Davide Raviolo, Marco Civera, Luca Zanotti Fragonara
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引用次数: 0
摘要
模型更新(MU)的目的是根据实验观测结果估计相关物理系统的未知属性。在有限元(FE)模型中,这些未知数是元素参数。通常情况下,除了模型校准目的之外,MU 和 FEMU 程序还用于结构的无损评估 (NDE) 和损坏评估。在此框架下,可通过更新与刚度相关的参数来定位和量化损伤。然而,这些程序需要最小化成本函数,该函数根据模型与实验数据之间的差异定义。复杂的 FE 模型会产生昂贵的非凸成本函数,最小化成本函数并非易事。为了解决这一具有挑战性的优化问题,本研究采用了贝叶斯抽样优化技术。这种方法包括生成一个基础成本函数的统计代用模型(在本例中使用的是高斯过程),并应用一个获取函数来驱动下一个采样点的智能选择,同时考虑开发和探索需求。这就产生了一种非常高效且功能强大的优化技术,只需最小的采样量。然后,将所提出方案的性能与三种成熟的全局优化算法进行比较。这项研究以著名的米兰多拉钟楼为基础,进行了数值和实验案例研究。
A Bayesian sampling optimisation strategy for finite element model updating
Model Updating (MU) aims to estimate the unknown properties of a physical system of interest from experimental observations. In Finite Element (FE) models, these unknowns are the elements’ parameters. Typically, besides model calibration purposes, MU and FEMU procedures are employed for the Non-Destructive Evaluation (NDE) and damage assessment of structures. In this framework, damage can be located and quantified by updating the parameters related to stiffness. However, these procedures require the minimisation of a cost function, defined according to the difference between the model and the experimental data. Sophisticated FE models can generate expensive and non-convex cost functions, which minimization is a non-trivial task. To deal with this challenging optimization problem, this work makes use of a Bayesian sampling optimisation technique. This approach consists of generating a statistical surrogate model of the underlying cost function (in this case, a Gaussian Process is used) and applying an acquisition function that drives the intelligent selection of the next sampling point, considering both exploitation and exploration needs. This results in a very efficient yet very powerful optimization technique, necessitating of minimal sampling volume. The performance of this proposed scheme is then compared to three well-established global optimisation algorithms. This investigation is performed on numerical and experimental case studies based on the famous Mirandola bell tower.
期刊介绍:
The Journal of Civil Structural Health Monitoring (JCSHM) publishes articles to advance the understanding and the application of health monitoring methods for the condition assessment and management of civil infrastructure systems.
JCSHM serves as a focal point for sharing knowledge and experience in technologies impacting the discipline of Civionics and Civil Structural Health Monitoring, especially in terms of load capacity ratings and service life estimation.