Hierarchical Bayesian model updating using Dirichlet process mixtures for structural damage localization
By: Taro Yaoyama, Tatsuya Itoi, Jun Iyama
Potential Business Impact:
Finds damage in buildings by learning from past states.
Bayesian model updating provides a rigorous probabilistic framework for calibrating finite element (FE) models with quantified uncertainties, thereby enhancing damage assessment, response prediction, and performance evaluation of engineering structures. Recent advances in hierarchical Bayesian model updating (HBMU) enable robust parameter estimation under ill-posed/ill-conditioned settings and in the presence of inherent variability in structural parameters due to environmental and operational conditions. However, most HBMU approaches overlook multimodality in structural parameters that often arises when a structure experiences multiple damage states over its service life. This paper presents an HBMU framework that employs a Dirichlet process (DP) mixture prior on structural parameters (DP-HBMU). DP mixtures are nonparametric Bayesian models that perform clustering without pre-specifying the number of clusters, incorporating damage state classification into FE model updating. We formulate the DP-HBMU framework and devise a Metropolis-within-Gibbs sampler that draws samples from the posterior by embedding Metropolis updates for intractable conditionals due to the FE simulator. The applicability of DP-HBMU to damage localization is demonstrated through both numerical and experimental examples. We consider moment-resisting frame structures with beam-end fractures and apply the method to datasets spanning multiple damage states, from an intact state to moderate or severe damage state. The clusters inferred by DP-HBMU align closely with the assumed or observed damage states. The posterior distributions of stiffness parameters agree with ground truth values or observed fractures while exhibiting substantially reduced uncertainty relative to a non-hierarchical baseline. These results demonstrate the effectiveness of the proposed method in damage localization.
Similar Papers
A hierarchical Bayesian approach for population-based structural health monitoring in ship hull structures
Applications
Helps find weak spots in many similar structures.
Sequential Bayesian Inference of the GTN Damage Model Using Multimodal Experimental Data
Computation
Finds hidden material flaws using smart computer math.
Learning Discrete Bayesian Networks with Hierarchical Dirichlet Shrinkage
Methodology
Learns how things are connected from messy data.