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Using Regularized Linear-Regression Surrogate Models for Accurate Probabilistic Structural Identification

机译:使用正则化线性回归代理模型进行准确的概率结构识别

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Model-based data interpretation has the potential to increase knowledge of structural behavior and support asset management. Models are usually conservative and contain many parameters and sources of systematic uncertainty, which need to be taken into account for accurate model updating. However, interpreting measurements using physics-based models is computationally expensive. Supplementing physics-based models with inexpensive surrogate models might facilitate practical implementation of data interpretation. In this paper, development of regularized linear-regression surrogate models for simulating structural behavior of a full-scale bridge and their use in error-domain model falsification for structural identification is presented. In this methodology, uncertainties from systematic sources and surrogate model error are considered explicitly during model updating. Results are verified with knowledge of parameters used to simulate measurements on a full-scale bridge. Use of simple regularized linear-regression models helps achieve accurate knowledge of updated structural behavior, which can then be used for making better asset management decisions.
机译:基于模型的数据解释可能会增加对结构行为的了解并支持资产管理。模型通常是保守的,并且包含许多参数和系统不确定性的来源,为了准确进行模型更新,需要考虑这些因素。但是,使用基于物理学的模型来解释测量值在计算上是昂贵的。用廉价的替代模型补充基于物理学的模型可能会促进数据解释的实际实施。本文介绍了用于模拟全尺寸桥梁结构行为的正则化线性回归代理模型的开发及其在误差域模型伪造中用于结构识别的应用。在这种方法中,在模型更新过程中明确考虑了来自系统性来源的不确定性和替代模型误差。通过用于模拟全尺寸桥梁的测量参数的知识来验证结果。使用简单的正规化线性回归模型有助于获得对更新的结构行为的准确了解,然后可以将其用于制定更好的资产管理决策。

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