Stochastic model updating based on sub-interval similarity and BP neural network

Yanlin Zhao, Xindong Li, Jiahui Zhao,Jianhong Yang,Debin Yang, Sun Bing,Wang Yao

MECHANICS OF ADVANCED MATERIALS AND STRUCTURES(2023)

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摘要
A stochastic model updating framework is proposed in this work to address the problem of uncertain model calibration. This framework includes an effective uncertainty quantification metric of sub-interval similarity to measure the discrepancy between model predictions and experimental observations. A back propagation neural network is employed as a surrogate model for finite element method models, and a sparrow search algorithm is introduced as an optimization operator. Two typical numerical examples of a 3-degree-of-freedom mass-spring system and a satellite finite element model have been presented to demonstrate the feasibility and the effectiveness of the proposed stochastic model updating algorithm.
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关键词
Sub-interval similarity,back propagation neural network,stochastic model updating,sparrow search algorithm,uncertainty quantification,model calibration
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