论文标题
稀疏表示结构系统的损害识别
Sparse representation for damage identification of structural systems
论文作者
论文摘要
通常将结构系统的损害定义为一个反问题,由于测量噪声和建模误差引起的差异和认知不确定性,可能会造成不良条件。稀疏表示可以用于对稀疏损害的情况进行反向分析。在本文中,我们提出了一种基于两阶段灵敏度分析的新型框架,用于模型更新和稀疏伤害识别。具体而言,首先开发了一种$ \ ell_2 $贝叶斯学习方法来更新完整的模型和不确定性量化,以便为损害检测提供基线。然后将稀疏表示管道构建在准$ \ ell_0 $方法上,例如,顺序阈值最小二乘(STLS)回归,然后提出以进行损坏定位和量化。此外,贝叶斯优化以及交叉验证的开发是从数据中从数据中学习超参数的,从而节省了高参数调整的计算成本并产生更可靠的识别结果。提出的框架通过三个例子进行了验证,包括10层剪切型建筑物,复杂的桁架结构和八层钢制框架的摇桌测试。结果表明,所提出的方法能够以高精度定位和量化结构损伤。
Identifying damage of structural systems is typically characterized as an inverse problem which might be ill-conditioned due to aleatory and epistemic uncertainties induced by measurement noise and modeling error. Sparse representation can be used to perform inverse analysis for the case of sparse damage. In this paper, we propose a novel two-stage sensitivity analysis-based framework for both model updating and sparse damage identification. Specifically, an $\ell_2$ Bayesian learning method is firstly developed for updating the intact model and uncertainty quantification so as to set forward a baseline for damage detection. A sparse representation pipeline built on a quasi-$\ell_0$ method, e.g., Sequential Threshold Least Squares (STLS) regression, is then presented for damage localization and quantification. Additionally, Bayesian optimization together with cross validation is developed to heuristically learn hyperparameters from data, which saves the computational cost of hyperparameter tuning and produces more reliable identification result. The proposed framework is verified by three examples, including a 10-story shear-type building, a complex truss structure, and a shake table test of an eight-story steel frame. Results show that the proposed approach is capable of both localizing and quantifying structural damage with high accuracy.