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Structural damage identification via physics-guided machine learning: a methodology integrating pattern recognition with finite element model updating

机译:通过物理引导机器学习的结构损伤识别:一种与有限元模型更新的模式识别的方法

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摘要

Structural health monitoring methods are broadly classified into two categories: data-driven methods via statistical pattern recognition and physics-based methods through finite elementmodel updating. Data-driven structural health monitoring faces the challenge of data insufficiency that renders the learned model limited in identifying damage scenarios that are not contained in the training data. Model-based methods are susceptible to modeling error due to model idealizations and simplifications that make the finite element model updating results deviate from the truth. This study attempts to combine the merits of data-driven and physics-based structural health monitoring methods via physics-guided machine learning, expecting that the damage identification performance can be improved. Physics-guided machine learning uses observed feature data with correct labels as well as the physical model output of unlabeled instances. In this study, physics-guided machine learning is realized with a physics-guided neural network. The original modal-property based features are extended with the damage identification result of finite element model updating. A physics-based loss function is designed to evaluate the discrepancy between the neural network model output and that of finite element model updating. With the guidance from the scientific knowledge contained in finite element model updating, the learned neural network model has the potential to improve the generality and scientific consistency of the damage detection results. The proposed methodology is validated by a numerical case study on a steel pedestrian bridge model and an experimental study on a three-story building model.
机译:结构健康监测方法广泛分为两类:通过有限元模型更新,通过统计模式识别和基于物理的方法进行数据驱动方法。数据驱动的结构健康监测面临数据不足的挑战,使学习模型限制在识别训练数据中不包含的损坏方案。由于模型的理想化和简化,基于模型的方法易于建模错误,使有限元模型更新结果偏离真相。本研究试图通过物理引导机器学习结合数据驱动和物理的结构健康监测方法的优点,期望可以提高损坏识别性能。物理引导机器学习使用具有正确标签的观察到的功能数据以及未标记实例的物理模型输出。在这项研究中,物理引导机器学习与物理引导的神经网络实现。基于原始的模态属性的功能延长了有限元模型更新的损坏识别结果。基于物理的损耗功能旨在评估神经网络模型输出与有限元模型更新之间的差异。随着有限元模型更新中所包含的科学知识的指导,所学知的神经网络模型有可能提高损伤检测结果的一般性和科学一致性。通过对三层建筑模型的钢铁行人模型的数值案例研究验证了所提出的方法。

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