Hierarchical Bayesian Operational Modal Analysis: Theory and Computations
Omid Sedehi, Lambros S. Katafygiotis, Costas Papadimitriou

TL;DR
This paper introduces a hierarchical Bayesian framework for modal analysis that quantifies uncertainty across multiple vibration data sets, integrating advanced Bayesian methods with practical algorithms and demonstrating effectiveness on real-world structures.
Contribution
It develops a novel hierarchical Bayesian model for modal identification, incorporating uncertainty quantification and addressing hyper-parameter estimation challenges with new computational strategies.
Findings
Hierarchical Bayesian model effectively captures modal parameter uncertainty.
Eigenbasis transformation reduces hyper-parameter estimation complexity.
Framework validated on real structures with successful uncertainty quantification.
Abstract
This paper presents a hierarchical Bayesian modeling framework for the uncertainty quantification in modal identification of linear dynamical systems using multiple vibration data sets. This novel framework integrates the state-of-the-art Bayesian formulations into a hierarchical setting aiming to capture both the identification precision and the ensemble variability prompted due to modeling errors. Such cutting-edge developments have been absent from the modal identification literature, sustained as a long-standing problem at the research spotlight. Central to this framework is a Gaussian hyper probability model, whose mean and covariance matrix are unknown encapsulating the uncertainty of the modal parameters. Detailed computation of this hierarchical model is addressed under two major algorithms using Markov chain Monte Carlo (MCMC) sampling and Laplace asymptotic approximation…
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