学基金(23JCZDJC01150) (23JCZDJC01150)

中国机械工程

1004-132X

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