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Multi-fidelity modelling for structural identification

机译:结构识别的多保真造型

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摘要

Asset-management decision-making is often improved by obtaining a better understanding structural behaviour through monitoring, which can then help avoid unnecessary repair, retrofit and replacement of existing infrastructure. Interpretation of monitoring data in the presence of biased and systematic uncertainties may require computationally time-consuming numerical models to approximate real structural behaviour. These models could be replaced by less time-consuming machine learning-based surrogate models. When and how this should be done is the subject of current research. In this paper, the use of surrogate models in a multi-fidelity framework for structural identification of a full-scale bridge is presented. The effects of varying degrees of fidelity are studied in a transparent manner within a structural-identification framework. The use of models with multiple fidelities helps obtain accurate model updating results in less time compared with using only one high-fidelity model class for simulations.
机译:通过监控获得更好的理解结构行为,通常可以改善资产管理决策,然后可以帮助避免不必要的修复,改造和更换现有基础架构。在存在偏见和系统的不确定性存在下对监测数据的解释可能需要计算耗时的数值模型来近似真实的结构行为。这些模型可以通过较少耗时的基于机器学习的代理模型所取代。何时以及如何完成是当前研究的主题。在本文中,提出了在多维保真框架中使用替代模型,用于满量程桥的结构识别。在结构识别框架内以透明的方式研究变化程度的效果。使用多个保真度的模型有助于获得准确的模型更新导致在更短的时间内使用用于模拟的一个高保真模型类相比。

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