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Fast Bayesian updating of large-scale finite element models using CMS technique and surrogate models

机译:使用CMS技术和代理模型的大型有限元模型快速贝叶斯更新

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A Bayesian probabilistic framework for parameter estimation is applied for updating large-order finite element models of structures using response measurements. Fast and accurate component mode synthesis (CMS) techniques are proposed, consistent with the finite element model parameterization, to achieve drastic reductions in computational effort. Further computational savings are achieved by adopting heuristic approximations based on surrogate models. The computational efficiency and accuracy of the proposed techniques is demonstrated by updating a finite element model of a bridge involving hundreds of thousands of degrees of freedom.
机译:用于参数估计的贝叶斯概率框架用于使用响应测量更新大型有限元模型的结构。提出了快速准确的组件模式合成(CMS)技术,与有限元模型参数化一致,以实现计算工作的急剧减少。通过采用基于代理模型的启发式近似来实现进一步的计算节省。通过更新涉及数十万自由度的桥梁的有限元模型来证明所提出的技术的计算效率和准确性。

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