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Real-time Model Uncertainty Quantification and Hyper-robust Structural Identification

机译:实时模型不确定性量化和超鲁棒结构识别

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摘要

In structural health monitoring, there is always uncertainty in which model class to choose to represent a structural system.This paper aims to provide a real-time algorithm for quantification of modeling uncertainty using measured response data.The key is to recursively update the probability of each model class within a proposed set of models for the structural system, which can be done by embedding the Bayesian model class selection component into the extended Kalman filter.A hyper-robust structural identification based on model class averaging is proposed.A simulated example is presented to illustrate the effectiveness and robustness of the proposed method.
机译:在结构健康监测中,选择哪种模型类别来代表结构系统始终存在不确定性。本文旨在提供一种实时的算法,用于使用测得的响应数据对建模不确定性进行量化。关键是递归更新概率模型可以通过将贝叶斯模型类别选择组件嵌入扩展的Kalman滤波器中来完成结构系统模型集内的每个模型类别。提出了基于模型类别平均的超鲁棒结构识别。提出来说明该方法的有效性和鲁棒性。

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